/* SLP - Basic Block Vectorization Copyright (C) 2007-2023 Free Software Foundation, Inc. Contributed by Dorit Naishlos and Ira Rosen This file is part of GCC. GCC is free software; you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation; either version 3, or (at your option) any later version. GCC is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more details. You should have received a copy of the GNU General Public License along with GCC; see the file COPYING3. If not see . */ #include "config.h" #define INCLUDE_ALGORITHM #include "system.h" #include "coretypes.h" #include "backend.h" #include "target.h" #include "rtl.h" #include "tree.h" #include "gimple.h" #include "tree-pass.h" #include "ssa.h" #include "optabs-tree.h" #include "insn-config.h" #include "recog.h" /* FIXME: for insn_data */ #include "fold-const.h" #include "stor-layout.h" #include "gimple-iterator.h" #include "cfgloop.h" #include "tree-vectorizer.h" #include "langhooks.h" #include "gimple-walk.h" #include "dbgcnt.h" #include "tree-vector-builder.h" #include "vec-perm-indices.h" #include "gimple-fold.h" #include "internal-fn.h" #include "dump-context.h" #include "cfganal.h" #include "tree-eh.h" #include "tree-cfg.h" #include "alloc-pool.h" #include "sreal.h" #include "predict.h" static bool vect_transform_slp_perm_load_1 (vec_info *, slp_tree, load_permutation_t &, const vec &, gimple_stmt_iterator *, poly_uint64, bool, bool, unsigned *, unsigned * = nullptr, bool = false); static int vectorizable_slp_permutation_1 (vec_info *, gimple_stmt_iterator *, slp_tree, lane_permutation_t &, vec &, bool); static bool vectorizable_slp_permutation (vec_info *, gimple_stmt_iterator *, slp_tree, stmt_vector_for_cost *); static void vect_print_slp_tree (dump_flags_t, dump_location_t, slp_tree); static object_allocator<_slp_tree> *slp_tree_pool; static slp_tree slp_first_node; void vect_slp_init (void) { slp_tree_pool = new object_allocator<_slp_tree> ("SLP nodes"); } void vect_slp_fini (void) { while (slp_first_node) delete slp_first_node; delete slp_tree_pool; slp_tree_pool = NULL; } void * _slp_tree::operator new (size_t n) { gcc_assert (n == sizeof (_slp_tree)); return slp_tree_pool->allocate_raw (); } void _slp_tree::operator delete (void *node, size_t n) { gcc_assert (n == sizeof (_slp_tree)); slp_tree_pool->remove_raw (node); } /* Initialize a SLP node. */ _slp_tree::_slp_tree () { this->prev_node = NULL; if (slp_first_node) slp_first_node->prev_node = this; this->next_node = slp_first_node; slp_first_node = this; SLP_TREE_SCALAR_STMTS (this) = vNULL; SLP_TREE_SCALAR_OPS (this) = vNULL; SLP_TREE_VEC_STMTS (this) = vNULL; SLP_TREE_VEC_DEFS (this) = vNULL; SLP_TREE_NUMBER_OF_VEC_STMTS (this) = 0; SLP_TREE_CHILDREN (this) = vNULL; SLP_TREE_LOAD_PERMUTATION (this) = vNULL; SLP_TREE_LANE_PERMUTATION (this) = vNULL; SLP_TREE_DEF_TYPE (this) = vect_uninitialized_def; SLP_TREE_CODE (this) = ERROR_MARK; SLP_TREE_VECTYPE (this) = NULL_TREE; SLP_TREE_REPRESENTATIVE (this) = NULL; SLP_TREE_REF_COUNT (this) = 1; this->failed = NULL; this->max_nunits = 1; this->lanes = 0; } /* Tear down a SLP node. */ _slp_tree::~_slp_tree () { if (this->prev_node) this->prev_node->next_node = this->next_node; else slp_first_node = this->next_node; if (this->next_node) this->next_node->prev_node = this->prev_node; SLP_TREE_CHILDREN (this).release (); SLP_TREE_SCALAR_STMTS (this).release (); SLP_TREE_SCALAR_OPS (this).release (); SLP_TREE_VEC_STMTS (this).release (); SLP_TREE_VEC_DEFS (this).release (); SLP_TREE_LOAD_PERMUTATION (this).release (); SLP_TREE_LANE_PERMUTATION (this).release (); if (this->failed) free (failed); } /* Recursively free the memory allocated for the SLP tree rooted at NODE. */ void vect_free_slp_tree (slp_tree node) { int i; slp_tree child; if (--SLP_TREE_REF_COUNT (node) != 0) return; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child) vect_free_slp_tree (child); /* If the node defines any SLP only patterns then those patterns are no longer valid and should be removed. */ stmt_vec_info rep_stmt_info = SLP_TREE_REPRESENTATIVE (node); if (rep_stmt_info && STMT_VINFO_SLP_VECT_ONLY_PATTERN (rep_stmt_info)) { stmt_vec_info stmt_info = vect_orig_stmt (rep_stmt_info); STMT_VINFO_IN_PATTERN_P (stmt_info) = false; STMT_SLP_TYPE (stmt_info) = STMT_SLP_TYPE (rep_stmt_info); } delete node; } /* Return a location suitable for dumpings related to the SLP instance. */ dump_user_location_t _slp_instance::location () const { if (!root_stmts.is_empty ()) return root_stmts[0]->stmt; else return SLP_TREE_SCALAR_STMTS (root)[0]->stmt; } /* Free the memory allocated for the SLP instance. */ void vect_free_slp_instance (slp_instance instance) { vect_free_slp_tree (SLP_INSTANCE_TREE (instance)); SLP_INSTANCE_LOADS (instance).release (); SLP_INSTANCE_ROOT_STMTS (instance).release (); instance->subgraph_entries.release (); instance->cost_vec.release (); free (instance); } /* Create an SLP node for SCALAR_STMTS. */ slp_tree vect_create_new_slp_node (unsigned nops, tree_code code) { slp_tree node = new _slp_tree; SLP_TREE_SCALAR_STMTS (node) = vNULL; SLP_TREE_CHILDREN (node).create (nops); SLP_TREE_DEF_TYPE (node) = vect_internal_def; SLP_TREE_CODE (node) = code; return node; } /* Create an SLP node for SCALAR_STMTS. */ static slp_tree vect_create_new_slp_node (slp_tree node, vec scalar_stmts, unsigned nops) { SLP_TREE_SCALAR_STMTS (node) = scalar_stmts; SLP_TREE_CHILDREN (node).create (nops); SLP_TREE_DEF_TYPE (node) = vect_internal_def; SLP_TREE_REPRESENTATIVE (node) = scalar_stmts[0]; SLP_TREE_LANES (node) = scalar_stmts.length (); return node; } /* Create an SLP node for SCALAR_STMTS. */ static slp_tree vect_create_new_slp_node (vec scalar_stmts, unsigned nops) { return vect_create_new_slp_node (new _slp_tree, scalar_stmts, nops); } /* Create an SLP node for OPS. */ static slp_tree vect_create_new_slp_node (slp_tree node, vec ops) { SLP_TREE_SCALAR_OPS (node) = ops; SLP_TREE_DEF_TYPE (node) = vect_external_def; SLP_TREE_LANES (node) = ops.length (); return node; } /* Create an SLP node for OPS. */ static slp_tree vect_create_new_slp_node (vec ops) { return vect_create_new_slp_node (new _slp_tree, ops); } /* This structure is used in creation of an SLP tree. Each instance corresponds to the same operand in a group of scalar stmts in an SLP node. */ typedef struct _slp_oprnd_info { /* Def-stmts for the operands. */ vec def_stmts; /* Operands. */ vec ops; /* Information about the first statement, its vector def-type, type, the operand itself in case it's constant, and an indication if it's a pattern stmt. */ tree first_op_type; enum vect_def_type first_dt; bool any_pattern; } *slp_oprnd_info; /* Allocate operands info for NOPS operands, and GROUP_SIZE def-stmts for each operand. */ static vec vect_create_oprnd_info (int nops, int group_size) { int i; slp_oprnd_info oprnd_info; vec oprnds_info; oprnds_info.create (nops); for (i = 0; i < nops; i++) { oprnd_info = XNEW (struct _slp_oprnd_info); oprnd_info->def_stmts.create (group_size); oprnd_info->ops.create (group_size); oprnd_info->first_dt = vect_uninitialized_def; oprnd_info->first_op_type = NULL_TREE; oprnd_info->any_pattern = false; oprnds_info.quick_push (oprnd_info); } return oprnds_info; } /* Free operands info. */ static void vect_free_oprnd_info (vec &oprnds_info) { int i; slp_oprnd_info oprnd_info; FOR_EACH_VEC_ELT (oprnds_info, i, oprnd_info) { oprnd_info->def_stmts.release (); oprnd_info->ops.release (); XDELETE (oprnd_info); } oprnds_info.release (); } /* Return the execution frequency of NODE (so that a higher value indicates a "more important" node when optimizing for speed). */ static sreal vect_slp_node_weight (slp_tree node) { stmt_vec_info stmt_info = vect_orig_stmt (SLP_TREE_REPRESENTATIVE (node)); basic_block bb = gimple_bb (stmt_info->stmt); return bb->count.to_sreal_scale (ENTRY_BLOCK_PTR_FOR_FN (cfun)->count); } /* Return true if STMTS contains a pattern statement. */ static bool vect_contains_pattern_stmt_p (vec stmts) { stmt_vec_info stmt_info; unsigned int i; FOR_EACH_VEC_ELT (stmts, i, stmt_info) if (is_pattern_stmt_p (stmt_info)) return true; return false; } /* Return true when all lanes in the external or constant NODE have the same value. */ static bool vect_slp_tree_uniform_p (slp_tree node) { gcc_assert (SLP_TREE_DEF_TYPE (node) == vect_constant_def || SLP_TREE_DEF_TYPE (node) == vect_external_def); /* Pre-exsting vectors. */ if (SLP_TREE_SCALAR_OPS (node).is_empty ()) return false; unsigned i; tree op, first = NULL_TREE; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_OPS (node), i, op) if (!first) first = op; else if (!operand_equal_p (first, op, 0)) return false; return true; } /* Find the place of the data-ref in STMT_INFO in the interleaving chain that starts from FIRST_STMT_INFO. Return -1 if the data-ref is not a part of the chain. */ int vect_get_place_in_interleaving_chain (stmt_vec_info stmt_info, stmt_vec_info first_stmt_info) { stmt_vec_info next_stmt_info = first_stmt_info; int result = 0; if (first_stmt_info != DR_GROUP_FIRST_ELEMENT (stmt_info)) return -1; do { if (next_stmt_info == stmt_info) return result; next_stmt_info = DR_GROUP_NEXT_ELEMENT (next_stmt_info); if (next_stmt_info) result += DR_GROUP_GAP (next_stmt_info); } while (next_stmt_info); return -1; } /* Check whether it is possible to load COUNT elements of type ELT_TYPE using the method implemented by duplicate_and_interleave. Return true if so, returning the number of intermediate vectors in *NVECTORS_OUT (if nonnull) and the type of each intermediate vector in *VECTOR_TYPE_OUT (if nonnull). */ bool can_duplicate_and_interleave_p (vec_info *vinfo, unsigned int count, tree elt_type, unsigned int *nvectors_out, tree *vector_type_out, tree *permutes) { tree base_vector_type = get_vectype_for_scalar_type (vinfo, elt_type, count); if (!base_vector_type || !VECTOR_MODE_P (TYPE_MODE (base_vector_type))) return false; machine_mode base_vector_mode = TYPE_MODE (base_vector_type); poly_int64 elt_bytes = count * GET_MODE_UNIT_SIZE (base_vector_mode); unsigned int nvectors = 1; for (;;) { scalar_int_mode int_mode; poly_int64 elt_bits = elt_bytes * BITS_PER_UNIT; if (int_mode_for_size (elt_bits, 1).exists (&int_mode)) { /* Get the natural vector type for this SLP group size. */ tree int_type = build_nonstandard_integer_type (GET_MODE_BITSIZE (int_mode), 1); tree vector_type = get_vectype_for_scalar_type (vinfo, int_type, count); if (vector_type && VECTOR_MODE_P (TYPE_MODE (vector_type)) && known_eq (GET_MODE_SIZE (TYPE_MODE (vector_type)), GET_MODE_SIZE (base_vector_mode))) { /* Try fusing consecutive sequences of COUNT / NVECTORS elements together into elements of type INT_TYPE and using the result to build NVECTORS vectors. */ poly_uint64 nelts = GET_MODE_NUNITS (TYPE_MODE (vector_type)); vec_perm_builder sel1 (nelts, 2, 3); vec_perm_builder sel2 (nelts, 2, 3); poly_int64 half_nelts = exact_div (nelts, 2); for (unsigned int i = 0; i < 3; ++i) { sel1.quick_push (i); sel1.quick_push (i + nelts); sel2.quick_push (half_nelts + i); sel2.quick_push (half_nelts + i + nelts); } vec_perm_indices indices1 (sel1, 2, nelts); vec_perm_indices indices2 (sel2, 2, nelts); machine_mode vmode = TYPE_MODE (vector_type); if (can_vec_perm_const_p (vmode, vmode, indices1) && can_vec_perm_const_p (vmode, vmode, indices2)) { if (nvectors_out) *nvectors_out = nvectors; if (vector_type_out) *vector_type_out = vector_type; if (permutes) { permutes[0] = vect_gen_perm_mask_checked (vector_type, indices1); permutes[1] = vect_gen_perm_mask_checked (vector_type, indices2); } return true; } } } if (!multiple_p (elt_bytes, 2, &elt_bytes)) return false; nvectors *= 2; } } /* Return true if DTA and DTB match. */ static bool vect_def_types_match (enum vect_def_type dta, enum vect_def_type dtb) { return (dta == dtb || ((dta == vect_external_def || dta == vect_constant_def) && (dtb == vect_external_def || dtb == vect_constant_def))); } static const int cond_expr_maps[3][5] = { { 4, -1, -2, 1, 2 }, { 4, -2, -1, 1, 2 }, { 4, -1, -2, 2, 1 } }; static const int arg1_map[] = { 1, 1 }; static const int arg2_map[] = { 1, 2 }; static const int arg1_arg4_map[] = { 2, 1, 4 }; static const int op1_op0_map[] = { 2, 1, 0 }; /* For most SLP statements, there is a one-to-one mapping between gimple arguments and child nodes. If that is not true for STMT, return an array that contains: - the number of child nodes, followed by - for each child node, the index of the argument associated with that node. The special index -1 is the first operand of an embedded comparison and the special index -2 is the second operand of an embedded comparison. SWAP is as for vect_get_and_check_slp_defs. */ static const int * vect_get_operand_map (const gimple *stmt, unsigned char swap = 0) { if (auto assign = dyn_cast (stmt)) { if (gimple_assign_rhs_code (assign) == COND_EXPR && COMPARISON_CLASS_P (gimple_assign_rhs1 (assign))) return cond_expr_maps[swap]; if (TREE_CODE_CLASS (gimple_assign_rhs_code (assign)) == tcc_comparison && swap) return op1_op0_map; } gcc_assert (!swap); if (auto call = dyn_cast (stmt)) { if (gimple_call_internal_p (call)) switch (gimple_call_internal_fn (call)) { case IFN_MASK_LOAD: return arg2_map; case IFN_GATHER_LOAD: return arg1_map; case IFN_MASK_GATHER_LOAD: return arg1_arg4_map; default: break; } } return nullptr; } /* Get the defs for the rhs of STMT (collect them in OPRNDS_INFO), check that they are of a valid type and that they match the defs of the first stmt of the SLP group (stored in OPRNDS_INFO). This function tries to match stmts by swapping operands of STMTS[STMT_NUM] when possible. Non-zero SWAP indicates swap is required for cond_expr stmts. Specifically, SWAP is 1 if STMT is cond and operands of comparison need to be swapped; SWAP is 2 if STMT is cond and code of comparison needs to be inverted. If there was a fatal error return -1; if the error could be corrected by swapping operands of father node of this one, return 1; if everything is ok return 0. */ static int vect_get_and_check_slp_defs (vec_info *vinfo, unsigned char swap, bool *skip_args, vec stmts, unsigned stmt_num, vec *oprnds_info) { stmt_vec_info stmt_info = stmts[stmt_num]; tree oprnd; unsigned int i, number_of_oprnds; enum vect_def_type dt = vect_uninitialized_def; slp_oprnd_info oprnd_info; unsigned int commutative_op = -1U; bool first = stmt_num == 0; if (!is_a (stmt_info->stmt) && !is_a (stmt_info->stmt) && !is_a (stmt_info->stmt)) return -1; number_of_oprnds = gimple_num_args (stmt_info->stmt); const int *map = vect_get_operand_map (stmt_info->stmt, swap); if (map) number_of_oprnds = *map++; if (gcall *stmt = dyn_cast (stmt_info->stmt)) { if (gimple_call_internal_p (stmt)) { internal_fn ifn = gimple_call_internal_fn (stmt); commutative_op = first_commutative_argument (ifn); } } else if (gassign *stmt = dyn_cast (stmt_info->stmt)) { if (commutative_tree_code (gimple_assign_rhs_code (stmt))) commutative_op = 0; } bool swapped = (swap != 0); bool backedge = false; enum vect_def_type *dts = XALLOCAVEC (enum vect_def_type, number_of_oprnds); for (i = 0; i < number_of_oprnds; i++) { int opno = map ? map[i] : int (i); if (opno < 0) oprnd = TREE_OPERAND (gimple_arg (stmt_info->stmt, 0), -1 - opno); else { oprnd = gimple_arg (stmt_info->stmt, opno); if (gphi *stmt = dyn_cast (stmt_info->stmt)) backedge = dominated_by_p (CDI_DOMINATORS, gimple_phi_arg_edge (stmt, opno)->src, gimple_bb (stmt_info->stmt)); } if (TREE_CODE (oprnd) == VIEW_CONVERT_EXPR) oprnd = TREE_OPERAND (oprnd, 0); oprnd_info = (*oprnds_info)[i]; stmt_vec_info def_stmt_info; if (!vect_is_simple_use (oprnd, vinfo, &dts[i], &def_stmt_info)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: can't analyze def for %T\n", oprnd); return -1; } if (skip_args[i]) { oprnd_info->def_stmts.quick_push (NULL); oprnd_info->ops.quick_push (NULL_TREE); oprnd_info->first_dt = vect_uninitialized_def; continue; } oprnd_info->def_stmts.quick_push (def_stmt_info); oprnd_info->ops.quick_push (oprnd); if (def_stmt_info && is_pattern_stmt_p (def_stmt_info)) { if (STMT_VINFO_RELATED_STMT (vect_orig_stmt (def_stmt_info)) != def_stmt_info) oprnd_info->any_pattern = true; else /* If we promote this to external use the original stmt def. */ oprnd_info->ops.last () = gimple_get_lhs (vect_orig_stmt (def_stmt_info)->stmt); } /* If there's a extern def on a backedge make sure we can code-generate at the region start. ??? This is another case that could be fixed by adjusting how we split the function but at the moment we'd have conflicting goals there. */ if (backedge && dts[i] == vect_external_def && is_a (vinfo) && TREE_CODE (oprnd) == SSA_NAME && !SSA_NAME_IS_DEFAULT_DEF (oprnd) && !dominated_by_p (CDI_DOMINATORS, as_a (vinfo)->bbs[0], gimple_bb (SSA_NAME_DEF_STMT (oprnd)))) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: extern def %T only defined " "on backedge\n", oprnd); return -1; } if (first) { tree type = TREE_TYPE (oprnd); dt = dts[i]; if ((dt == vect_constant_def || dt == vect_external_def) && !GET_MODE_SIZE (vinfo->vector_mode).is_constant () && (TREE_CODE (type) == BOOLEAN_TYPE || !can_duplicate_and_interleave_p (vinfo, stmts.length (), type))) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: invalid type of def " "for variable-length SLP %T\n", oprnd); return -1; } /* For the swapping logic below force vect_reduction_def for the reduction op in a SLP reduction group. */ if (!STMT_VINFO_DATA_REF (stmt_info) && REDUC_GROUP_FIRST_ELEMENT (stmt_info) && (int)i == STMT_VINFO_REDUC_IDX (stmt_info) && def_stmt_info) dts[i] = dt = vect_reduction_def; /* Check the types of the definition. */ switch (dt) { case vect_external_def: case vect_constant_def: case vect_internal_def: case vect_reduction_def: case vect_induction_def: case vect_nested_cycle: case vect_first_order_recurrence: break; default: /* FORNOW: Not supported. */ if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: illegal type of def %T\n", oprnd); return -1; } oprnd_info->first_dt = dt; oprnd_info->first_op_type = type; } } if (first) return 0; /* Now match the operand definition types to that of the first stmt. */ for (i = 0; i < number_of_oprnds;) { if (skip_args[i]) { ++i; continue; } oprnd_info = (*oprnds_info)[i]; dt = dts[i]; stmt_vec_info def_stmt_info = oprnd_info->def_stmts[stmt_num]; oprnd = oprnd_info->ops[stmt_num]; tree type = TREE_TYPE (oprnd); if (!types_compatible_p (oprnd_info->first_op_type, type)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different operand types\n"); return 1; } /* Not first stmt of the group, check that the def-stmt/s match the def-stmt/s of the first stmt. Allow different definition types for reduction chains: the first stmt must be a vect_reduction_def (a phi node), and the rest end in the reduction chain. */ if ((!vect_def_types_match (oprnd_info->first_dt, dt) && !(oprnd_info->first_dt == vect_reduction_def && !STMT_VINFO_DATA_REF (stmt_info) && REDUC_GROUP_FIRST_ELEMENT (stmt_info) && def_stmt_info && !STMT_VINFO_DATA_REF (def_stmt_info) && (REDUC_GROUP_FIRST_ELEMENT (def_stmt_info) == REDUC_GROUP_FIRST_ELEMENT (stmt_info)))) || (!STMT_VINFO_DATA_REF (stmt_info) && REDUC_GROUP_FIRST_ELEMENT (stmt_info) && ((!def_stmt_info || STMT_VINFO_DATA_REF (def_stmt_info) || (REDUC_GROUP_FIRST_ELEMENT (def_stmt_info) != REDUC_GROUP_FIRST_ELEMENT (stmt_info))) != (oprnd_info->first_dt != vect_reduction_def)))) { /* Try swapping operands if we got a mismatch. For BB vectorization only in case it will clearly improve things. */ if (i == commutative_op && !swapped && (!is_a (vinfo) || (!vect_def_types_match ((*oprnds_info)[i+1]->first_dt, dts[i+1]) && (vect_def_types_match (oprnd_info->first_dt, dts[i+1]) || vect_def_types_match ((*oprnds_info)[i+1]->first_dt, dts[i]))))) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "trying swapped operands\n"); std::swap (dts[i], dts[i+1]); std::swap ((*oprnds_info)[i]->def_stmts[stmt_num], (*oprnds_info)[i+1]->def_stmts[stmt_num]); std::swap ((*oprnds_info)[i]->ops[stmt_num], (*oprnds_info)[i+1]->ops[stmt_num]); swapped = true; continue; } if (is_a (vinfo) && !oprnd_info->any_pattern) { /* Now for commutative ops we should see whether we can make the other operand matching. */ if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "treating operand as external\n"); oprnd_info->first_dt = dt = vect_external_def; } else { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different types\n"); return 1; } } /* Make sure to demote the overall operand to external. */ if (dt == vect_external_def) oprnd_info->first_dt = vect_external_def; /* For a SLP reduction chain we want to duplicate the reduction to each of the chain members. That gets us a sane SLP graph (still the stmts are not 100% correct wrt the initial values). */ else if ((dt == vect_internal_def || dt == vect_reduction_def) && oprnd_info->first_dt == vect_reduction_def && !STMT_VINFO_DATA_REF (stmt_info) && REDUC_GROUP_FIRST_ELEMENT (stmt_info) && !STMT_VINFO_DATA_REF (def_stmt_info) && (REDUC_GROUP_FIRST_ELEMENT (def_stmt_info) == REDUC_GROUP_FIRST_ELEMENT (stmt_info))) { oprnd_info->def_stmts[stmt_num] = oprnd_info->def_stmts[0]; oprnd_info->ops[stmt_num] = oprnd_info->ops[0]; } ++i; } /* Swap operands. */ if (swapped) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "swapped operands to match def types in %G", stmt_info->stmt); } return 0; } /* Return true if call statements CALL1 and CALL2 are similar enough to be combined into the same SLP group. */ bool compatible_calls_p (gcall *call1, gcall *call2) { unsigned int nargs = gimple_call_num_args (call1); if (nargs != gimple_call_num_args (call2)) return false; if (gimple_call_combined_fn (call1) != gimple_call_combined_fn (call2)) return false; if (gimple_call_internal_p (call1)) { if (!types_compatible_p (TREE_TYPE (gimple_call_lhs (call1)), TREE_TYPE (gimple_call_lhs (call2)))) return false; for (unsigned int i = 0; i < nargs; ++i) if (!types_compatible_p (TREE_TYPE (gimple_call_arg (call1, i)), TREE_TYPE (gimple_call_arg (call2, i)))) return false; } else { if (!operand_equal_p (gimple_call_fn (call1), gimple_call_fn (call2), 0)) return false; if (gimple_call_fntype (call1) != gimple_call_fntype (call2)) return false; } /* Check that any unvectorized arguments are equal. */ if (const int *map = vect_get_operand_map (call1)) { unsigned int nkept = *map++; unsigned int mapi = 0; for (unsigned int i = 0; i < nargs; ++i) if (mapi < nkept && map[mapi] == int (i)) mapi += 1; else if (!operand_equal_p (gimple_call_arg (call1, i), gimple_call_arg (call2, i))) return false; } return true; } /* A subroutine of vect_build_slp_tree for checking VECTYPE, which is the caller's attempt to find the vector type in STMT_INFO with the narrowest element type. Return true if VECTYPE is nonnull and if it is valid for STMT_INFO. When returning true, update MAX_NUNITS to reflect the number of units in VECTYPE. GROUP_SIZE and MAX_NUNITS are as for vect_build_slp_tree. */ static bool vect_record_max_nunits (vec_info *vinfo, stmt_vec_info stmt_info, unsigned int group_size, tree vectype, poly_uint64 *max_nunits) { if (!vectype) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: unsupported data-type in %G\n", stmt_info->stmt); /* Fatal mismatch. */ return false; } /* If populating the vector type requires unrolling then fail before adjusting *max_nunits for basic-block vectorization. */ if (is_a (vinfo) && !multiple_p (group_size, TYPE_VECTOR_SUBPARTS (vectype))) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: unrolling required " "in basic block SLP\n"); /* Fatal mismatch. */ return false; } /* In case of multiple types we need to detect the smallest type. */ vect_update_max_nunits (max_nunits, vectype); return true; } /* Verify if the scalar stmts STMTS are isomorphic, require data permutation or are of unsupported types of operation. Return true if they are, otherwise return false and indicate in *MATCHES which stmts are not isomorphic to the first one. If MATCHES[0] is false then this indicates the comparison could not be carried out or the stmts will never be vectorized by SLP. Note COND_EXPR is possibly isomorphic to another one after swapping its operands. Set SWAP[i] to 1 if stmt I is COND_EXPR and isomorphic to the first stmt by swapping the two operands of comparison; set SWAP[i] to 2 if stmt I is isormorphic to the first stmt by inverting the code of comparison. Take A1 >= B1 ? X1 : Y1 as an exmple, it can be swapped to (B1 <= A1 ? X1 : Y1); or be inverted to (A1 < B1) ? Y1 : X1. */ static bool vect_build_slp_tree_1 (vec_info *vinfo, unsigned char *swap, vec stmts, unsigned int group_size, poly_uint64 *max_nunits, bool *matches, bool *two_operators, tree *node_vectype) { unsigned int i; stmt_vec_info first_stmt_info = stmts[0]; code_helper first_stmt_code = ERROR_MARK; code_helper alt_stmt_code = ERROR_MARK; code_helper rhs_code = ERROR_MARK; code_helper first_cond_code = ERROR_MARK; tree lhs; bool need_same_oprnds = false; tree vectype = NULL_TREE, first_op1 = NULL_TREE; stmt_vec_info first_load = NULL, prev_first_load = NULL; bool first_stmt_load_p = false, load_p = false; bool first_stmt_phi_p = false, phi_p = false; bool maybe_soft_fail = false; tree soft_fail_nunits_vectype = NULL_TREE; /* For every stmt in NODE find its def stmt/s. */ stmt_vec_info stmt_info; FOR_EACH_VEC_ELT (stmts, i, stmt_info) { gimple *stmt = stmt_info->stmt; swap[i] = 0; matches[i] = false; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Build SLP for %G", stmt); /* Fail to vectorize statements marked as unvectorizable, throw or are volatile. */ if (!STMT_VINFO_VECTORIZABLE (stmt_info) || stmt_can_throw_internal (cfun, stmt) || gimple_has_volatile_ops (stmt)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: unvectorizable statement %G", stmt); /* ??? For BB vectorization we want to commutate operands in a way to shuffle all unvectorizable defs into one operand and have the other still vectorized. The following doesn't reliably work for this though but it's the easiest we can do here. */ if (is_a (vinfo) && i != 0) continue; /* Fatal mismatch. */ matches[0] = false; return false; } lhs = gimple_get_lhs (stmt); if (lhs == NULL_TREE) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: not GIMPLE_ASSIGN nor " "GIMPLE_CALL %G", stmt); if (is_a (vinfo) && i != 0) continue; /* Fatal mismatch. */ matches[0] = false; return false; } tree nunits_vectype; if (!vect_get_vector_types_for_stmt (vinfo, stmt_info, &vectype, &nunits_vectype, group_size)) { if (is_a (vinfo) && i != 0) continue; /* Fatal mismatch. */ matches[0] = false; return false; } /* Record nunits required but continue analysis, producing matches[] as if nunits was not an issue. This allows splitting of groups to happen. */ if (nunits_vectype && !vect_record_max_nunits (vinfo, stmt_info, group_size, nunits_vectype, max_nunits)) { gcc_assert (is_a (vinfo)); maybe_soft_fail = true; soft_fail_nunits_vectype = nunits_vectype; } gcc_assert (vectype); gcall *call_stmt = dyn_cast (stmt); if (call_stmt) { combined_fn cfn = gimple_call_combined_fn (call_stmt); if (cfn != CFN_LAST) rhs_code = cfn; else rhs_code = CALL_EXPR; if (cfn == CFN_MASK_LOAD || cfn == CFN_GATHER_LOAD || cfn == CFN_MASK_GATHER_LOAD) load_p = true; else if ((internal_fn_p (cfn) && !vectorizable_internal_fn_p (as_internal_fn (cfn))) || gimple_call_tail_p (call_stmt) || gimple_call_noreturn_p (call_stmt) || gimple_call_chain (call_stmt)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: unsupported call type %G", (gimple *) call_stmt); if (is_a (vinfo) && i != 0) continue; /* Fatal mismatch. */ matches[0] = false; return false; } } else if (gimple_code (stmt) == GIMPLE_PHI) { rhs_code = ERROR_MARK; phi_p = true; } else { rhs_code = gimple_assign_rhs_code (stmt); load_p = gimple_vuse (stmt); } /* Check the operation. */ if (i == 0) { *node_vectype = vectype; first_stmt_code = rhs_code; first_stmt_load_p = load_p; first_stmt_phi_p = phi_p; /* Shift arguments should be equal in all the packed stmts for a vector shift with scalar shift operand. */ if (rhs_code == LSHIFT_EXPR || rhs_code == RSHIFT_EXPR || rhs_code == LROTATE_EXPR || rhs_code == RROTATE_EXPR) { /* First see if we have a vector/vector shift. */ if (!directly_supported_p (rhs_code, vectype, optab_vector)) { /* No vector/vector shift, try for a vector/scalar shift. */ if (!directly_supported_p (rhs_code, vectype, optab_scalar)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: " "op not supported by target.\n"); if (is_a (vinfo) && i != 0) continue; /* Fatal mismatch. */ matches[0] = false; return false; } need_same_oprnds = true; first_op1 = gimple_assign_rhs2 (stmt); } } else if (rhs_code == WIDEN_LSHIFT_EXPR) { need_same_oprnds = true; first_op1 = gimple_assign_rhs2 (stmt); } else if (!load_p && rhs_code == BIT_FIELD_REF) { tree vec = TREE_OPERAND (gimple_assign_rhs1 (stmt), 0); if (!is_a (vinfo) || TREE_CODE (vec) != SSA_NAME /* When the element types are not compatible we pun the source to the target vectype which requires equal size. */ || ((!VECTOR_TYPE_P (TREE_TYPE (vec)) || !types_compatible_p (TREE_TYPE (vectype), TREE_TYPE (TREE_TYPE (vec)))) && !operand_equal_p (TYPE_SIZE (vectype), TYPE_SIZE (TREE_TYPE (vec))))) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: " "BIT_FIELD_REF not supported\n"); /* Fatal mismatch. */ matches[0] = false; return false; } } else if (rhs_code == CFN_DIV_POW2) { need_same_oprnds = true; first_op1 = gimple_call_arg (call_stmt, 1); } } else { if (first_stmt_code != rhs_code && alt_stmt_code == ERROR_MARK) alt_stmt_code = rhs_code; if ((first_stmt_code != rhs_code && (first_stmt_code != IMAGPART_EXPR || rhs_code != REALPART_EXPR) && (first_stmt_code != REALPART_EXPR || rhs_code != IMAGPART_EXPR) /* Handle mismatches in plus/minus by computing both and merging the results. */ && !((first_stmt_code == PLUS_EXPR || first_stmt_code == MINUS_EXPR) && (alt_stmt_code == PLUS_EXPR || alt_stmt_code == MINUS_EXPR) && rhs_code == alt_stmt_code) && !(first_stmt_code.is_tree_code () && rhs_code.is_tree_code () && (TREE_CODE_CLASS (tree_code (first_stmt_code)) == tcc_comparison) && (swap_tree_comparison (tree_code (first_stmt_code)) == tree_code (rhs_code))) && !(STMT_VINFO_GROUPED_ACCESS (stmt_info) && (first_stmt_code == ARRAY_REF || first_stmt_code == BIT_FIELD_REF || first_stmt_code == INDIRECT_REF || first_stmt_code == COMPONENT_REF || first_stmt_code == MEM_REF) && (rhs_code == ARRAY_REF || rhs_code == BIT_FIELD_REF || rhs_code == INDIRECT_REF || rhs_code == COMPONENT_REF || rhs_code == MEM_REF))) || first_stmt_load_p != load_p || first_stmt_phi_p != phi_p) { if (dump_enabled_p ()) { dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different operation " "in stmt %G", stmt); dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "original stmt %G", first_stmt_info->stmt); } /* Mismatch. */ continue; } if (!load_p && first_stmt_code == BIT_FIELD_REF && (TREE_OPERAND (gimple_assign_rhs1 (first_stmt_info->stmt), 0) != TREE_OPERAND (gimple_assign_rhs1 (stmt_info->stmt), 0))) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different BIT_FIELD_REF " "arguments in %G", stmt); /* Mismatch. */ continue; } if (call_stmt && first_stmt_code != CFN_MASK_LOAD) { if (!compatible_calls_p (as_a (stmts[0]->stmt), call_stmt)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different calls in %G", stmt); /* Mismatch. */ continue; } } if ((phi_p || gimple_could_trap_p (stmt_info->stmt)) && (gimple_bb (first_stmt_info->stmt) != gimple_bb (stmt_info->stmt))) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different BB for PHI " "or possibly trapping operation in %G", stmt); /* Mismatch. */ continue; } if (need_same_oprnds) { tree other_op1 = gimple_arg (stmt, 1); if (!operand_equal_p (first_op1, other_op1, 0)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different shift " "arguments in %G", stmt); /* Mismatch. */ continue; } } if (!types_compatible_p (vectype, *node_vectype)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different vector type " "in %G", stmt); /* Mismatch. */ continue; } } /* Grouped store or load. */ if (STMT_VINFO_GROUPED_ACCESS (stmt_info)) { if (REFERENCE_CLASS_P (lhs)) { /* Store. */ ; } else { /* Load. */ first_load = DR_GROUP_FIRST_ELEMENT (stmt_info); if (prev_first_load) { /* Check that there are no loads from different interleaving chains in the same node. */ if (prev_first_load != first_load) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different " "interleaving chains in one node %G", stmt); /* Mismatch. */ continue; } } else prev_first_load = first_load; } } /* Grouped access. */ else { if (load_p && rhs_code != CFN_GATHER_LOAD && rhs_code != CFN_MASK_GATHER_LOAD) { /* Not grouped load. */ if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: not grouped load %G", stmt); /* FORNOW: Not grouped loads are not supported. */ if (is_a (vinfo) && i != 0) continue; /* Fatal mismatch. */ matches[0] = false; return false; } /* Not memory operation. */ if (!phi_p && rhs_code.is_tree_code () && TREE_CODE_CLASS (tree_code (rhs_code)) != tcc_binary && TREE_CODE_CLASS (tree_code (rhs_code)) != tcc_unary && TREE_CODE_CLASS (tree_code (rhs_code)) != tcc_expression && TREE_CODE_CLASS (tree_code (rhs_code)) != tcc_comparison && rhs_code != VIEW_CONVERT_EXPR && rhs_code != CALL_EXPR && rhs_code != BIT_FIELD_REF) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: operation unsupported %G", stmt); if (is_a (vinfo) && i != 0) continue; /* Fatal mismatch. */ matches[0] = false; return false; } if (rhs_code == COND_EXPR) { tree cond_expr = gimple_assign_rhs1 (stmt); enum tree_code cond_code = TREE_CODE (cond_expr); enum tree_code swap_code = ERROR_MARK; enum tree_code invert_code = ERROR_MARK; if (i == 0) first_cond_code = TREE_CODE (cond_expr); else if (TREE_CODE_CLASS (cond_code) == tcc_comparison) { bool honor_nans = HONOR_NANS (TREE_OPERAND (cond_expr, 0)); swap_code = swap_tree_comparison (cond_code); invert_code = invert_tree_comparison (cond_code, honor_nans); } if (first_cond_code == cond_code) ; /* Isomorphic can be achieved by swapping. */ else if (first_cond_code == swap_code) swap[i] = 1; /* Isomorphic can be achieved by inverting. */ else if (first_cond_code == invert_code) swap[i] = 2; else { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: different" " operation %G", stmt); /* Mismatch. */ continue; } } if (rhs_code.is_tree_code () && TREE_CODE_CLASS ((tree_code)rhs_code) == tcc_comparison && (swap_tree_comparison ((tree_code)first_stmt_code) == (tree_code)rhs_code)) swap[i] = 1; } matches[i] = true; } for (i = 0; i < group_size; ++i) if (!matches[i]) return false; /* If we allowed a two-operation SLP node verify the target can cope with the permute we are going to use. */ if (alt_stmt_code != ERROR_MARK && (!alt_stmt_code.is_tree_code () || (TREE_CODE_CLASS (tree_code (alt_stmt_code)) != tcc_reference && TREE_CODE_CLASS (tree_code (alt_stmt_code)) != tcc_comparison))) { *two_operators = true; } if (maybe_soft_fail) { unsigned HOST_WIDE_INT const_nunits; if (!TYPE_VECTOR_SUBPARTS (soft_fail_nunits_vectype).is_constant (&const_nunits) || const_nunits > group_size) matches[0] = false; else { /* With constant vector elements simulate a mismatch at the point we need to split. */ unsigned tail = group_size & (const_nunits - 1); memset (&matches[group_size - tail], 0, sizeof (bool) * tail); } return false; } return true; } /* Traits for the hash_set to record failed SLP builds for a stmt set. Note we never remove apart from at destruction time so we do not need a special value for deleted that differs from empty. */ struct bst_traits { typedef vec value_type; typedef vec compare_type; static inline hashval_t hash (value_type); static inline bool equal (value_type existing, value_type candidate); static inline bool is_empty (value_type x) { return !x.exists (); } static inline bool is_deleted (value_type x) { return !x.exists (); } static const bool empty_zero_p = true; static inline void mark_empty (value_type &x) { x.release (); } static inline void mark_deleted (value_type &x) { x.release (); } static inline void remove (value_type &x) { x.release (); } }; inline hashval_t bst_traits::hash (value_type x) { inchash::hash h; for (unsigned i = 0; i < x.length (); ++i) h.add_int (gimple_uid (x[i]->stmt)); return h.end (); } inline bool bst_traits::equal (value_type existing, value_type candidate) { if (existing.length () != candidate.length ()) return false; for (unsigned i = 0; i < existing.length (); ++i) if (existing[i] != candidate[i]) return false; return true; } /* ??? This was std::pair, tree> but then vec::insert does memmove and that's not compatible with std::pair. */ struct chain_op_t { chain_op_t (tree_code code_, vect_def_type dt_, tree op_) : code (code_), dt (dt_), op (op_) {} tree_code code; vect_def_type dt; tree op; }; /* Comparator for sorting associatable chains. */ static int dt_sort_cmp (const void *op1_, const void *op2_, void *) { auto *op1 = (const chain_op_t *) op1_; auto *op2 = (const chain_op_t *) op2_; if (op1->dt != op2->dt) return (int)op1->dt - (int)op2->dt; return (int)op1->code - (int)op2->code; } /* Linearize the associatable expression chain at START with the associatable operation CODE (where PLUS_EXPR also allows MINUS_EXPR), filling CHAIN with the result and using WORKLIST as intermediate storage. CODE_STMT and ALT_CODE_STMT are filled with the first stmt using CODE or MINUS_EXPR. *CHAIN_STMTS if not NULL is filled with all computation stmts, starting with START. */ static void vect_slp_linearize_chain (vec_info *vinfo, vec > &worklist, vec &chain, enum tree_code code, gimple *start, gimple *&code_stmt, gimple *&alt_code_stmt, vec *chain_stmts) { /* For each lane linearize the addition/subtraction (or other uniform associatable operation) expression tree. */ worklist.safe_push (std::make_pair (code, start)); while (!worklist.is_empty ()) { auto entry = worklist.pop (); gassign *stmt = as_a (entry.second); enum tree_code in_code = entry.first; enum tree_code this_code = gimple_assign_rhs_code (stmt); /* Pick some stmts suitable for SLP_TREE_REPRESENTATIVE. */ if (!code_stmt && gimple_assign_rhs_code (stmt) == code) code_stmt = stmt; else if (!alt_code_stmt && gimple_assign_rhs_code (stmt) == MINUS_EXPR) alt_code_stmt = stmt; if (chain_stmts) chain_stmts->safe_push (stmt); for (unsigned opnum = 1; opnum <= 2; ++opnum) { tree op = gimple_op (stmt, opnum); vect_def_type dt; stmt_vec_info def_stmt_info; bool res = vect_is_simple_use (op, vinfo, &dt, &def_stmt_info); gcc_assert (res); if (dt == vect_internal_def && is_pattern_stmt_p (def_stmt_info)) op = gimple_get_lhs (def_stmt_info->stmt); gimple *use_stmt; use_operand_p use_p; if (dt == vect_internal_def && single_imm_use (op, &use_p, &use_stmt) && is_gimple_assign (def_stmt_info->stmt) && (gimple_assign_rhs_code (def_stmt_info->stmt) == code || (code == PLUS_EXPR && (gimple_assign_rhs_code (def_stmt_info->stmt) == MINUS_EXPR)))) { tree_code op_def_code = this_code; if (op_def_code == MINUS_EXPR && opnum == 1) op_def_code = PLUS_EXPR; if (in_code == MINUS_EXPR) op_def_code = op_def_code == PLUS_EXPR ? MINUS_EXPR : PLUS_EXPR; worklist.safe_push (std::make_pair (op_def_code, def_stmt_info->stmt)); } else { tree_code op_def_code = this_code; if (op_def_code == MINUS_EXPR && opnum == 1) op_def_code = PLUS_EXPR; if (in_code == MINUS_EXPR) op_def_code = op_def_code == PLUS_EXPR ? MINUS_EXPR : PLUS_EXPR; chain.safe_push (chain_op_t (op_def_code, dt, op)); } } } } typedef hash_map , slp_tree, simple_hashmap_traits > scalar_stmts_to_slp_tree_map_t; static slp_tree vect_build_slp_tree_2 (vec_info *vinfo, slp_tree node, vec stmts, unsigned int group_size, poly_uint64 *max_nunits, bool *matches, unsigned *limit, unsigned *tree_size, scalar_stmts_to_slp_tree_map_t *bst_map); static slp_tree vect_build_slp_tree (vec_info *vinfo, vec stmts, unsigned int group_size, poly_uint64 *max_nunits, bool *matches, unsigned *limit, unsigned *tree_size, scalar_stmts_to_slp_tree_map_t *bst_map) { if (slp_tree *leader = bst_map->get (stmts)) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "re-using %sSLP tree %p\n", !(*leader)->failed ? "" : "failed ", (void *) *leader); if (!(*leader)->failed) { SLP_TREE_REF_COUNT (*leader)++; vect_update_max_nunits (max_nunits, (*leader)->max_nunits); stmts.release (); return *leader; } memcpy (matches, (*leader)->failed, sizeof (bool) * group_size); return NULL; } /* Seed the bst_map with a stub node to be filled by vect_build_slp_tree_2 so we can pick up backedge destinations during discovery. */ slp_tree res = new _slp_tree; SLP_TREE_DEF_TYPE (res) = vect_internal_def; SLP_TREE_SCALAR_STMTS (res) = stmts; bst_map->put (stmts.copy (), res); if (*limit == 0) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "SLP discovery limit exceeded\n"); /* Mark the node invalid so we can detect those when still in use as backedge destinations. */ SLP_TREE_SCALAR_STMTS (res) = vNULL; SLP_TREE_DEF_TYPE (res) = vect_uninitialized_def; res->failed = XNEWVEC (bool, group_size); memset (res->failed, 0, sizeof (bool) * group_size); memset (matches, 0, sizeof (bool) * group_size); return NULL; } --*limit; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "starting SLP discovery for node %p\n", (void *) res); poly_uint64 this_max_nunits = 1; slp_tree res_ = vect_build_slp_tree_2 (vinfo, res, stmts, group_size, &this_max_nunits, matches, limit, tree_size, bst_map); if (!res_) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "SLP discovery for node %p failed\n", (void *) res); /* Mark the node invalid so we can detect those when still in use as backedge destinations. */ SLP_TREE_SCALAR_STMTS (res) = vNULL; SLP_TREE_DEF_TYPE (res) = vect_uninitialized_def; res->failed = XNEWVEC (bool, group_size); if (flag_checking) { unsigned i; for (i = 0; i < group_size; ++i) if (!matches[i]) break; gcc_assert (i < group_size); } memcpy (res->failed, matches, sizeof (bool) * group_size); } else { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "SLP discovery for node %p succeeded\n", (void *) res); gcc_assert (res_ == res); res->max_nunits = this_max_nunits; vect_update_max_nunits (max_nunits, this_max_nunits); /* Keep a reference for the bst_map use. */ SLP_TREE_REF_COUNT (res)++; } return res_; } /* Helper for building an associated SLP node chain. */ static void vect_slp_build_two_operator_nodes (slp_tree perm, tree vectype, slp_tree op0, slp_tree op1, stmt_vec_info oper1, stmt_vec_info oper2, vec > lperm) { unsigned group_size = SLP_TREE_LANES (op1); slp_tree child1 = new _slp_tree; SLP_TREE_DEF_TYPE (child1) = vect_internal_def; SLP_TREE_VECTYPE (child1) = vectype; SLP_TREE_LANES (child1) = group_size; SLP_TREE_CHILDREN (child1).create (2); SLP_TREE_CHILDREN (child1).quick_push (op0); SLP_TREE_CHILDREN (child1).quick_push (op1); SLP_TREE_REPRESENTATIVE (child1) = oper1; slp_tree child2 = new _slp_tree; SLP_TREE_DEF_TYPE (child2) = vect_internal_def; SLP_TREE_VECTYPE (child2) = vectype; SLP_TREE_LANES (child2) = group_size; SLP_TREE_CHILDREN (child2).create (2); SLP_TREE_CHILDREN (child2).quick_push (op0); SLP_TREE_REF_COUNT (op0)++; SLP_TREE_CHILDREN (child2).quick_push (op1); SLP_TREE_REF_COUNT (op1)++; SLP_TREE_REPRESENTATIVE (child2) = oper2; SLP_TREE_DEF_TYPE (perm) = vect_internal_def; SLP_TREE_CODE (perm) = VEC_PERM_EXPR; SLP_TREE_VECTYPE (perm) = vectype; SLP_TREE_LANES (perm) = group_size; /* ??? We should set this NULL but that's not expected. */ SLP_TREE_REPRESENTATIVE (perm) = oper1; SLP_TREE_LANE_PERMUTATION (perm) = lperm; SLP_TREE_CHILDREN (perm).quick_push (child1); SLP_TREE_CHILDREN (perm).quick_push (child2); } /* Recursively build an SLP tree starting from NODE. Fail (and return a value not equal to zero) if def-stmts are not isomorphic, require data permutation or are of unsupported types of operation. Otherwise, return 0. The value returned is the depth in the SLP tree where a mismatch was found. */ static slp_tree vect_build_slp_tree_2 (vec_info *vinfo, slp_tree node, vec stmts, unsigned int group_size, poly_uint64 *max_nunits, bool *matches, unsigned *limit, unsigned *tree_size, scalar_stmts_to_slp_tree_map_t *bst_map) { unsigned nops, i, this_tree_size = 0; poly_uint64 this_max_nunits = *max_nunits; matches[0] = false; stmt_vec_info stmt_info = stmts[0]; if (!is_a (stmt_info->stmt) && !is_a (stmt_info->stmt) && !is_a (stmt_info->stmt)) return NULL; nops = gimple_num_args (stmt_info->stmt); if (const int *map = vect_get_operand_map (stmt_info->stmt)) nops = map[0]; /* If the SLP node is a PHI (induction or reduction), terminate the recursion. */ bool *skip_args = XALLOCAVEC (bool, nops); memset (skip_args, 0, sizeof (bool) * nops); if (loop_vec_info loop_vinfo = dyn_cast (vinfo)) if (gphi *stmt = dyn_cast (stmt_info->stmt)) { tree scalar_type = TREE_TYPE (PHI_RESULT (stmt)); tree vectype = get_vectype_for_scalar_type (vinfo, scalar_type, group_size); if (!vect_record_max_nunits (vinfo, stmt_info, group_size, vectype, max_nunits)) return NULL; vect_def_type def_type = STMT_VINFO_DEF_TYPE (stmt_info); if (def_type == vect_induction_def) { /* Induction PHIs are not cycles but walk the initial value. Only for inner loops through, for outer loops we need to pick up the value from the actual PHIs to more easily support peeling and epilogue vectorization. */ class loop *loop = LOOP_VINFO_LOOP (loop_vinfo); if (!nested_in_vect_loop_p (loop, stmt_info)) skip_args[loop_preheader_edge (loop)->dest_idx] = true; else loop = loop->inner; skip_args[loop_latch_edge (loop)->dest_idx] = true; } else if (def_type == vect_reduction_def || def_type == vect_double_reduction_def || def_type == vect_nested_cycle || def_type == vect_first_order_recurrence) { /* Else def types have to match. */ stmt_vec_info other_info; bool all_same = true; FOR_EACH_VEC_ELT (stmts, i, other_info) { if (STMT_VINFO_DEF_TYPE (other_info) != def_type) return NULL; if (other_info != stmt_info) all_same = false; } class loop *loop = LOOP_VINFO_LOOP (loop_vinfo); /* Reduction initial values are not explicitely represented. */ if (def_type != vect_first_order_recurrence && !nested_in_vect_loop_p (loop, stmt_info)) skip_args[loop_preheader_edge (loop)->dest_idx] = true; /* Reduction chain backedge defs are filled manually. ??? Need a better way to identify a SLP reduction chain PHI. Or a better overall way to SLP match those. */ if (all_same && def_type == vect_reduction_def) skip_args[loop_latch_edge (loop)->dest_idx] = true; } else if (def_type != vect_internal_def) return NULL; } bool two_operators = false; unsigned char *swap = XALLOCAVEC (unsigned char, group_size); tree vectype = NULL_TREE; if (!vect_build_slp_tree_1 (vinfo, swap, stmts, group_size, &this_max_nunits, matches, &two_operators, &vectype)) return NULL; /* If the SLP node is a load, terminate the recursion unless masked. */ if (STMT_VINFO_GROUPED_ACCESS (stmt_info) && DR_IS_READ (STMT_VINFO_DATA_REF (stmt_info))) { if (gcall *stmt = dyn_cast (stmt_info->stmt)) gcc_assert (gimple_call_internal_p (stmt, IFN_MASK_LOAD) || gimple_call_internal_p (stmt, IFN_GATHER_LOAD) || gimple_call_internal_p (stmt, IFN_MASK_GATHER_LOAD)); else { *max_nunits = this_max_nunits; (*tree_size)++; node = vect_create_new_slp_node (node, stmts, 0); SLP_TREE_VECTYPE (node) = vectype; /* And compute the load permutation. Whether it is actually a permutation depends on the unrolling factor which is decided later. */ vec load_permutation; int j; stmt_vec_info load_info; load_permutation.create (group_size); stmt_vec_info first_stmt_info = DR_GROUP_FIRST_ELEMENT (SLP_TREE_SCALAR_STMTS (node)[0]); FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), j, load_info) { int load_place = vect_get_place_in_interleaving_chain (load_info, first_stmt_info); gcc_assert (load_place != -1); load_permutation.safe_push (load_place); } SLP_TREE_LOAD_PERMUTATION (node) = load_permutation; return node; } } else if (gimple_assign_single_p (stmt_info->stmt) && !gimple_vuse (stmt_info->stmt) && gimple_assign_rhs_code (stmt_info->stmt) == BIT_FIELD_REF) { /* vect_build_slp_tree_2 determined all BIT_FIELD_REFs reference the same SSA name vector of a compatible type to vectype. */ vec > lperm = vNULL; tree vec = TREE_OPERAND (gimple_assign_rhs1 (stmt_info->stmt), 0); stmt_vec_info estmt_info; FOR_EACH_VEC_ELT (stmts, i, estmt_info) { gassign *estmt = as_a (estmt_info->stmt); tree bfref = gimple_assign_rhs1 (estmt); HOST_WIDE_INT lane; if (!known_eq (bit_field_size (bfref), tree_to_poly_uint64 (TYPE_SIZE (TREE_TYPE (vectype)))) || !constant_multiple_p (bit_field_offset (bfref), bit_field_size (bfref), &lane)) { lperm.release (); matches[0] = false; return NULL; } lperm.safe_push (std::make_pair (0, (unsigned)lane)); } slp_tree vnode = vect_create_new_slp_node (vNULL); if (operand_equal_p (TYPE_SIZE (vectype), TYPE_SIZE (TREE_TYPE (vec)))) /* ??? We record vectype here but we hide eventually necessary punning and instead rely on code generation to materialize VIEW_CONVERT_EXPRs as necessary. We instead should make this explicit somehow. */ SLP_TREE_VECTYPE (vnode) = vectype; else { /* For different size but compatible elements we can still use VEC_PERM_EXPR without punning. */ gcc_assert (VECTOR_TYPE_P (TREE_TYPE (vec)) && types_compatible_p (TREE_TYPE (vectype), TREE_TYPE (TREE_TYPE (vec)))); SLP_TREE_VECTYPE (vnode) = TREE_TYPE (vec); } auto nunits = TYPE_VECTOR_SUBPARTS (SLP_TREE_VECTYPE (vnode)); unsigned HOST_WIDE_INT const_nunits; if (nunits.is_constant (&const_nunits)) SLP_TREE_LANES (vnode) = const_nunits; SLP_TREE_VEC_DEFS (vnode).safe_push (vec); /* We are always building a permutation node even if it is an identity permute to shield the rest of the vectorizer from the odd node representing an actual vector without any scalar ops. ??? We could hide it completely with making the permute node external? */ node = vect_create_new_slp_node (node, stmts, 1); SLP_TREE_CODE (node) = VEC_PERM_EXPR; SLP_TREE_LANE_PERMUTATION (node) = lperm; SLP_TREE_VECTYPE (node) = vectype; SLP_TREE_CHILDREN (node).quick_push (vnode); return node; } /* When discovery reaches an associatable operation see whether we can improve that to match up lanes in a way superior to the operand swapping code which at most looks at two defs. ??? For BB vectorization we cannot do the brute-force search for matching as we can succeed by means of builds from scalars and have no good way to "cost" one build against another. */ else if (is_a (vinfo) /* ??? We don't handle !vect_internal_def defs below. */ && STMT_VINFO_DEF_TYPE (stmt_info) == vect_internal_def && is_gimple_assign (stmt_info->stmt) && (associative_tree_code (gimple_assign_rhs_code (stmt_info->stmt)) || gimple_assign_rhs_code (stmt_info->stmt) == MINUS_EXPR) && ((FLOAT_TYPE_P (vectype) && flag_associative_math) || (INTEGRAL_TYPE_P (TREE_TYPE (vectype)) && TYPE_OVERFLOW_WRAPS (TREE_TYPE (vectype))))) { /* See if we have a chain of (mixed) adds or subtracts or other associatable ops. */ enum tree_code code = gimple_assign_rhs_code (stmt_info->stmt); if (code == MINUS_EXPR) code = PLUS_EXPR; stmt_vec_info other_op_stmt_info = NULL; stmt_vec_info op_stmt_info = NULL; unsigned chain_len = 0; auto_vec chain; auto_vec > worklist; auto_vec > chains (group_size); auto_vec children; bool hard_fail = true; for (unsigned lane = 0; lane < group_size; ++lane) { /* For each lane linearize the addition/subtraction (or other uniform associatable operation) expression tree. */ gimple *op_stmt = NULL, *other_op_stmt = NULL; vect_slp_linearize_chain (vinfo, worklist, chain, code, stmts[lane]->stmt, op_stmt, other_op_stmt, NULL); if (!op_stmt_info && op_stmt) op_stmt_info = vinfo->lookup_stmt (op_stmt); if (!other_op_stmt_info && other_op_stmt) other_op_stmt_info = vinfo->lookup_stmt (other_op_stmt); if (chain.length () == 2) { /* In a chain of just two elements resort to the regular operand swapping scheme. If we run into a length mismatch still hard-FAIL. */ if (chain_len == 0) hard_fail = false; else { matches[lane] = false; /* ??? We might want to process the other lanes, but make sure to not give false matching hints to the caller for lanes we did not process. */ if (lane != group_size - 1) matches[0] = false; } break; } else if (chain_len == 0) chain_len = chain.length (); else if (chain.length () != chain_len) { /* ??? Here we could slip in magic to compensate with neutral operands. */ matches[lane] = false; if (lane != group_size - 1) matches[0] = false; break; } chains.quick_push (chain.copy ()); chain.truncate (0); } if (chains.length () == group_size) { /* We cannot yet use SLP_TREE_CODE to communicate the operation. */ if (!op_stmt_info) { hard_fail = false; goto out; } /* Now we have a set of chains with the same length. */ /* 1. pre-sort according to def_type and operation. */ for (unsigned lane = 0; lane < group_size; ++lane) chains[lane].stablesort (dt_sort_cmp, vinfo); if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "pre-sorted chains of %s\n", get_tree_code_name (code)); for (unsigned lane = 0; lane < group_size; ++lane) { for (unsigned opnum = 0; opnum < chain_len; ++opnum) dump_printf (MSG_NOTE, "%s %T ", get_tree_code_name (chains[lane][opnum].code), chains[lane][opnum].op); dump_printf (MSG_NOTE, "\n"); } } /* 2. try to build children nodes, associating as necessary. */ for (unsigned n = 0; n < chain_len; ++n) { vect_def_type dt = chains[0][n].dt; unsigned lane; for (lane = 0; lane < group_size; ++lane) if (chains[lane][n].dt != dt) { if (dt == vect_constant_def && chains[lane][n].dt == vect_external_def) dt = vect_external_def; else if (dt == vect_external_def && chains[lane][n].dt == vect_constant_def) ; else break; } if (lane != group_size) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "giving up on chain due to mismatched " "def types\n"); matches[lane] = false; if (lane != group_size - 1) matches[0] = false; goto out; } if (dt == vect_constant_def || dt == vect_external_def) { /* Check whether we can build the invariant. If we can't we never will be able to. */ tree type = TREE_TYPE (chains[0][n].op); if (!GET_MODE_SIZE (vinfo->vector_mode).is_constant () && (TREE_CODE (type) == BOOLEAN_TYPE || !can_duplicate_and_interleave_p (vinfo, group_size, type))) { matches[0] = false; goto out; } vec ops; ops.create (group_size); for (lane = 0; lane < group_size; ++lane) ops.quick_push (chains[lane][n].op); slp_tree child = vect_create_new_slp_node (ops); SLP_TREE_DEF_TYPE (child) = dt; children.safe_push (child); } else if (dt != vect_internal_def) { /* Not sure, we might need sth special. gcc.dg/vect/pr96854.c, gfortran.dg/vect/fast-math-pr37021.f90 and gfortran.dg/vect/pr61171.f trigger. */ /* Soft-fail for now. */ hard_fail = false; goto out; } else { vec op_stmts; op_stmts.create (group_size); slp_tree child = NULL; /* Brute-force our way. We have to consider a lane failing after fixing an earlier fail up in the SLP discovery recursion. So track the current permute per lane. */ unsigned *perms = XALLOCAVEC (unsigned, group_size); memset (perms, 0, sizeof (unsigned) * group_size); do { op_stmts.truncate (0); for (lane = 0; lane < group_size; ++lane) op_stmts.quick_push (vinfo->lookup_def (chains[lane][n].op)); child = vect_build_slp_tree (vinfo, op_stmts, group_size, &this_max_nunits, matches, limit, &this_tree_size, bst_map); /* ??? We're likely getting too many fatal mismatches here so maybe we want to ignore them (but then we have no idea which lanes fatally mismatched). */ if (child || !matches[0]) break; /* Swap another lane we have not yet matched up into lanes that did not match. If we run out of permute possibilities for a lane terminate the search. */ bool term = false; for (lane = 1; lane < group_size; ++lane) if (!matches[lane]) { if (n + perms[lane] + 1 == chain_len) { term = true; break; } std::swap (chains[lane][n], chains[lane][n + perms[lane] + 1]); perms[lane]++; } if (term) break; } while (1); if (!child) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "failed to match up op %d\n", n); op_stmts.release (); if (lane != group_size - 1) matches[0] = false; else matches[lane] = false; goto out; } if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "matched up op %d to\n", n); vect_print_slp_tree (MSG_NOTE, vect_location, child); } children.safe_push (child); } } /* 3. build SLP nodes to combine the chain. */ for (unsigned lane = 0; lane < group_size; ++lane) if (chains[lane][0].code != code) { /* See if there's any alternate all-PLUS entry. */ unsigned n; for (n = 1; n < chain_len; ++n) { for (lane = 0; lane < group_size; ++lane) if (chains[lane][n].code != code) break; if (lane == group_size) break; } if (n != chain_len) { /* Swap that in at first position. */ std::swap (children[0], children[n]); for (lane = 0; lane < group_size; ++lane) std::swap (chains[lane][0], chains[lane][n]); } else { /* ??? When this triggers and we end up with two vect_constant/external_def up-front things break (ICE) spectacularly finding an insertion place for the all-constant op. We should have a fully vect_internal_def operand though(?) so we can swap that into first place and then prepend the all-zero constant. */ if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "inserting constant zero to compensate " "for (partially) negated first " "operand\n"); chain_len++; for (lane = 0; lane < group_size; ++lane) chains[lane].safe_insert (0, chain_op_t (code, vect_constant_def, NULL_TREE)); vec zero_ops; zero_ops.create (group_size); zero_ops.quick_push (build_zero_cst (TREE_TYPE (vectype))); for (lane = 1; lane < group_size; ++lane) zero_ops.quick_push (zero_ops[0]); slp_tree zero = vect_create_new_slp_node (zero_ops); SLP_TREE_DEF_TYPE (zero) = vect_constant_def; children.safe_insert (0, zero); } break; } for (unsigned i = 1; i < children.length (); ++i) { slp_tree op0 = children[i - 1]; slp_tree op1 = children[i]; bool this_two_op = false; for (unsigned lane = 0; lane < group_size; ++lane) if (chains[lane][i].code != chains[0][i].code) { this_two_op = true; break; } slp_tree child; if (i == children.length () - 1) child = vect_create_new_slp_node (node, stmts, 2); else child = vect_create_new_slp_node (2, ERROR_MARK); if (this_two_op) { vec > lperm; lperm.create (group_size); for (unsigned lane = 0; lane < group_size; ++lane) lperm.quick_push (std::make_pair (chains[lane][i].code != chains[0][i].code, lane)); vect_slp_build_two_operator_nodes (child, vectype, op0, op1, (chains[0][i].code == code ? op_stmt_info : other_op_stmt_info), (chains[0][i].code == code ? other_op_stmt_info : op_stmt_info), lperm); } else { SLP_TREE_DEF_TYPE (child) = vect_internal_def; SLP_TREE_VECTYPE (child) = vectype; SLP_TREE_LANES (child) = group_size; SLP_TREE_CHILDREN (child).quick_push (op0); SLP_TREE_CHILDREN (child).quick_push (op1); SLP_TREE_REPRESENTATIVE (child) = (chains[0][i].code == code ? op_stmt_info : other_op_stmt_info); } children[i] = child; } *tree_size += this_tree_size + 1; *max_nunits = this_max_nunits; while (!chains.is_empty ()) chains.pop ().release (); return node; } out: while (!children.is_empty ()) vect_free_slp_tree (children.pop ()); while (!chains.is_empty ()) chains.pop ().release (); /* Hard-fail, otherwise we might run into quadratic processing of the chains starting one stmt into the chain again. */ if (hard_fail) return NULL; /* Fall thru to normal processing. */ } /* Get at the operands, verifying they are compatible. */ vec oprnds_info = vect_create_oprnd_info (nops, group_size); slp_oprnd_info oprnd_info; FOR_EACH_VEC_ELT (stmts, i, stmt_info) { int res = vect_get_and_check_slp_defs (vinfo, swap[i], skip_args, stmts, i, &oprnds_info); if (res != 0) matches[(res == -1) ? 0 : i] = false; if (!matches[0]) break; } for (i = 0; i < group_size; ++i) if (!matches[i]) { vect_free_oprnd_info (oprnds_info); return NULL; } swap = NULL; auto_vec children; stmt_info = stmts[0]; /* Create SLP_TREE nodes for the definition node/s. */ FOR_EACH_VEC_ELT (oprnds_info, i, oprnd_info) { slp_tree child; unsigned int j; /* We're skipping certain operands from processing, for example outer loop reduction initial defs. */ if (skip_args[i]) { children.safe_push (NULL); continue; } if (oprnd_info->first_dt == vect_uninitialized_def) { /* COND_EXPR have one too many eventually if the condition is a SSA name. */ gcc_assert (i == 3 && nops == 4); continue; } if (is_a (vinfo) && oprnd_info->first_dt == vect_internal_def && !oprnd_info->any_pattern) { /* For BB vectorization, if all defs are the same do not bother to continue the build along the single-lane graph but use a splat of the scalar value. */ stmt_vec_info first_def = oprnd_info->def_stmts[0]; for (j = 1; j < group_size; ++j) if (oprnd_info->def_stmts[j] != first_def) break; if (j == group_size /* But avoid doing this for loads where we may be able to CSE things, unless the stmt is not vectorizable. */ && (!STMT_VINFO_VECTORIZABLE (first_def) || !gimple_vuse (first_def->stmt))) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Using a splat of the uniform operand %G", first_def->stmt); oprnd_info->first_dt = vect_external_def; } } if (oprnd_info->first_dt == vect_external_def || oprnd_info->first_dt == vect_constant_def) { slp_tree invnode = vect_create_new_slp_node (oprnd_info->ops); SLP_TREE_DEF_TYPE (invnode) = oprnd_info->first_dt; oprnd_info->ops = vNULL; children.safe_push (invnode); continue; } if ((child = vect_build_slp_tree (vinfo, oprnd_info->def_stmts, group_size, &this_max_nunits, matches, limit, &this_tree_size, bst_map)) != NULL) { oprnd_info->def_stmts = vNULL; children.safe_push (child); continue; } /* If the SLP build for operand zero failed and operand zero and one can be commutated try that for the scalar stmts that failed the match. */ if (i == 0 /* A first scalar stmt mismatch signals a fatal mismatch. */ && matches[0] /* ??? For COND_EXPRs we can swap the comparison operands as well as the arms under some constraints. */ && nops == 2 && oprnds_info[1]->first_dt == vect_internal_def && is_gimple_assign (stmt_info->stmt) /* Swapping operands for reductions breaks assumptions later on. */ && STMT_VINFO_DEF_TYPE (stmt_info) != vect_reduction_def && STMT_VINFO_DEF_TYPE (stmt_info) != vect_double_reduction_def) { /* See whether we can swap the matching or the non-matching stmt operands. */ bool swap_not_matching = true; do { for (j = 0; j < group_size; ++j) { if (matches[j] != !swap_not_matching) continue; stmt_vec_info stmt_info = stmts[j]; /* Verify if we can swap operands of this stmt. */ gassign *stmt = dyn_cast (stmt_info->stmt); if (!stmt || !commutative_tree_code (gimple_assign_rhs_code (stmt))) { if (!swap_not_matching) goto fail; swap_not_matching = false; break; } } } while (j != group_size); /* Swap mismatched definition stmts. */ if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Re-trying with swapped operands of stmts "); for (j = 0; j < group_size; ++j) if (matches[j] == !swap_not_matching) { std::swap (oprnds_info[0]->def_stmts[j], oprnds_info[1]->def_stmts[j]); std::swap (oprnds_info[0]->ops[j], oprnds_info[1]->ops[j]); if (dump_enabled_p ()) dump_printf (MSG_NOTE, "%d ", j); } if (dump_enabled_p ()) dump_printf (MSG_NOTE, "\n"); /* After swapping some operands we lost track whether an operand has any pattern defs so be conservative here. */ if (oprnds_info[0]->any_pattern || oprnds_info[1]->any_pattern) oprnds_info[0]->any_pattern = oprnds_info[1]->any_pattern = true; /* And try again with scratch 'matches' ... */ bool *tem = XALLOCAVEC (bool, group_size); if ((child = vect_build_slp_tree (vinfo, oprnd_info->def_stmts, group_size, &this_max_nunits, tem, limit, &this_tree_size, bst_map)) != NULL) { oprnd_info->def_stmts = vNULL; children.safe_push (child); continue; } } fail: /* If the SLP build failed and we analyze a basic-block simply treat nodes we fail to build as externally defined (and thus build vectors from the scalar defs). The cost model will reject outright expensive cases. ??? This doesn't treat cases where permutation ultimatively fails (or we don't try permutation below). Ideally we'd even compute a permutation that will end up with the maximum SLP tree size... */ if (is_a (vinfo) /* ??? Rejecting patterns this way doesn't work. We'd have to do extra work to cancel the pattern so the uses see the scalar version. */ && !is_pattern_stmt_p (stmt_info) && !oprnd_info->any_pattern) { /* But if there's a leading vector sized set of matching stmts fail here so we can split the group. This matches the condition vect_analyze_slp_instance uses. */ /* ??? We might want to split here and combine the results to support multiple vector sizes better. */ for (j = 0; j < group_size; ++j) if (!matches[j]) break; if (!known_ge (j, TYPE_VECTOR_SUBPARTS (vectype))) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Building vector operands from scalars\n"); this_tree_size++; child = vect_create_new_slp_node (oprnd_info->ops); children.safe_push (child); oprnd_info->ops = vNULL; continue; } } gcc_assert (child == NULL); FOR_EACH_VEC_ELT (children, j, child) if (child) vect_free_slp_tree (child); vect_free_oprnd_info (oprnds_info); return NULL; } vect_free_oprnd_info (oprnds_info); /* If we have all children of a child built up from uniform scalars or does more than one possibly expensive vector construction then just throw that away, causing it built up from scalars. The exception is the SLP node for the vector store. */ if (is_a (vinfo) && !STMT_VINFO_GROUPED_ACCESS (stmt_info) /* ??? Rejecting patterns this way doesn't work. We'd have to do extra work to cancel the pattern so the uses see the scalar version. */ && !is_pattern_stmt_p (stmt_info)) { slp_tree child; unsigned j; bool all_uniform_p = true; unsigned n_vector_builds = 0; FOR_EACH_VEC_ELT (children, j, child) { if (!child) ; else if (SLP_TREE_DEF_TYPE (child) == vect_internal_def) all_uniform_p = false; else if (!vect_slp_tree_uniform_p (child)) { all_uniform_p = false; if (SLP_TREE_DEF_TYPE (child) == vect_external_def) n_vector_builds++; } } if (all_uniform_p || n_vector_builds > 1 || (n_vector_builds == children.length () && is_a (stmt_info->stmt))) { /* Roll back. */ matches[0] = false; FOR_EACH_VEC_ELT (children, j, child) if (child) vect_free_slp_tree (child); if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Building parent vector operands from " "scalars instead\n"); return NULL; } } *tree_size += this_tree_size + 1; *max_nunits = this_max_nunits; if (two_operators) { /* ??? We'd likely want to either cache in bst_map sth like { a+b, NULL, a+b, NULL } and { NULL, a-b, NULL, a-b } or the true { a+b, a+b, a+b, a+b } ... but there we don't have explicit stmts to put in so the keying on 'stmts' doesn't work (but we have the same issue with nodes that use 'ops'). */ slp_tree one = new _slp_tree; slp_tree two = new _slp_tree; SLP_TREE_DEF_TYPE (one) = vect_internal_def; SLP_TREE_DEF_TYPE (two) = vect_internal_def; SLP_TREE_VECTYPE (one) = vectype; SLP_TREE_VECTYPE (two) = vectype; SLP_TREE_CHILDREN (one).safe_splice (children); SLP_TREE_CHILDREN (two).safe_splice (children); slp_tree child; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (two), i, child) SLP_TREE_REF_COUNT (child)++; /* Here we record the original defs since this node represents the final lane configuration. */ node = vect_create_new_slp_node (node, stmts, 2); SLP_TREE_VECTYPE (node) = vectype; SLP_TREE_CODE (node) = VEC_PERM_EXPR; SLP_TREE_CHILDREN (node).quick_push (one); SLP_TREE_CHILDREN (node).quick_push (two); gassign *stmt = as_a (stmts[0]->stmt); enum tree_code code0 = gimple_assign_rhs_code (stmt); enum tree_code ocode = ERROR_MARK; stmt_vec_info ostmt_info; unsigned j = 0; FOR_EACH_VEC_ELT (stmts, i, ostmt_info) { gassign *ostmt = as_a (ostmt_info->stmt); if (gimple_assign_rhs_code (ostmt) != code0) { SLP_TREE_LANE_PERMUTATION (node).safe_push (std::make_pair (1, i)); ocode = gimple_assign_rhs_code (ostmt); j = i; } else SLP_TREE_LANE_PERMUTATION (node).safe_push (std::make_pair (0, i)); } SLP_TREE_CODE (one) = code0; SLP_TREE_CODE (two) = ocode; SLP_TREE_LANES (one) = stmts.length (); SLP_TREE_LANES (two) = stmts.length (); SLP_TREE_REPRESENTATIVE (one) = stmts[0]; SLP_TREE_REPRESENTATIVE (two) = stmts[j]; return node; } node = vect_create_new_slp_node (node, stmts, nops); SLP_TREE_VECTYPE (node) = vectype; SLP_TREE_CHILDREN (node).splice (children); return node; } /* Dump a single SLP tree NODE. */ static void vect_print_slp_tree (dump_flags_t dump_kind, dump_location_t loc, slp_tree node) { unsigned i, j; slp_tree child; stmt_vec_info stmt_info; tree op; dump_metadata_t metadata (dump_kind, loc.get_impl_location ()); dump_user_location_t user_loc = loc.get_user_location (); dump_printf_loc (metadata, user_loc, "node%s %p (max_nunits=" HOST_WIDE_INT_PRINT_UNSIGNED ", refcnt=%u)", SLP_TREE_DEF_TYPE (node) == vect_external_def ? " (external)" : (SLP_TREE_DEF_TYPE (node) == vect_constant_def ? " (constant)" : ""), (void *) node, estimated_poly_value (node->max_nunits), SLP_TREE_REF_COUNT (node)); if (SLP_TREE_VECTYPE (node)) dump_printf (metadata, " %T", SLP_TREE_VECTYPE (node)); dump_printf (metadata, "\n"); if (SLP_TREE_DEF_TYPE (node) == vect_internal_def) { if (SLP_TREE_CODE (node) == VEC_PERM_EXPR) dump_printf_loc (metadata, user_loc, "op: VEC_PERM_EXPR\n"); else dump_printf_loc (metadata, user_loc, "op template: %G", SLP_TREE_REPRESENTATIVE (node)->stmt); } if (SLP_TREE_SCALAR_STMTS (node).exists ()) FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) dump_printf_loc (metadata, user_loc, "\tstmt %u %G", i, stmt_info->stmt); else { dump_printf_loc (metadata, user_loc, "\t{ "); FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_OPS (node), i, op) dump_printf (metadata, "%T%s ", op, i < SLP_TREE_SCALAR_OPS (node).length () - 1 ? "," : ""); dump_printf (metadata, "}\n"); } if (SLP_TREE_LOAD_PERMUTATION (node).exists ()) { dump_printf_loc (metadata, user_loc, "\tload permutation {"); FOR_EACH_VEC_ELT (SLP_TREE_LOAD_PERMUTATION (node), i, j) dump_printf (dump_kind, " %u", j); dump_printf (dump_kind, " }\n"); } if (SLP_TREE_LANE_PERMUTATION (node).exists ()) { dump_printf_loc (metadata, user_loc, "\tlane permutation {"); for (i = 0; i < SLP_TREE_LANE_PERMUTATION (node).length (); ++i) dump_printf (dump_kind, " %u[%u]", SLP_TREE_LANE_PERMUTATION (node)[i].first, SLP_TREE_LANE_PERMUTATION (node)[i].second); dump_printf (dump_kind, " }\n"); } if (SLP_TREE_CHILDREN (node).is_empty ()) return; dump_printf_loc (metadata, user_loc, "\tchildren"); FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) dump_printf (dump_kind, " %p", (void *)child); dump_printf (dump_kind, "\n"); } DEBUG_FUNCTION void debug (slp_tree node) { debug_dump_context ctx; vect_print_slp_tree (MSG_NOTE, dump_location_t::from_location_t (UNKNOWN_LOCATION), node); } /* Recursive helper for the dot producer below. */ static void dot_slp_tree (FILE *f, slp_tree node, hash_set &visited) { if (visited.add (node)) return; fprintf (f, "\"%p\" [label=\"", (void *)node); vect_print_slp_tree (MSG_NOTE, dump_location_t::from_location_t (UNKNOWN_LOCATION), node); fprintf (f, "\"];\n"); for (slp_tree child : SLP_TREE_CHILDREN (node)) fprintf (f, "\"%p\" -> \"%p\";", (void *)node, (void *)child); for (slp_tree child : SLP_TREE_CHILDREN (node)) if (child) dot_slp_tree (f, child, visited); } DEBUG_FUNCTION void dot_slp_tree (const char *fname, slp_tree node) { FILE *f = fopen (fname, "w"); fprintf (f, "digraph {\n"); fflush (f); { debug_dump_context ctx (f); hash_set visited; dot_slp_tree (f, node, visited); } fflush (f); fprintf (f, "}\n"); fclose (f); } /* Dump a slp tree NODE using flags specified in DUMP_KIND. */ static void vect_print_slp_graph (dump_flags_t dump_kind, dump_location_t loc, slp_tree node, hash_set &visited) { unsigned i; slp_tree child; if (visited.add (node)) return; vect_print_slp_tree (dump_kind, loc, node); FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child) vect_print_slp_graph (dump_kind, loc, child, visited); } static void vect_print_slp_graph (dump_flags_t dump_kind, dump_location_t loc, slp_tree entry) { hash_set visited; vect_print_slp_graph (dump_kind, loc, entry, visited); } /* Mark the tree rooted at NODE with PURE_SLP. */ static void vect_mark_slp_stmts (slp_tree node, hash_set &visited) { int i; stmt_vec_info stmt_info; slp_tree child; if (SLP_TREE_DEF_TYPE (node) != vect_internal_def) return; if (visited.add (node)) return; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) STMT_SLP_TYPE (stmt_info) = pure_slp; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child) vect_mark_slp_stmts (child, visited); } static void vect_mark_slp_stmts (slp_tree node) { hash_set visited; vect_mark_slp_stmts (node, visited); } /* Mark the statements of the tree rooted at NODE as relevant (vect_used). */ static void vect_mark_slp_stmts_relevant (slp_tree node, hash_set &visited) { int i; stmt_vec_info stmt_info; slp_tree child; if (SLP_TREE_DEF_TYPE (node) != vect_internal_def) return; if (visited.add (node)) return; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) { gcc_assert (!STMT_VINFO_RELEVANT (stmt_info) || STMT_VINFO_RELEVANT (stmt_info) == vect_used_in_scope); STMT_VINFO_RELEVANT (stmt_info) = vect_used_in_scope; } FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child) vect_mark_slp_stmts_relevant (child, visited); } static void vect_mark_slp_stmts_relevant (slp_tree node) { hash_set visited; vect_mark_slp_stmts_relevant (node, visited); } /* Gather loads in the SLP graph NODE and populate the INST loads array. */ static void vect_gather_slp_loads (vec &loads, slp_tree node, hash_set &visited) { if (!node || visited.add (node)) return; if (SLP_TREE_CHILDREN (node).length () == 0) { if (SLP_TREE_DEF_TYPE (node) != vect_internal_def) return; stmt_vec_info stmt_info = SLP_TREE_SCALAR_STMTS (node)[0]; if (STMT_VINFO_GROUPED_ACCESS (stmt_info) && DR_IS_READ (STMT_VINFO_DATA_REF (stmt_info))) loads.safe_push (node); } else { unsigned i; slp_tree child; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) vect_gather_slp_loads (loads, child, visited); } } /* Find the last store in SLP INSTANCE. */ stmt_vec_info vect_find_last_scalar_stmt_in_slp (slp_tree node) { stmt_vec_info last = NULL; stmt_vec_info stmt_vinfo; for (int i = 0; SLP_TREE_SCALAR_STMTS (node).iterate (i, &stmt_vinfo); i++) { stmt_vinfo = vect_orig_stmt (stmt_vinfo); last = last ? get_later_stmt (stmt_vinfo, last) : stmt_vinfo; } return last; } /* Find the first stmt in NODE. */ stmt_vec_info vect_find_first_scalar_stmt_in_slp (slp_tree node) { stmt_vec_info first = NULL; stmt_vec_info stmt_vinfo; for (int i = 0; SLP_TREE_SCALAR_STMTS (node).iterate (i, &stmt_vinfo); i++) { stmt_vinfo = vect_orig_stmt (stmt_vinfo); if (!first || get_later_stmt (stmt_vinfo, first) == first) first = stmt_vinfo; } return first; } /* Splits a group of stores, currently beginning at FIRST_VINFO, into two groups: one (still beginning at FIRST_VINFO) of size GROUP1_SIZE (also containing the first GROUP1_SIZE stmts, since stores are consecutive), the second containing the remainder. Return the first stmt in the second group. */ static stmt_vec_info vect_split_slp_store_group (stmt_vec_info first_vinfo, unsigned group1_size) { gcc_assert (DR_GROUP_FIRST_ELEMENT (first_vinfo) == first_vinfo); gcc_assert (group1_size > 0); int group2_size = DR_GROUP_SIZE (first_vinfo) - group1_size; gcc_assert (group2_size > 0); DR_GROUP_SIZE (first_vinfo) = group1_size; stmt_vec_info stmt_info = first_vinfo; for (unsigned i = group1_size; i > 1; i--) { stmt_info = DR_GROUP_NEXT_ELEMENT (stmt_info); gcc_assert (DR_GROUP_GAP (stmt_info) == 1); } /* STMT is now the last element of the first group. */ stmt_vec_info group2 = DR_GROUP_NEXT_ELEMENT (stmt_info); DR_GROUP_NEXT_ELEMENT (stmt_info) = 0; DR_GROUP_SIZE (group2) = group2_size; for (stmt_info = group2; stmt_info; stmt_info = DR_GROUP_NEXT_ELEMENT (stmt_info)) { DR_GROUP_FIRST_ELEMENT (stmt_info) = group2; gcc_assert (DR_GROUP_GAP (stmt_info) == 1); } /* For the second group, the DR_GROUP_GAP is that before the original group, plus skipping over the first vector. */ DR_GROUP_GAP (group2) = DR_GROUP_GAP (first_vinfo) + group1_size; /* DR_GROUP_GAP of the first group now has to skip over the second group too. */ DR_GROUP_GAP (first_vinfo) += group2_size; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Split group into %d and %d\n", group1_size, group2_size); return group2; } /* Calculate the unrolling factor for an SLP instance with GROUP_SIZE statements and a vector of NUNITS elements. */ static poly_uint64 calculate_unrolling_factor (poly_uint64 nunits, unsigned int group_size) { return exact_div (common_multiple (nunits, group_size), group_size); } /* Helper that checks to see if a node is a load node. */ static inline bool vect_is_slp_load_node (slp_tree root) { return SLP_TREE_DEF_TYPE (root) == vect_internal_def && STMT_VINFO_GROUPED_ACCESS (SLP_TREE_REPRESENTATIVE (root)) && DR_IS_READ (STMT_VINFO_DATA_REF (SLP_TREE_REPRESENTATIVE (root))); } /* Helper function of optimize_load_redistribution that performs the operation recursively. */ static slp_tree optimize_load_redistribution_1 (scalar_stmts_to_slp_tree_map_t *bst_map, vec_info *vinfo, unsigned int group_size, hash_map *load_map, slp_tree root) { if (slp_tree *leader = load_map->get (root)) return *leader; slp_tree node; unsigned i; /* For now, we don't know anything about externals so do not do anything. */ if (!root || SLP_TREE_DEF_TYPE (root) != vect_internal_def) return NULL; else if (SLP_TREE_CODE (root) == VEC_PERM_EXPR) { /* First convert this node into a load node and add it to the leaves list and flatten the permute from a lane to a load one. If it's unneeded it will be elided later. */ vec stmts; stmts.create (SLP_TREE_LANES (root)); lane_permutation_t lane_perm = SLP_TREE_LANE_PERMUTATION (root); for (unsigned j = 0; j < lane_perm.length (); j++) { std::pair perm = lane_perm[j]; node = SLP_TREE_CHILDREN (root)[perm.first]; if (!vect_is_slp_load_node (node) || SLP_TREE_CHILDREN (node).exists ()) { stmts.release (); goto next; } stmts.quick_push (SLP_TREE_SCALAR_STMTS (node)[perm.second]); } if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "converting stmts on permute node %p\n", (void *) root); bool *matches = XALLOCAVEC (bool, group_size); poly_uint64 max_nunits = 1; unsigned tree_size = 0, limit = 1; node = vect_build_slp_tree (vinfo, stmts, group_size, &max_nunits, matches, &limit, &tree_size, bst_map); if (!node) stmts.release (); load_map->put (root, node); return node; } next: load_map->put (root, NULL); FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (root), i , node) { slp_tree value = optimize_load_redistribution_1 (bst_map, vinfo, group_size, load_map, node); if (value) { SLP_TREE_REF_COUNT (value)++; SLP_TREE_CHILDREN (root)[i] = value; /* ??? We know the original leafs of the replaced nodes will be referenced by bst_map, only the permutes created by pattern matching are not. */ if (SLP_TREE_REF_COUNT (node) == 1) load_map->remove (node); vect_free_slp_tree (node); } } return NULL; } /* Temporary workaround for loads not being CSEd during SLP build. This function will traverse the SLP tree rooted in ROOT for INSTANCE and find VEC_PERM nodes that blend vectors from multiple nodes that all read from the same DR such that the final operation is equal to a permuted load. Such NODES are then directly converted into LOADS themselves. The nodes are CSEd using BST_MAP. */ static void optimize_load_redistribution (scalar_stmts_to_slp_tree_map_t *bst_map, vec_info *vinfo, unsigned int group_size, hash_map *load_map, slp_tree root) { slp_tree node; unsigned i; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (root), i , node) { slp_tree value = optimize_load_redistribution_1 (bst_map, vinfo, group_size, load_map, node); if (value) { SLP_TREE_REF_COUNT (value)++; SLP_TREE_CHILDREN (root)[i] = value; /* ??? We know the original leafs of the replaced nodes will be referenced by bst_map, only the permutes created by pattern matching are not. */ if (SLP_TREE_REF_COUNT (node) == 1) load_map->remove (node); vect_free_slp_tree (node); } } } /* Helper function of vect_match_slp_patterns. Attempts to match patterns against the slp tree rooted in REF_NODE using VINFO. Patterns are matched in post-order traversal. If matching is successful the value in REF_NODE is updated and returned, if not then it is returned unchanged. */ static bool vect_match_slp_patterns_2 (slp_tree *ref_node, vec_info *vinfo, slp_tree_to_load_perm_map_t *perm_cache, slp_compat_nodes_map_t *compat_cache, hash_set *visited) { unsigned i; slp_tree node = *ref_node; bool found_p = false; if (!node || visited->add (node)) return false; slp_tree child; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) found_p |= vect_match_slp_patterns_2 (&SLP_TREE_CHILDREN (node)[i], vinfo, perm_cache, compat_cache, visited); for (unsigned x = 0; x < num__slp_patterns; x++) { vect_pattern *pattern = slp_patterns[x] (perm_cache, compat_cache, ref_node); if (pattern) { pattern->build (vinfo); delete pattern; found_p = true; } } return found_p; } /* Applies pattern matching to the given SLP tree rooted in REF_NODE using vec_info VINFO. The modified tree is returned. Patterns are tried in order and multiple patterns may match. */ static bool vect_match_slp_patterns (slp_instance instance, vec_info *vinfo, hash_set *visited, slp_tree_to_load_perm_map_t *perm_cache, slp_compat_nodes_map_t *compat_cache) { DUMP_VECT_SCOPE ("vect_match_slp_patterns"); slp_tree *ref_node = &SLP_INSTANCE_TREE (instance); if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Analyzing SLP tree %p for patterns\n", (void *) SLP_INSTANCE_TREE (instance)); return vect_match_slp_patterns_2 (ref_node, vinfo, perm_cache, compat_cache, visited); } /* STMT_INFO is a store group of size GROUP_SIZE that we are considering splitting into two, with the first split group having size NEW_GROUP_SIZE. Return true if we could use IFN_STORE_LANES instead and if that appears to be the better approach. */ static bool vect_slp_prefer_store_lanes_p (vec_info *vinfo, stmt_vec_info stmt_info, unsigned int group_size, unsigned int new_group_size) { tree scalar_type = TREE_TYPE (DR_REF (STMT_VINFO_DATA_REF (stmt_info))); tree vectype = get_vectype_for_scalar_type (vinfo, scalar_type); if (!vectype) return false; /* Allow the split if one of the two new groups would operate on full vectors *within* rather than across one scalar loop iteration. This is purely a heuristic, but it should work well for group sizes of 3 and 4, where the possible splits are: 3->2+1: OK if the vector has exactly two elements 4->2+2: Likewise 4->3+1: Less clear-cut. */ if (multiple_p (group_size - new_group_size, TYPE_VECTOR_SUBPARTS (vectype)) || multiple_p (new_group_size, TYPE_VECTOR_SUBPARTS (vectype))) return false; return vect_store_lanes_supported (vectype, group_size, false); } /* Analyze an SLP instance starting from a group of grouped stores. Call vect_build_slp_tree to build a tree of packed stmts if possible. Return FALSE if it's impossible to SLP any stmt in the loop. */ static bool vect_analyze_slp_instance (vec_info *vinfo, scalar_stmts_to_slp_tree_map_t *bst_map, stmt_vec_info stmt_info, slp_instance_kind kind, unsigned max_tree_size, unsigned *limit); /* Analyze an SLP instance starting from SCALAR_STMTS which are a group of KIND. Return true if successful. */ static bool vect_build_slp_instance (vec_info *vinfo, slp_instance_kind kind, vec &scalar_stmts, vec &root_stmt_infos, unsigned max_tree_size, unsigned *limit, scalar_stmts_to_slp_tree_map_t *bst_map, /* ??? We need stmt_info for group splitting. */ stmt_vec_info stmt_info_) { if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "Starting SLP discovery for\n"); for (unsigned i = 0; i < scalar_stmts.length (); ++i) dump_printf_loc (MSG_NOTE, vect_location, " %G", scalar_stmts[i]->stmt); } /* Build the tree for the SLP instance. */ unsigned int group_size = scalar_stmts.length (); bool *matches = XALLOCAVEC (bool, group_size); poly_uint64 max_nunits = 1; unsigned tree_size = 0; unsigned i; slp_tree node = vect_build_slp_tree (vinfo, scalar_stmts, group_size, &max_nunits, matches, limit, &tree_size, bst_map); if (node != NULL) { /* Calculate the unrolling factor based on the smallest type. */ poly_uint64 unrolling_factor = calculate_unrolling_factor (max_nunits, group_size); if (maybe_ne (unrolling_factor, 1U) && is_a (vinfo)) { unsigned HOST_WIDE_INT const_max_nunits; if (!max_nunits.is_constant (&const_max_nunits) || const_max_nunits > group_size) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Build SLP failed: store group " "size not a multiple of the vector size " "in basic block SLP\n"); vect_free_slp_tree (node); return false; } /* Fatal mismatch. */ if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "SLP discovery succeeded but node needs " "splitting\n"); memset (matches, true, group_size); matches[group_size / const_max_nunits * const_max_nunits] = false; vect_free_slp_tree (node); } else { /* Create a new SLP instance. */ slp_instance new_instance = XNEW (class _slp_instance); SLP_INSTANCE_TREE (new_instance) = node; SLP_INSTANCE_UNROLLING_FACTOR (new_instance) = unrolling_factor; SLP_INSTANCE_LOADS (new_instance) = vNULL; SLP_INSTANCE_ROOT_STMTS (new_instance) = root_stmt_infos; SLP_INSTANCE_KIND (new_instance) = kind; new_instance->reduc_phis = NULL; new_instance->cost_vec = vNULL; new_instance->subgraph_entries = vNULL; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "SLP size %u vs. limit %u.\n", tree_size, max_tree_size); /* Fixup SLP reduction chains. */ if (kind == slp_inst_kind_reduc_chain) { /* If this is a reduction chain with a conversion in front amend the SLP tree with a node for that. */ gimple *scalar_def = vect_orig_stmt (scalar_stmts[group_size - 1])->stmt; if (STMT_VINFO_DEF_TYPE (scalar_stmts[0]) != vect_reduction_def) { /* Get at the conversion stmt - we know it's the single use of the last stmt of the reduction chain. */ use_operand_p use_p; bool r = single_imm_use (gimple_assign_lhs (scalar_def), &use_p, &scalar_def); gcc_assert (r); stmt_vec_info next_info = vinfo->lookup_stmt (scalar_def); next_info = vect_stmt_to_vectorize (next_info); scalar_stmts = vNULL; scalar_stmts.create (group_size); for (unsigned i = 0; i < group_size; ++i) scalar_stmts.quick_push (next_info); slp_tree conv = vect_create_new_slp_node (scalar_stmts, 1); SLP_TREE_VECTYPE (conv) = STMT_VINFO_VECTYPE (next_info); SLP_TREE_CHILDREN (conv).quick_push (node); SLP_INSTANCE_TREE (new_instance) = conv; /* We also have to fake this conversion stmt as SLP reduction group so we don't have to mess with too much code elsewhere. */ REDUC_GROUP_FIRST_ELEMENT (next_info) = next_info; REDUC_GROUP_NEXT_ELEMENT (next_info) = NULL; } /* Fill the backedge child of the PHI SLP node. The general matching code cannot find it because the scalar code does not reflect how we vectorize the reduction. */ use_operand_p use_p; imm_use_iterator imm_iter; class loop *loop = LOOP_VINFO_LOOP (as_a (vinfo)); FOR_EACH_IMM_USE_FAST (use_p, imm_iter, gimple_get_lhs (scalar_def)) /* There are exactly two non-debug uses, the reduction PHI and the loop-closed PHI node. */ if (!is_gimple_debug (USE_STMT (use_p)) && gimple_bb (USE_STMT (use_p)) == loop->header) { auto_vec phis (group_size); stmt_vec_info phi_info = vinfo->lookup_stmt (USE_STMT (use_p)); for (unsigned i = 0; i < group_size; ++i) phis.quick_push (phi_info); slp_tree *phi_node = bst_map->get (phis); unsigned dest_idx = loop_latch_edge (loop)->dest_idx; SLP_TREE_CHILDREN (*phi_node)[dest_idx] = SLP_INSTANCE_TREE (new_instance); SLP_INSTANCE_TREE (new_instance)->refcnt++; } } vinfo->slp_instances.safe_push (new_instance); /* ??? We've replaced the old SLP_INSTANCE_GROUP_SIZE with the number of scalar stmts in the root in a few places. Verify that assumption holds. */ gcc_assert (SLP_TREE_SCALAR_STMTS (SLP_INSTANCE_TREE (new_instance)) .length () == group_size); if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "Final SLP tree for instance %p:\n", (void *) new_instance); vect_print_slp_graph (MSG_NOTE, vect_location, SLP_INSTANCE_TREE (new_instance)); } return true; } } else { /* Failed to SLP. */ /* Free the allocated memory. */ scalar_stmts.release (); } stmt_vec_info stmt_info = stmt_info_; /* Try to break the group up into pieces. */ if (kind == slp_inst_kind_store) { /* ??? We could delay all the actual splitting of store-groups until after SLP discovery of the original group completed. Then we can recurse to vect_build_slp_instance directly. */ for (i = 0; i < group_size; i++) if (!matches[i]) break; /* For basic block SLP, try to break the group up into multiples of a vector size. */ if (is_a (vinfo) && (i > 1 && i < group_size)) { tree scalar_type = TREE_TYPE (DR_REF (STMT_VINFO_DATA_REF (stmt_info))); tree vectype = get_vectype_for_scalar_type (vinfo, scalar_type, 1 << floor_log2 (i)); unsigned HOST_WIDE_INT const_nunits; if (vectype && TYPE_VECTOR_SUBPARTS (vectype).is_constant (&const_nunits)) { /* Split into two groups at the first vector boundary. */ gcc_assert ((const_nunits & (const_nunits - 1)) == 0); unsigned group1_size = i & ~(const_nunits - 1); if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Splitting SLP group at stmt %u\n", i); stmt_vec_info rest = vect_split_slp_store_group (stmt_info, group1_size); bool res = vect_analyze_slp_instance (vinfo, bst_map, stmt_info, kind, max_tree_size, limit); /* Split the rest at the failure point and possibly re-analyze the remaining matching part if it has at least two lanes. */ if (group1_size < i && (i + 1 < group_size || i - group1_size > 1)) { stmt_vec_info rest2 = rest; rest = vect_split_slp_store_group (rest, i - group1_size); if (i - group1_size > 1) res |= vect_analyze_slp_instance (vinfo, bst_map, rest2, kind, max_tree_size, limit); } /* Re-analyze the non-matching tail if it has at least two lanes. */ if (i + 1 < group_size) res |= vect_analyze_slp_instance (vinfo, bst_map, rest, kind, max_tree_size, limit); return res; } } /* For loop vectorization split into arbitrary pieces of size > 1. */ if (is_a (vinfo) && (i > 1 && i < group_size) && !vect_slp_prefer_store_lanes_p (vinfo, stmt_info, group_size, i)) { unsigned group1_size = i; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Splitting SLP group at stmt %u\n", i); stmt_vec_info rest = vect_split_slp_store_group (stmt_info, group1_size); /* Loop vectorization cannot handle gaps in stores, make sure the split group appears as strided. */ STMT_VINFO_STRIDED_P (rest) = 1; DR_GROUP_GAP (rest) = 0; STMT_VINFO_STRIDED_P (stmt_info) = 1; DR_GROUP_GAP (stmt_info) = 0; bool res = vect_analyze_slp_instance (vinfo, bst_map, stmt_info, kind, max_tree_size, limit); if (i + 1 < group_size) res |= vect_analyze_slp_instance (vinfo, bst_map, rest, kind, max_tree_size, limit); return res; } /* Even though the first vector did not all match, we might be able to SLP (some) of the remainder. FORNOW ignore this possibility. */ } /* Failed to SLP. */ if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "SLP discovery failed\n"); return false; } /* Analyze an SLP instance starting from a group of grouped stores. Call vect_build_slp_tree to build a tree of packed stmts if possible. Return FALSE if it's impossible to SLP any stmt in the loop. */ static bool vect_analyze_slp_instance (vec_info *vinfo, scalar_stmts_to_slp_tree_map_t *bst_map, stmt_vec_info stmt_info, slp_instance_kind kind, unsigned max_tree_size, unsigned *limit) { unsigned int i; vec scalar_stmts; if (is_a (vinfo)) vect_location = stmt_info->stmt; stmt_vec_info next_info = stmt_info; if (kind == slp_inst_kind_store) { /* Collect the stores and store them in scalar_stmts. */ scalar_stmts.create (DR_GROUP_SIZE (stmt_info)); while (next_info) { scalar_stmts.quick_push (vect_stmt_to_vectorize (next_info)); next_info = DR_GROUP_NEXT_ELEMENT (next_info); } } else if (kind == slp_inst_kind_reduc_chain) { /* Collect the reduction stmts and store them in scalar_stmts. */ scalar_stmts.create (REDUC_GROUP_SIZE (stmt_info)); while (next_info) { scalar_stmts.quick_push (vect_stmt_to_vectorize (next_info)); next_info = REDUC_GROUP_NEXT_ELEMENT (next_info); } /* Mark the first element of the reduction chain as reduction to properly transform the node. In the reduction analysis phase only the last element of the chain is marked as reduction. */ STMT_VINFO_DEF_TYPE (stmt_info) = STMT_VINFO_DEF_TYPE (scalar_stmts.last ()); STMT_VINFO_REDUC_DEF (vect_orig_stmt (stmt_info)) = STMT_VINFO_REDUC_DEF (vect_orig_stmt (scalar_stmts.last ())); } else if (kind == slp_inst_kind_ctor) { tree rhs = gimple_assign_rhs1 (stmt_info->stmt); tree val; scalar_stmts.create (CONSTRUCTOR_NELTS (rhs)); FOR_EACH_CONSTRUCTOR_VALUE (CONSTRUCTOR_ELTS (rhs), i, val) { stmt_vec_info def_info = vinfo->lookup_def (val); def_info = vect_stmt_to_vectorize (def_info); scalar_stmts.quick_push (def_info); } if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Analyzing vectorizable constructor: %G\n", stmt_info->stmt); } else if (kind == slp_inst_kind_reduc_group) { /* Collect reduction statements. */ const vec &reductions = as_a (vinfo)->reductions; scalar_stmts.create (reductions.length ()); for (i = 0; reductions.iterate (i, &next_info); i++) if ((STMT_VINFO_RELEVANT_P (next_info) || STMT_VINFO_LIVE_P (next_info)) /* ??? Make sure we didn't skip a conversion around a reduction path. In that case we'd have to reverse engineer that conversion stmt following the chain using reduc_idx and from the PHI using reduc_def. */ && STMT_VINFO_DEF_TYPE (next_info) == vect_reduction_def) scalar_stmts.quick_push (next_info); /* If less than two were relevant/live there's nothing to SLP. */ if (scalar_stmts.length () < 2) return false; } else gcc_unreachable (); vec roots = vNULL; if (kind == slp_inst_kind_ctor) { roots.create (1); roots.quick_push (stmt_info); } /* Build the tree for the SLP instance. */ bool res = vect_build_slp_instance (vinfo, kind, scalar_stmts, roots, max_tree_size, limit, bst_map, kind == slp_inst_kind_store ? stmt_info : NULL); if (!res) roots.release (); /* ??? If this is slp_inst_kind_store and the above succeeded here's where we should do store group splitting. */ return res; } /* Check if there are stmts in the loop can be vectorized using SLP. Build SLP trees of packed scalar stmts if SLP is possible. */ opt_result vect_analyze_slp (vec_info *vinfo, unsigned max_tree_size) { unsigned int i; stmt_vec_info first_element; slp_instance instance; DUMP_VECT_SCOPE ("vect_analyze_slp"); unsigned limit = max_tree_size; scalar_stmts_to_slp_tree_map_t *bst_map = new scalar_stmts_to_slp_tree_map_t (); /* Find SLP sequences starting from groups of grouped stores. */ FOR_EACH_VEC_ELT (vinfo->grouped_stores, i, first_element) vect_analyze_slp_instance (vinfo, bst_map, first_element, STMT_VINFO_GROUPED_ACCESS (first_element) ? slp_inst_kind_store : slp_inst_kind_ctor, max_tree_size, &limit); if (bb_vec_info bb_vinfo = dyn_cast (vinfo)) { for (unsigned i = 0; i < bb_vinfo->roots.length (); ++i) { vect_location = bb_vinfo->roots[i].roots[0]->stmt; if (vect_build_slp_instance (bb_vinfo, bb_vinfo->roots[i].kind, bb_vinfo->roots[i].stmts, bb_vinfo->roots[i].roots, max_tree_size, &limit, bst_map, NULL)) { bb_vinfo->roots[i].stmts = vNULL; bb_vinfo->roots[i].roots = vNULL; } } } if (loop_vec_info loop_vinfo = dyn_cast (vinfo)) { /* Find SLP sequences starting from reduction chains. */ FOR_EACH_VEC_ELT (loop_vinfo->reduction_chains, i, first_element) if (! STMT_VINFO_RELEVANT_P (first_element) && ! STMT_VINFO_LIVE_P (first_element)) ; else if (! vect_analyze_slp_instance (vinfo, bst_map, first_element, slp_inst_kind_reduc_chain, max_tree_size, &limit)) { /* Dissolve reduction chain group. */ stmt_vec_info vinfo = first_element; stmt_vec_info last = NULL; while (vinfo) { stmt_vec_info next = REDUC_GROUP_NEXT_ELEMENT (vinfo); REDUC_GROUP_FIRST_ELEMENT (vinfo) = NULL; REDUC_GROUP_NEXT_ELEMENT (vinfo) = NULL; last = vinfo; vinfo = next; } STMT_VINFO_DEF_TYPE (first_element) = vect_internal_def; /* It can be still vectorized as part of an SLP reduction. */ loop_vinfo->reductions.safe_push (last); } /* Find SLP sequences starting from groups of reductions. */ if (loop_vinfo->reductions.length () > 1) vect_analyze_slp_instance (vinfo, bst_map, loop_vinfo->reductions[0], slp_inst_kind_reduc_group, max_tree_size, &limit); } hash_set visited_patterns; slp_tree_to_load_perm_map_t perm_cache; slp_compat_nodes_map_t compat_cache; /* See if any patterns can be found in the SLP tree. */ bool pattern_found = false; FOR_EACH_VEC_ELT (LOOP_VINFO_SLP_INSTANCES (vinfo), i, instance) pattern_found |= vect_match_slp_patterns (instance, vinfo, &visited_patterns, &perm_cache, &compat_cache); /* If any were found optimize permutations of loads. */ if (pattern_found) { hash_map load_map; FOR_EACH_VEC_ELT (LOOP_VINFO_SLP_INSTANCES (vinfo), i, instance) { slp_tree root = SLP_INSTANCE_TREE (instance); optimize_load_redistribution (bst_map, vinfo, SLP_TREE_LANES (root), &load_map, root); } } /* The map keeps a reference on SLP nodes built, release that. */ for (scalar_stmts_to_slp_tree_map_t::iterator it = bst_map->begin (); it != bst_map->end (); ++it) if ((*it).second) vect_free_slp_tree ((*it).second); delete bst_map; if (pattern_found && dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "Pattern matched SLP tree\n"); hash_set visited; FOR_EACH_VEC_ELT (LOOP_VINFO_SLP_INSTANCES (vinfo), i, instance) vect_print_slp_graph (MSG_NOTE, vect_location, SLP_INSTANCE_TREE (instance), visited); } return opt_result::success (); } /* Estimates the cost of inserting layout changes into the SLP graph. It can also say that the insertion is impossible. */ struct slpg_layout_cost { slpg_layout_cost () = default; slpg_layout_cost (sreal, bool); static slpg_layout_cost impossible () { return { sreal::max (), 0 }; } bool is_possible () const { return depth != sreal::max (); } bool operator== (const slpg_layout_cost &) const; bool operator!= (const slpg_layout_cost &) const; bool is_better_than (const slpg_layout_cost &, bool) const; void add_parallel_cost (const slpg_layout_cost &); void add_serial_cost (const slpg_layout_cost &); void split (unsigned int); /* The longest sequence of layout changes needed during any traversal of the partition dag, weighted by execution frequency. This is the most important metric when optimizing for speed, since it helps to ensure that we keep the number of operations on critical paths to a minimum. */ sreal depth = 0; /* An estimate of the total number of operations needed. It is weighted by execution frequency when optimizing for speed but not when optimizing for size. In order to avoid double-counting, a node with a fanout of N will distribute 1/N of its total cost to each successor. This is the most important metric when optimizing for size, since it helps to keep the total number of operations to a minimum, */ sreal total = 0; }; /* Construct costs for a node with weight WEIGHT. A higher weight indicates more frequent execution. IS_FOR_SIZE is true if we are optimizing for size rather than speed. */ slpg_layout_cost::slpg_layout_cost (sreal weight, bool is_for_size) : depth (weight), total (is_for_size && weight > 0 ? 1 : weight) { } bool slpg_layout_cost::operator== (const slpg_layout_cost &other) const { return depth == other.depth && total == other.total; } bool slpg_layout_cost::operator!= (const slpg_layout_cost &other) const { return !operator== (other); } /* Return true if these costs are better than OTHER. IS_FOR_SIZE is true if we are optimizing for size rather than speed. */ bool slpg_layout_cost::is_better_than (const slpg_layout_cost &other, bool is_for_size) const { if (is_for_size) { if (total != other.total) return total < other.total; return depth < other.depth; } else { if (depth != other.depth) return depth < other.depth; return total < other.total; } } /* Increase the costs to account for something with cost INPUT_COST happening in parallel with the current costs. */ void slpg_layout_cost::add_parallel_cost (const slpg_layout_cost &input_cost) { depth = std::max (depth, input_cost.depth); total += input_cost.total; } /* Increase the costs to account for something with cost INPUT_COST happening in series with the current costs. */ void slpg_layout_cost::add_serial_cost (const slpg_layout_cost &other) { depth += other.depth; total += other.total; } /* Split the total cost among TIMES successors or predecessors. */ void slpg_layout_cost::split (unsigned int times) { if (times > 1) total /= times; } /* Information about one node in the SLP graph, for use during vect_optimize_slp_pass. */ struct slpg_vertex { slpg_vertex (slp_tree node_) : node (node_) {} /* The node itself. */ slp_tree node; /* Which partition the node belongs to, or -1 if none. Nodes outside of partitions are flexible; they can have whichever layout consumers want them to have. */ int partition = -1; /* The number of nodes that directly use the result of this one (i.e. the number of nodes that count this one as a child). */ unsigned int out_degree = 0; /* The execution frequency of the node. */ sreal weight = 0; /* The total execution frequency of all nodes that directly use the result of this one. */ sreal out_weight = 0; }; /* Information about one partition of the SLP graph, for use during vect_optimize_slp_pass. */ struct slpg_partition_info { /* The nodes in the partition occupy indices [NODE_BEGIN, NODE_END) of m_partitioned_nodes. */ unsigned int node_begin = 0; unsigned int node_end = 0; /* Which layout we've chosen to use for this partition, or -1 if we haven't picked one yet. */ int layout = -1; /* The number of predecessors and successors in the partition dag. The predecessors always have lower partition numbers and the successors always have higher partition numbers. Note that the directions of these edges are not necessarily the same as in the data flow graph. For example, if an SCC has separate partitions for an inner loop and an outer loop, the inner loop's partition will have at least two incoming edges from the outer loop's partition: one for a live-in value and one for a live-out value. In data flow terms, one of these edges would also be from the outer loop to the inner loop, but the other would be in the opposite direction. */ unsigned int in_degree = 0; unsigned int out_degree = 0; }; /* Information about the costs of using a particular layout for a particular partition. It can also say that the combination is impossible. */ struct slpg_partition_layout_costs { bool is_possible () const { return internal_cost.is_possible (); } void mark_impossible () { internal_cost = slpg_layout_cost::impossible (); } /* The costs inherited from predecessor partitions. */ slpg_layout_cost in_cost; /* The inherent cost of the layout within the node itself. For example, this is nonzero for a load if choosing a particular layout would require the load to permute the loaded elements. It is nonzero for a VEC_PERM_EXPR if the permutation cannot be eliminated or converted to full-vector moves. */ slpg_layout_cost internal_cost; /* The costs inherited from successor partitions. */ slpg_layout_cost out_cost; }; /* This class tries to optimize the layout of vectors in order to avoid unnecessary shuffling. At the moment, the set of possible layouts are restricted to bijective permutations. The goal of the pass depends on whether we're optimizing for size or for speed. When optimizing for size, the goal is to reduce the overall number of layout changes (including layout changes implied by things like load permutations). When optimizing for speed, the goal is to reduce the maximum latency attributable to layout changes on any non-cyclical path through the data flow graph. For example, when optimizing a loop nest for speed, we will prefer to make layout changes outside of a loop rather than inside of a loop, and will prefer to make layout changes in parallel rather than serially, even if that increases the overall number of layout changes. The high-level procedure is: (1) Build a graph in which edges go from uses (parents) to definitions (children). (2) Divide the graph into a dag of strongly-connected components (SCCs). (3) When optimizing for speed, partition the nodes in each SCC based on their containing cfg loop. When optimizing for size, treat each SCC as a single partition. This gives us a dag of partitions. The goal is now to assign a layout to each partition. (4) Construct a set of vector layouts that are worth considering. Record which nodes must keep their current layout. (5) Perform a forward walk over the partition dag (from loads to stores) accumulating the "forward" cost of using each layout. When visiting each partition, assign a tentative choice of layout to the partition and use that choice when calculating the cost of using a different layout in successor partitions. (6) Perform a backward walk over the partition dag (from stores to loads), accumulating the "backward" cost of using each layout. When visiting each partition, make a final choice of layout for that partition based on the accumulated forward costs (from (5)) and backward costs (from (6)). (7) Apply the chosen layouts to the SLP graph. For example, consider the SLP statements: S1: a_1 = load loop: S2: a_2 = PHI S3: b_1 = load S4: a_3 = a_2 + b_1 exit: S5: a_4 = PHI S6: store a_4 S2 and S4 form an SCC and are part of the same loop. Every other statement is in a singleton SCC. In this example there is a one-to-one mapping between SCCs and partitions and the partition dag looks like this; S1 S3 \ / S2+S4 | S5 | S6 S2, S3 and S4 will have a higher execution frequency than the other statements, so when optimizing for speed, the goal is to avoid any layout changes: - within S3 - within S2+S4 - on the S3->S2+S4 edge For example, if S3 was originally a reversing load, the goal of the pass is to make it an unreversed load and change the layout on the S1->S2+S4 and S2+S4->S5 edges to compensate. (Changing the layout on S1->S2+S4 and S5->S6 would also be acceptable.) The difference between SCCs and partitions becomes important if we add an outer loop: S1: a_1 = ... loop1: S2: a_2 = PHI S3: b_1 = load S4: a_3 = a_2 + b_1 loop2: S5: a_4 = PHI S6: c_1 = load S7: a_5 = a_4 + c_1 exit2: S8: a_6 = PHI S9: store a_6 exit1: Here, S2, S4, S5, S7 and S8 form a single SCC. However, when optimizing for speed, we usually do not want restrictions in the outer loop to "infect" the decision for the inner loop. For example, if an outer-loop node in the SCC contains a statement with a fixed layout, that should not prevent the inner loop from using a different layout. Conversely, the inner loop should not dictate a layout to the outer loop: if the outer loop does a lot of computation, then it may not be efficient to do all of that computation in the inner loop's preferred layout. So when optimizing for speed, we partition the SCC into S2+S4+S8 (outer) and S5+S7 (inner). We also try to arrange partitions so that: - the partition for an outer loop comes before the partition for an inner loop - if a sibling loop A dominates a sibling loop B, A's partition comes before B's This gives the following partition dag for the example above: S1 S3 \ / S2+S4+S8 S6 | \\ / | S5+S7 | S9 There are two edges from S2+S4+S8 to S5+S7: one for the edge S4->S5 and one for a reversal of the edge S7->S8. The backward walk picks a layout for S5+S7 before S2+S4+S8. The choice for S2+S4+S8 therefore has to balance the cost of using the outer loop's preferred layout against the cost of changing the layout on entry to the inner loop (S4->S5) and on exit from the inner loop (S7->S8 reversed). Although this works well when optimizing for speed, it has the downside when optimizing for size that the choice of layout for S5+S7 is completely independent of S9, which lessens the chance of reducing the overall number of permutations. We therefore do not partition SCCs when optimizing for size. To give a concrete example of the difference between optimizing for size and speed, consider: a[0] = (b[1] << c[3]) - d[1]; a[1] = (b[0] << c[2]) - d[0]; a[2] = (b[3] << c[1]) - d[3]; a[3] = (b[2] << c[0]) - d[2]; There are three different layouts here: one for a, one for b and d, and one for c. When optimizing for speed it is better to permute each of b, c and d into the order required by a, since those permutations happen in parallel. But when optimizing for size, it is better to: - permute c into the same order as b - do the arithmetic - permute the result into the order required by a This gives 2 permutations rather than 3. */ class vect_optimize_slp_pass { public: vect_optimize_slp_pass (vec_info *vinfo) : m_vinfo (vinfo) {} void run (); private: /* Graph building. */ struct loop *containing_loop (slp_tree); bool is_cfg_latch_edge (graph_edge *); void build_vertices (hash_set &, slp_tree); void build_vertices (); void build_graph (); /* Partitioning. */ void create_partitions (); template void for_each_partition_edge (unsigned int, T); /* Layout selection. */ bool is_compatible_layout (slp_tree, unsigned int); int change_layout_cost (slp_tree, unsigned int, unsigned int); slpg_partition_layout_costs &partition_layout_costs (unsigned int, unsigned int); void change_vec_perm_layout (slp_tree, lane_permutation_t &, int, unsigned int); int internal_node_cost (slp_tree, int, unsigned int); void start_choosing_layouts (); /* Cost propagation. */ slpg_layout_cost edge_layout_cost (graph_edge *, unsigned int, unsigned int, unsigned int); slpg_layout_cost total_in_cost (unsigned int); slpg_layout_cost forward_cost (graph_edge *, unsigned int, unsigned int); slpg_layout_cost backward_cost (graph_edge *, unsigned int, unsigned int); void forward_pass (); void backward_pass (); /* Rematerialization. */ slp_tree get_result_with_layout (slp_tree, unsigned int); void materialize (); /* Clean-up. */ void remove_redundant_permutations (); void dump (); vec_info *m_vinfo; /* True if we should optimize the graph for size, false if we should optimize it for speed. (It wouldn't be easy to make this decision more locally.) */ bool m_optimize_size; /* A graph of all SLP nodes, with edges leading from uses to definitions. In other words, a node's predecessors are its slp_tree parents and a node's successors are its slp_tree children. */ graph *m_slpg = nullptr; /* The vertices of M_SLPG, indexed by slp_tree::vertex. */ auto_vec m_vertices; /* The list of all leaves of M_SLPG. such as external definitions, constants, and loads. */ auto_vec m_leafs; /* This array has one entry for every vector layout that we're considering. Element 0 is null and indicates "no change". Other entries describe permutations that are inherent in the current graph and that we would like to reverse if possible. For example, a permutation { 1, 2, 3, 0 } means that something has effectively been permuted in that way, such as a load group { a[1], a[2], a[3], a[0] } (viewed as a permutation of a[0:3]). We'd then like to apply the reverse permutation { 3, 0, 1, 2 } in order to put things "back" in order. */ auto_vec > m_perms; /* A partitioning of the nodes for which a layout must be chosen. Each partition represents an pair; that is, nodes in different SCCs belong to different partitions, and nodes within an SCC can be further partitioned according to a containing cfg loop. Partition comes before if: - SCC1 != SCC2 and SCC1 is a predecessor of SCC2 in a forward walk from leaves (such as loads) to roots (such as stores). - SCC1 == SCC2 and L1's header strictly dominates L2's header. */ auto_vec m_partitions; /* The list of all nodes for which a layout must be chosen. Nodes for partition P come before the nodes for partition P+1. Nodes within a partition are in reverse postorder. */ auto_vec m_partitioned_nodes; /* Index P * num-layouts + L contains the cost of using layout L for partition P. */ auto_vec m_partition_layout_costs; /* Index N * num-layouts + L, if nonnull, is a node that provides the original output of node N adjusted to have layout L. */ auto_vec m_node_layouts; }; /* Fill the vertices and leafs vector with all nodes in the SLP graph. Also record whether we should optimize anything for speed rather than size. */ void vect_optimize_slp_pass::build_vertices (hash_set &visited, slp_tree node) { unsigned i; slp_tree child; if (visited.add (node)) return; if (stmt_vec_info rep = SLP_TREE_REPRESENTATIVE (node)) { basic_block bb = gimple_bb (vect_orig_stmt (rep)->stmt); if (optimize_bb_for_speed_p (bb)) m_optimize_size = false; } node->vertex = m_vertices.length (); m_vertices.safe_push (slpg_vertex (node)); bool leaf = true; bool force_leaf = false; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child) { leaf = false; build_vertices (visited, child); } else force_leaf = true; /* Since SLP discovery works along use-def edges all cycles have an entry - but there's the exception of cycles where we do not handle the entry explicitely (but with a NULL SLP node), like some reductions and inductions. Force those SLP PHIs to act as leafs to make them backwards reachable. */ if (leaf || force_leaf) m_leafs.safe_push (node->vertex); } /* Fill the vertices and leafs vector with all nodes in the SLP graph. */ void vect_optimize_slp_pass::build_vertices () { hash_set visited; unsigned i; slp_instance instance; FOR_EACH_VEC_ELT (m_vinfo->slp_instances, i, instance) build_vertices (visited, SLP_INSTANCE_TREE (instance)); } /* Apply (reverse) bijectite PERM to VEC. */ template static void vect_slp_permute (vec perm, vec &vec, bool reverse) { auto_vec saved; saved.create (vec.length ()); for (unsigned i = 0; i < vec.length (); ++i) saved.quick_push (vec[i]); if (reverse) { for (unsigned i = 0; i < vec.length (); ++i) vec[perm[i]] = saved[i]; for (unsigned i = 0; i < vec.length (); ++i) gcc_assert (vec[perm[i]] == saved[i]); } else { for (unsigned i = 0; i < vec.length (); ++i) vec[i] = saved[perm[i]]; for (unsigned i = 0; i < vec.length (); ++i) gcc_assert (vec[i] == saved[perm[i]]); } } /* Return the cfg loop that contains NODE. */ struct loop * vect_optimize_slp_pass::containing_loop (slp_tree node) { stmt_vec_info rep = SLP_TREE_REPRESENTATIVE (node); if (!rep) return ENTRY_BLOCK_PTR_FOR_FN (cfun)->loop_father; return gimple_bb (vect_orig_stmt (rep)->stmt)->loop_father; } /* Return true if UD (an edge from a use to a definition) is associated with a loop latch edge in the cfg. */ bool vect_optimize_slp_pass::is_cfg_latch_edge (graph_edge *ud) { slp_tree use = m_vertices[ud->src].node; slp_tree def = m_vertices[ud->dest].node; if (SLP_TREE_DEF_TYPE (use) != vect_internal_def || SLP_TREE_DEF_TYPE (def) != vect_internal_def) return false; stmt_vec_info use_rep = vect_orig_stmt (SLP_TREE_REPRESENTATIVE (use)); return (is_a (use_rep->stmt) && bb_loop_header_p (gimple_bb (use_rep->stmt)) && containing_loop (def) == containing_loop (use)); } /* Build the graph. Mark edges that correspond to cfg loop latch edges with a nonnull data field. */ void vect_optimize_slp_pass::build_graph () { m_optimize_size = true; build_vertices (); m_slpg = new_graph (m_vertices.length ()); for (slpg_vertex &v : m_vertices) for (slp_tree child : SLP_TREE_CHILDREN (v.node)) if (child) { graph_edge *ud = add_edge (m_slpg, v.node->vertex, child->vertex); if (is_cfg_latch_edge (ud)) ud->data = this; } } /* Return true if E corresponds to a loop latch edge in the cfg. */ static bool skip_cfg_latch_edges (graph_edge *e) { return e->data; } /* Create the node partitions. */ void vect_optimize_slp_pass::create_partitions () { /* Calculate a postorder of the graph, ignoring edges that correspond to natural latch edges in the cfg. Reading the vector from the end to the beginning gives the reverse postorder. */ auto_vec initial_rpo; graphds_dfs (m_slpg, &m_leafs[0], m_leafs.length (), &initial_rpo, false, NULL, skip_cfg_latch_edges); gcc_assert (initial_rpo.length () == m_vertices.length ()); /* Calculate the strongly connected components of the graph. */ auto_vec scc_grouping; unsigned int num_sccs = graphds_scc (m_slpg, NULL, NULL, &scc_grouping); /* Create a new index order in which all nodes from the same SCC are consecutive. Use scc_pos to record the index of the first node in each SCC. */ auto_vec scc_pos (num_sccs); int last_component = -1; unsigned int node_count = 0; for (unsigned int node_i : scc_grouping) { if (last_component != m_slpg->vertices[node_i].component) { last_component = m_slpg->vertices[node_i].component; gcc_assert (last_component == int (scc_pos.length ())); scc_pos.quick_push (node_count); } node_count += 1; } gcc_assert (node_count == initial_rpo.length () && last_component + 1 == int (num_sccs)); /* Use m_partitioned_nodes to group nodes into SCC order, with the nodes inside each SCC following the RPO we calculated above. The fact that we ignored natural latch edges when calculating the RPO should ensure that, for natural loop nests: - the first node that we encounter in a cfg loop is the loop header phi - the loop header phis are in dominance order Arranging for this is an optimization (see below) rather than a correctness issue. Unnatural loops with a tangled mess of backedges will still work correctly, but might give poorer results. Also update scc_pos so that it gives 1 + the index of the last node in the SCC. */ m_partitioned_nodes.safe_grow (node_count); for (unsigned int old_i = initial_rpo.length (); old_i-- > 0;) { unsigned int node_i = initial_rpo[old_i]; unsigned int new_i = scc_pos[m_slpg->vertices[node_i].component]++; m_partitioned_nodes[new_i] = node_i; } /* When optimizing for speed, partition each SCC based on the containing cfg loop. The order we constructed above should ensure that, for natural cfg loops, we'll create sub-SCC partitions for outer loops before the corresponding sub-SCC partitions for inner loops. Similarly, when one sibling loop A dominates another sibling loop B, we should create a sub-SCC partition for A before a sub-SCC partition for B. As above, nothing depends for correctness on whether this achieves a natural nesting, but we should get better results when it does. */ m_partitions.reserve (m_vertices.length ()); unsigned int next_partition_i = 0; hash_map loop_partitions; unsigned int rpo_begin = 0; unsigned int num_partitioned_nodes = 0; for (unsigned int rpo_end : scc_pos) { loop_partitions.empty (); unsigned int partition_i = next_partition_i; for (unsigned int rpo_i = rpo_begin; rpo_i < rpo_end; ++rpo_i) { /* Handle externals and constants optimistically throughout. But treat existing vectors as fixed since we do not handle permuting them. */ unsigned int node_i = m_partitioned_nodes[rpo_i]; auto &vertex = m_vertices[node_i]; if ((SLP_TREE_DEF_TYPE (vertex.node) == vect_external_def && !SLP_TREE_VEC_DEFS (vertex.node).exists ()) || SLP_TREE_DEF_TYPE (vertex.node) == vect_constant_def) vertex.partition = -1; else { bool existed; if (m_optimize_size) existed = next_partition_i > partition_i; else { struct loop *loop = containing_loop (vertex.node); auto &entry = loop_partitions.get_or_insert (loop, &existed); if (!existed) entry = next_partition_i; partition_i = entry; } if (!existed) { m_partitions.quick_push (slpg_partition_info ()); next_partition_i += 1; } vertex.partition = partition_i; num_partitioned_nodes += 1; m_partitions[partition_i].node_end += 1; } } rpo_begin = rpo_end; } /* Assign ranges of consecutive node indices to each partition, in partition order. Start with node_end being the same as node_begin so that the next loop can use it as a counter. */ unsigned int node_begin = 0; for (auto &partition : m_partitions) { partition.node_begin = node_begin; node_begin += partition.node_end; partition.node_end = partition.node_begin; } gcc_assert (node_begin == num_partitioned_nodes); /* Finally build the list of nodes in partition order. */ m_partitioned_nodes.truncate (num_partitioned_nodes); for (unsigned int node_i = 0; node_i < m_vertices.length (); ++node_i) { int partition_i = m_vertices[node_i].partition; if (partition_i >= 0) { unsigned int order_i = m_partitions[partition_i].node_end++; m_partitioned_nodes[order_i] = node_i; } } } /* Look for edges from earlier partitions into node NODE_I and edges from node NODE_I into later partitions. Call: FN (ud, other_node_i) for each such use-to-def edge ud, where other_node_i is the node at the other end of the edge. */ template void vect_optimize_slp_pass::for_each_partition_edge (unsigned int node_i, T fn) { int partition_i = m_vertices[node_i].partition; for (graph_edge *pred = m_slpg->vertices[node_i].pred; pred; pred = pred->pred_next) { int src_partition_i = m_vertices[pred->src].partition; if (src_partition_i >= 0 && src_partition_i != partition_i) fn (pred, pred->src); } for (graph_edge *succ = m_slpg->vertices[node_i].succ; succ; succ = succ->succ_next) { int dest_partition_i = m_vertices[succ->dest].partition; if (dest_partition_i >= 0 && dest_partition_i != partition_i) fn (succ, succ->dest); } } /* Return true if layout LAYOUT_I is compatible with the number of SLP lanes that NODE would operate on. This test is independent of NODE's actual operation. */ bool vect_optimize_slp_pass::is_compatible_layout (slp_tree node, unsigned int layout_i) { if (layout_i == 0) return true; if (SLP_TREE_LANES (node) != m_perms[layout_i].length ()) return false; return true; } /* Return the cost (in arbtirary units) of going from layout FROM_LAYOUT_I to layout TO_LAYOUT_I for a node like NODE. Return -1 if either of the layouts is incompatible with NODE or if the change is not possible for some other reason. The properties taken from NODE include the number of lanes and the vector type. The actual operation doesn't matter. */ int vect_optimize_slp_pass::change_layout_cost (slp_tree node, unsigned int from_layout_i, unsigned int to_layout_i) { if (!is_compatible_layout (node, from_layout_i) || !is_compatible_layout (node, to_layout_i)) return -1; if (from_layout_i == to_layout_i) return 0; auto_vec children (1); children.quick_push (node); auto_lane_permutation_t perm (SLP_TREE_LANES (node)); if (from_layout_i > 0) for (unsigned int i : m_perms[from_layout_i]) perm.quick_push ({ 0, i }); else for (unsigned int i = 0; i < SLP_TREE_LANES (node); ++i) perm.quick_push ({ 0, i }); if (to_layout_i > 0) vect_slp_permute (m_perms[to_layout_i], perm, true); auto count = vectorizable_slp_permutation_1 (m_vinfo, nullptr, node, perm, children, false); if (count >= 0) return MAX (count, 1); /* ??? In principle we could try changing via layout 0, giving two layout changes rather than 1. Doing that would require corresponding support in get_result_with_layout. */ return -1; } /* Return the costs of assigning layout LAYOUT_I to partition PARTITION_I. */ inline slpg_partition_layout_costs & vect_optimize_slp_pass::partition_layout_costs (unsigned int partition_i, unsigned int layout_i) { return m_partition_layout_costs[partition_i * m_perms.length () + layout_i]; } /* Change PERM in one of two ways: - if IN_LAYOUT_I < 0, accept input operand I in the layout that has been chosen for child I of NODE. - if IN_LAYOUT >= 0, accept all inputs operands with that layout. In both cases, arrange for the output to have layout OUT_LAYOUT_I */ void vect_optimize_slp_pass:: change_vec_perm_layout (slp_tree node, lane_permutation_t &perm, int in_layout_i, unsigned int out_layout_i) { for (auto &entry : perm) { int this_in_layout_i = in_layout_i; if (this_in_layout_i < 0) { slp_tree in_node = SLP_TREE_CHILDREN (node)[entry.first]; unsigned int in_partition_i = m_vertices[in_node->vertex].partition; this_in_layout_i = m_partitions[in_partition_i].layout; } if (this_in_layout_i > 0) entry.second = m_perms[this_in_layout_i][entry.second]; } if (out_layout_i > 0) vect_slp_permute (m_perms[out_layout_i], perm, true); } /* Check whether the target allows NODE to be rearranged so that the node's output has layout OUT_LAYOUT_I. Return the cost of the change if so, in the same arbitrary units as for change_layout_cost. Return -1 otherwise. If NODE is a VEC_PERM_EXPR and IN_LAYOUT_I < 0, also check whether NODE can adapt to the layout changes that have (perhaps provisionally) been chosen for NODE's children, so that no extra permutations are needed on either the input or the output of NODE. If NODE is a VEC_PERM_EXPR and IN_LAYOUT_I >= 0, instead assume that all inputs will be forced into layout IN_LAYOUT_I beforehand. IN_LAYOUT_I has no meaning for other types of node. Keeping the node as-is is always valid. If the target doesn't appear to support the node as-is, but might realistically support other layouts, then layout 0 instead has the cost of a worst-case permutation. On the one hand, this ensures that every node has at least one valid layout, avoiding what would otherwise be an awkward special case. On the other, it still encourages the pass to change an invalid pre-existing layout choice into a valid one. */ int vect_optimize_slp_pass::internal_node_cost (slp_tree node, int in_layout_i, unsigned int out_layout_i) { const int fallback_cost = 1; if (SLP_TREE_CODE (node) == VEC_PERM_EXPR) { auto_lane_permutation_t tmp_perm; tmp_perm.safe_splice (SLP_TREE_LANE_PERMUTATION (node)); /* Check that the child nodes support the chosen layout. Checking the first child is enough, since any second child would have the same shape. */ auto first_child = SLP_TREE_CHILDREN (node)[0]; if (in_layout_i > 0 && !is_compatible_layout (first_child, in_layout_i)) return -1; change_vec_perm_layout (node, tmp_perm, in_layout_i, out_layout_i); int count = vectorizable_slp_permutation_1 (m_vinfo, nullptr, node, tmp_perm, SLP_TREE_CHILDREN (node), false); if (count < 0) { if (in_layout_i == 0 && out_layout_i == 0) { /* Use the fallback cost if the node could in principle support some nonzero layout for both the inputs and the outputs. Otherwise assume that the node will be rejected later and rebuilt from scalars. */ if (SLP_TREE_LANES (node) == SLP_TREE_LANES (first_child)) return fallback_cost; return 0; } return -1; } /* We currently have no way of telling whether the new layout is cheaper or more expensive than the old one. But at least in principle, it should be worth making zero permutations (whole-vector shuffles) cheaper than real permutations, in case the pass is able to remove the latter. */ return count == 0 ? 0 : 1; } stmt_vec_info rep = SLP_TREE_REPRESENTATIVE (node); if (rep && STMT_VINFO_DATA_REF (rep) && DR_IS_READ (STMT_VINFO_DATA_REF (rep)) && SLP_TREE_LOAD_PERMUTATION (node).exists ()) { auto_load_permutation_t tmp_perm; tmp_perm.safe_splice (SLP_TREE_LOAD_PERMUTATION (node)); if (out_layout_i > 0) vect_slp_permute (m_perms[out_layout_i], tmp_perm, true); poly_uint64 vf = 1; if (auto loop_vinfo = dyn_cast (m_vinfo)) vf = LOOP_VINFO_VECT_FACTOR (loop_vinfo); unsigned int n_perms; if (!vect_transform_slp_perm_load_1 (m_vinfo, node, tmp_perm, vNULL, nullptr, vf, true, false, &n_perms)) { auto rep = SLP_TREE_REPRESENTATIVE (node); if (out_layout_i == 0) { /* Use the fallback cost if the load is an N-to-N permutation. Otherwise assume that the node will be rejected later and rebuilt from scalars. */ if (STMT_VINFO_GROUPED_ACCESS (rep) && (DR_GROUP_SIZE (DR_GROUP_FIRST_ELEMENT (rep)) == SLP_TREE_LANES (node))) return fallback_cost; return 0; } return -1; } /* See the comment above the corresponding VEC_PERM_EXPR handling. */ return n_perms == 0 ? 0 : 1; } return 0; } /* Decide which element layouts we should consider using. Calculate the weights associated with inserting layout changes on partition edges. Also mark partitions that cannot change layout, by setting their layout to zero. */ void vect_optimize_slp_pass::start_choosing_layouts () { /* Used to assign unique permutation indices. */ using perm_hash = unbounded_hashmap_traits< vec_free_hash_base>, int_hash >; hash_map, int, perm_hash> layout_ids; /* Layout 0 is "no change". */ m_perms.safe_push (vNULL); /* Create layouts from existing permutations. */ auto_load_permutation_t tmp_perm; for (unsigned int node_i : m_partitioned_nodes) { /* Leafs also double as entries to the reverse graph. Allow the layout of those to be changed. */ auto &vertex = m_vertices[node_i]; auto &partition = m_partitions[vertex.partition]; if (!m_slpg->vertices[node_i].succ) partition.layout = 0; /* Loads and VEC_PERM_EXPRs are the only things generating permutes. */ slp_tree node = vertex.node; stmt_vec_info dr_stmt = SLP_TREE_REPRESENTATIVE (node); slp_tree child; unsigned HOST_WIDE_INT imin, imax = 0; bool any_permute = false; tmp_perm.truncate (0); if (SLP_TREE_LOAD_PERMUTATION (node).exists ()) { /* If splitting out a SLP_TREE_LANE_PERMUTATION can make the node unpermuted, record a layout that reverses this permutation. We would need more work to cope with loads that are internally permuted and also have inputs (such as masks for IFN_MASK_LOADs). */ gcc_assert (partition.layout == 0 && !m_slpg->vertices[node_i].succ); if (!STMT_VINFO_GROUPED_ACCESS (dr_stmt)) continue; dr_stmt = DR_GROUP_FIRST_ELEMENT (dr_stmt); imin = DR_GROUP_SIZE (dr_stmt) + 1; tmp_perm.safe_splice (SLP_TREE_LOAD_PERMUTATION (node)); } else if (SLP_TREE_CODE (node) == VEC_PERM_EXPR && SLP_TREE_CHILDREN (node).length () == 1 && (child = SLP_TREE_CHILDREN (node)[0]) && (TYPE_VECTOR_SUBPARTS (SLP_TREE_VECTYPE (child)) .is_constant (&imin))) { /* If the child has the same vector size as this node, reversing the permutation can make the permutation a no-op. In other cases it can change a true permutation into a full-vector extract. */ tmp_perm.reserve (SLP_TREE_LANES (node)); for (unsigned j = 0; j < SLP_TREE_LANES (node); ++j) tmp_perm.quick_push (SLP_TREE_LANE_PERMUTATION (node)[j].second); } else continue; for (unsigned j = 0; j < SLP_TREE_LANES (node); ++j) { unsigned idx = tmp_perm[j]; imin = MIN (imin, idx); imax = MAX (imax, idx); if (idx - tmp_perm[0] != j) any_permute = true; } /* If the span doesn't match we'd disrupt VF computation, avoid that for now. */ if (imax - imin + 1 != SLP_TREE_LANES (node)) continue; /* If there's no permute no need to split one out. In this case we can consider turning a load into a permuted load, if that turns out to be cheaper than alternatives. */ if (!any_permute) { partition.layout = -1; continue; } /* For now only handle true permutes, like vect_attempt_slp_rearrange_stmts did. This allows us to be lazy when permuting constants and invariants keeping the permute bijective. */ auto_sbitmap load_index (SLP_TREE_LANES (node)); bitmap_clear (load_index); for (unsigned j = 0; j < SLP_TREE_LANES (node); ++j) bitmap_set_bit (load_index, tmp_perm[j] - imin); unsigned j; for (j = 0; j < SLP_TREE_LANES (node); ++j) if (!bitmap_bit_p (load_index, j)) break; if (j != SLP_TREE_LANES (node)) continue; vec perm = vNULL; perm.safe_grow (SLP_TREE_LANES (node), true); for (unsigned j = 0; j < SLP_TREE_LANES (node); ++j) perm[j] = tmp_perm[j] - imin; if (int (m_perms.length ()) >= param_vect_max_layout_candidates) { /* Continue to use existing layouts, but don't add any more. */ int *entry = layout_ids.get (perm); partition.layout = entry ? *entry : 0; perm.release (); } else { bool existed; int &layout_i = layout_ids.get_or_insert (perm, &existed); if (existed) perm.release (); else { layout_i = m_perms.length (); m_perms.safe_push (perm); } partition.layout = layout_i; } } /* Initially assume that every layout is possible and has zero cost in every partition. */ m_partition_layout_costs.safe_grow_cleared (m_partitions.length () * m_perms.length ()); /* We have to mark outgoing permutations facing non-reduction graph entries that are not represented as to be materialized. */ for (slp_instance instance : m_vinfo->slp_instances) if (SLP_INSTANCE_KIND (instance) == slp_inst_kind_ctor) { unsigned int node_i = SLP_INSTANCE_TREE (instance)->vertex; m_partitions[m_vertices[node_i].partition].layout = 0; } /* Check which layouts each node and partition can handle. Calculate the weights associated with inserting layout changes on edges. */ for (unsigned int node_i : m_partitioned_nodes) { auto &vertex = m_vertices[node_i]; auto &partition = m_partitions[vertex.partition]; slp_tree node = vertex.node; if (stmt_vec_info rep = SLP_TREE_REPRESENTATIVE (node)) { vertex.weight = vect_slp_node_weight (node); /* We do not handle stores with a permutation, so all incoming permutations must have been materialized. We also don't handle masked grouped loads, which lack a permutation vector. In this case the memory locations form an implicit second input to the loads, on top of the explicit mask input, and the memory input's layout cannot be changed. On the other hand, we do support permuting gather loads and masked gather loads, where each scalar load is independent of the others. This can be useful if the address/index input benefits from permutation. */ if (STMT_VINFO_DATA_REF (rep) && STMT_VINFO_GROUPED_ACCESS (rep) && !SLP_TREE_LOAD_PERMUTATION (node).exists ()) partition.layout = 0; /* We cannot change the layout of an operation that is not independent on lanes. Note this is an explicit negative list since that's much shorter than the respective positive one but it's critical to keep maintaining it. */ if (is_gimple_call (STMT_VINFO_STMT (rep))) switch (gimple_call_combined_fn (STMT_VINFO_STMT (rep))) { case CFN_COMPLEX_ADD_ROT90: case CFN_COMPLEX_ADD_ROT270: case CFN_COMPLEX_MUL: case CFN_COMPLEX_MUL_CONJ: case CFN_VEC_ADDSUB: case CFN_VEC_FMADDSUB: case CFN_VEC_FMSUBADD: partition.layout = 0; default:; } } auto process_edge = [&](graph_edge *ud, unsigned int other_node_i) { auto &other_vertex = m_vertices[other_node_i]; /* Count the number of edges from earlier partitions and the number of edges to later partitions. */ if (other_vertex.partition < vertex.partition) partition.in_degree += 1; else partition.out_degree += 1; /* If the current node uses the result of OTHER_NODE_I, accumulate the effects of that. */ if (ud->src == int (node_i)) { other_vertex.out_weight += vertex.weight; other_vertex.out_degree += 1; } }; for_each_partition_edge (node_i, process_edge); } } /* Return the incoming costs for node NODE_I, assuming that each input keeps its current (provisional) choice of layout. The inputs do not necessarily have the same layout as each other. */ slpg_layout_cost vect_optimize_slp_pass::total_in_cost (unsigned int node_i) { auto &vertex = m_vertices[node_i]; slpg_layout_cost cost; auto add_cost = [&](graph_edge *, unsigned int other_node_i) { auto &other_vertex = m_vertices[other_node_i]; if (other_vertex.partition < vertex.partition) { auto &other_partition = m_partitions[other_vertex.partition]; auto &other_costs = partition_layout_costs (other_vertex.partition, other_partition.layout); slpg_layout_cost this_cost = other_costs.in_cost; this_cost.add_serial_cost (other_costs.internal_cost); this_cost.split (other_partition.out_degree); cost.add_parallel_cost (this_cost); } }; for_each_partition_edge (node_i, add_cost); return cost; } /* Return the cost of switching between layout LAYOUT1_I (at node NODE1_I) and layout LAYOUT2_I on cross-partition use-to-def edge UD. Return slpg_layout_cost::impossible () if the change isn't possible. */ slpg_layout_cost vect_optimize_slp_pass:: edge_layout_cost (graph_edge *ud, unsigned int node1_i, unsigned int layout1_i, unsigned int layout2_i) { auto &def_vertex = m_vertices[ud->dest]; auto &use_vertex = m_vertices[ud->src]; auto def_layout_i = ud->dest == int (node1_i) ? layout1_i : layout2_i; auto use_layout_i = ud->dest == int (node1_i) ? layout2_i : layout1_i; auto factor = change_layout_cost (def_vertex.node, def_layout_i, use_layout_i); if (factor < 0) return slpg_layout_cost::impossible (); /* We have a choice of putting the layout change at the site of the definition or at the site of the use. Prefer the former when optimizing for size or when the execution frequency of the definition is no greater than the combined execution frequencies of the uses. When putting the layout change at the site of the definition, divvy up the cost among all consumers. */ if (m_optimize_size || def_vertex.weight <= def_vertex.out_weight) { slpg_layout_cost cost = { def_vertex.weight * factor, m_optimize_size }; cost.split (def_vertex.out_degree); return cost; } return { use_vertex.weight * factor, m_optimize_size }; } /* UD represents a use-def link between FROM_NODE_I and a node in a later partition; FROM_NODE_I could be the definition node or the use node. The node at the other end of the link wants to use layout TO_LAYOUT_I. Return the cost of any necessary fix-ups on edge UD, or return slpg_layout_cost::impossible () if the change isn't possible. At this point, FROM_NODE_I's partition has chosen the cheapest layout based on the information available so far, but this choice is only provisional. */ slpg_layout_cost vect_optimize_slp_pass::forward_cost (graph_edge *ud, unsigned int from_node_i, unsigned int to_layout_i) { auto &from_vertex = m_vertices[from_node_i]; unsigned int from_partition_i = from_vertex.partition; slpg_partition_info &from_partition = m_partitions[from_partition_i]; gcc_assert (from_partition.layout >= 0); /* First calculate the cost on the assumption that FROM_PARTITION sticks with its current layout preference. */ slpg_layout_cost cost = slpg_layout_cost::impossible (); auto edge_cost = edge_layout_cost (ud, from_node_i, from_partition.layout, to_layout_i); if (edge_cost.is_possible ()) { auto &from_costs = partition_layout_costs (from_partition_i, from_partition.layout); cost = from_costs.in_cost; cost.add_serial_cost (from_costs.internal_cost); cost.split (from_partition.out_degree); cost.add_serial_cost (edge_cost); } /* Take the minimum of that cost and the cost that applies if FROM_PARTITION instead switches to TO_LAYOUT_I. */ auto &direct_layout_costs = partition_layout_costs (from_partition_i, to_layout_i); if (direct_layout_costs.is_possible ()) { slpg_layout_cost direct_cost = direct_layout_costs.in_cost; direct_cost.add_serial_cost (direct_layout_costs.internal_cost); direct_cost.split (from_partition.out_degree); if (!cost.is_possible () || direct_cost.is_better_than (cost, m_optimize_size)) cost = direct_cost; } return cost; } /* UD represents a use-def link between TO_NODE_I and a node in an earlier partition; TO_NODE_I could be the definition node or the use node. The node at the other end of the link wants to use layout FROM_LAYOUT_I; return the cost of any necessary fix-ups on edge UD, or slpg_layout_cost::impossible () if the choice cannot be made. At this point, TO_NODE_I's partition has a fixed choice of layout. */ slpg_layout_cost vect_optimize_slp_pass::backward_cost (graph_edge *ud, unsigned int to_node_i, unsigned int from_layout_i) { auto &to_vertex = m_vertices[to_node_i]; unsigned int to_partition_i = to_vertex.partition; slpg_partition_info &to_partition = m_partitions[to_partition_i]; gcc_assert (to_partition.layout >= 0); /* If TO_NODE_I is a VEC_PERM_EXPR consumer, see whether it can be adjusted for this input having layout FROM_LAYOUT_I. Assume that any other inputs keep their current choice of layout. */ auto &to_costs = partition_layout_costs (to_partition_i, to_partition.layout); if (ud->src == int (to_node_i) && SLP_TREE_CODE (to_vertex.node) == VEC_PERM_EXPR) { auto &from_partition = m_partitions[m_vertices[ud->dest].partition]; auto old_layout = from_partition.layout; from_partition.layout = from_layout_i; int factor = internal_node_cost (to_vertex.node, -1, to_partition.layout); from_partition.layout = old_layout; if (factor >= 0) { slpg_layout_cost cost = to_costs.out_cost; cost.add_serial_cost ({ to_vertex.weight * factor, m_optimize_size }); cost.split (to_partition.in_degree); return cost; } } /* Compute the cost if we insert any necessary layout change on edge UD. */ auto edge_cost = edge_layout_cost (ud, to_node_i, to_partition.layout, from_layout_i); if (edge_cost.is_possible ()) { slpg_layout_cost cost = to_costs.out_cost; cost.add_serial_cost (to_costs.internal_cost); cost.split (to_partition.in_degree); cost.add_serial_cost (edge_cost); return cost; } return slpg_layout_cost::impossible (); } /* Make a forward pass through the partitions, accumulating input costs. Make a tentative (provisional) choice of layout for each partition, ensuring that this choice still allows later partitions to keep their original layout. */ void vect_optimize_slp_pass::forward_pass () { for (unsigned int partition_i = 0; partition_i < m_partitions.length (); ++partition_i) { auto &partition = m_partitions[partition_i]; /* If the partition consists of a single VEC_PERM_EXPR, precompute the incoming cost that would apply if every predecessor partition keeps its current layout. This is used within the loop below. */ slpg_layout_cost in_cost; slp_tree single_node = nullptr; if (partition.node_end == partition.node_begin + 1) { unsigned int node_i = m_partitioned_nodes[partition.node_begin]; single_node = m_vertices[node_i].node; if (SLP_TREE_CODE (single_node) == VEC_PERM_EXPR) in_cost = total_in_cost (node_i); } /* Go through the possible layouts. Decide which ones are valid for this partition and record which of the valid layouts has the lowest cost. */ unsigned int min_layout_i = 0; slpg_layout_cost min_layout_cost = slpg_layout_cost::impossible (); for (unsigned int layout_i = 0; layout_i < m_perms.length (); ++layout_i) { auto &layout_costs = partition_layout_costs (partition_i, layout_i); if (!layout_costs.is_possible ()) continue; /* If the recorded layout is already 0 then the layout cannot change. */ if (partition.layout == 0 && layout_i != 0) { layout_costs.mark_impossible (); continue; } bool is_possible = true; for (unsigned int order_i = partition.node_begin; order_i < partition.node_end; ++order_i) { unsigned int node_i = m_partitioned_nodes[order_i]; auto &vertex = m_vertices[node_i]; /* Reject the layout if it is individually incompatible with any node in the partition. */ if (!is_compatible_layout (vertex.node, layout_i)) { is_possible = false; break; } auto add_cost = [&](graph_edge *ud, unsigned int other_node_i) { auto &other_vertex = m_vertices[other_node_i]; if (other_vertex.partition < vertex.partition) { /* Accumulate the incoming costs from earlier partitions, plus the cost of any layout changes on UD itself. */ auto cost = forward_cost (ud, other_node_i, layout_i); if (!cost.is_possible ()) is_possible = false; else layout_costs.in_cost.add_parallel_cost (cost); } else /* Reject the layout if it would make layout 0 impossible for later partitions. This amounts to testing that the target supports reversing the layout change on edges to later partitions. In principle, it might be possible to push a layout change all the way down a graph, so that it never needs to be reversed and so that the target doesn't need to support the reverse operation. But it would be awkward to bail out if we hit a partition that does not support the new layout, especially since we are not dealing with a lattice. */ is_possible &= edge_layout_cost (ud, other_node_i, 0, layout_i).is_possible (); }; for_each_partition_edge (node_i, add_cost); /* Accumulate the cost of using LAYOUT_I within NODE, both for the inputs and the outputs. */ int factor = internal_node_cost (vertex.node, layout_i, layout_i); if (factor < 0) { is_possible = false; break; } else if (factor) layout_costs.internal_cost.add_serial_cost ({ vertex.weight * factor, m_optimize_size }); } if (!is_possible) { layout_costs.mark_impossible (); continue; } /* Combine the incoming and partition-internal costs. */ slpg_layout_cost combined_cost = layout_costs.in_cost; combined_cost.add_serial_cost (layout_costs.internal_cost); /* If this partition consists of a single VEC_PERM_EXPR, see if the VEC_PERM_EXPR can be changed to support output layout LAYOUT_I while keeping all the provisional choices of input layout. */ if (single_node && SLP_TREE_CODE (single_node) == VEC_PERM_EXPR) { int factor = internal_node_cost (single_node, -1, layout_i); if (factor >= 0) { auto weight = m_vertices[single_node->vertex].weight; slpg_layout_cost internal_cost = { weight * factor, m_optimize_size }; slpg_layout_cost alt_cost = in_cost; alt_cost.add_serial_cost (internal_cost); if (alt_cost.is_better_than (combined_cost, m_optimize_size)) { combined_cost = alt_cost; layout_costs.in_cost = in_cost; layout_costs.internal_cost = internal_cost; } } } /* Record the layout with the lowest cost. Prefer layout 0 in the event of a tie between it and another layout. */ if (!min_layout_cost.is_possible () || combined_cost.is_better_than (min_layout_cost, m_optimize_size)) { min_layout_i = layout_i; min_layout_cost = combined_cost; } } /* This loop's handling of earlier partitions should ensure that choosing the original layout for the current partition is no less valid than it was in the original graph, even with the provisional layout choices for those earlier partitions. */ gcc_assert (min_layout_cost.is_possible ()); partition.layout = min_layout_i; } } /* Make a backward pass through the partitions, accumulating output costs. Make a final choice of layout for each partition. */ void vect_optimize_slp_pass::backward_pass () { for (unsigned int partition_i = m_partitions.length (); partition_i-- > 0;) { auto &partition = m_partitions[partition_i]; unsigned int min_layout_i = 0; slpg_layout_cost min_layout_cost = slpg_layout_cost::impossible (); for (unsigned int layout_i = 0; layout_i < m_perms.length (); ++layout_i) { auto &layout_costs = partition_layout_costs (partition_i, layout_i); if (!layout_costs.is_possible ()) continue; /* Accumulate the costs from successor partitions. */ bool is_possible = true; for (unsigned int order_i = partition.node_begin; order_i < partition.node_end; ++order_i) { unsigned int node_i = m_partitioned_nodes[order_i]; auto &vertex = m_vertices[node_i]; auto add_cost = [&](graph_edge *ud, unsigned int other_node_i) { auto &other_vertex = m_vertices[other_node_i]; auto &other_partition = m_partitions[other_vertex.partition]; if (other_vertex.partition > vertex.partition) { /* Accumulate the incoming costs from later partitions, plus the cost of any layout changes on UD itself. */ auto cost = backward_cost (ud, other_node_i, layout_i); if (!cost.is_possible ()) is_possible = false; else layout_costs.out_cost.add_parallel_cost (cost); } else /* Make sure that earlier partitions can (if necessary or beneficial) keep the layout that they chose in the forward pass. This ensures that there is at least one valid choice of layout. */ is_possible &= edge_layout_cost (ud, other_node_i, other_partition.layout, layout_i).is_possible (); }; for_each_partition_edge (node_i, add_cost); } if (!is_possible) { layout_costs.mark_impossible (); continue; } /* Locally combine the costs from the forward and backward passes. (This combined cost is not passed on, since that would lead to double counting.) */ slpg_layout_cost combined_cost = layout_costs.in_cost; combined_cost.add_serial_cost (layout_costs.internal_cost); combined_cost.add_serial_cost (layout_costs.out_cost); /* Record the layout with the lowest cost. Prefer layout 0 in the event of a tie between it and another layout. */ if (!min_layout_cost.is_possible () || combined_cost.is_better_than (min_layout_cost, m_optimize_size)) { min_layout_i = layout_i; min_layout_cost = combined_cost; } } gcc_assert (min_layout_cost.is_possible ()); partition.layout = min_layout_i; } } /* Return a node that applies layout TO_LAYOUT_I to the original form of NODE. NODE already has the layout that was selected for its partition. */ slp_tree vect_optimize_slp_pass::get_result_with_layout (slp_tree node, unsigned int to_layout_i) { unsigned int result_i = node->vertex * m_perms.length () + to_layout_i; slp_tree result = m_node_layouts[result_i]; if (result) return result; if (SLP_TREE_DEF_TYPE (node) == vect_constant_def || SLP_TREE_DEF_TYPE (node) == vect_external_def) { /* If the vector is uniform or unchanged, there's nothing to do. */ if (to_layout_i == 0 || vect_slp_tree_uniform_p (node)) result = node; else { auto scalar_ops = SLP_TREE_SCALAR_OPS (node).copy (); result = vect_create_new_slp_node (scalar_ops); vect_slp_permute (m_perms[to_layout_i], scalar_ops, true); } } else { unsigned int partition_i = m_vertices[node->vertex].partition; unsigned int from_layout_i = m_partitions[partition_i].layout; if (from_layout_i == to_layout_i) return node; /* If NODE is itself a VEC_PERM_EXPR, try to create a parallel permutation instead of a serial one. Leave the new permutation in TMP_PERM on success. */ auto_lane_permutation_t tmp_perm; unsigned int num_inputs = 1; if (SLP_TREE_CODE (node) == VEC_PERM_EXPR) { tmp_perm.safe_splice (SLP_TREE_LANE_PERMUTATION (node)); if (from_layout_i != 0) vect_slp_permute (m_perms[from_layout_i], tmp_perm, false); if (to_layout_i != 0) vect_slp_permute (m_perms[to_layout_i], tmp_perm, true); if (vectorizable_slp_permutation_1 (m_vinfo, nullptr, node, tmp_perm, SLP_TREE_CHILDREN (node), false) >= 0) num_inputs = SLP_TREE_CHILDREN (node).length (); else tmp_perm.truncate (0); } if (dump_enabled_p ()) { if (tmp_perm.length () > 0) dump_printf_loc (MSG_NOTE, vect_location, "duplicating permutation node %p with" " layout %d\n", (void *) node, to_layout_i); else dump_printf_loc (MSG_NOTE, vect_location, "inserting permutation node in place of %p\n", (void *) node); } unsigned int num_lanes = SLP_TREE_LANES (node); result = vect_create_new_slp_node (num_inputs, VEC_PERM_EXPR); if (SLP_TREE_SCALAR_STMTS (node).length ()) { auto &stmts = SLP_TREE_SCALAR_STMTS (result); stmts.safe_splice (SLP_TREE_SCALAR_STMTS (node)); if (from_layout_i != 0) vect_slp_permute (m_perms[from_layout_i], stmts, false); if (to_layout_i != 0) vect_slp_permute (m_perms[to_layout_i], stmts, true); } SLP_TREE_REPRESENTATIVE (result) = SLP_TREE_REPRESENTATIVE (node); SLP_TREE_LANES (result) = num_lanes; SLP_TREE_VECTYPE (result) = SLP_TREE_VECTYPE (node); result->vertex = -1; auto &lane_perm = SLP_TREE_LANE_PERMUTATION (result); if (tmp_perm.length ()) { lane_perm.safe_splice (tmp_perm); SLP_TREE_CHILDREN (result).safe_splice (SLP_TREE_CHILDREN (node)); } else { lane_perm.create (num_lanes); for (unsigned j = 0; j < num_lanes; ++j) lane_perm.quick_push ({ 0, j }); if (from_layout_i != 0) vect_slp_permute (m_perms[from_layout_i], lane_perm, false); if (to_layout_i != 0) vect_slp_permute (m_perms[to_layout_i], lane_perm, true); SLP_TREE_CHILDREN (result).safe_push (node); } for (slp_tree child : SLP_TREE_CHILDREN (result)) child->refcnt++; } m_node_layouts[result_i] = result; return result; } /* Apply the chosen vector layouts to the SLP graph. */ void vect_optimize_slp_pass::materialize () { /* We no longer need the costs, so avoid having two O(N * P) arrays live at the same time. */ m_partition_layout_costs.release (); m_node_layouts.safe_grow_cleared (m_vertices.length () * m_perms.length ()); auto_sbitmap fully_folded (m_vertices.length ()); bitmap_clear (fully_folded); for (unsigned int node_i : m_partitioned_nodes) { auto &vertex = m_vertices[node_i]; slp_tree node = vertex.node; int layout_i = m_partitions[vertex.partition].layout; gcc_assert (layout_i >= 0); /* Rearrange the scalar statements to match the chosen layout. */ if (layout_i > 0) vect_slp_permute (m_perms[layout_i], SLP_TREE_SCALAR_STMTS (node), true); /* Update load and lane permutations. */ if (SLP_TREE_CODE (node) == VEC_PERM_EXPR) { /* First try to absorb the input vector layouts. If that fails, force the inputs to have layout LAYOUT_I too. We checked that that was possible before deciding to use nonzero output layouts. (Note that at this stage we don't really have any guarantee that the target supports the original VEC_PERM_EXPR.) */ auto &perm = SLP_TREE_LANE_PERMUTATION (node); auto_lane_permutation_t tmp_perm; tmp_perm.safe_splice (perm); change_vec_perm_layout (node, tmp_perm, -1, layout_i); if (vectorizable_slp_permutation_1 (m_vinfo, nullptr, node, tmp_perm, SLP_TREE_CHILDREN (node), false) >= 0) { if (dump_enabled_p () && !std::equal (tmp_perm.begin (), tmp_perm.end (), perm.begin ())) dump_printf_loc (MSG_NOTE, vect_location, "absorbing input layouts into %p\n", (void *) node); std::copy (tmp_perm.begin (), tmp_perm.end (), perm.begin ()); bitmap_set_bit (fully_folded, node_i); } else { /* Not MSG_MISSED because it would make no sense to users. */ if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "failed to absorb input layouts into %p\n", (void *) node); change_vec_perm_layout (nullptr, perm, layout_i, layout_i); } } else { gcc_assert (!SLP_TREE_LANE_PERMUTATION (node).exists ()); auto &load_perm = SLP_TREE_LOAD_PERMUTATION (node); if (layout_i > 0) /* ??? When we handle non-bijective permutes the idea is that we can force the load-permutation to be { min, min + 1, min + 2, ... max }. But then the scalar defs might no longer match the lane content which means wrong-code with live lane vectorization. So we possibly have to have NULL entries for those. */ vect_slp_permute (m_perms[layout_i], load_perm, true); } } /* Do this before any nodes disappear, since it involves a walk over the leaves. */ remove_redundant_permutations (); /* Replace each child with a correctly laid-out version. */ for (unsigned int node_i : m_partitioned_nodes) { /* Skip nodes that have already been handled above. */ if (bitmap_bit_p (fully_folded, node_i)) continue; auto &vertex = m_vertices[node_i]; int in_layout_i = m_partitions[vertex.partition].layout; gcc_assert (in_layout_i >= 0); unsigned j; slp_tree child; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (vertex.node), j, child) { if (!child) continue; slp_tree new_child = get_result_with_layout (child, in_layout_i); if (new_child != child) { vect_free_slp_tree (child); SLP_TREE_CHILDREN (vertex.node)[j] = new_child; new_child->refcnt += 1; } } } } /* Elide load permutations that are not necessary. Such permutations might be pre-existing, rather than created by the layout optimizations. */ void vect_optimize_slp_pass::remove_redundant_permutations () { for (unsigned int node_i : m_leafs) { slp_tree node = m_vertices[node_i].node; if (!SLP_TREE_LOAD_PERMUTATION (node).exists ()) continue; /* In basic block vectorization we allow any subchain of an interleaving chain. FORNOW: not in loop SLP because of realignment complications. */ if (is_a (m_vinfo)) { bool subchain_p = true; stmt_vec_info next_load_info = NULL; stmt_vec_info load_info; unsigned j; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), j, load_info) { if (j != 0 && (next_load_info != load_info || DR_GROUP_GAP (load_info) != 1)) { subchain_p = false; break; } next_load_info = DR_GROUP_NEXT_ELEMENT (load_info); } if (subchain_p) { SLP_TREE_LOAD_PERMUTATION (node).release (); continue; } } else { loop_vec_info loop_vinfo = as_a (m_vinfo); stmt_vec_info load_info; bool this_load_permuted = false; unsigned j; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), j, load_info) if (SLP_TREE_LOAD_PERMUTATION (node)[j] != j) { this_load_permuted = true; break; } stmt_vec_info first_stmt_info = DR_GROUP_FIRST_ELEMENT (SLP_TREE_SCALAR_STMTS (node)[0]); if (!this_load_permuted /* The load requires permutation when unrolling exposes a gap either because the group is larger than the SLP group-size or because there is a gap between the groups. */ && (known_eq (LOOP_VINFO_VECT_FACTOR (loop_vinfo), 1U) || ((SLP_TREE_LANES (node) == DR_GROUP_SIZE (first_stmt_info)) && DR_GROUP_GAP (first_stmt_info) == 0))) { SLP_TREE_LOAD_PERMUTATION (node).release (); continue; } } } } /* Print the partition graph and layout information to the dump file. */ void vect_optimize_slp_pass::dump () { dump_printf_loc (MSG_NOTE, vect_location, "SLP optimize permutations:\n"); for (unsigned int layout_i = 1; layout_i < m_perms.length (); ++layout_i) { dump_printf_loc (MSG_NOTE, vect_location, " %d: { ", layout_i); const char *sep = ""; for (unsigned int idx : m_perms[layout_i]) { dump_printf (MSG_NOTE, "%s%d", sep, idx); sep = ", "; } dump_printf (MSG_NOTE, " }\n"); } dump_printf_loc (MSG_NOTE, vect_location, "SLP optimize partitions:\n"); for (unsigned int partition_i = 0; partition_i < m_partitions.length (); ++partition_i) { auto &partition = m_partitions[partition_i]; dump_printf_loc (MSG_NOTE, vect_location, " -------------\n"); dump_printf_loc (MSG_NOTE, vect_location, " partition %d (layout %d):\n", partition_i, partition.layout); dump_printf_loc (MSG_NOTE, vect_location, " nodes:\n"); for (unsigned int order_i = partition.node_begin; order_i < partition.node_end; ++order_i) { auto &vertex = m_vertices[m_partitioned_nodes[order_i]]; dump_printf_loc (MSG_NOTE, vect_location, " - %p:\n", (void *) vertex.node); dump_printf_loc (MSG_NOTE, vect_location, " weight: %f\n", vertex.weight.to_double ()); if (vertex.out_degree) dump_printf_loc (MSG_NOTE, vect_location, " out weight: %f (degree %d)\n", vertex.out_weight.to_double (), vertex.out_degree); if (SLP_TREE_CODE (vertex.node) == VEC_PERM_EXPR) dump_printf_loc (MSG_NOTE, vect_location, " op: VEC_PERM_EXPR\n"); else if (auto rep = SLP_TREE_REPRESENTATIVE (vertex.node)) dump_printf_loc (MSG_NOTE, vect_location, " op template: %G", rep->stmt); } dump_printf_loc (MSG_NOTE, vect_location, " edges:\n"); for (unsigned int order_i = partition.node_begin; order_i < partition.node_end; ++order_i) { unsigned int node_i = m_partitioned_nodes[order_i]; auto &vertex = m_vertices[node_i]; auto print_edge = [&](graph_edge *, unsigned int other_node_i) { auto &other_vertex = m_vertices[other_node_i]; if (other_vertex.partition < vertex.partition) dump_printf_loc (MSG_NOTE, vect_location, " - %p [%d] --> %p\n", (void *) other_vertex.node, other_vertex.partition, (void *) vertex.node); else dump_printf_loc (MSG_NOTE, vect_location, " - %p --> [%d] %p\n", (void *) vertex.node, other_vertex.partition, (void *) other_vertex.node); }; for_each_partition_edge (node_i, print_edge); } for (unsigned int layout_i = 0; layout_i < m_perms.length (); ++layout_i) { auto &layout_costs = partition_layout_costs (partition_i, layout_i); if (layout_costs.is_possible ()) { dump_printf_loc (MSG_NOTE, vect_location, " layout %d:%s\n", layout_i, partition.layout == int (layout_i) ? " (*)" : ""); slpg_layout_cost combined_cost = layout_costs.in_cost; combined_cost.add_serial_cost (layout_costs.internal_cost); combined_cost.add_serial_cost (layout_costs.out_cost); #define TEMPLATE "{depth: %f, total: %f}" dump_printf_loc (MSG_NOTE, vect_location, " " TEMPLATE "\n", layout_costs.in_cost.depth.to_double (), layout_costs.in_cost.total.to_double ()); dump_printf_loc (MSG_NOTE, vect_location, " + " TEMPLATE "\n", layout_costs.internal_cost.depth.to_double (), layout_costs.internal_cost.total.to_double ()); dump_printf_loc (MSG_NOTE, vect_location, " + " TEMPLATE "\n", layout_costs.out_cost.depth.to_double (), layout_costs.out_cost.total.to_double ()); dump_printf_loc (MSG_NOTE, vect_location, " = " TEMPLATE "\n", combined_cost.depth.to_double (), combined_cost.total.to_double ()); #undef TEMPLATE } else dump_printf_loc (MSG_NOTE, vect_location, " layout %d: rejected\n", layout_i); } } } /* Main entry point for the SLP graph optimization pass. */ void vect_optimize_slp_pass::run () { build_graph (); create_partitions (); start_choosing_layouts (); if (m_perms.length () > 1) { forward_pass (); backward_pass (); if (dump_enabled_p ()) dump (); materialize (); while (!m_perms.is_empty ()) m_perms.pop ().release (); } else remove_redundant_permutations (); free_graph (m_slpg); } /* Optimize the SLP graph of VINFO. */ void vect_optimize_slp (vec_info *vinfo) { if (vinfo->slp_instances.is_empty ()) return; vect_optimize_slp_pass (vinfo).run (); } /* Gather loads reachable from the individual SLP graph entries. */ void vect_gather_slp_loads (vec_info *vinfo) { unsigned i; slp_instance instance; FOR_EACH_VEC_ELT (vinfo->slp_instances, i, instance) { hash_set visited; vect_gather_slp_loads (SLP_INSTANCE_LOADS (instance), SLP_INSTANCE_TREE (instance), visited); } } /* For each possible SLP instance decide whether to SLP it and calculate overall unrolling factor needed to SLP the loop. Return TRUE if decided to SLP at least one instance. */ bool vect_make_slp_decision (loop_vec_info loop_vinfo) { unsigned int i; poly_uint64 unrolling_factor = 1; const vec &slp_instances = LOOP_VINFO_SLP_INSTANCES (loop_vinfo); slp_instance instance; int decided_to_slp = 0; DUMP_VECT_SCOPE ("vect_make_slp_decision"); FOR_EACH_VEC_ELT (slp_instances, i, instance) { /* FORNOW: SLP if you can. */ /* All unroll factors have the form: GET_MODE_SIZE (vinfo->vector_mode) * X for some rational X, so they must have a common multiple. */ unrolling_factor = force_common_multiple (unrolling_factor, SLP_INSTANCE_UNROLLING_FACTOR (instance)); /* Mark all the stmts that belong to INSTANCE as PURE_SLP stmts. Later we call vect_detect_hybrid_slp () to find stmts that need hybrid SLP and loop-based vectorization. Such stmts will be marked as HYBRID. */ vect_mark_slp_stmts (SLP_INSTANCE_TREE (instance)); decided_to_slp++; } LOOP_VINFO_SLP_UNROLLING_FACTOR (loop_vinfo) = unrolling_factor; if (decided_to_slp && dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "Decided to SLP %d instances. Unrolling factor ", decided_to_slp); dump_dec (MSG_NOTE, unrolling_factor); dump_printf (MSG_NOTE, "\n"); } return (decided_to_slp > 0); } /* Private data for vect_detect_hybrid_slp. */ struct vdhs_data { loop_vec_info loop_vinfo; vec *worklist; }; /* Walker for walk_gimple_op. */ static tree vect_detect_hybrid_slp (tree *tp, int *, void *data) { walk_stmt_info *wi = (walk_stmt_info *)data; vdhs_data *dat = (vdhs_data *)wi->info; if (wi->is_lhs) return NULL_TREE; stmt_vec_info def_stmt_info = dat->loop_vinfo->lookup_def (*tp); if (!def_stmt_info) return NULL_TREE; def_stmt_info = vect_stmt_to_vectorize (def_stmt_info); if (PURE_SLP_STMT (def_stmt_info)) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "marking hybrid: %G", def_stmt_info->stmt); STMT_SLP_TYPE (def_stmt_info) = hybrid; dat->worklist->safe_push (def_stmt_info); } return NULL_TREE; } /* Look if STMT_INFO is consumed by SLP indirectly and mark it pure_slp if so, otherwise pushing it to WORKLIST. */ static void maybe_push_to_hybrid_worklist (vec_info *vinfo, vec &worklist, stmt_vec_info stmt_info) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Processing hybrid candidate : %G", stmt_info->stmt); stmt_vec_info orig_info = vect_orig_stmt (stmt_info); imm_use_iterator iter2; ssa_op_iter iter1; use_operand_p use_p; def_operand_p def_p; bool any_def = false; FOR_EACH_PHI_OR_STMT_DEF (def_p, orig_info->stmt, iter1, SSA_OP_DEF) { any_def = true; FOR_EACH_IMM_USE_FAST (use_p, iter2, DEF_FROM_PTR (def_p)) { if (is_gimple_debug (USE_STMT (use_p))) continue; stmt_vec_info use_info = vinfo->lookup_stmt (USE_STMT (use_p)); /* An out-of loop use means this is a loop_vect sink. */ if (!use_info) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Found loop_vect sink: %G", stmt_info->stmt); worklist.safe_push (stmt_info); return; } else if (!STMT_SLP_TYPE (vect_stmt_to_vectorize (use_info))) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Found loop_vect use: %G", use_info->stmt); worklist.safe_push (stmt_info); return; } } } /* No def means this is a loo_vect sink. */ if (!any_def) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Found loop_vect sink: %G", stmt_info->stmt); worklist.safe_push (stmt_info); return; } if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Marked SLP consumed stmt pure: %G", stmt_info->stmt); STMT_SLP_TYPE (stmt_info) = pure_slp; } /* Find stmts that must be both vectorized and SLPed. */ void vect_detect_hybrid_slp (loop_vec_info loop_vinfo) { DUMP_VECT_SCOPE ("vect_detect_hybrid_slp"); /* All stmts participating in SLP are marked pure_slp, all other stmts are loop_vect. First collect all loop_vect stmts into a worklist. SLP patterns cause not all original scalar stmts to appear in SLP_TREE_SCALAR_STMTS and thus not all of them are marked pure_slp. Rectify this here and do a backward walk over the IL only considering stmts as loop_vect when they are used by a loop_vect stmt and otherwise mark them as pure_slp. */ auto_vec worklist; for (int i = LOOP_VINFO_LOOP (loop_vinfo)->num_nodes - 1; i >= 0; --i) { basic_block bb = LOOP_VINFO_BBS (loop_vinfo)[i]; for (gphi_iterator gsi = gsi_start_phis (bb); !gsi_end_p (gsi); gsi_next (&gsi)) { gphi *phi = gsi.phi (); stmt_vec_info stmt_info = loop_vinfo->lookup_stmt (phi); if (!STMT_SLP_TYPE (stmt_info) && STMT_VINFO_RELEVANT (stmt_info)) maybe_push_to_hybrid_worklist (loop_vinfo, worklist, stmt_info); } for (gimple_stmt_iterator gsi = gsi_last_bb (bb); !gsi_end_p (gsi); gsi_prev (&gsi)) { gimple *stmt = gsi_stmt (gsi); if (is_gimple_debug (stmt)) continue; stmt_vec_info stmt_info = loop_vinfo->lookup_stmt (stmt); if (STMT_VINFO_IN_PATTERN_P (stmt_info)) { for (gimple_stmt_iterator gsi2 = gsi_start (STMT_VINFO_PATTERN_DEF_SEQ (stmt_info)); !gsi_end_p (gsi2); gsi_next (&gsi2)) { stmt_vec_info patt_info = loop_vinfo->lookup_stmt (gsi_stmt (gsi2)); if (!STMT_SLP_TYPE (patt_info) && STMT_VINFO_RELEVANT (patt_info)) maybe_push_to_hybrid_worklist (loop_vinfo, worklist, patt_info); } stmt_info = STMT_VINFO_RELATED_STMT (stmt_info); } if (!STMT_SLP_TYPE (stmt_info) && STMT_VINFO_RELEVANT (stmt_info)) maybe_push_to_hybrid_worklist (loop_vinfo, worklist, stmt_info); } } /* Now we have a worklist of non-SLP stmts, follow use->def chains and mark any SLP vectorized stmt as hybrid. ??? We're visiting def stmts N times (once for each non-SLP and once for each hybrid-SLP use). */ walk_stmt_info wi; vdhs_data dat; dat.worklist = &worklist; dat.loop_vinfo = loop_vinfo; memset (&wi, 0, sizeof (wi)); wi.info = (void *)&dat; while (!worklist.is_empty ()) { stmt_vec_info stmt_info = worklist.pop (); /* Since SSA operands are not set up for pattern stmts we need to use walk_gimple_op. */ wi.is_lhs = 0; walk_gimple_op (stmt_info->stmt, vect_detect_hybrid_slp, &wi); /* For gather/scatter make sure to walk the offset operand, that can be a scaling and conversion away. */ gather_scatter_info gs_info; if (STMT_VINFO_GATHER_SCATTER_P (stmt_info) && vect_check_gather_scatter (stmt_info, loop_vinfo, &gs_info)) { int dummy; vect_detect_hybrid_slp (&gs_info.offset, &dummy, &wi); } } } /* Initialize a bb_vec_info struct for the statements in BBS basic blocks. */ _bb_vec_info::_bb_vec_info (vec _bbs, vec_info_shared *shared) : vec_info (vec_info::bb, shared), bbs (_bbs), roots (vNULL) { for (unsigned i = 0; i < bbs.length (); ++i) { if (i != 0) for (gphi_iterator si = gsi_start_phis (bbs[i]); !gsi_end_p (si); gsi_next (&si)) { gphi *phi = si.phi (); gimple_set_uid (phi, 0); add_stmt (phi); } for (gimple_stmt_iterator gsi = gsi_start_bb (bbs[i]); !gsi_end_p (gsi); gsi_next (&gsi)) { gimple *stmt = gsi_stmt (gsi); gimple_set_uid (stmt, 0); if (is_gimple_debug (stmt)) continue; add_stmt (stmt); } } } /* Free BB_VINFO struct, as well as all the stmt_vec_info structs of all the stmts in the basic block. */ _bb_vec_info::~_bb_vec_info () { /* Reset region marker. */ for (unsigned i = 0; i < bbs.length (); ++i) { if (i != 0) for (gphi_iterator si = gsi_start_phis (bbs[i]); !gsi_end_p (si); gsi_next (&si)) { gphi *phi = si.phi (); gimple_set_uid (phi, -1); } for (gimple_stmt_iterator gsi = gsi_start_bb (bbs[i]); !gsi_end_p (gsi); gsi_next (&gsi)) { gimple *stmt = gsi_stmt (gsi); gimple_set_uid (stmt, -1); } } for (unsigned i = 0; i < roots.length (); ++i) { roots[i].stmts.release (); roots[i].roots.release (); } roots.release (); } /* Subroutine of vect_slp_analyze_node_operations. Handle the root of NODE, given then that child nodes have already been processed, and that their def types currently match their SLP node's def type. */ static bool vect_slp_analyze_node_operations_1 (vec_info *vinfo, slp_tree node, slp_instance node_instance, stmt_vector_for_cost *cost_vec) { stmt_vec_info stmt_info = SLP_TREE_REPRESENTATIVE (node); /* Calculate the number of vector statements to be created for the scalar stmts in this node. For SLP reductions it is equal to the number of vector statements in the children (which has already been calculated by the recursive call). Otherwise it is the number of scalar elements in one scalar iteration (DR_GROUP_SIZE) multiplied by VF divided by the number of elements in a vector. */ if (!STMT_VINFO_DATA_REF (stmt_info) && REDUC_GROUP_FIRST_ELEMENT (stmt_info)) { for (unsigned i = 0; i < SLP_TREE_CHILDREN (node).length (); ++i) if (SLP_TREE_DEF_TYPE (SLP_TREE_CHILDREN (node)[i]) == vect_internal_def) { SLP_TREE_NUMBER_OF_VEC_STMTS (node) = SLP_TREE_NUMBER_OF_VEC_STMTS (SLP_TREE_CHILDREN (node)[i]); break; } } else { poly_uint64 vf; if (loop_vec_info loop_vinfo = dyn_cast (vinfo)) vf = loop_vinfo->vectorization_factor; else vf = 1; unsigned int group_size = SLP_TREE_LANES (node); tree vectype = SLP_TREE_VECTYPE (node); SLP_TREE_NUMBER_OF_VEC_STMTS (node) = vect_get_num_vectors (vf * group_size, vectype); } /* Handle purely internal nodes. */ if (SLP_TREE_CODE (node) == VEC_PERM_EXPR) { if (!vectorizable_slp_permutation (vinfo, NULL, node, cost_vec)) return false; stmt_vec_info slp_stmt_info; unsigned int i; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, slp_stmt_info) { if (STMT_VINFO_LIVE_P (slp_stmt_info) && !vectorizable_live_operation (vinfo, slp_stmt_info, NULL, node, node_instance, i, false, cost_vec)) return false; } return true; } bool dummy; return vect_analyze_stmt (vinfo, stmt_info, &dummy, node, node_instance, cost_vec); } /* Try to build NODE from scalars, returning true on success. NODE_INSTANCE is the SLP instance that contains NODE. */ static bool vect_slp_convert_to_external (vec_info *vinfo, slp_tree node, slp_instance node_instance) { stmt_vec_info stmt_info; unsigned int i; if (!is_a (vinfo) || node == SLP_INSTANCE_TREE (node_instance) || !SLP_TREE_SCALAR_STMTS (node).exists () || vect_contains_pattern_stmt_p (SLP_TREE_SCALAR_STMTS (node)) /* Force the mask use to be built from scalars instead. */ || VECTOR_BOOLEAN_TYPE_P (SLP_TREE_VECTYPE (node))) return false; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Building vector operands of %p from scalars instead\n", (void *) node); /* Don't remove and free the child nodes here, since they could be referenced by other structures. The analysis and scheduling phases (need to) ignore child nodes of anything that isn't vect_internal_def. */ unsigned int group_size = SLP_TREE_LANES (node); SLP_TREE_DEF_TYPE (node) = vect_external_def; /* Invariants get their vector type from the uses. */ SLP_TREE_VECTYPE (node) = NULL_TREE; SLP_TREE_SCALAR_OPS (node).safe_grow (group_size, true); SLP_TREE_LOAD_PERMUTATION (node).release (); FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) { tree lhs = gimple_get_lhs (vect_orig_stmt (stmt_info)->stmt); SLP_TREE_SCALAR_OPS (node)[i] = lhs; } return true; } /* Return true if all elements of the slice are the same. */ bool vect_scalar_ops_slice::all_same_p () const { for (unsigned int i = 1; i < length; ++i) if (!operand_equal_p (op (0), op (i))) return false; return true; } hashval_t vect_scalar_ops_slice_hash::hash (const value_type &s) { hashval_t hash = 0; for (unsigned i = 0; i < s.length; ++i) hash = iterative_hash_expr (s.op (i), hash); return hash; } bool vect_scalar_ops_slice_hash::equal (const value_type &s1, const compare_type &s2) { if (s1.length != s2.length) return false; for (unsigned i = 0; i < s1.length; ++i) if (!operand_equal_p (s1.op (i), s2.op (i))) return false; return true; } /* Compute the prologue cost for invariant or constant operands represented by NODE. */ static void vect_prologue_cost_for_slp (slp_tree node, stmt_vector_for_cost *cost_vec) { /* There's a special case of an existing vector, that costs nothing. */ if (SLP_TREE_SCALAR_OPS (node).length () == 0 && !SLP_TREE_VEC_DEFS (node).is_empty ()) return; /* Without looking at the actual initializer a vector of constants can be implemented as load from the constant pool. When all elements are the same we can use a splat. */ tree vectype = SLP_TREE_VECTYPE (node); unsigned group_size = SLP_TREE_SCALAR_OPS (node).length (); unsigned HOST_WIDE_INT const_nunits; unsigned nelt_limit; auto ops = &SLP_TREE_SCALAR_OPS (node); auto_vec starts (SLP_TREE_NUMBER_OF_VEC_STMTS (node)); if (TYPE_VECTOR_SUBPARTS (vectype).is_constant (&const_nunits) && ! multiple_p (const_nunits, group_size)) { nelt_limit = const_nunits; hash_set vector_ops; for (unsigned int i = 0; i < SLP_TREE_NUMBER_OF_VEC_STMTS (node); ++i) if (!vector_ops.add ({ ops, i * const_nunits, const_nunits })) starts.quick_push (i * const_nunits); } else { /* If either the vector has variable length or the vectors are composed of repeated whole groups we only need to cost construction once. All vectors will be the same. */ nelt_limit = group_size; starts.quick_push (0); } /* ??? We're just tracking whether vectors in a single node are the same. Ideally we'd do something more global. */ for (unsigned int start : starts) { vect_cost_for_stmt kind; if (SLP_TREE_DEF_TYPE (node) == vect_constant_def) kind = vector_load; else if (vect_scalar_ops_slice { ops, start, nelt_limit }.all_same_p ()) kind = scalar_to_vec; else kind = vec_construct; record_stmt_cost (cost_vec, 1, kind, node, vectype, 0, vect_prologue); } } /* Analyze statements contained in SLP tree NODE after recursively analyzing the subtree. NODE_INSTANCE contains NODE and VINFO contains INSTANCE. Return true if the operations are supported. */ static bool vect_slp_analyze_node_operations (vec_info *vinfo, slp_tree node, slp_instance node_instance, hash_set &visited_set, vec &visited_vec, stmt_vector_for_cost *cost_vec) { int i, j; slp_tree child; /* Assume we can code-generate all invariants. */ if (!node || SLP_TREE_DEF_TYPE (node) == vect_constant_def || SLP_TREE_DEF_TYPE (node) == vect_external_def) return true; if (SLP_TREE_DEF_TYPE (node) == vect_uninitialized_def) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Failed cyclic SLP reference in %p\n", (void *) node); return false; } gcc_assert (SLP_TREE_DEF_TYPE (node) == vect_internal_def); /* If we already analyzed the exact same set of scalar stmts we're done. We share the generated vector stmts for those. */ if (visited_set.add (node)) return true; visited_vec.safe_push (node); bool res = true; unsigned visited_rec_start = visited_vec.length (); unsigned cost_vec_rec_start = cost_vec->length (); bool seen_non_constant_child = false; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) { res = vect_slp_analyze_node_operations (vinfo, child, node_instance, visited_set, visited_vec, cost_vec); if (!res) break; if (child && SLP_TREE_DEF_TYPE (child) != vect_constant_def) seen_non_constant_child = true; } /* We're having difficulties scheduling nodes with just constant operands and no scalar stmts since we then cannot compute a stmt insertion place. */ if (!seen_non_constant_child && SLP_TREE_SCALAR_STMTS (node).is_empty ()) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Cannot vectorize all-constant op node %p\n", (void *) node); res = false; } if (res) res = vect_slp_analyze_node_operations_1 (vinfo, node, node_instance, cost_vec); /* If analysis failed we have to pop all recursive visited nodes plus ourselves. */ if (!res) { while (visited_vec.length () >= visited_rec_start) visited_set.remove (visited_vec.pop ()); cost_vec->truncate (cost_vec_rec_start); } /* When the node can be vectorized cost invariant nodes it references. This is not done in DFS order to allow the refering node vectorizable_* calls to nail down the invariant nodes vector type and possibly unshare it if it needs a different vector type than other referrers. */ if (res) FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), j, child) if (child && (SLP_TREE_DEF_TYPE (child) == vect_constant_def || SLP_TREE_DEF_TYPE (child) == vect_external_def) /* Perform usual caching, note code-generation still code-gens these nodes multiple times but we expect to CSE them later. */ && !visited_set.add (child)) { visited_vec.safe_push (child); /* ??? After auditing more code paths make a "default" and push the vector type from NODE to all children if it is not already set. */ /* Compute the number of vectors to be generated. */ tree vector_type = SLP_TREE_VECTYPE (child); if (!vector_type) { /* For shifts with a scalar argument we don't need to cost or code-generate anything. ??? Represent this more explicitely. */ gcc_assert ((STMT_VINFO_TYPE (SLP_TREE_REPRESENTATIVE (node)) == shift_vec_info_type) && j == 1); continue; } unsigned group_size = SLP_TREE_LANES (child); poly_uint64 vf = 1; if (loop_vec_info loop_vinfo = dyn_cast (vinfo)) vf = loop_vinfo->vectorization_factor; SLP_TREE_NUMBER_OF_VEC_STMTS (child) = vect_get_num_vectors (vf * group_size, vector_type); /* And cost them. */ vect_prologue_cost_for_slp (child, cost_vec); } /* If this node or any of its children can't be vectorized, try pruning the tree here rather than felling the whole thing. */ if (!res && vect_slp_convert_to_external (vinfo, node, node_instance)) { /* We'll need to revisit this for invariant costing and number of vectorized stmt setting. */ res = true; } return res; } /* Mark lanes of NODE that are live outside of the basic-block vectorized region and that can be vectorized using vectorizable_live_operation with STMT_VINFO_LIVE_P. Not handled live operations will cause the scalar code computing it to be retained. */ static void vect_bb_slp_mark_live_stmts (bb_vec_info bb_vinfo, slp_tree node, slp_instance instance, stmt_vector_for_cost *cost_vec, hash_set &svisited, hash_set &visited) { if (visited.add (node)) return; unsigned i; stmt_vec_info stmt_info; stmt_vec_info last_stmt = vect_find_last_scalar_stmt_in_slp (node); FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) { if (svisited.contains (stmt_info)) continue; stmt_vec_info orig_stmt_info = vect_orig_stmt (stmt_info); if (STMT_VINFO_IN_PATTERN_P (orig_stmt_info) && STMT_VINFO_RELATED_STMT (orig_stmt_info) != stmt_info) /* Only the pattern root stmt computes the original scalar value. */ continue; bool mark_visited = true; gimple *orig_stmt = orig_stmt_info->stmt; ssa_op_iter op_iter; def_operand_p def_p; FOR_EACH_PHI_OR_STMT_DEF (def_p, orig_stmt, op_iter, SSA_OP_DEF) { imm_use_iterator use_iter; gimple *use_stmt; stmt_vec_info use_stmt_info; FOR_EACH_IMM_USE_STMT (use_stmt, use_iter, DEF_FROM_PTR (def_p)) if (!is_gimple_debug (use_stmt)) { use_stmt_info = bb_vinfo->lookup_stmt (use_stmt); if (!use_stmt_info || !PURE_SLP_STMT (vect_stmt_to_vectorize (use_stmt_info))) { STMT_VINFO_LIVE_P (stmt_info) = true; if (vectorizable_live_operation (bb_vinfo, stmt_info, NULL, node, instance, i, false, cost_vec)) /* ??? So we know we can vectorize the live stmt from one SLP node. If we cannot do so from all or none consistently we'd have to record which SLP node (and lane) we want to use for the live operation. So make sure we can code-generate from all nodes. */ mark_visited = false; else STMT_VINFO_LIVE_P (stmt_info) = false; break; } } /* We have to verify whether we can insert the lane extract before all uses. The following is a conservative approximation. We cannot put this into vectorizable_live_operation because iterating over all use stmts from inside a FOR_EACH_IMM_USE_STMT doesn't work. Note that while the fact that we emit code for loads at the first load should make this a non-problem leafs we construct from scalars are vectorized after the last scalar def. ??? If we'd actually compute the insert location during analysis we could use sth less conservative than the last scalar stmt in the node for the dominance check. */ /* ??? What remains is "live" uses in vector CTORs in the same SLP graph which is where those uses can end up code-generated right after their definition instead of close to their original use. But that would restrict us to code-generate lane-extracts from the latest stmt in a node. So we compensate for this during code-generation, simply not replacing uses for those hopefully rare cases. */ if (STMT_VINFO_LIVE_P (stmt_info)) FOR_EACH_IMM_USE_STMT (use_stmt, use_iter, DEF_FROM_PTR (def_p)) if (!is_gimple_debug (use_stmt) && (!(use_stmt_info = bb_vinfo->lookup_stmt (use_stmt)) || !PURE_SLP_STMT (vect_stmt_to_vectorize (use_stmt_info))) && !vect_stmt_dominates_stmt_p (last_stmt->stmt, use_stmt)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Cannot determine insertion place for " "lane extract\n"); STMT_VINFO_LIVE_P (stmt_info) = false; mark_visited = true; } } if (mark_visited) svisited.add (stmt_info); } slp_tree child; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child && SLP_TREE_DEF_TYPE (child) == vect_internal_def) vect_bb_slp_mark_live_stmts (bb_vinfo, child, instance, cost_vec, svisited, visited); } /* Determine whether we can vectorize the reduction epilogue for INSTANCE. */ static bool vectorizable_bb_reduc_epilogue (slp_instance instance, stmt_vector_for_cost *cost_vec) { gassign *stmt = as_a (instance->root_stmts[0]->stmt); enum tree_code reduc_code = gimple_assign_rhs_code (stmt); if (reduc_code == MINUS_EXPR) reduc_code = PLUS_EXPR; internal_fn reduc_fn; tree vectype = SLP_TREE_VECTYPE (SLP_INSTANCE_TREE (instance)); if (!vectype || !reduction_fn_for_scalar_code (reduc_code, &reduc_fn) || reduc_fn == IFN_LAST || !direct_internal_fn_supported_p (reduc_fn, vectype, OPTIMIZE_FOR_BOTH) || !useless_type_conversion_p (TREE_TYPE (gimple_assign_lhs (stmt)), TREE_TYPE (vectype))) return false; /* There's no way to cost a horizontal vector reduction via REDUC_FN so cost log2 vector operations plus shuffles and one extraction. */ unsigned steps = floor_log2 (vect_nunits_for_cost (vectype)); record_stmt_cost (cost_vec, steps, vector_stmt, instance->root_stmts[0], vectype, 0, vect_body); record_stmt_cost (cost_vec, steps, vec_perm, instance->root_stmts[0], vectype, 0, vect_body); record_stmt_cost (cost_vec, 1, vec_to_scalar, instance->root_stmts[0], vectype, 0, vect_body); return true; } /* Prune from ROOTS all stmts that are computed as part of lanes of NODE and recurse to children. */ static void vect_slp_prune_covered_roots (slp_tree node, hash_set &roots, hash_set &visited) { if (SLP_TREE_DEF_TYPE (node) != vect_internal_def || visited.add (node)) return; stmt_vec_info stmt; unsigned i; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt) roots.remove (vect_orig_stmt (stmt)); slp_tree child; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child) vect_slp_prune_covered_roots (child, roots, visited); } /* Analyze statements in SLP instances of VINFO. Return true if the operations are supported. */ bool vect_slp_analyze_operations (vec_info *vinfo) { slp_instance instance; int i; DUMP_VECT_SCOPE ("vect_slp_analyze_operations"); hash_set visited; for (i = 0; vinfo->slp_instances.iterate (i, &instance); ) { auto_vec visited_vec; stmt_vector_for_cost cost_vec; cost_vec.create (2); if (is_a (vinfo)) vect_location = instance->location (); if (!vect_slp_analyze_node_operations (vinfo, SLP_INSTANCE_TREE (instance), instance, visited, visited_vec, &cost_vec) /* CTOR instances require vectorized defs for the SLP tree root. */ || (SLP_INSTANCE_KIND (instance) == slp_inst_kind_ctor && (SLP_TREE_DEF_TYPE (SLP_INSTANCE_TREE (instance)) != vect_internal_def /* Make sure we vectorized with the expected type. */ || !useless_type_conversion_p (TREE_TYPE (TREE_TYPE (gimple_assign_rhs1 (instance->root_stmts[0]->stmt))), TREE_TYPE (SLP_TREE_VECTYPE (SLP_INSTANCE_TREE (instance)))))) /* Check we can vectorize the reduction. */ || (SLP_INSTANCE_KIND (instance) == slp_inst_kind_bb_reduc && !vectorizable_bb_reduc_epilogue (instance, &cost_vec))) { slp_tree node = SLP_INSTANCE_TREE (instance); stmt_vec_info stmt_info; if (!SLP_INSTANCE_ROOT_STMTS (instance).is_empty ()) stmt_info = SLP_INSTANCE_ROOT_STMTS (instance)[0]; else stmt_info = SLP_TREE_SCALAR_STMTS (node)[0]; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "removing SLP instance operations starting from: %G", stmt_info->stmt); vect_free_slp_instance (instance); vinfo->slp_instances.ordered_remove (i); cost_vec.release (); while (!visited_vec.is_empty ()) visited.remove (visited_vec.pop ()); } else { i++; if (loop_vec_info loop_vinfo = dyn_cast (vinfo)) { add_stmt_costs (loop_vinfo->vector_costs, &cost_vec); cost_vec.release (); } else /* For BB vectorization remember the SLP graph entry cost for later. */ instance->cost_vec = cost_vec; } } /* Now look for SLP instances with a root that are covered by other instances and remove them. */ hash_set roots; for (i = 0; vinfo->slp_instances.iterate (i, &instance); ++i) if (!SLP_INSTANCE_ROOT_STMTS (instance).is_empty ()) roots.add (SLP_INSTANCE_ROOT_STMTS (instance)[0]); if (!roots.is_empty ()) { visited.empty (); for (i = 0; vinfo->slp_instances.iterate (i, &instance); ++i) vect_slp_prune_covered_roots (SLP_INSTANCE_TREE (instance), roots, visited); for (i = 0; vinfo->slp_instances.iterate (i, &instance); ) if (!SLP_INSTANCE_ROOT_STMTS (instance).is_empty () && !roots.contains (SLP_INSTANCE_ROOT_STMTS (instance)[0])) { stmt_vec_info root = SLP_INSTANCE_ROOT_STMTS (instance)[0]; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "removing SLP instance operations starting " "from: %G", root->stmt); vect_free_slp_instance (instance); vinfo->slp_instances.ordered_remove (i); } else ++i; } /* Compute vectorizable live stmts. */ if (bb_vec_info bb_vinfo = dyn_cast (vinfo)) { hash_set svisited; hash_set visited; for (i = 0; vinfo->slp_instances.iterate (i, &instance); ++i) { vect_location = instance->location (); vect_bb_slp_mark_live_stmts (bb_vinfo, SLP_INSTANCE_TREE (instance), instance, &instance->cost_vec, svisited, visited); } } return !vinfo->slp_instances.is_empty (); } /* Get the SLP instance leader from INSTANCE_LEADER thereby transitively closing the eventual chain. */ static slp_instance get_ultimate_leader (slp_instance instance, hash_map &instance_leader) { auto_vec chain; slp_instance *tem; while (*(tem = instance_leader.get (instance)) != instance) { chain.safe_push (tem); instance = *tem; } while (!chain.is_empty ()) *chain.pop () = instance; return instance; } namespace { /* Subroutine of vect_bb_partition_graph_r. Map KEY to INSTANCE in KEY_TO_INSTANCE, making INSTANCE the leader of any previous mapping for KEY. Return true if KEY was already in KEY_TO_INSTANCE. INSTANCE_LEADER is as for get_ultimate_leader. */ template bool vect_map_to_instance (slp_instance instance, T key, hash_map &key_to_instance, hash_map &instance_leader) { bool existed_p; slp_instance &key_instance = key_to_instance.get_or_insert (key, &existed_p); if (!existed_p) ; else if (key_instance != instance) { /* If we're running into a previously marked key make us the leader of the current ultimate leader. This keeps the leader chain acyclic and works even when the current instance connects two previously independent graph parts. */ slp_instance key_leader = get_ultimate_leader (key_instance, instance_leader); if (key_leader != instance) instance_leader.put (key_leader, instance); } key_instance = instance; return existed_p; } } /* Worker of vect_bb_partition_graph, recurse on NODE. */ static void vect_bb_partition_graph_r (bb_vec_info bb_vinfo, slp_instance instance, slp_tree node, hash_map &stmt_to_instance, hash_map &node_to_instance, hash_map &instance_leader) { stmt_vec_info stmt_info; unsigned i; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) vect_map_to_instance (instance, stmt_info, stmt_to_instance, instance_leader); if (vect_map_to_instance (instance, node, node_to_instance, instance_leader)) return; slp_tree child; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child && SLP_TREE_DEF_TYPE (child) == vect_internal_def) vect_bb_partition_graph_r (bb_vinfo, instance, child, stmt_to_instance, node_to_instance, instance_leader); } /* Partition the SLP graph into pieces that can be costed independently. */ static void vect_bb_partition_graph (bb_vec_info bb_vinfo) { DUMP_VECT_SCOPE ("vect_bb_partition_graph"); /* First walk the SLP graph assigning each involved scalar stmt a corresponding SLP graph entry and upon visiting a previously marked stmt, make the stmts leader the current SLP graph entry. */ hash_map stmt_to_instance; hash_map node_to_instance; hash_map instance_leader; slp_instance instance; for (unsigned i = 0; bb_vinfo->slp_instances.iterate (i, &instance); ++i) { instance_leader.put (instance, instance); vect_bb_partition_graph_r (bb_vinfo, instance, SLP_INSTANCE_TREE (instance), stmt_to_instance, node_to_instance, instance_leader); } /* Then collect entries to each independent subgraph. */ for (unsigned i = 0; bb_vinfo->slp_instances.iterate (i, &instance); ++i) { slp_instance leader = get_ultimate_leader (instance, instance_leader); leader->subgraph_entries.safe_push (instance); if (dump_enabled_p () && leader != instance) dump_printf_loc (MSG_NOTE, vect_location, "instance %p is leader of %p\n", (void *) leader, (void *) instance); } } /* Compute the set of scalar stmts participating in internal and external nodes. */ static void vect_slp_gather_vectorized_scalar_stmts (vec_info *vinfo, slp_tree node, hash_set &visited, hash_set &vstmts, hash_set &estmts) { int i; stmt_vec_info stmt_info; slp_tree child; if (visited.add (node)) return; if (SLP_TREE_DEF_TYPE (node) == vect_internal_def) { FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) vstmts.add (stmt_info); FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (child) vect_slp_gather_vectorized_scalar_stmts (vinfo, child, visited, vstmts, estmts); } else for (tree def : SLP_TREE_SCALAR_OPS (node)) { stmt_vec_info def_stmt = vinfo->lookup_def (def); if (def_stmt) estmts.add (def_stmt); } } /* Compute the scalar cost of the SLP node NODE and its children and return it. Do not account defs that are marked in LIFE and update LIFE according to uses of NODE. */ static void vect_bb_slp_scalar_cost (vec_info *vinfo, slp_tree node, vec *life, stmt_vector_for_cost *cost_vec, hash_set &vectorized_scalar_stmts, hash_set &visited) { unsigned i; stmt_vec_info stmt_info; slp_tree child; if (visited.add (node)) return; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) { ssa_op_iter op_iter; def_operand_p def_p; if ((*life)[i]) continue; stmt_vec_info orig_stmt_info = vect_orig_stmt (stmt_info); gimple *orig_stmt = orig_stmt_info->stmt; /* If there is a non-vectorized use of the defs then the scalar stmt is kept live in which case we do not account it or any required defs in the SLP children in the scalar cost. This way we make the vectorization more costly when compared to the scalar cost. */ if (!STMT_VINFO_LIVE_P (stmt_info)) { auto_vec worklist; hash_set *worklist_visited = NULL; worklist.quick_push (orig_stmt); do { gimple *work_stmt = worklist.pop (); FOR_EACH_PHI_OR_STMT_DEF (def_p, work_stmt, op_iter, SSA_OP_DEF) { imm_use_iterator use_iter; gimple *use_stmt; FOR_EACH_IMM_USE_STMT (use_stmt, use_iter, DEF_FROM_PTR (def_p)) if (!is_gimple_debug (use_stmt)) { stmt_vec_info use_stmt_info = vinfo->lookup_stmt (use_stmt); if (!use_stmt_info || !vectorized_scalar_stmts.contains (use_stmt_info)) { if (use_stmt_info && STMT_VINFO_IN_PATTERN_P (use_stmt_info)) { /* For stmts participating in patterns we have to check its uses recursively. */ if (!worklist_visited) worklist_visited = new hash_set (); if (!worklist_visited->add (use_stmt)) worklist.safe_push (use_stmt); continue; } (*life)[i] = true; goto next_lane; } } } } while (!worklist.is_empty ()); next_lane: if (worklist_visited) delete worklist_visited; if ((*life)[i]) continue; } /* Count scalar stmts only once. */ if (gimple_visited_p (orig_stmt)) continue; gimple_set_visited (orig_stmt, true); vect_cost_for_stmt kind; if (STMT_VINFO_DATA_REF (orig_stmt_info)) { if (DR_IS_READ (STMT_VINFO_DATA_REF (orig_stmt_info))) kind = scalar_load; else kind = scalar_store; } else if (vect_nop_conversion_p (orig_stmt_info)) continue; /* For single-argument PHIs assume coalescing which means zero cost for the scalar and the vector PHIs. This avoids artificially favoring the vector path (but may pessimize it in some cases). */ else if (is_a (orig_stmt_info->stmt) && gimple_phi_num_args (as_a (orig_stmt_info->stmt)) == 1) continue; else kind = scalar_stmt; record_stmt_cost (cost_vec, 1, kind, orig_stmt_info, SLP_TREE_VECTYPE (node), 0, vect_body); } auto_vec subtree_life; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) { if (child && SLP_TREE_DEF_TYPE (child) == vect_internal_def) { /* Do not directly pass LIFE to the recursive call, copy it to confine changes in the callee to the current child/subtree. */ if (SLP_TREE_CODE (node) == VEC_PERM_EXPR) { subtree_life.safe_grow_cleared (SLP_TREE_LANES (child), true); for (unsigned j = 0; j < SLP_TREE_LANE_PERMUTATION (node).length (); ++j) { auto perm = SLP_TREE_LANE_PERMUTATION (node)[j]; if (perm.first == i) subtree_life[perm.second] = (*life)[j]; } } else { gcc_assert (SLP_TREE_LANES (node) == SLP_TREE_LANES (child)); subtree_life.safe_splice (*life); } vect_bb_slp_scalar_cost (vinfo, child, &subtree_life, cost_vec, vectorized_scalar_stmts, visited); subtree_life.truncate (0); } } } /* Comparator for the loop-index sorted cost vectors. */ static int li_cost_vec_cmp (const void *a_, const void *b_) { auto *a = (const std::pair *)a_; auto *b = (const std::pair *)b_; if (a->first < b->first) return -1; else if (a->first == b->first) return 0; return 1; } /* Check if vectorization of the basic block is profitable for the subgraph denoted by SLP_INSTANCES. */ static bool vect_bb_vectorization_profitable_p (bb_vec_info bb_vinfo, vec slp_instances, loop_p orig_loop) { slp_instance instance; int i; unsigned int vec_inside_cost = 0, vec_outside_cost = 0, scalar_cost = 0; unsigned int vec_prologue_cost = 0, vec_epilogue_cost = 0; if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "Costing subgraph: \n"); hash_set visited; FOR_EACH_VEC_ELT (slp_instances, i, instance) vect_print_slp_graph (MSG_NOTE, vect_location, SLP_INSTANCE_TREE (instance), visited); } /* Compute the set of scalar stmts we know will go away 'locally' when vectorizing. This used to be tracked with just PURE_SLP_STMT but that's not accurate for nodes promoted extern late or for scalar stmts that are used both in extern defs and in vectorized defs. */ hash_set vectorized_scalar_stmts; hash_set scalar_stmts_in_externs; hash_set visited; FOR_EACH_VEC_ELT (slp_instances, i, instance) { vect_slp_gather_vectorized_scalar_stmts (bb_vinfo, SLP_INSTANCE_TREE (instance), visited, vectorized_scalar_stmts, scalar_stmts_in_externs); for (stmt_vec_info rstmt : SLP_INSTANCE_ROOT_STMTS (instance)) vectorized_scalar_stmts.add (rstmt); } /* Scalar stmts used as defs in external nodes need to be preseved, so remove them from vectorized_scalar_stmts. */ for (stmt_vec_info stmt : scalar_stmts_in_externs) vectorized_scalar_stmts.remove (stmt); /* Calculate scalar cost and sum the cost for the vector stmts previously collected. */ stmt_vector_for_cost scalar_costs = vNULL; stmt_vector_for_cost vector_costs = vNULL; visited.empty (); FOR_EACH_VEC_ELT (slp_instances, i, instance) { auto_vec life; life.safe_grow_cleared (SLP_TREE_LANES (SLP_INSTANCE_TREE (instance)), true); if (!SLP_INSTANCE_ROOT_STMTS (instance).is_empty ()) record_stmt_cost (&scalar_costs, SLP_INSTANCE_ROOT_STMTS (instance).length (), scalar_stmt, SLP_INSTANCE_ROOT_STMTS (instance)[0], 0, vect_body); vect_bb_slp_scalar_cost (bb_vinfo, SLP_INSTANCE_TREE (instance), &life, &scalar_costs, vectorized_scalar_stmts, visited); vector_costs.safe_splice (instance->cost_vec); instance->cost_vec.release (); } if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Cost model analysis: \n"); /* When costing non-loop vectorization we need to consider each covered loop independently and make sure vectorization is profitable. For now we assume a loop may be not entered or executed an arbitrary number of iterations (??? static information can provide more precise info here) which means we can simply cost each containing loops stmts separately. */ /* First produce cost vectors sorted by loop index. */ auto_vec > li_scalar_costs (scalar_costs.length ()); auto_vec > li_vector_costs (vector_costs.length ()); stmt_info_for_cost *cost; FOR_EACH_VEC_ELT (scalar_costs, i, cost) { unsigned l = gimple_bb (cost->stmt_info->stmt)->loop_father->num; li_scalar_costs.quick_push (std::make_pair (l, cost)); } /* Use a random used loop as fallback in case the first vector_costs entry does not have a stmt_info associated with it. */ unsigned l = li_scalar_costs[0].first; FOR_EACH_VEC_ELT (vector_costs, i, cost) { /* We inherit from the previous COST, invariants, externals and extracts immediately follow the cost for the related stmt. */ if (cost->stmt_info) l = gimple_bb (cost->stmt_info->stmt)->loop_father->num; li_vector_costs.quick_push (std::make_pair (l, cost)); } li_scalar_costs.qsort (li_cost_vec_cmp); li_vector_costs.qsort (li_cost_vec_cmp); /* Now cost the portions individually. */ unsigned vi = 0; unsigned si = 0; bool profitable = true; while (si < li_scalar_costs.length () && vi < li_vector_costs.length ()) { unsigned sl = li_scalar_costs[si].first; unsigned vl = li_vector_costs[vi].first; if (sl != vl) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Scalar %d and vector %d loop part do not " "match up, skipping scalar part\n", sl, vl); /* Skip the scalar part, assuming zero cost on the vector side. */ do { si++; } while (si < li_scalar_costs.length () && li_scalar_costs[si].first == sl); continue; } class vector_costs *scalar_target_cost_data = init_cost (bb_vinfo, true); do { add_stmt_cost (scalar_target_cost_data, li_scalar_costs[si].second); si++; } while (si < li_scalar_costs.length () && li_scalar_costs[si].first == sl); unsigned dummy; finish_cost (scalar_target_cost_data, nullptr, &dummy, &scalar_cost, &dummy); /* Complete the target-specific vector cost calculation. */ class vector_costs *vect_target_cost_data = init_cost (bb_vinfo, false); do { add_stmt_cost (vect_target_cost_data, li_vector_costs[vi].second); vi++; } while (vi < li_vector_costs.length () && li_vector_costs[vi].first == vl); finish_cost (vect_target_cost_data, scalar_target_cost_data, &vec_prologue_cost, &vec_inside_cost, &vec_epilogue_cost); delete scalar_target_cost_data; delete vect_target_cost_data; vec_outside_cost = vec_prologue_cost + vec_epilogue_cost; if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "Cost model analysis for part in loop %d:\n", sl); dump_printf (MSG_NOTE, " Vector cost: %d\n", vec_inside_cost + vec_outside_cost); dump_printf (MSG_NOTE, " Scalar cost: %d\n", scalar_cost); } /* Vectorization is profitable if its cost is more than the cost of scalar version. Note that we err on the vector side for equal cost because the cost estimate is otherwise quite pessimistic (constant uses are free on the scalar side but cost a load on the vector side for example). */ if (vec_outside_cost + vec_inside_cost > scalar_cost) { profitable = false; break; } } if (profitable && vi < li_vector_costs.length ()) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Excess vector cost for part in loop %d:\n", li_vector_costs[vi].first); profitable = false; } /* Unset visited flag. This is delayed when the subgraph is profitable and we process the loop for remaining unvectorized if-converted code. */ if (!orig_loop || !profitable) FOR_EACH_VEC_ELT (scalar_costs, i, cost) gimple_set_visited (cost->stmt_info->stmt, false); scalar_costs.release (); vector_costs.release (); return profitable; } /* qsort comparator for lane defs. */ static int vld_cmp (const void *a_, const void *b_) { auto *a = (const std::pair *)a_; auto *b = (const std::pair *)b_; return a->first - b->first; } /* Return true if USE_STMT is a vector lane insert into VEC and set *THIS_LANE to the lane number that is set. */ static bool vect_slp_is_lane_insert (gimple *use_stmt, tree vec, unsigned *this_lane) { gassign *use_ass = dyn_cast (use_stmt); if (!use_ass || gimple_assign_rhs_code (use_ass) != BIT_INSERT_EXPR || (vec ? gimple_assign_rhs1 (use_ass) != vec : ((vec = gimple_assign_rhs1 (use_ass)), false)) || !useless_type_conversion_p (TREE_TYPE (TREE_TYPE (vec)), TREE_TYPE (gimple_assign_rhs2 (use_ass))) || !constant_multiple_p (tree_to_poly_uint64 (gimple_assign_rhs3 (use_ass)), tree_to_poly_uint64 (TYPE_SIZE (TREE_TYPE (TREE_TYPE (vec)))), this_lane)) return false; return true; } /* Find any vectorizable constructors and add them to the grouped_store array. */ static void vect_slp_check_for_constructors (bb_vec_info bb_vinfo) { for (unsigned i = 0; i < bb_vinfo->bbs.length (); ++i) for (gimple_stmt_iterator gsi = gsi_start_bb (bb_vinfo->bbs[i]); !gsi_end_p (gsi); gsi_next (&gsi)) { gassign *assign = dyn_cast (gsi_stmt (gsi)); if (!assign) continue; tree rhs = gimple_assign_rhs1 (assign); enum tree_code code = gimple_assign_rhs_code (assign); use_operand_p use_p; gimple *use_stmt; if (code == CONSTRUCTOR) { if (!VECTOR_TYPE_P (TREE_TYPE (rhs)) || maybe_ne (TYPE_VECTOR_SUBPARTS (TREE_TYPE (rhs)), CONSTRUCTOR_NELTS (rhs)) || VECTOR_TYPE_P (TREE_TYPE (CONSTRUCTOR_ELT (rhs, 0)->value)) || uniform_vector_p (rhs)) continue; unsigned j; tree val; FOR_EACH_CONSTRUCTOR_VALUE (CONSTRUCTOR_ELTS (rhs), j, val) if (TREE_CODE (val) != SSA_NAME || !bb_vinfo->lookup_def (val)) break; if (j != CONSTRUCTOR_NELTS (rhs)) continue; stmt_vec_info stmt_info = bb_vinfo->lookup_stmt (assign); BB_VINFO_GROUPED_STORES (bb_vinfo).safe_push (stmt_info); } else if (code == BIT_INSERT_EXPR && VECTOR_TYPE_P (TREE_TYPE (rhs)) && TYPE_VECTOR_SUBPARTS (TREE_TYPE (rhs)).is_constant () && TYPE_VECTOR_SUBPARTS (TREE_TYPE (rhs)).to_constant () > 1 && integer_zerop (gimple_assign_rhs3 (assign)) && useless_type_conversion_p (TREE_TYPE (TREE_TYPE (rhs)), TREE_TYPE (gimple_assign_rhs2 (assign))) && bb_vinfo->lookup_def (gimple_assign_rhs2 (assign))) { /* We start to match on insert to lane zero but since the inserts need not be ordered we'd have to search both the def and the use chains. */ tree vectype = TREE_TYPE (rhs); unsigned nlanes = TYPE_VECTOR_SUBPARTS (vectype).to_constant (); auto_vec > lane_defs (nlanes); auto_sbitmap lanes (nlanes); bitmap_clear (lanes); bitmap_set_bit (lanes, 0); tree def = gimple_assign_lhs (assign); lane_defs.quick_push (std::make_pair (0, gimple_assign_rhs2 (assign))); unsigned lanes_found = 1; /* Start with the use chains, the last stmt will be the root. */ stmt_vec_info last = bb_vinfo->lookup_stmt (assign); vec roots = vNULL; roots.safe_push (last); do { use_operand_p use_p; gimple *use_stmt; if (!single_imm_use (def, &use_p, &use_stmt)) break; unsigned this_lane; if (!bb_vinfo->lookup_stmt (use_stmt) || !vect_slp_is_lane_insert (use_stmt, def, &this_lane) || !bb_vinfo->lookup_def (gimple_assign_rhs2 (use_stmt))) break; if (bitmap_bit_p (lanes, this_lane)) break; lanes_found++; bitmap_set_bit (lanes, this_lane); gassign *use_ass = as_a (use_stmt); lane_defs.quick_push (std::make_pair (this_lane, gimple_assign_rhs2 (use_ass))); last = bb_vinfo->lookup_stmt (use_ass); roots.safe_push (last); def = gimple_assign_lhs (use_ass); } while (lanes_found < nlanes); if (roots.length () > 1) std::swap(roots[0], roots[roots.length () - 1]); if (lanes_found < nlanes) { /* Now search the def chain. */ def = gimple_assign_rhs1 (assign); do { if (TREE_CODE (def) != SSA_NAME || !has_single_use (def)) break; gimple *def_stmt = SSA_NAME_DEF_STMT (def); unsigned this_lane; if (!bb_vinfo->lookup_stmt (def_stmt) || !vect_slp_is_lane_insert (def_stmt, NULL_TREE, &this_lane) || !bb_vinfo->lookup_def (gimple_assign_rhs2 (def_stmt))) break; if (bitmap_bit_p (lanes, this_lane)) break; lanes_found++; bitmap_set_bit (lanes, this_lane); lane_defs.quick_push (std::make_pair (this_lane, gimple_assign_rhs2 (def_stmt))); roots.safe_push (bb_vinfo->lookup_stmt (def_stmt)); def = gimple_assign_rhs1 (def_stmt); } while (lanes_found < nlanes); } if (lanes_found == nlanes) { /* Sort lane_defs after the lane index and register the root. */ lane_defs.qsort (vld_cmp); vec stmts; stmts.create (nlanes); for (unsigned i = 0; i < nlanes; ++i) stmts.quick_push (bb_vinfo->lookup_def (lane_defs[i].second)); bb_vinfo->roots.safe_push (slp_root (slp_inst_kind_ctor, stmts, roots)); } else roots.release (); } else if (!VECTOR_TYPE_P (TREE_TYPE (rhs)) && (associative_tree_code (code) || code == MINUS_EXPR) /* ??? The flag_associative_math and TYPE_OVERFLOW_WRAPS checks pessimize a two-element reduction. PR54400. ??? In-order reduction could be handled if we only traverse one operand chain in vect_slp_linearize_chain. */ && ((FLOAT_TYPE_P (TREE_TYPE (rhs)) && flag_associative_math) || (INTEGRAL_TYPE_P (TREE_TYPE (rhs)) && TYPE_OVERFLOW_WRAPS (TREE_TYPE (rhs)))) /* Ops with constants at the tail can be stripped here. */ && TREE_CODE (rhs) == SSA_NAME && TREE_CODE (gimple_assign_rhs2 (assign)) == SSA_NAME /* Should be the chain end. */ && (!single_imm_use (gimple_assign_lhs (assign), &use_p, &use_stmt) || !is_gimple_assign (use_stmt) || (gimple_assign_rhs_code (use_stmt) != code && ((code != PLUS_EXPR && code != MINUS_EXPR) || (gimple_assign_rhs_code (use_stmt) != (code == PLUS_EXPR ? MINUS_EXPR : PLUS_EXPR)))))) { /* We start the match at the end of a possible association chain. */ auto_vec chain; auto_vec > worklist; auto_vec chain_stmts; gimple *code_stmt = NULL, *alt_code_stmt = NULL; if (code == MINUS_EXPR) code = PLUS_EXPR; internal_fn reduc_fn; if (!reduction_fn_for_scalar_code (code, &reduc_fn) || reduc_fn == IFN_LAST) continue; vect_slp_linearize_chain (bb_vinfo, worklist, chain, code, assign, /* ??? */ code_stmt, alt_code_stmt, &chain_stmts); if (chain.length () > 1) { /* Sort the chain according to def_type and operation. */ chain.sort (dt_sort_cmp, bb_vinfo); /* ??? Now we'd want to strip externals and constants but record those to be handled in the epilogue. */ /* ??? For now do not allow mixing ops or externs/constants. */ bool invalid = false; for (unsigned i = 0; i < chain.length (); ++i) if (chain[i].dt != vect_internal_def || chain[i].code != code) invalid = true; if (!invalid) { vec stmts; stmts.create (chain.length ()); for (unsigned i = 0; i < chain.length (); ++i) stmts.quick_push (bb_vinfo->lookup_def (chain[i].op)); vec roots; roots.create (chain_stmts.length ()); for (unsigned i = 0; i < chain_stmts.length (); ++i) roots.quick_push (bb_vinfo->lookup_stmt (chain_stmts[i])); bb_vinfo->roots.safe_push (slp_root (slp_inst_kind_bb_reduc, stmts, roots)); } } } } } /* Walk the grouped store chains and replace entries with their pattern variant if any. */ static void vect_fixup_store_groups_with_patterns (vec_info *vinfo) { stmt_vec_info first_element; unsigned i; FOR_EACH_VEC_ELT (vinfo->grouped_stores, i, first_element) { /* We also have CTORs in this array. */ if (!STMT_VINFO_GROUPED_ACCESS (first_element)) continue; if (STMT_VINFO_IN_PATTERN_P (first_element)) { stmt_vec_info orig = first_element; first_element = STMT_VINFO_RELATED_STMT (first_element); DR_GROUP_FIRST_ELEMENT (first_element) = first_element; DR_GROUP_SIZE (first_element) = DR_GROUP_SIZE (orig); DR_GROUP_GAP (first_element) = DR_GROUP_GAP (orig); DR_GROUP_NEXT_ELEMENT (first_element) = DR_GROUP_NEXT_ELEMENT (orig); vinfo->grouped_stores[i] = first_element; } stmt_vec_info prev = first_element; while (DR_GROUP_NEXT_ELEMENT (prev)) { stmt_vec_info elt = DR_GROUP_NEXT_ELEMENT (prev); if (STMT_VINFO_IN_PATTERN_P (elt)) { stmt_vec_info orig = elt; elt = STMT_VINFO_RELATED_STMT (elt); DR_GROUP_NEXT_ELEMENT (prev) = elt; DR_GROUP_GAP (elt) = DR_GROUP_GAP (orig); DR_GROUP_NEXT_ELEMENT (elt) = DR_GROUP_NEXT_ELEMENT (orig); } DR_GROUP_FIRST_ELEMENT (elt) = first_element; prev = elt; } } } /* Check if the region described by BB_VINFO can be vectorized, returning true if so. When returning false, set FATAL to true if the same failure would prevent vectorization at other vector sizes, false if it is still worth trying other sizes. N_STMTS is the number of statements in the region. */ static bool vect_slp_analyze_bb_1 (bb_vec_info bb_vinfo, int n_stmts, bool &fatal, vec *dataref_groups) { DUMP_VECT_SCOPE ("vect_slp_analyze_bb"); slp_instance instance; int i; poly_uint64 min_vf = 2; /* The first group of checks is independent of the vector size. */ fatal = true; /* Analyze the data references. */ if (!vect_analyze_data_refs (bb_vinfo, &min_vf, NULL)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "not vectorized: unhandled data-ref in basic " "block.\n"); return false; } if (!vect_analyze_data_ref_accesses (bb_vinfo, dataref_groups)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "not vectorized: unhandled data access in " "basic block.\n"); return false; } vect_slp_check_for_constructors (bb_vinfo); /* If there are no grouped stores and no constructors in the region there is no need to continue with pattern recog as vect_analyze_slp will fail anyway. */ if (bb_vinfo->grouped_stores.is_empty () && bb_vinfo->roots.is_empty ()) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "not vectorized: no grouped stores in " "basic block.\n"); return false; } /* While the rest of the analysis below depends on it in some way. */ fatal = false; vect_pattern_recog (bb_vinfo); /* Update store groups from pattern processing. */ vect_fixup_store_groups_with_patterns (bb_vinfo); /* Check the SLP opportunities in the basic block, analyze and build SLP trees. */ if (!vect_analyze_slp (bb_vinfo, n_stmts)) { if (dump_enabled_p ()) { dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Failed to SLP the basic block.\n"); dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "not vectorized: failed to find SLP opportunities " "in basic block.\n"); } return false; } /* Optimize permutations. */ vect_optimize_slp (bb_vinfo); /* Gather the loads reachable from the SLP graph entries. */ vect_gather_slp_loads (bb_vinfo); vect_record_base_alignments (bb_vinfo); /* Analyze and verify the alignment of data references and the dependence in the SLP instances. */ for (i = 0; BB_VINFO_SLP_INSTANCES (bb_vinfo).iterate (i, &instance); ) { vect_location = instance->location (); if (! vect_slp_analyze_instance_alignment (bb_vinfo, instance) || ! vect_slp_analyze_instance_dependence (bb_vinfo, instance)) { slp_tree node = SLP_INSTANCE_TREE (instance); stmt_vec_info stmt_info = SLP_TREE_SCALAR_STMTS (node)[0]; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "removing SLP instance operations starting from: %G", stmt_info->stmt); vect_free_slp_instance (instance); BB_VINFO_SLP_INSTANCES (bb_vinfo).ordered_remove (i); continue; } /* Mark all the statements that we want to vectorize as pure SLP and relevant. */ vect_mark_slp_stmts (SLP_INSTANCE_TREE (instance)); vect_mark_slp_stmts_relevant (SLP_INSTANCE_TREE (instance)); unsigned j; stmt_vec_info root; /* Likewise consider instance root stmts as vectorized. */ FOR_EACH_VEC_ELT (SLP_INSTANCE_ROOT_STMTS (instance), j, root) STMT_SLP_TYPE (root) = pure_slp; i++; } if (! BB_VINFO_SLP_INSTANCES (bb_vinfo).length ()) return false; if (!vect_slp_analyze_operations (bb_vinfo)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "not vectorized: bad operation in basic block.\n"); return false; } vect_bb_partition_graph (bb_vinfo); return true; } /* Subroutine of vect_slp_bb. Try to vectorize the statements for all basic blocks in BBS, returning true on success. The region has N_STMTS statements and has the datarefs given by DATAREFS. */ static bool vect_slp_region (vec bbs, vec datarefs, vec *dataref_groups, unsigned int n_stmts, loop_p orig_loop) { bb_vec_info bb_vinfo; auto_vector_modes vector_modes; /* Autodetect first vector size we try. */ machine_mode next_vector_mode = VOIDmode; targetm.vectorize.autovectorize_vector_modes (&vector_modes, false); unsigned int mode_i = 0; vec_info_shared shared; machine_mode autodetected_vector_mode = VOIDmode; while (1) { bool vectorized = false; bool fatal = false; bb_vinfo = new _bb_vec_info (bbs, &shared); bool first_time_p = shared.datarefs.is_empty (); BB_VINFO_DATAREFS (bb_vinfo) = datarefs; if (first_time_p) bb_vinfo->shared->save_datarefs (); else bb_vinfo->shared->check_datarefs (); bb_vinfo->vector_mode = next_vector_mode; if (vect_slp_analyze_bb_1 (bb_vinfo, n_stmts, fatal, dataref_groups)) { if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "***** Analysis succeeded with vector mode" " %s\n", GET_MODE_NAME (bb_vinfo->vector_mode)); dump_printf_loc (MSG_NOTE, vect_location, "SLPing BB part\n"); } bb_vinfo->shared->check_datarefs (); auto_vec profitable_subgraphs; for (slp_instance instance : BB_VINFO_SLP_INSTANCES (bb_vinfo)) { if (instance->subgraph_entries.is_empty ()) continue; vect_location = instance->location (); if (!unlimited_cost_model (NULL) && !vect_bb_vectorization_profitable_p (bb_vinfo, instance->subgraph_entries, orig_loop)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "not vectorized: vectorization is not " "profitable.\n"); continue; } if (!dbg_cnt (vect_slp)) continue; profitable_subgraphs.safe_push (instance); } /* When we're vectorizing an if-converted loop body make sure we vectorized all if-converted code. */ if (!profitable_subgraphs.is_empty () && orig_loop) { gcc_assert (bb_vinfo->bbs.length () == 1); for (gimple_stmt_iterator gsi = gsi_start_bb (bb_vinfo->bbs[0]); !gsi_end_p (gsi); gsi_next (&gsi)) { /* The costing above left us with DCEable vectorized scalar stmts having the visited flag set on profitable subgraphs. Do the delayed clearing of the flag here. */ if (gimple_visited_p (gsi_stmt (gsi))) { gimple_set_visited (gsi_stmt (gsi), false); continue; } if (flag_vect_cost_model == VECT_COST_MODEL_UNLIMITED) continue; if (gassign *ass = dyn_cast (gsi_stmt (gsi))) if (gimple_assign_rhs_code (ass) == COND_EXPR) { if (!profitable_subgraphs.is_empty () && dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "not profitable because of " "unprofitable if-converted scalar " "code\n"); profitable_subgraphs.truncate (0); } } } /* Finally schedule the profitable subgraphs. */ for (slp_instance instance : profitable_subgraphs) { if (!vectorized && dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "Basic block will be vectorized " "using SLP\n"); vectorized = true; vect_schedule_slp (bb_vinfo, instance->subgraph_entries); unsigned HOST_WIDE_INT bytes; if (dump_enabled_p ()) { if (GET_MODE_SIZE (bb_vinfo->vector_mode).is_constant (&bytes)) dump_printf_loc (MSG_OPTIMIZED_LOCATIONS, vect_location, "basic block part vectorized using %wu " "byte vectors\n", bytes); else dump_printf_loc (MSG_OPTIMIZED_LOCATIONS, vect_location, "basic block part vectorized using " "variable length vectors\n"); } } } else { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "***** Analysis failed with vector mode %s\n", GET_MODE_NAME (bb_vinfo->vector_mode)); } if (mode_i == 0) autodetected_vector_mode = bb_vinfo->vector_mode; if (!fatal) while (mode_i < vector_modes.length () && vect_chooses_same_modes_p (bb_vinfo, vector_modes[mode_i])) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "***** The result for vector mode %s would" " be the same\n", GET_MODE_NAME (vector_modes[mode_i])); mode_i += 1; } delete bb_vinfo; if (mode_i < vector_modes.length () && VECTOR_MODE_P (autodetected_vector_mode) && (related_vector_mode (vector_modes[mode_i], GET_MODE_INNER (autodetected_vector_mode)) == autodetected_vector_mode) && (related_vector_mode (autodetected_vector_mode, GET_MODE_INNER (vector_modes[mode_i])) == vector_modes[mode_i])) { if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "***** Skipping vector mode %s, which would" " repeat the analysis for %s\n", GET_MODE_NAME (vector_modes[mode_i]), GET_MODE_NAME (autodetected_vector_mode)); mode_i += 1; } if (vectorized || mode_i == vector_modes.length () || autodetected_vector_mode == VOIDmode /* If vect_slp_analyze_bb_1 signaled that analysis for all vector sizes will fail do not bother iterating. */ || fatal) return vectorized; /* Try the next biggest vector size. */ next_vector_mode = vector_modes[mode_i++]; if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "***** Re-trying analysis with vector mode %s\n", GET_MODE_NAME (next_vector_mode)); } } /* Main entry for the BB vectorizer. Analyze and transform BBS, returns true if anything in the basic-block was vectorized. */ static bool vect_slp_bbs (const vec &bbs, loop_p orig_loop) { vec datarefs = vNULL; auto_vec dataref_groups; int insns = 0; int current_group = 0; for (unsigned i = 0; i < bbs.length (); i++) { basic_block bb = bbs[i]; for (gimple_stmt_iterator gsi = gsi_after_labels (bb); !gsi_end_p (gsi); gsi_next (&gsi)) { gimple *stmt = gsi_stmt (gsi); if (is_gimple_debug (stmt)) continue; insns++; if (gimple_location (stmt) != UNKNOWN_LOCATION) vect_location = stmt; if (!vect_find_stmt_data_reference (NULL, stmt, &datarefs, &dataref_groups, current_group)) ++current_group; } /* New BBs always start a new DR group. */ ++current_group; } return vect_slp_region (bbs, datarefs, &dataref_groups, insns, orig_loop); } /* Special entry for the BB vectorizer. Analyze and transform a single if-converted BB with ORIG_LOOPs body being the not if-converted representation. Returns true if anything in the basic-block was vectorized. */ bool vect_slp_if_converted_bb (basic_block bb, loop_p orig_loop) { auto_vec bbs; bbs.safe_push (bb); return vect_slp_bbs (bbs, orig_loop); } /* Main entry for the BB vectorizer. Analyze and transform BB, returns true if anything in the basic-block was vectorized. */ bool vect_slp_function (function *fun) { bool r = false; int *rpo = XNEWVEC (int, n_basic_blocks_for_fn (fun)); unsigned n = pre_and_rev_post_order_compute_fn (fun, NULL, rpo, false); /* For the moment split the function into pieces to avoid making the iteration on the vector mode moot. Split at points we know to not handle well which is CFG merges (SLP discovery doesn't handle non-loop-header PHIs) and loop exits. Since pattern recog requires reverse iteration to visit uses before defs simply chop RPO into pieces. */ auto_vec bbs; for (unsigned i = 0; i < n; i++) { basic_block bb = BASIC_BLOCK_FOR_FN (fun, rpo[i]); bool split = false; /* Split when a BB is not dominated by the first block. */ if (!bbs.is_empty () && !dominated_by_p (CDI_DOMINATORS, bb, bbs[0])) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "splitting region at dominance boundary bb%d\n", bb->index); split = true; } /* Split when the loop determined by the first block is exited. This is because we eventually insert invariants at region begin. */ else if (!bbs.is_empty () && bbs[0]->loop_father != bb->loop_father && !flow_loop_nested_p (bbs[0]->loop_father, bb->loop_father)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "splitting region at loop %d exit at bb%d\n", bbs[0]->loop_father->num, bb->index); split = true; } if (split && !bbs.is_empty ()) { r |= vect_slp_bbs (bbs, NULL); bbs.truncate (0); bbs.quick_push (bb); } else bbs.safe_push (bb); /* When we have a stmt ending this block and defining a value we have to insert on edges when inserting after it for a vector containing its definition. Avoid this for now. */ if (gimple *last = last_stmt (bb)) if (gimple_get_lhs (last) && is_ctrl_altering_stmt (last)) { if (dump_enabled_p ()) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "splitting region at control altering " "definition %G", last); r |= vect_slp_bbs (bbs, NULL); bbs.truncate (0); } } if (!bbs.is_empty ()) r |= vect_slp_bbs (bbs, NULL); free (rpo); return r; } /* Build a variable-length vector in which the elements in ELTS are repeated to a fill NRESULTS vectors of type VECTOR_TYPE. Store the vectors in RESULTS and add any new instructions to SEQ. The approach we use is: (1) Find a vector mode VM with integer elements of mode IM. (2) Replace ELTS[0:NELTS] with ELTS'[0:NELTS'], where each element of ELTS' has mode IM. This involves creating NELTS' VIEW_CONVERT_EXPRs from small vectors to IM. (3) Duplicate each ELTS'[I] into a vector of mode VM. (4) Use a tree of interleaving VEC_PERM_EXPRs to create VMs with the correct byte contents. (5) Use VIEW_CONVERT_EXPR to cast the final VMs to the required type. We try to find the largest IM for which this sequence works, in order to cut down on the number of interleaves. */ void duplicate_and_interleave (vec_info *vinfo, gimple_seq *seq, tree vector_type, const vec &elts, unsigned int nresults, vec &results) { unsigned int nelts = elts.length (); tree element_type = TREE_TYPE (vector_type); /* (1) Find a vector mode VM with integer elements of mode IM. */ unsigned int nvectors = 1; tree new_vector_type; tree permutes[2]; if (!can_duplicate_and_interleave_p (vinfo, nelts, element_type, &nvectors, &new_vector_type, permutes)) gcc_unreachable (); /* Get a vector type that holds ELTS[0:NELTS/NELTS']. */ unsigned int partial_nelts = nelts / nvectors; tree partial_vector_type = build_vector_type (element_type, partial_nelts); tree_vector_builder partial_elts; auto_vec pieces (nvectors * 2); pieces.quick_grow_cleared (nvectors * 2); for (unsigned int i = 0; i < nvectors; ++i) { /* (2) Replace ELTS[0:NELTS] with ELTS'[0:NELTS'], where each element of ELTS' has mode IM. */ partial_elts.new_vector (partial_vector_type, partial_nelts, 1); for (unsigned int j = 0; j < partial_nelts; ++j) partial_elts.quick_push (elts[i * partial_nelts + j]); tree t = gimple_build_vector (seq, &partial_elts); t = gimple_build (seq, VIEW_CONVERT_EXPR, TREE_TYPE (new_vector_type), t); /* (3) Duplicate each ELTS'[I] into a vector of mode VM. */ pieces[i] = gimple_build_vector_from_val (seq, new_vector_type, t); } /* (4) Use a tree of VEC_PERM_EXPRs to create a single VM with the correct byte contents. Conceptually, we need to repeat the following operation log2(nvectors) times, where hi_start = nvectors / 2: out[i * 2] = VEC_PERM_EXPR (in[i], in[i + hi_start], lo_permute); out[i * 2 + 1] = VEC_PERM_EXPR (in[i], in[i + hi_start], hi_permute); However, if each input repeats every N elements and the VF is a multiple of N * 2, the HI result is the same as the LO result. This will be true for the first N1 iterations of the outer loop, followed by N2 iterations for which both the LO and HI results are needed. I.e.: N1 + N2 = log2(nvectors) Each "N1 iteration" doubles the number of redundant vectors and the effect of the process as a whole is to have a sequence of nvectors/2**N1 vectors that repeats 2**N1 times. Rather than generate these redundant vectors, we halve the number of vectors for each N1 iteration. */ unsigned int in_start = 0; unsigned int out_start = nvectors; unsigned int new_nvectors = nvectors; for (unsigned int in_repeat = 1; in_repeat < nvectors; in_repeat *= 2) { unsigned int hi_start = new_nvectors / 2; unsigned int out_i = 0; for (unsigned int in_i = 0; in_i < new_nvectors; ++in_i) { if ((in_i & 1) != 0 && multiple_p (TYPE_VECTOR_SUBPARTS (new_vector_type), 2 * in_repeat)) continue; tree output = make_ssa_name (new_vector_type); tree input1 = pieces[in_start + (in_i / 2)]; tree input2 = pieces[in_start + (in_i / 2) + hi_start]; gassign *stmt = gimple_build_assign (output, VEC_PERM_EXPR, input1, input2, permutes[in_i & 1]); gimple_seq_add_stmt (seq, stmt); pieces[out_start + out_i] = output; out_i += 1; } std::swap (in_start, out_start); new_nvectors = out_i; } /* (5) Use VIEW_CONVERT_EXPR to cast the final VM to the required type. */ results.reserve (nresults); for (unsigned int i = 0; i < nresults; ++i) if (i < new_nvectors) results.quick_push (gimple_build (seq, VIEW_CONVERT_EXPR, vector_type, pieces[in_start + i])); else results.quick_push (results[i - new_nvectors]); } /* For constant and loop invariant defs in OP_NODE this function creates vector defs that will be used in the vectorized stmts and stores them to SLP_TREE_VEC_DEFS of OP_NODE. */ static void vect_create_constant_vectors (vec_info *vinfo, slp_tree op_node) { unsigned HOST_WIDE_INT nunits; tree vec_cst; unsigned j, number_of_places_left_in_vector; tree vector_type; tree vop; int group_size = op_node->ops.length (); unsigned int vec_num, i; unsigned number_of_copies = 1; bool constant_p; gimple_seq ctor_seq = NULL; auto_vec permute_results; /* We always want SLP_TREE_VECTYPE (op_node) here correctly set. */ vector_type = SLP_TREE_VECTYPE (op_node); unsigned int number_of_vectors = SLP_TREE_NUMBER_OF_VEC_STMTS (op_node); SLP_TREE_VEC_DEFS (op_node).create (number_of_vectors); auto_vec voprnds (number_of_vectors); /* NUMBER_OF_COPIES is the number of times we need to use the same values in created vectors. It is greater than 1 if unrolling is performed. For example, we have two scalar operands, s1 and s2 (e.g., group of strided accesses of size two), while NUNITS is four (i.e., four scalars of this type can be packed in a vector). The output vector will contain two copies of each scalar operand: {s1, s2, s1, s2}. (NUMBER_OF_COPIES will be 2). If GROUP_SIZE > NUNITS, the scalars will be split into several vectors containing the operands. For example, NUNITS is four as before, and the group size is 8 (s1, s2, ..., s8). We will create two vectors {s1, s2, s3, s4} and {s5, s6, s7, s8}. */ /* When using duplicate_and_interleave, we just need one element for each scalar statement. */ if (!TYPE_VECTOR_SUBPARTS (vector_type).is_constant (&nunits)) nunits = group_size; number_of_copies = nunits * number_of_vectors / group_size; number_of_places_left_in_vector = nunits; constant_p = true; tree_vector_builder elts (vector_type, nunits, 1); elts.quick_grow (nunits); stmt_vec_info insert_after = NULL; for (j = 0; j < number_of_copies; j++) { tree op; for (i = group_size - 1; op_node->ops.iterate (i, &op); i--) { /* Create 'vect_ = {op0,op1,...,opn}'. */ number_of_places_left_in_vector--; tree orig_op = op; if (!types_compatible_p (TREE_TYPE (vector_type), TREE_TYPE (op))) { if (CONSTANT_CLASS_P (op)) { if (VECTOR_BOOLEAN_TYPE_P (vector_type)) { /* Can't use VIEW_CONVERT_EXPR for booleans because of possibly different sizes of scalar value and vector element. */ if (integer_zerop (op)) op = build_int_cst (TREE_TYPE (vector_type), 0); else if (integer_onep (op)) op = build_all_ones_cst (TREE_TYPE (vector_type)); else gcc_unreachable (); } else op = fold_unary (VIEW_CONVERT_EXPR, TREE_TYPE (vector_type), op); gcc_assert (op && CONSTANT_CLASS_P (op)); } else { tree new_temp = make_ssa_name (TREE_TYPE (vector_type)); gimple *init_stmt; if (VECTOR_BOOLEAN_TYPE_P (vector_type)) { tree true_val = build_all_ones_cst (TREE_TYPE (vector_type)); tree false_val = build_zero_cst (TREE_TYPE (vector_type)); gcc_assert (INTEGRAL_TYPE_P (TREE_TYPE (op))); init_stmt = gimple_build_assign (new_temp, COND_EXPR, op, true_val, false_val); } else { op = build1 (VIEW_CONVERT_EXPR, TREE_TYPE (vector_type), op); init_stmt = gimple_build_assign (new_temp, VIEW_CONVERT_EXPR, op); } gimple_seq_add_stmt (&ctor_seq, init_stmt); op = new_temp; } } elts[number_of_places_left_in_vector] = op; if (!CONSTANT_CLASS_P (op)) constant_p = false; /* For BB vectorization we have to compute an insert location when a def is inside the analyzed region since we cannot simply insert at the BB start in this case. */ stmt_vec_info opdef; if (TREE_CODE (orig_op) == SSA_NAME && !SSA_NAME_IS_DEFAULT_DEF (orig_op) && is_a (vinfo) && (opdef = vinfo->lookup_def (orig_op))) { if (!insert_after) insert_after = opdef; else insert_after = get_later_stmt (insert_after, opdef); } if (number_of_places_left_in_vector == 0) { if (constant_p ? multiple_p (TYPE_VECTOR_SUBPARTS (vector_type), nunits) : known_eq (TYPE_VECTOR_SUBPARTS (vector_type), nunits)) vec_cst = gimple_build_vector (&ctor_seq, &elts); else { if (permute_results.is_empty ()) duplicate_and_interleave (vinfo, &ctor_seq, vector_type, elts, number_of_vectors, permute_results); vec_cst = permute_results[number_of_vectors - j - 1]; } if (!gimple_seq_empty_p (ctor_seq)) { if (insert_after) { gimple_stmt_iterator gsi; if (gimple_code (insert_after->stmt) == GIMPLE_PHI) { gsi = gsi_after_labels (gimple_bb (insert_after->stmt)); gsi_insert_seq_before (&gsi, ctor_seq, GSI_CONTINUE_LINKING); } else if (!stmt_ends_bb_p (insert_after->stmt)) { gsi = gsi_for_stmt (insert_after->stmt); gsi_insert_seq_after (&gsi, ctor_seq, GSI_CONTINUE_LINKING); } else { /* When we want to insert after a def where the defining stmt throws then insert on the fallthru edge. */ edge e = find_fallthru_edge (gimple_bb (insert_after->stmt)->succs); basic_block new_bb = gsi_insert_seq_on_edge_immediate (e, ctor_seq); gcc_assert (!new_bb); } } else vinfo->insert_seq_on_entry (NULL, ctor_seq); ctor_seq = NULL; } voprnds.quick_push (vec_cst); insert_after = NULL; number_of_places_left_in_vector = nunits; constant_p = true; elts.new_vector (vector_type, nunits, 1); elts.quick_grow (nunits); } } } /* Since the vectors are created in the reverse order, we should invert them. */ vec_num = voprnds.length (); for (j = vec_num; j != 0; j--) { vop = voprnds[j - 1]; SLP_TREE_VEC_DEFS (op_node).quick_push (vop); } /* In case that VF is greater than the unrolling factor needed for the SLP group of stmts, NUMBER_OF_VECTORS to be created is greater than NUMBER_OF_SCALARS/NUNITS or NUNITS/NUMBER_OF_SCALARS, and hence we have to replicate the vectors. */ while (number_of_vectors > SLP_TREE_VEC_DEFS (op_node).length ()) for (i = 0; SLP_TREE_VEC_DEFS (op_node).iterate (i, &vop) && i < vec_num; i++) SLP_TREE_VEC_DEFS (op_node).quick_push (vop); } /* Get the Ith vectorized definition from SLP_NODE. */ tree vect_get_slp_vect_def (slp_tree slp_node, unsigned i) { if (SLP_TREE_VEC_STMTS (slp_node).exists ()) return gimple_get_lhs (SLP_TREE_VEC_STMTS (slp_node)[i]); else return SLP_TREE_VEC_DEFS (slp_node)[i]; } /* Get the vectorized definitions of SLP_NODE in *VEC_DEFS. */ void vect_get_slp_defs (slp_tree slp_node, vec *vec_defs) { vec_defs->create (SLP_TREE_NUMBER_OF_VEC_STMTS (slp_node)); if (SLP_TREE_DEF_TYPE (slp_node) == vect_internal_def) { unsigned j; gimple *vec_def_stmt; FOR_EACH_VEC_ELT (SLP_TREE_VEC_STMTS (slp_node), j, vec_def_stmt) vec_defs->quick_push (gimple_get_lhs (vec_def_stmt)); } else vec_defs->splice (SLP_TREE_VEC_DEFS (slp_node)); } /* Get N vectorized definitions for SLP_NODE. */ void vect_get_slp_defs (vec_info *, slp_tree slp_node, vec > *vec_oprnds, unsigned n) { if (n == -1U) n = SLP_TREE_CHILDREN (slp_node).length (); for (unsigned i = 0; i < n; ++i) { slp_tree child = SLP_TREE_CHILDREN (slp_node)[i]; vec vec_defs = vNULL; vect_get_slp_defs (child, &vec_defs); vec_oprnds->quick_push (vec_defs); } } /* A subroutine of vect_transform_slp_perm_load with two extra arguments: - PERM gives the permutation that the caller wants to use for NODE, which might be different from SLP_LOAD_PERMUTATION. - DUMP_P controls whether the function dumps information. */ static bool vect_transform_slp_perm_load_1 (vec_info *vinfo, slp_tree node, load_permutation_t &perm, const vec &dr_chain, gimple_stmt_iterator *gsi, poly_uint64 vf, bool analyze_only, bool dump_p, unsigned *n_perms, unsigned int *n_loads, bool dce_chain) { stmt_vec_info stmt_info = SLP_TREE_SCALAR_STMTS (node)[0]; int vec_index = 0; tree vectype = SLP_TREE_VECTYPE (node); unsigned int group_size = SLP_TREE_SCALAR_STMTS (node).length (); unsigned int mask_element; machine_mode mode; if (!STMT_VINFO_GROUPED_ACCESS (stmt_info)) return false; stmt_info = DR_GROUP_FIRST_ELEMENT (stmt_info); mode = TYPE_MODE (vectype); poly_uint64 nunits = TYPE_VECTOR_SUBPARTS (vectype); /* Initialize the vect stmts of NODE to properly insert the generated stmts later. */ if (! analyze_only) for (unsigned i = SLP_TREE_VEC_STMTS (node).length (); i < SLP_TREE_NUMBER_OF_VEC_STMTS (node); i++) SLP_TREE_VEC_STMTS (node).quick_push (NULL); /* Generate permutation masks for every NODE. Number of masks for each NODE is equal to GROUP_SIZE. E.g., we have a group of three nodes with three loads from the same location in each node, and the vector size is 4. I.e., we have a a0b0c0a1b1c1... sequence and we need to create the following vectors: for a's: a0a0a0a1 a1a1a2a2 a2a3a3a3 for b's: b0b0b0b1 b1b1b2b2 b2b3b3b3 ... The masks for a's should be: {0,0,0,3} {3,3,6,6} {6,9,9,9}. The last mask is illegal since we assume two operands for permute operation, and the mask element values can't be outside that range. Hence, the last mask must be converted into {2,5,5,5}. For the first two permutations we need the first and the second input vectors: {a0,b0,c0,a1} and {b1,c1,a2,b2}, and for the last permutation we need the second and the third vectors: {b1,c1,a2,b2} and {c2,a3,b3,c3}. */ int vect_stmts_counter = 0; unsigned int index = 0; int first_vec_index = -1; int second_vec_index = -1; bool noop_p = true; *n_perms = 0; vec_perm_builder mask; unsigned int nelts_to_build; unsigned int nvectors_per_build; unsigned int in_nlanes; bool repeating_p = (group_size == DR_GROUP_SIZE (stmt_info) && multiple_p (nunits, group_size)); if (repeating_p) { /* A single vector contains a whole number of copies of the node, so: (a) all permutes can use the same mask; and (b) the permutes only need a single vector input. */ mask.new_vector (nunits, group_size, 3); nelts_to_build = mask.encoded_nelts (); nvectors_per_build = SLP_TREE_VEC_STMTS (node).length (); in_nlanes = DR_GROUP_SIZE (stmt_info) * 3; } else { /* We need to construct a separate mask for each vector statement. */ unsigned HOST_WIDE_INT const_nunits, const_vf; if (!nunits.is_constant (&const_nunits) || !vf.is_constant (&const_vf)) return false; mask.new_vector (const_nunits, const_nunits, 1); nelts_to_build = const_vf * group_size; nvectors_per_build = 1; in_nlanes = const_vf * DR_GROUP_SIZE (stmt_info); } auto_sbitmap used_in_lanes (in_nlanes); bitmap_clear (used_in_lanes); auto_bitmap used_defs; unsigned int count = mask.encoded_nelts (); mask.quick_grow (count); vec_perm_indices indices; for (unsigned int j = 0; j < nelts_to_build; j++) { unsigned int iter_num = j / group_size; unsigned int stmt_num = j % group_size; unsigned int i = (iter_num * DR_GROUP_SIZE (stmt_info) + perm[stmt_num]); bitmap_set_bit (used_in_lanes, i); if (repeating_p) { first_vec_index = 0; mask_element = i; } else { /* Enforced before the loop when !repeating_p. */ unsigned int const_nunits = nunits.to_constant (); vec_index = i / const_nunits; mask_element = i % const_nunits; if (vec_index == first_vec_index || first_vec_index == -1) { first_vec_index = vec_index; } else if (vec_index == second_vec_index || second_vec_index == -1) { second_vec_index = vec_index; mask_element += const_nunits; } else { if (dump_p) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "permutation requires at " "least three vectors %G", stmt_info->stmt); gcc_assert (analyze_only); return false; } gcc_assert (mask_element < 2 * const_nunits); } if (mask_element != index) noop_p = false; mask[index++] = mask_element; if (index == count && !noop_p) { indices.new_vector (mask, second_vec_index == -1 ? 1 : 2, nunits); if (!can_vec_perm_const_p (mode, mode, indices)) { if (dump_p) { dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "unsupported vect permute { "); for (i = 0; i < count; ++i) { dump_dec (MSG_MISSED_OPTIMIZATION, mask[i]); dump_printf (MSG_MISSED_OPTIMIZATION, " "); } dump_printf (MSG_MISSED_OPTIMIZATION, "}\n"); } gcc_assert (analyze_only); return false; } ++*n_perms; } if (index == count) { if (!analyze_only) { tree mask_vec = NULL_TREE; if (! noop_p) mask_vec = vect_gen_perm_mask_checked (vectype, indices); if (second_vec_index == -1) second_vec_index = first_vec_index; for (unsigned int ri = 0; ri < nvectors_per_build; ++ri) { /* Generate the permute statement if necessary. */ tree first_vec = dr_chain[first_vec_index + ri]; tree second_vec = dr_chain[second_vec_index + ri]; gimple *perm_stmt; if (! noop_p) { gassign *stmt = as_a (stmt_info->stmt); tree perm_dest = vect_create_destination_var (gimple_assign_lhs (stmt), vectype); perm_dest = make_ssa_name (perm_dest); perm_stmt = gimple_build_assign (perm_dest, VEC_PERM_EXPR, first_vec, second_vec, mask_vec); vect_finish_stmt_generation (vinfo, stmt_info, perm_stmt, gsi); if (dce_chain) { bitmap_set_bit (used_defs, first_vec_index + ri); bitmap_set_bit (used_defs, second_vec_index + ri); } } else { /* If mask was NULL_TREE generate the requested identity transform. */ perm_stmt = SSA_NAME_DEF_STMT (first_vec); if (dce_chain) bitmap_set_bit (used_defs, first_vec_index + ri); } /* Store the vector statement in NODE. */ SLP_TREE_VEC_STMTS (node)[vect_stmts_counter++] = perm_stmt; } } index = 0; first_vec_index = -1; second_vec_index = -1; noop_p = true; } } if (n_loads) { if (repeating_p) *n_loads = SLP_TREE_NUMBER_OF_VEC_STMTS (node); else { /* Enforced above when !repeating_p. */ unsigned int const_nunits = nunits.to_constant (); *n_loads = 0; bool load_seen = false; for (unsigned i = 0; i < in_nlanes; ++i) { if (i % const_nunits == 0) { if (load_seen) *n_loads += 1; load_seen = false; } if (bitmap_bit_p (used_in_lanes, i)) load_seen = true; } if (load_seen) *n_loads += 1; } } if (dce_chain) for (unsigned i = 0; i < dr_chain.length (); ++i) if (!bitmap_bit_p (used_defs, i)) { gimple *stmt = SSA_NAME_DEF_STMT (dr_chain[i]); gimple_stmt_iterator rgsi = gsi_for_stmt (stmt); gsi_remove (&rgsi, true); release_defs (stmt); } return true; } /* Generate vector permute statements from a list of loads in DR_CHAIN. If ANALYZE_ONLY is TRUE, only check that it is possible to create valid permute statements for the SLP node NODE. Store the number of vector permute instructions in *N_PERMS and the number of vector load instructions in *N_LOADS. If DCE_CHAIN is true, remove all definitions that were not needed. */ bool vect_transform_slp_perm_load (vec_info *vinfo, slp_tree node, const vec &dr_chain, gimple_stmt_iterator *gsi, poly_uint64 vf, bool analyze_only, unsigned *n_perms, unsigned int *n_loads, bool dce_chain) { return vect_transform_slp_perm_load_1 (vinfo, node, SLP_TREE_LOAD_PERMUTATION (node), dr_chain, gsi, vf, analyze_only, dump_enabled_p (), n_perms, n_loads, dce_chain); } /* Produce the next vector result for SLP permutation NODE by adding a vector statement at GSI. If MASK_VEC is nonnull, add: = VEC_PERM_EXPR otherwise add: = FIRST_DEF. */ static void vect_add_slp_permutation (vec_info *vinfo, gimple_stmt_iterator *gsi, slp_tree node, tree first_def, tree second_def, tree mask_vec) { tree vectype = SLP_TREE_VECTYPE (node); /* ??? We SLP match existing vector element extracts but allow punning which we need to re-instantiate at uses but have no good way of explicitly representing. */ if (operand_equal_p (TYPE_SIZE (TREE_TYPE (first_def)), TYPE_SIZE (vectype)) && !types_compatible_p (TREE_TYPE (first_def), vectype)) { gassign *conv_stmt = gimple_build_assign (make_ssa_name (vectype), build1 (VIEW_CONVERT_EXPR, vectype, first_def)); vect_finish_stmt_generation (vinfo, NULL, conv_stmt, gsi); first_def = gimple_assign_lhs (conv_stmt); } gassign *perm_stmt; tree perm_dest = make_ssa_name (vectype); if (mask_vec) { if (operand_equal_p (TYPE_SIZE (TREE_TYPE (first_def)), TYPE_SIZE (vectype)) && !types_compatible_p (TREE_TYPE (second_def), vectype)) { gassign *conv_stmt = gimple_build_assign (make_ssa_name (vectype), build1 (VIEW_CONVERT_EXPR, vectype, second_def)); vect_finish_stmt_generation (vinfo, NULL, conv_stmt, gsi); second_def = gimple_assign_lhs (conv_stmt); } perm_stmt = gimple_build_assign (perm_dest, VEC_PERM_EXPR, first_def, second_def, mask_vec); } else if (!types_compatible_p (TREE_TYPE (first_def), vectype)) { /* For identity permutes we still need to handle the case of lowpart extracts or concats. */ unsigned HOST_WIDE_INT c; auto first_def_nunits = TYPE_VECTOR_SUBPARTS (TREE_TYPE (first_def)); if (known_le (TYPE_VECTOR_SUBPARTS (vectype), first_def_nunits)) { tree lowpart = build3 (BIT_FIELD_REF, vectype, first_def, TYPE_SIZE (vectype), bitsize_zero_node); perm_stmt = gimple_build_assign (perm_dest, lowpart); } else if (constant_multiple_p (TYPE_VECTOR_SUBPARTS (vectype), first_def_nunits, &c) && c == 2) { tree ctor = build_constructor_va (vectype, 2, NULL_TREE, first_def, NULL_TREE, second_def); perm_stmt = gimple_build_assign (perm_dest, ctor); } else gcc_unreachable (); } else { /* We need a copy here in case the def was external. */ perm_stmt = gimple_build_assign (perm_dest, first_def); } vect_finish_stmt_generation (vinfo, NULL, perm_stmt, gsi); /* Store the vector statement in NODE. */ SLP_TREE_VEC_STMTS (node).quick_push (perm_stmt); } /* Subroutine of vectorizable_slp_permutation. Check whether the target can perform permutation PERM on the (1 or 2) input nodes in CHILDREN. If GSI is nonnull, emit the permutation there. When GSI is null, the only purpose of NODE is to give properties of the result, such as the vector type and number of SLP lanes. The node does not need to be a VEC_PERM_EXPR. If the target supports the operation, return the number of individual VEC_PERM_EXPRs needed, otherwise return -1. Print information to the dump file if DUMP_P is true. */ static int vectorizable_slp_permutation_1 (vec_info *vinfo, gimple_stmt_iterator *gsi, slp_tree node, lane_permutation_t &perm, vec &children, bool dump_p) { tree vectype = SLP_TREE_VECTYPE (node); /* ??? We currently only support all same vector input types while the SLP IL should really do a concat + select and thus accept arbitrary mismatches. */ slp_tree child; unsigned i; poly_uint64 nunits = TYPE_VECTOR_SUBPARTS (vectype); bool repeating_p = multiple_p (nunits, SLP_TREE_LANES (node)); tree op_vectype = NULL_TREE; FOR_EACH_VEC_ELT (children, i, child) if (SLP_TREE_VECTYPE (child)) { op_vectype = SLP_TREE_VECTYPE (child); break; } if (!op_vectype) op_vectype = vectype; FOR_EACH_VEC_ELT (children, i, child) { if ((SLP_TREE_DEF_TYPE (child) != vect_internal_def && !vect_maybe_update_slp_op_vectype (child, op_vectype)) || !types_compatible_p (SLP_TREE_VECTYPE (child), op_vectype) || !types_compatible_p (TREE_TYPE (vectype), TREE_TYPE (op_vectype))) { if (dump_p) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "Unsupported vector types in lane permutation\n"); return -1; } if (SLP_TREE_LANES (child) != SLP_TREE_LANES (node)) repeating_p = false; } gcc_assert (perm.length () == SLP_TREE_LANES (node)); if (dump_p) { dump_printf_loc (MSG_NOTE, vect_location, "vectorizing permutation"); for (unsigned i = 0; i < perm.length (); ++i) dump_printf (MSG_NOTE, " op%u[%u]", perm[i].first, perm[i].second); if (repeating_p) dump_printf (MSG_NOTE, " (repeat %d)\n", SLP_TREE_LANES (node)); dump_printf (MSG_NOTE, "\n"); } /* REPEATING_P is true if every output vector is guaranteed to use the same permute vector. We can handle that case for both variable-length and constant-length vectors, but we only handle other cases for constant-length vectors. Set: - NPATTERNS and NELTS_PER_PATTERN to the encoding of the permute mask vector that we want to build. - NCOPIES to the number of copies of PERM that we need in order to build the necessary permute mask vectors. - NOUTPUTS_PER_MASK to the number of output vectors we want to create for each permute mask vector. This is only relevant when GSI is nonnull. */ uint64_t npatterns; unsigned nelts_per_pattern; uint64_t ncopies; unsigned noutputs_per_mask; if (repeating_p) { /* We need a single permute mask vector that has the form: { X1, ..., Xn, X1 + n, ..., Xn + n, X1 + 2n, ..., Xn + 2n, ... } In other words, the original n-element permute in PERM is "unrolled" to fill a full vector. The stepped vector encoding that we use for permutes requires 3n elements. */ npatterns = SLP_TREE_LANES (node); nelts_per_pattern = ncopies = 3; noutputs_per_mask = SLP_TREE_NUMBER_OF_VEC_STMTS (node); } else { /* Calculate every element of every permute mask vector explicitly, instead of relying on the pattern described above. */ if (!nunits.is_constant (&npatterns)) return -1; nelts_per_pattern = ncopies = 1; if (loop_vec_info linfo = dyn_cast (vinfo)) if (!LOOP_VINFO_VECT_FACTOR (linfo).is_constant (&ncopies)) return -1; noutputs_per_mask = 1; } unsigned olanes = ncopies * SLP_TREE_LANES (node); gcc_assert (repeating_p || multiple_p (olanes, nunits)); /* Compute the { { SLP operand, vector index}, lane } permutation sequence from the { SLP operand, scalar lane } permutation as recorded in the SLP node as intermediate step. This part should already work with SLP children with arbitrary number of lanes. */ auto_vec, unsigned> > vperm; auto_vec active_lane; vperm.create (olanes); active_lane.safe_grow_cleared (children.length (), true); for (unsigned i = 0; i < ncopies; ++i) { for (unsigned pi = 0; pi < perm.length (); ++pi) { std::pair p = perm[pi]; tree vtype = SLP_TREE_VECTYPE (children[p.first]); if (repeating_p) vperm.quick_push ({{p.first, 0}, p.second + active_lane[p.first]}); else { /* We checked above that the vectors are constant-length. */ unsigned vnunits = TYPE_VECTOR_SUBPARTS (vtype).to_constant (); unsigned vi = (active_lane[p.first] + p.second) / vnunits; unsigned vl = (active_lane[p.first] + p.second) % vnunits; vperm.quick_push ({{p.first, vi}, vl}); } } /* Advance to the next group. */ for (unsigned j = 0; j < children.length (); ++j) active_lane[j] += SLP_TREE_LANES (children[j]); } if (dump_p) { dump_printf_loc (MSG_NOTE, vect_location, "vectorizing permutation"); for (unsigned i = 0; i < perm.length (); ++i) dump_printf (MSG_NOTE, " op%u[%u]", perm[i].first, perm[i].second); if (repeating_p) dump_printf (MSG_NOTE, " (repeat %d)\n", SLP_TREE_LANES (node)); dump_printf (MSG_NOTE, "\n"); dump_printf_loc (MSG_NOTE, vect_location, "as"); for (unsigned i = 0; i < vperm.length (); ++i) { if (i != 0 && (repeating_p ? multiple_p (i, npatterns) : multiple_p (i, TYPE_VECTOR_SUBPARTS (vectype)))) dump_printf (MSG_NOTE, ","); dump_printf (MSG_NOTE, " vops%u[%u][%u]", vperm[i].first.first, vperm[i].first.second, vperm[i].second); } dump_printf (MSG_NOTE, "\n"); } /* We can only handle two-vector permutes, everything else should be lowered on the SLP level. The following is closely inspired by vect_transform_slp_perm_load and is supposed to eventually replace it. ??? As intermediate step do code-gen in the SLP tree representation somehow? */ std::pair first_vec = std::make_pair (-1U, -1U); std::pair second_vec = std::make_pair (-1U, -1U); unsigned int index = 0; poly_uint64 mask_element; vec_perm_builder mask; mask.new_vector (nunits, npatterns, nelts_per_pattern); unsigned int count = mask.encoded_nelts (); mask.quick_grow (count); vec_perm_indices indices; unsigned nperms = 0; for (unsigned i = 0; i < vperm.length (); ++i) { mask_element = vperm[i].second; if (first_vec.first == -1U || first_vec == vperm[i].first) first_vec = vperm[i].first; else if (second_vec.first == -1U || second_vec == vperm[i].first) { second_vec = vperm[i].first; mask_element += nunits; } else { if (dump_p) dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "permutation requires at " "least three vectors\n"); gcc_assert (!gsi); return -1; } mask[index++] = mask_element; if (index == count) { indices.new_vector (mask, second_vec.first == -1U ? 1 : 2, TYPE_VECTOR_SUBPARTS (op_vectype)); bool identity_p = indices.series_p (0, 1, 0, 1); machine_mode vmode = TYPE_MODE (vectype); machine_mode op_vmode = TYPE_MODE (op_vectype); unsigned HOST_WIDE_INT c; if ((!identity_p && !can_vec_perm_const_p (vmode, op_vmode, indices)) || (identity_p && !known_le (nunits, TYPE_VECTOR_SUBPARTS (op_vectype)) && (!constant_multiple_p (nunits, TYPE_VECTOR_SUBPARTS (op_vectype), &c) || c != 2))) { if (dump_p) { dump_printf_loc (MSG_MISSED_OPTIMIZATION, vect_location, "unsupported vect permute { "); for (i = 0; i < count; ++i) { dump_dec (MSG_MISSED_OPTIMIZATION, mask[i]); dump_printf (MSG_MISSED_OPTIMIZATION, " "); } dump_printf (MSG_MISSED_OPTIMIZATION, "}\n"); } gcc_assert (!gsi); return -1; } if (!identity_p) nperms++; if (gsi) { if (second_vec.first == -1U) second_vec = first_vec; slp_tree first_node = children[first_vec.first], second_node = children[second_vec.first]; tree mask_vec = NULL_TREE; if (!identity_p) mask_vec = vect_gen_perm_mask_checked (vectype, indices); for (unsigned int vi = 0; vi < noutputs_per_mask; ++vi) { tree first_def = vect_get_slp_vect_def (first_node, first_vec.second + vi); tree second_def = vect_get_slp_vect_def (second_node, second_vec.second + vi); vect_add_slp_permutation (vinfo, gsi, node, first_def, second_def, mask_vec); } } index = 0; first_vec = std::make_pair (-1U, -1U); second_vec = std::make_pair (-1U, -1U); } } return nperms; } /* Vectorize the SLP permutations in NODE as specified in SLP_TREE_LANE_PERMUTATION which is a vector of pairs of SLP child number and lane number. Interleaving of two two-lane two-child SLP subtrees (not supported): [ { 0, 0 }, { 1, 0 }, { 0, 1 }, { 1, 1 } ] A blend of two four-lane two-child SLP subtrees: [ { 0, 0 }, { 1, 1 }, { 0, 2 }, { 1, 3 } ] Highpart of a four-lane one-child SLP subtree (not supported): [ { 0, 2 }, { 0, 3 } ] Where currently only a subset is supported by code generating below. */ static bool vectorizable_slp_permutation (vec_info *vinfo, gimple_stmt_iterator *gsi, slp_tree node, stmt_vector_for_cost *cost_vec) { tree vectype = SLP_TREE_VECTYPE (node); lane_permutation_t &perm = SLP_TREE_LANE_PERMUTATION (node); int nperms = vectorizable_slp_permutation_1 (vinfo, gsi, node, perm, SLP_TREE_CHILDREN (node), dump_enabled_p ()); if (nperms < 0) return false; if (!gsi) record_stmt_cost (cost_vec, nperms, vec_perm, node, vectype, 0, vect_body); return true; } /* Vectorize SLP NODE. */ static void vect_schedule_slp_node (vec_info *vinfo, slp_tree node, slp_instance instance) { gimple_stmt_iterator si; int i; slp_tree child; /* For existing vectors there's nothing to do. */ if (SLP_TREE_VEC_DEFS (node).exists ()) return; gcc_assert (SLP_TREE_VEC_STMTS (node).is_empty ()); /* Vectorize externals and constants. */ if (SLP_TREE_DEF_TYPE (node) == vect_constant_def || SLP_TREE_DEF_TYPE (node) == vect_external_def) { /* ??? vectorizable_shift can end up using a scalar operand which is currently denoted as !SLP_TREE_VECTYPE. No need to vectorize the node in this case. */ if (!SLP_TREE_VECTYPE (node)) return; vect_create_constant_vectors (vinfo, node); return; } stmt_vec_info stmt_info = SLP_TREE_REPRESENTATIVE (node); gcc_assert (SLP_TREE_NUMBER_OF_VEC_STMTS (node) != 0); SLP_TREE_VEC_STMTS (node).create (SLP_TREE_NUMBER_OF_VEC_STMTS (node)); if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "------>vectorizing SLP node starting from: %G", stmt_info->stmt); if (STMT_VINFO_DATA_REF (stmt_info) && SLP_TREE_CODE (node) != VEC_PERM_EXPR) { /* Vectorized loads go before the first scalar load to make it ready early, vectorized stores go before the last scalar stmt which is where all uses are ready. */ stmt_vec_info last_stmt_info = NULL; if (DR_IS_READ (STMT_VINFO_DATA_REF (stmt_info))) last_stmt_info = vect_find_first_scalar_stmt_in_slp (node); else /* DR_IS_WRITE */ last_stmt_info = vect_find_last_scalar_stmt_in_slp (node); si = gsi_for_stmt (last_stmt_info->stmt); } else if ((STMT_VINFO_TYPE (stmt_info) == cycle_phi_info_type || STMT_VINFO_TYPE (stmt_info) == induc_vec_info_type || STMT_VINFO_TYPE (stmt_info) == phi_info_type) && SLP_TREE_CODE (node) != VEC_PERM_EXPR) { /* For PHI node vectorization we do not use the insertion iterator. */ si = gsi_none (); } else { /* Emit other stmts after the children vectorized defs which is earliest possible. */ gimple *last_stmt = NULL; bool seen_vector_def = false; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) if (SLP_TREE_DEF_TYPE (child) == vect_internal_def) { /* For fold-left reductions we are retaining the scalar reduction PHI but we still have SLP_TREE_NUM_VEC_STMTS set so the representation isn't perfect. Resort to the last scalar def here. */ if (SLP_TREE_VEC_STMTS (child).is_empty ()) { gcc_assert (STMT_VINFO_TYPE (SLP_TREE_REPRESENTATIVE (child)) == cycle_phi_info_type); gphi *phi = as_a (vect_find_last_scalar_stmt_in_slp (child)->stmt); if (!last_stmt || vect_stmt_dominates_stmt_p (last_stmt, phi)) last_stmt = phi; } /* We are emitting all vectorized stmts in the same place and the last one is the last. ??? Unless we have a load permutation applied and that figures to re-use an earlier generated load. */ unsigned j; gimple *vstmt; FOR_EACH_VEC_ELT (SLP_TREE_VEC_STMTS (child), j, vstmt) if (!last_stmt || vect_stmt_dominates_stmt_p (last_stmt, vstmt)) last_stmt = vstmt; } else if (!SLP_TREE_VECTYPE (child)) { /* For externals we use unvectorized at all scalar defs. */ unsigned j; tree def; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_OPS (child), j, def) if (TREE_CODE (def) == SSA_NAME && !SSA_NAME_IS_DEFAULT_DEF (def)) { gimple *stmt = SSA_NAME_DEF_STMT (def); if (!last_stmt || vect_stmt_dominates_stmt_p (last_stmt, stmt)) last_stmt = stmt; } } else { /* For externals we have to look at all defs since their insertion place is decided per vector. But beware of pre-existing vectors where we need to make sure we do not insert before the region boundary. */ if (SLP_TREE_SCALAR_OPS (child).is_empty () && !vinfo->lookup_def (SLP_TREE_VEC_DEFS (child)[0])) seen_vector_def = true; else { unsigned j; tree vdef; FOR_EACH_VEC_ELT (SLP_TREE_VEC_DEFS (child), j, vdef) if (TREE_CODE (vdef) == SSA_NAME && !SSA_NAME_IS_DEFAULT_DEF (vdef)) { gimple *vstmt = SSA_NAME_DEF_STMT (vdef); if (!last_stmt || vect_stmt_dominates_stmt_p (last_stmt, vstmt)) last_stmt = vstmt; } } } /* This can happen when all children are pre-existing vectors or constants. */ if (!last_stmt) last_stmt = vect_find_first_scalar_stmt_in_slp (node)->stmt; if (!last_stmt) { gcc_assert (seen_vector_def); si = gsi_after_labels (as_a (vinfo)->bbs[0]); } else if (is_ctrl_altering_stmt (last_stmt)) { /* We split regions to vectorize at control altering stmts with a definition so this must be an external which we can insert at the start of the region. */ si = gsi_after_labels (as_a (vinfo)->bbs[0]); } else if (is_a (vinfo) && gimple_bb (last_stmt) != gimple_bb (stmt_info->stmt) && gimple_could_trap_p (stmt_info->stmt)) { /* We've constrained possibly trapping operations to all come from the same basic-block, if vectorized defs would allow earlier scheduling still force vectorized stmts to the original block. This is only necessary for BB vectorization since for loop vect all operations are in a single BB and scalar stmt based placement doesn't play well with epilogue vectorization. */ gcc_assert (dominated_by_p (CDI_DOMINATORS, gimple_bb (stmt_info->stmt), gimple_bb (last_stmt))); si = gsi_after_labels (gimple_bb (stmt_info->stmt)); } else if (is_a (last_stmt)) si = gsi_after_labels (gimple_bb (last_stmt)); else { si = gsi_for_stmt (last_stmt); gsi_next (&si); } } /* Handle purely internal nodes. */ if (SLP_TREE_CODE (node) == VEC_PERM_EXPR) { /* ??? the transform kind is stored to STMT_VINFO_TYPE which might be shared with different SLP nodes (but usually it's the same operation apart from the case the stmt is only there for denoting the actual scalar lane defs ...). So do not call vect_transform_stmt but open-code it here (partly). */ bool done = vectorizable_slp_permutation (vinfo, &si, node, NULL); gcc_assert (done); stmt_vec_info slp_stmt_info; unsigned int i; FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, slp_stmt_info) if (STMT_VINFO_LIVE_P (slp_stmt_info)) { done = vectorizable_live_operation (vinfo, slp_stmt_info, &si, node, instance, i, true, NULL); gcc_assert (done); } } else vect_transform_stmt (vinfo, stmt_info, &si, node, instance); } /* Replace scalar calls from SLP node NODE with setting of their lhs to zero. For loop vectorization this is done in vectorizable_call, but for SLP it needs to be deferred until end of vect_schedule_slp, because multiple SLP instances may refer to the same scalar stmt. */ static void vect_remove_slp_scalar_calls (vec_info *vinfo, slp_tree node, hash_set &visited) { gimple *new_stmt; gimple_stmt_iterator gsi; int i; slp_tree child; tree lhs; stmt_vec_info stmt_info; if (!node || SLP_TREE_DEF_TYPE (node) != vect_internal_def) return; if (visited.add (node)) return; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) vect_remove_slp_scalar_calls (vinfo, child, visited); FOR_EACH_VEC_ELT (SLP_TREE_SCALAR_STMTS (node), i, stmt_info) { gcall *stmt = dyn_cast (stmt_info->stmt); if (!stmt || gimple_bb (stmt) == NULL) continue; if (is_pattern_stmt_p (stmt_info) || !PURE_SLP_STMT (stmt_info)) continue; lhs = gimple_call_lhs (stmt); new_stmt = gimple_build_assign (lhs, build_zero_cst (TREE_TYPE (lhs))); gsi = gsi_for_stmt (stmt); vinfo->replace_stmt (&gsi, stmt_info, new_stmt); SSA_NAME_DEF_STMT (gimple_assign_lhs (new_stmt)) = new_stmt; } } static void vect_remove_slp_scalar_calls (vec_info *vinfo, slp_tree node) { hash_set visited; vect_remove_slp_scalar_calls (vinfo, node, visited); } /* Vectorize the instance root. */ void vectorize_slp_instance_root_stmt (slp_tree node, slp_instance instance) { gassign *rstmt = NULL; if (instance->kind == slp_inst_kind_ctor) { if (SLP_TREE_NUMBER_OF_VEC_STMTS (node) == 1) { gimple *child_stmt = SLP_TREE_VEC_STMTS (node)[0]; tree vect_lhs = gimple_get_lhs (child_stmt); tree root_lhs = gimple_get_lhs (instance->root_stmts[0]->stmt); if (!useless_type_conversion_p (TREE_TYPE (root_lhs), TREE_TYPE (vect_lhs))) vect_lhs = build1 (VIEW_CONVERT_EXPR, TREE_TYPE (root_lhs), vect_lhs); rstmt = gimple_build_assign (root_lhs, vect_lhs); } else if (SLP_TREE_NUMBER_OF_VEC_STMTS (node) > 1) { int nelts = SLP_TREE_NUMBER_OF_VEC_STMTS (node); gimple *child_stmt; int j; vec *v; vec_alloc (v, nelts); /* A CTOR can handle V16HI composition from VNx8HI so we do not need to convert vector elements if the types do not match. */ FOR_EACH_VEC_ELT (SLP_TREE_VEC_STMTS (node), j, child_stmt) CONSTRUCTOR_APPEND_ELT (v, NULL_TREE, gimple_get_lhs (child_stmt)); tree lhs = gimple_get_lhs (instance->root_stmts[0]->stmt); tree rtype = TREE_TYPE (gimple_assign_rhs1 (instance->root_stmts[0]->stmt)); tree r_constructor = build_constructor (rtype, v); rstmt = gimple_build_assign (lhs, r_constructor); } } else if (instance->kind == slp_inst_kind_bb_reduc) { /* Largely inspired by reduction chain epilogue handling in vect_create_epilog_for_reduction. */ vec vec_defs = vNULL; vect_get_slp_defs (node, &vec_defs); enum tree_code reduc_code = gimple_assign_rhs_code (instance->root_stmts[0]->stmt); /* ??? We actually have to reflect signs somewhere. */ if (reduc_code == MINUS_EXPR) reduc_code = PLUS_EXPR; gimple_seq epilogue = NULL; /* We may end up with more than one vector result, reduce them to one vector. */ tree vec_def = vec_defs[0]; for (unsigned i = 1; i < vec_defs.length (); ++i) vec_def = gimple_build (&epilogue, reduc_code, TREE_TYPE (vec_def), vec_def, vec_defs[i]); vec_defs.release (); /* ??? Support other schemes than direct internal fn. */ internal_fn reduc_fn; if (!reduction_fn_for_scalar_code (reduc_code, &reduc_fn) || reduc_fn == IFN_LAST) gcc_unreachable (); tree scalar_def = gimple_build (&epilogue, as_combined_fn (reduc_fn), TREE_TYPE (TREE_TYPE (vec_def)), vec_def); gimple_stmt_iterator rgsi = gsi_for_stmt (instance->root_stmts[0]->stmt); gsi_insert_seq_before (&rgsi, epilogue, GSI_SAME_STMT); gimple_assign_set_rhs_from_tree (&rgsi, scalar_def); update_stmt (gsi_stmt (rgsi)); return; } else gcc_unreachable (); gcc_assert (rstmt); gimple_stmt_iterator rgsi = gsi_for_stmt (instance->root_stmts[0]->stmt); gsi_replace (&rgsi, rstmt, true); } struct slp_scc_info { bool on_stack; int dfs; int lowlink; }; /* Schedule the SLP INSTANCE doing a DFS walk and collecting SCCs. */ static void vect_schedule_scc (vec_info *vinfo, slp_tree node, slp_instance instance, hash_map &scc_info, int &maxdfs, vec &stack) { bool existed_p; slp_scc_info *info = &scc_info.get_or_insert (node, &existed_p); gcc_assert (!existed_p); info->dfs = maxdfs; info->lowlink = maxdfs; maxdfs++; /* Leaf. */ if (SLP_TREE_DEF_TYPE (node) != vect_internal_def) { info->on_stack = false; vect_schedule_slp_node (vinfo, node, instance); return; } info->on_stack = true; stack.safe_push (node); unsigned i; slp_tree child; /* DFS recurse. */ FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (node), i, child) { if (!child) continue; slp_scc_info *child_info = scc_info.get (child); if (!child_info) { vect_schedule_scc (vinfo, child, instance, scc_info, maxdfs, stack); /* Recursion might have re-allocated the node. */ info = scc_info.get (node); child_info = scc_info.get (child); info->lowlink = MIN (info->lowlink, child_info->lowlink); } else if (child_info->on_stack) info->lowlink = MIN (info->lowlink, child_info->dfs); } if (info->lowlink != info->dfs) return; auto_vec phis_to_fixup; /* Singleton. */ if (stack.last () == node) { stack.pop (); info->on_stack = false; vect_schedule_slp_node (vinfo, node, instance); if (SLP_TREE_CODE (node) != VEC_PERM_EXPR && is_a (SLP_TREE_REPRESENTATIVE (node)->stmt)) phis_to_fixup.quick_push (node); } else { /* SCC. */ int last_idx = stack.length () - 1; while (stack[last_idx] != node) last_idx--; /* We can break the cycle at PHIs who have at least one child code generated. Then we could re-start the DFS walk until all nodes in the SCC are covered (we might have new entries for only back-reachable nodes). But it's simpler to just iterate and schedule those that are ready. */ unsigned todo = stack.length () - last_idx; do { for (int idx = stack.length () - 1; idx >= last_idx; --idx) { slp_tree entry = stack[idx]; if (!entry) continue; bool phi = (SLP_TREE_CODE (entry) != VEC_PERM_EXPR && is_a (SLP_TREE_REPRESENTATIVE (entry)->stmt)); bool ready = !phi; FOR_EACH_VEC_ELT (SLP_TREE_CHILDREN (entry), i, child) if (!child) { gcc_assert (phi); ready = true; break; } else if (scc_info.get (child)->on_stack) { if (!phi) { ready = false; break; } } else { if (phi) { ready = true; break; } } if (ready) { vect_schedule_slp_node (vinfo, entry, instance); scc_info.get (entry)->on_stack = false; stack[idx] = NULL; todo--; if (phi) phis_to_fixup.safe_push (entry); } } } while (todo != 0); /* Pop the SCC. */ stack.truncate (last_idx); } /* Now fixup the backedge def of the vectorized PHIs in this SCC. */ slp_tree phi_node; FOR_EACH_VEC_ELT (phis_to_fixup, i, phi_node) { gphi *phi = as_a (SLP_TREE_REPRESENTATIVE (phi_node)->stmt); edge_iterator ei; edge e; FOR_EACH_EDGE (e, ei, gimple_bb (phi)->preds) { unsigned dest_idx = e->dest_idx; child = SLP_TREE_CHILDREN (phi_node)[dest_idx]; if (!child || SLP_TREE_DEF_TYPE (child) != vect_internal_def) continue; unsigned n = SLP_TREE_VEC_STMTS (phi_node).length (); /* Simply fill all args. */ if (STMT_VINFO_DEF_TYPE (SLP_TREE_REPRESENTATIVE (phi_node)) != vect_first_order_recurrence) for (unsigned i = 0; i < n; ++i) add_phi_arg (as_a (SLP_TREE_VEC_STMTS (phi_node)[i]), vect_get_slp_vect_def (child, i), e, gimple_phi_arg_location (phi, dest_idx)); else { /* Unless it is a first order recurrence which needs args filled in for both the PHI node and the permutes. */ gimple *perm = SLP_TREE_VEC_STMTS (phi_node)[0]; gimple *rphi = SSA_NAME_DEF_STMT (gimple_assign_rhs1 (perm)); add_phi_arg (as_a (rphi), vect_get_slp_vect_def (child, n - 1), e, gimple_phi_arg_location (phi, dest_idx)); for (unsigned i = 0; i < n; ++i) { gimple *perm = SLP_TREE_VEC_STMTS (phi_node)[i]; if (i > 0) gimple_assign_set_rhs1 (perm, vect_get_slp_vect_def (child, i - 1)); gimple_assign_set_rhs2 (perm, vect_get_slp_vect_def (child, i)); update_stmt (perm); } } } } } /* Generate vector code for SLP_INSTANCES in the loop/basic block. */ void vect_schedule_slp (vec_info *vinfo, const vec &slp_instances) { slp_instance instance; unsigned int i; hash_map scc_info; int maxdfs = 0; FOR_EACH_VEC_ELT (slp_instances, i, instance) { slp_tree node = SLP_INSTANCE_TREE (instance); if (dump_enabled_p ()) { dump_printf_loc (MSG_NOTE, vect_location, "Vectorizing SLP tree:\n"); /* ??? Dump all? */ if (!SLP_INSTANCE_ROOT_STMTS (instance).is_empty ()) dump_printf_loc (MSG_NOTE, vect_location, "Root stmt: %G", SLP_INSTANCE_ROOT_STMTS (instance)[0]->stmt); vect_print_slp_graph (MSG_NOTE, vect_location, SLP_INSTANCE_TREE (instance)); } /* Schedule the tree of INSTANCE, scheduling SCCs in a way to have a PHI be the node breaking the cycle. */ auto_vec stack; if (!scc_info.get (node)) vect_schedule_scc (vinfo, node, instance, scc_info, maxdfs, stack); if (!SLP_INSTANCE_ROOT_STMTS (instance).is_empty ()) vectorize_slp_instance_root_stmt (node, instance); if (dump_enabled_p ()) dump_printf_loc (MSG_NOTE, vect_location, "vectorizing stmts using SLP.\n"); } FOR_EACH_VEC_ELT (slp_instances, i, instance) { slp_tree root = SLP_INSTANCE_TREE (instance); stmt_vec_info store_info; unsigned int j; /* Remove scalar call stmts. Do not do this for basic-block vectorization as not all uses may be vectorized. ??? Why should this be necessary? DCE should be able to remove the stmts itself. ??? For BB vectorization we can as well remove scalar stmts starting from the SLP tree root if they have no uses. */ if (is_a (vinfo)) vect_remove_slp_scalar_calls (vinfo, root); /* Remove vectorized stores original scalar stmts. */ for (j = 0; SLP_TREE_SCALAR_STMTS (root).iterate (j, &store_info); j++) { if (!STMT_VINFO_DATA_REF (store_info) || !DR_IS_WRITE (STMT_VINFO_DATA_REF (store_info))) break; store_info = vect_orig_stmt (store_info); /* Free the attached stmt_vec_info and remove the stmt. */ vinfo->remove_stmt (store_info); /* Invalidate SLP_TREE_REPRESENTATIVE in case we released it to not crash in vect_free_slp_tree later. */ if (SLP_TREE_REPRESENTATIVE (root) == store_info) SLP_TREE_REPRESENTATIVE (root) = NULL; } } }