optimization/8092: cross-jump triggers too often
Bernd Paysan
bernd.paysan@gmx.de
Thu Oct 3 16:16:00 GMT 2002
The following reply was made to PR optimization/8092; it has been noted by GNATS.
From: Bernd Paysan <bernd.paysan@gmx.de>
To: Richard Henderson <rth@redhat.com>
Cc: rth@gcc.gnu.org, gcc-bugs@gcc.gnu.org, nobody@gcc.gnu.org,
gcc-gnats@gcc.gnu.org
Subject: Re: optimization/8092: cross-jump triggers too often
Date: Fri, 4 Oct 2002 01:09:14 +0200
--------------Boundary-00=_ENHF1A4EXVDXTE4NFNH3
Content-Type: text/plain;
charset="iso-8859-1"
Content-Transfer-Encoding: quoted-printable
On Tuesday 01 October 2002 20:55, Richard Henderson wrote:
> On Tue, Oct 01, 2002 at 04:38:40PM +0200, Bernd Paysan wrote:
> > Ok, here's engine.i (compressed with bzip2). The relevant function is
> > engine.
>
> Well I'm horrified all right -- by the source. For the record, I
> wouldn't count on this thing working indefinitely.
>
> I had to modify it a bit to get it to compile with mainline. The
> use of asm register variables falls over the compiler's use of
> __builtin_memset, which requires edi. I wish I could give a proper
> error message for this instead of ICE, but we don't save enough
> information long enough for me to remember that this is the user's
> fault.
>
> Anyway, I don't see anything that sticks out like a sore thumb wrt
> either cross-jumping or gcse. Can you be more specific?
I patched GCC 3.2 and added a flag to disable cross-jumping (Sources from=
SuSE=20
8.1, without SuSE patches applied):
-----------------------------fcross-jump.patch---------------------------=
------
--- gcc-3.2/gcc/toplev.c~ 2002-05-27 07:48:15.000000000 +0200
+++ gcc-3.2/gcc/toplev.c 2002-10-03 21:28:10.000000000 +0200
@@ -610,6 +610,10 @@
=20
int flag_syntax_only =3D 0;
=20
+/* Nonzero means perform crossjump optimization. */
+
+static int flag_crossjump =3D 0;
+
/* Nonzero means perform global cse. */
=20
static int flag_gcse;
@@ -1023,6 +1027,8 @@
N_("Return 'short' aggregates in registers") },
{"delayed-branch", &flag_delayed_branch, 1,
N_("Attempt to fill delay slots of branch instructions") },
+ {"cross-jump", &flag_crossjump, 1,
+ N_("Perform crossjump optimization") },
{"gcse", &flag_gcse, 1,
N_("Perform the global common subexpression elimination") },
{"gcse-lm", &flag_gcse_lm, 1,
@@ -3286,7 +3292,7 @@
/* Cross-jumping is O(N^3) on the number of edges, thus trying to
perform cross-jumping on flow graphs which have a high connectivity
will take a long time. This is similar to the test to disable GCSE=
=2E */
- cleanup_crossjump =3D CLEANUP_CROSSJUMP;
+ cleanup_crossjump =3D flag_crossjump ? CLEANUP_CROSSJUMP : 0;
if (n_basic_blocks > 1000 && n_edges / n_basic_blocks >=3D 20)
{
if (optimize && warn_disabled_optimization)
@@ -4701,6 +4707,7 @@
flag_optimize_sibling_calls =3D 1;
flag_cse_follow_jumps =3D 1;
flag_cse_skip_blocks =3D 1;
+ flag_crossjump =3D 1;
flag_gcse =3D 1;
flag_expensive_optimizations =3D 1;
flag_strength_reduce =3D 1;
-------------------------------------------------------------------------=
----------
I changed the register allocation a bit (this is the current development=20
branch of Gforth, not the release - new .i file in attachment). That's ho=
w it=20
looks with
gcc -O2 -Wall -fomit-frame-pointer -fforce-addr -fforce-mem -march=3Dpent=
ium=20
-fno-defer-pop -fcaller-saves -fno-gcse -fno-cross-jump -S engine.b.i
and searching for negl=09%ecx.
=2EL96:
=09addl=09$4, %ebx
=09negl=09%ecx
=09jmp=09*-4(%ebx)
=2EL97:
=09addl=09$4, %ebx
=09incl=09%ecx
=09jmp=09*-4(%ebx)
=2EL98:
=09addl=09$4, %ebx
=09decl=09%ecx
=09jmp=09*-4(%ebx)
This is exactly how I want it to be.
Now with cross jumps:
gcc -O2 -Wall -fomit-frame-pointer -fforce-addr -fforce-mem -march=3Dpent=
ium=20
-fno-defer-pop -fcaller-saves -fno-gcse -S engine.b.i
=2EL99:
=09negl=09%ecx
=09jmp=09.L1143
=2EL100:
=2EL205:
=09incl=09%ecx
=2EL206:
=09jmp=09.L1143
=2EL101:
=2EL1182:
=09decl=09%ecx
=09jmp=09.L1143
=2E..
=2EL1143:
=09addl=09$4, %ebx
=2EL922:
=09jmp=09*-4(%ebx)
Apart from the superfluous jump, there's not much damage done here. Note =
that=20
this cross-jump pessimation not only introduces an unnecessary jump, but=20
kills the branch prediction logic of modern x86 implementations, which=20
usually predicts following primitives quite well. When there's only one=20
central computed goto branch, the branch prediction logic fails. And ther=
e's=20
really no point in saving one byte with a 5-byte jump to a total of 6 byt=
es=20
instructions.
But look at what happens when allowing global CSE:
gcc -O2 -Wall -fomit-frame-pointer -fforce-addr -fforce-mem -march=3Dpent=
ium=20
-fno-defer-pop -fcaller-saves -S engine.b.i
=2EL99:
=09negl=09%ecx
=09jmp=09.L1266
=2EL100:
=2EL205:
=09incl=09%ecx
=09jmp=09.L1266
=2EL101:
=2EL1496:
=09decl=09%ecx
=09jmp=09.L1266
Seems to look the same, but look what happens at .L1266:
=2EL1266:
=09addl=09$4, %ebx
=2EL1242:
=09movl=09996(%esp), %edx
=09addl=09$8, %edx
=09movl=09%edx, 36(%esp)
=2EL1274:
=09leal=0916(%edi), %ebp
=09leal=0912(%edi), %eax
=09movl=09__ctype_toupper, %edx
=09movl=09%ebp, 48(%esp)
=09movl=09%eax, 52(%esp)
=09movl=09%edx, 80(%esp)
=2EL1267:
=09leal=098(%edi), %ebp
=09movl=09symbols.3+24, %eax
=09movl=09%ebp, 60(%esp)
=09movl=09%eax, 40(%esp)
=2EL1335:
=09movl=09stdin, %edx
=09movl=09%edx, 84(%esp)
=09jmp=09.L1244
=2E..
=2EL1244:
=09movl=09stderr, %ebp
=09leal=0912(%esi), %eax
=09movl=09%ebp, 16(%esp)
=09movl=09stdout, %edx
=09leal=0920(%esi), %ebp
=09movl=09%eax, 56(%esp)
=09movl=09%ebp, 44(%esp)
=09jmp=09.L971
=2E..
=2EL971:
=09leal=094(%edi), %eax
=09leal=0916(%esi), %ebp
=09movl=09%eax, 68(%esp)
=2EL922:
=09leal=094(%esi), %eax
=09movl=09%eax, 72(%esp)
=2EL974:
=09leal=098(%esi), %eax
=09movl=09%eax, 64(%esp)
=2EL923:
=09jmp=09*-4(%ebx)
Or without global jumps, but GCSE:
gcc -O2 -Wall -fomit-frame-pointer -fforce-addr -fforce-mem -march=3Dpent=
ium=20
-fno-defer-pop -fcaller-saves -fno-cross-jump -S engine.b.i
=2EL96:
=09leal=0912(%edi), %eax
=09leal=0916(%edi), %ebp
=09movl=09996(%esp), %edx
=09movl=09%eax, 52(%esp)
=09movl=09symbols.3+24, %eax
=09addl=09$8, %edx
=09movl=09%ebp, 48(%esp)
=09movl=09%eax, 40(%esp)
=09leal=098(%edi), %ebp
=09leal=0912(%esi), %eax
=09movl=09%edx, 36(%esp)
=09movl=09%ebp, 60(%esp)
=09movl=09__ctype_toupper, %edx
=09movl=09%eax, 56(%esp)
=09movl=09stderr, %ebp
=09leal=094(%edi), %eax
=09movl=09%edx, 80(%esp)
=09movl=09%ebp, 16(%esp)
=09movl=09stdin, %edx
=09movl=09%eax, 68(%esp)
=09leal=0920(%esi), %ebp
=09addl=09$4, %ebx
=09leal=094(%esi), %eax
=09movl=09%edx, 84(%esp)
=09movl=09%ebp, 44(%esp)
=09movl=09%eax, 72(%esp)
=09negl=09%ecx
=09leal=098(%esi), %eax
=09movl=09stdout, %edx
=09leal=0916(%esi), %ebp
=09movl=09%eax, 64(%esp)
=09jmp=09*-4(%ebx)
=2EL97:
=09leal=0912(%edi), %eax
=09leal=0916(%edi), %ebp
=09movl=09996(%esp), %edx
=09movl=09%eax, 52(%esp)
=09movl=09symbols.3+24, %eax
=09addl=09$8, %edx
=09movl=09%ebp, 48(%esp)
=09movl=09%eax, 40(%esp)
=09leal=098(%edi), %ebp
=09leal=0912(%esi), %eax
=09movl=09%edx, 36(%esp)
=09movl=09%ebp, 60(%esp)
=09movl=09__ctype_toupper, %edx
=09movl=09%eax, 56(%esp)
=09movl=09stderr, %ebp
=09leal=094(%edi), %eax
=09movl=09%edx, 80(%esp)
=09movl=09%ebp, 16(%esp)
=09movl=09stdin, %edx
=09movl=09%eax, 68(%esp)
=09leal=0920(%esi), %ebp
=09addl=09$4, %ebx
=09leal=094(%esi), %eax
=09movl=09%edx, 84(%esp)
=09movl=09%ebp, 44(%esp)
=09movl=09%eax, 72(%esp)
=09incl=09%ecx
=09movl=09stdout, %edx
=09leal=098(%esi), %eax
=09leal=0916(%esi), %ebp
=09movl=09%eax, 64(%esp)
=09jmp=09*-4(%ebx)
=2EL98:
=09leal=0912(%edi), %eax
=09leal=0916(%edi), %ebp
=09movl=09996(%esp), %edx
=09movl=09%eax, 52(%esp)
=09movl=09symbols.3+24, %eax
=09addl=09$8, %edx
=09movl=09%ebp, 48(%esp)
=09movl=09%eax, 40(%esp)
=09leal=098(%edi), %ebp
=09leal=0912(%esi), %eax
=09movl=09%edx, 36(%esp)
=09movl=09%ebp, 60(%esp)
=09movl=09__ctype_toupper, %edx
=09movl=09%eax, 56(%esp)
=09movl=09stderr, %ebp
=09leal=094(%edi), %eax
=09movl=09%edx, 80(%esp)
=09movl=09%ebp, 16(%esp)
=09movl=09stdin, %edx
=09movl=09%eax, 68(%esp)
=09leal=0920(%esi), %ebp
=09addl=09$4, %ebx
=09leal=094(%esi), %eax
=09movl=09%edx, 84(%esp)
=09movl=09%ebp, 44(%esp)
=09movl=09%eax, 72(%esp)
=09decl=09%ecx
=09movl=09stdout, %edx
=09leal=098(%esi), %eax
=09leal=0916(%esi), %ebp
=09movl=09%eax, 64(%esp)
=09jmp=09*-4(%ebx)
I noticed a further problem. There's one primitive that converts a double=
=20
float to a long long. I moved that conversion out into a function=20
(double2ll). Originally, this conversion is just an inline operation. If =
you=20
automatically inline the function (with either -finline-function or -O3),=
you=20
get parts of it moved all over the place, even with global CSE disabled:
gcc -O3 -Wall -fomit-frame-pointer -fforce-addr -fforce-mem -march=3Dpent=
ium=20
-fno-defer-pop -fcaller-saves -fno-gcse -fno-cross-jump -S engine.b.i
=2EL109:
=09fnstcw=091230(%esp)
=09movw=091230(%esp), %ax
=09addl=09$4, %ebx
=09movb=09$12, %ah
=09negl=09%ecx
=09movw=09%ax, 1228(%esp)
=09jmp=09*-4(%ebx)
=2EL110:
=09fnstcw=091230(%esp)
=09movw=091230(%esp), %ax
=09addl=09$4, %ebx
=09movb=09$12, %ah
=09incl=09%ecx
=09movw=09%ax, 1228(%esp)
=09jmp=09*-4(%ebx)
=2EL111:
=09fnstcw=091230(%esp)
=09movw=091230(%esp), %ax
=09addl=09$4, %ebx
=09movb=09$12, %ah
=09decl=09%ecx
=09movw=09%ax, 1228(%esp)
=09jmp=09*-4(%ebx)
Is this specific enough why I'm horrified with the code GCC 3.2 generates=
? The=20
C code vmgen produces just looks ugly, but this code *is* ugly. I hope yo=
u=20
now can see the sore thumb sticking out. I don't want code to be moved wh=
ere=20
it doesn't belong to, nor do I want unnecessary jumps inserted for no=20
particular purpose.
--=20
Bernd Paysan
"If you want it done right, you have to do it yourself"
http://www.jwdt.com/~paysan/
--------------Boundary-00=_ENHF1A4EXVDXTE4NFNH3
Content-Type: application/x-bzip2;
name="engine.b.i.bz2"
Content-Transfer-Encoding: base64
Content-Disposition: attachment; filename="engine.b.i.bz2"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--------------Boundary-00=_ENHF1A4EXVDXTE4NFNH3--
More information about the Gcc-prs
mailing list