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[Bug libstdc++/14248] New: Bit_vectors do not work (regression)
- From: "schmid at snake dot iap dot physik dot tu-darmstadt dot de" <gcc-bugzilla at gcc dot gnu dot org>
- To: gcc-bugs at gcc dot gnu dot org
- Date: 22 Feb 2004 22:48:32 -0000
- Subject: [Bug libstdc++/14248] New: Bit_vectors do not work (regression)
- Reply-to: gcc-bugzilla at gcc dot gnu dot org
file tb.C
#include <vector>
int main()
{
std::bit_vector b(3);
}
Compiling tb.C
g++ tb.C -W -Wall -v -save-temps
Reading specs from /usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/specs
Configured with: ../gcc/configure --enable-threads=posix
--enable-languages=c,c++,f77,objc --enable-__cxa_atexit --enable-libstdcxx-debug
Thread model: posix
gcc version 3.4.0 20040221 (prerelease)
/usr/local/libexec/gcc/i686-pc-linux-gnu/3.4.0/cc1plus -E -quiet -v
-D_GNU_SOURCE tb.C -mtune=pentiumpro -W -Wall -o tb.ii
ignoring nonexistent directory "NONE/include"
ignoring nonexistent directory
"/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../i686-pc-linux-gnu/include"
#include "..." search starts here:
#include <...> search starts here:
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/i686-pc-linux-gnu
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/backward
/usr/local/include
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/include
/usr/include
End of search list.
/usr/local/libexec/gcc/i686-pc-linux-gnu/3.4.0/cc1plus -fpreprocessed tb.ii
-quiet -dumpbase tb.C -mtune=pentiumpro -auxbase tb -W -Wall -version -o tb.s
GNU C++ version 3.4.0 20040221 (prerelease) (i686-pc-linux-gnu)
compiled by GNU C version 3.4.0 20040221 (prerelease).
GGC heuristics: --param ggc-min-expand=64 --param ggc-min-heapsize=64274
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:
In instantiation of `__gnu_norm::_Bvector_base<std::__alloc>':
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:319:
instantiated from `__gnu_norm::vector<bool, std::__alloc>'
tb.C:6: instantiated from here
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:267:
error: no class template named `rebind' in `class std::__alloc'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:268:
error: no class template named `rebind' in `class std::__alloc'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:
In constructor `__gnu_norm::_Bvector_base<_Alloc>::_Bvector_base(const _Alloc&)
[with _Alloc = std::__alloc]':
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:477:
instantiated from `__gnu_norm::vector<bool, _Alloc>::vector(size_t) [with
_Alloc = std::__alloc]'
tb.C:6: instantiated from here
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:276:
error: no class template named `rebind' in `class std::__alloc'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:
In member function `void __gnu_norm::_Bvector_base<_Alloc>::_M_deallocate()
[with _Alloc = std::__alloc]':
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:277:
instantiated from `__gnu_norm::_Bvector_base<_Alloc>::~_Bvector_base() [with
_Alloc = std::__alloc]'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:477:
instantiated from `__gnu_norm::vector<bool, _Alloc>::vector(size_t) [with
_Alloc = std::__alloc]'
tb.C:6: instantiated from here
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:285:
error: no class template named `rebind' in `class std::__alloc'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:285:
error: `deallocate' is not a member of `<declaration error>'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:
In member function `__gnu_norm::_Bit_type*
__gnu_norm::_Bvector_base<_Alloc>::_M_bit_alloc(size_t) [with _Alloc =
std::__alloc]':
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:349:
instantiated from `void __gnu_norm::vector<bool,
_Alloc>::_M_initialize(size_t) [with _Alloc = std::__alloc]'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:478:
instantiated from `__gnu_norm::vector<bool, _Alloc>::vector(size_t) [with
_Alloc = std::__alloc]'
tb.C:6: instantiated from here
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:281:
error: no class template named `rebind' in `class std::__alloc'
/usr/local/lib/gcc/i686-pc-linux-gnu/3.4.0/../../../../include/c++/3.4.0/bits/stl_bvector.h:281:
error: `allocate' is not a member of `<declaration error>'
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--8323584-1213837320-1077487014=:1845--
--
Summary: Bit_vectors do not work (regression)
Product: gcc
Version: 3.4.0
Status: UNCONFIRMED
Severity: critical
Priority: P1
Component: libstdc++
AssignedTo: unassigned at gcc dot gnu dot org
ReportedBy: schmid at snake dot iap dot physik dot tu-darmstadt dot
de
CC: gcc-bugs at gcc dot gnu dot org
GCC build triplet: i686-pc-linux-gnu
GCC host triplet: i686-pc-linux-gnu
GCC target triplet: i686-pc-linux-gnu
http://gcc.gnu.org/bugzilla/show_bug.cgi?id=14248