From mboxrd@z Thu Jan 1 00:00:00 1970 From: joel@gcc.gnu.org To: gcc-gnats@gcc.gnu.org Cc: eric.norum@usask.ca Subject: bootstrap/4032: i386-rtems 3.0-cvs regression Date: Wed, 15 Aug 2001 14:26:00 -0000 Message-id: <20010815212043.24693.qmail@sourceware.cygnus.com> X-SW-Source: 2001-08/msg00423.html List-Id: >Number: 4032 >Category: bootstrap >Synopsis: i386-rtems 3.0-cvs regression >Confidential: no >Severity: serious >Priority: medium >Responsible: unassigned >State: open >Class: sw-bug >Submitter-Id: net >Arrival-Date: Wed Aug 15 14:26:01 PDT 2001 >Closed-Date: >Last-Modified: >Originator: joel@oarcorp.com >Release: gcc-30-cvs-20010815 >Organization: >Environment: GNU/Linux RedHat 6.2 >Description: The i386-rtems target builds multilibs while the i386-elf target does not. This target has built since 3.0 so this is a regression. Specifically this is a regression since I checked code out around 20010727. I suspect that if someone tries my preprocessed output with a -mcpu=k6 on an x86 GNU/Linux they will duplicate it. /usr3/ftp_archive/gnu/gcc/ss/b3/b-i386-rtems/gcc/xgcc -B/usr3/ftp_archive/gnu/gc c/ss/b3/b-i386-rtems/gcc/ -nostdinc -B/usr3/ftp_archive/gnu/gcc/ss/b3/b-i386-rte ms/i386-rtems/newlib/ -isystem /usr3/ftp_archive/gnu/gcc/ss/b3/b-i386-rtems/i386 -rtems/newlib/targ-include -isystem /usr3/ftp_archive/gnu/gcc/ss/b3/gcc-30-cvs-2 0010814/newlib/libc/include -B/opt/rtems/i386-rtems/bin/ -B/opt/rtems/i386-rtems /lib/ -isystem /opt/rtems/i386-rtems/include -O2 -I../../gcc-30-cvs-20010814/gcc /../newlib/libc/sys/rtems/include -DCROSS_COMPILE -DIN_GCC -W -Wall -Wwrite-s trings -Wstrict-prototypes -Wmissing-prototypes -isystem ./include -g1 -DHAVE_ GTHR_DEFAULT -DIN_LIBGCC2 -D__GCC_FLOAT_NOT_NEEDED -Dinhibit_libc -I. -I. -I../. ./gcc-30-cvs-20010814/gcc -I../../gcc-30-cvs-20010814/gcc/. -I../../gcc-30-cvs-2 0010814/gcc/config -I../../gcc-30-cvs-20010814/gcc/../include -mcpu=k6 -fexcepti ons -c ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c -o libgcc/k6/unwind-dw2.o In file included from ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c:25: ../../gcc-30-cvs-20010814/gcc/unwind-pe.h: In function `size_of_encoded_value': ../../gcc-30-cvs-20010814/gcc/unwind-pe.h:76: warning: implicit declaration of f unction `abort' In file included from gthr-default.h:1, from ../../gcc-30-cvs-20010814/gcc/gthr.h:98, from ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c:27: ../../gcc-30-cvs-20010814/gcc/gthr-rtems.h: At top level: ../../gcc-30-cvs-20010814/gcc/gthr-rtems.h:51: warning: function declaration isn 't a prototype ../../gcc-30-cvs-20010814/gcc/gthr-rtems.h: At top level: ../../gcc-30-cvs-20010814/gcc/gthr-rtems.h:51: warning: function declaration isn 't a prototype ../../gcc-30-cvs-20010814/gcc/gthr-rtems.h:74: warning: function declaration isn 't a prototype ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c: In function `extract_cie_info': ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c:220: warning: implicit declaration of function `strlen' ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c: In function `execute_stack_op': ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c:303: warning: `result' might be used uninitialized in this function ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c:681: Unrecognizable insn: (insn 1678 1110 1679 (parallel[ (set (reg/v:SI 3 ebx [49]) (const_int 0 [0x0])) (clobber (reg:CC 17 flags)) ] ) -1 (nil) (expr_list:REG_UNUSED (reg:CC 17 flags) (nil))) ../../gcc-30-cvs-20010814/gcc/unwind-dw2.c:681: Internal compiler error in insn_ default_length, at insn-attrtab.c:223 Please submit a full bug report, >How-To-Repeat: The patch which enables the multilib'ing for RTEMS is not in the tree but the failure should be able to be duplicated by trying to compile the above file with the -mcpu=k6 option. I can provide a preprocessed file if someone wants to try to duplicate on a Linux host. >Fix: unknown >Release-Note: >Audit-Trail: >Unformatted: ----gnatsweb-attachment---- Content-Type: application/x-unknown-content-type-GRASP_shell; name="j.c.gz" Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="j.c.gz" H4sICPfgejsCA2ouYwDMXGtz2kjW/u5fQe18ybzlzICQkCjX+8EBkrhigw3Gce3UlEpIAjQREpaE TbI1/337KtDpI8cYyTtTu7E4z7n16VbfdX5paK3Gv3777Xfyv4Xrvm8337uP6Xut2Ww1rZZOab9v oqcg8t57T9pv7r9OfmkQgcyNo3mw+G35r0brhJOe17FwojTwfDfkIr80NOsQkZ+ZCCI33Hj+74qV 7kGOaUSkXSid9pLCcfbfg7bV+X27ek//Sgfa3dcJizCvjohwW8ofXIYk81epH85fXlcl0oca3o+c 0X6F5EmaJRs3a6yT2PXTNE5sN06ztPGfk0YjiLKG43ln4jH0HfmYLoN5Zj86SZFA9KeZJK02YWYH UVAkzHa/veCRhD/X7iQLn/CnUc4fP/p24mRBfHayI/2YhXYYO7lX5P/s9x/tPwnbHjHN4sTnVE6c r22q8mz3cyeXk/ak/ib/97eZn0SNkiD9X7C1OuyZmpbMVFNGS5PZ89BZpGe0Uk3jNZUjNLK4Mr3U 3ib1bVIXj/4p+7nepEt75a/i5Dsn/PCT2KaSkWc/BdnSdiISrVJVpEbszE8zLuzSEPFHz/fX9ixx 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