From mboxrd@z Thu Jan 1 00:00:00 1970 From: bowroch@msu.edu To: gcc-gnats@gcc.gnu.org Cc: bowronch@msu.edu Subject: c/3530: Internal compiler error in change_address, at emit-rtl.c:1635 Date: Mon, 02 Jul 2001 05:46:00 -0000 Message-id: <20010702124124.31237.qmail@sourceware.cygnus.com> X-SW-Source: 2001-07/msg00035.html List-Id: >Number: 3530 >Category: c >Synopsis: Internal compiler error in change_address, at emit-rtl.c:1635 >Confidential: no >Severity: non-critical >Priority: low >Responsible: unassigned >State: open >Class: sw-bug >Submitter-Id: net >Arrival-Date: Mon Jul 02 05:46:01 PDT 2001 >Closed-Date: >Last-Modified: >Originator: bowroch@msu.edu >Release: unknown-1.0 >Organization: >Environment: Reading specs from /opt/bin/../lib/gcc-lib/sparc-sun-solaris2.8/3.0/specs Configured with: ../gcc-3.0/configure --prefix=/soft/sparc/gcc Thread model: posix gcc version 3.0 >Description: When i compile w/o optimizations it works but with optmizations I get this error message: learn.c: In function `update_weights': learn.c:326: Internal compiler error in change_address, at emit-rtl.c:1635 Please submit a full bug report, with preprocessed source if appropriate. See for instructions. >How-To-Repeat: gcc --save-temps -DLEARNING -Wall -O -finline-functions -funroll-loops -c learn.c >Fix: >Release-Note: >Audit-Trail: >Unformatted: ----gnatsweb-attachment---- Content-Type: application/octet-stream; name="learn.i.bz2" Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="learn.i.bz2" QlpoOTFBWSZTWUZ6jt0ADLl/gHz8xYB7f////+/+zr////5gJh998A9AOY++eD6MeZ32AHN93nvq 7aPo4tnObXPd5nOvalA333onq+bHsvd9927Wp1ba18K92OvFp6mdBxt6dt0ppwQKa6Cbtc2s7Z26 t27O6TAtpRspid25SgSRBNIwmU2KHpANKYU8iZpmqGmRoMgyPUA09E09I0DTIERMgpmqn6FPTUAe p6nkgyMjaT1PKAD1AAAHqAaaIkym1GQAANA00AMTNE0DQAAAAACTSREmgSYlPyNMKnlBo/VGjyZJ tQ9JkABo0A0A000ESiZE1NiaU9KmJ+im0yn6nopoPSHoh6mg0PUAAD1B6h6gCJIgEJo0yMpPImp6 epHpBDEABoaAAAA0GjM8jvUCkiCkYSAyE9fOlC8GrgNCIoQiiH7ATxX8Xd2yvz/fhPfpful5n1Cq /m95D89sh0yyPfRYUR/Vs+UGSYhOURtrzVmJHLBSoUYVl+3vlDEYnXZjAFRIoKRYIixRQWAKRYcM FWDFtj/p07ILFXDSmMaUWDBGWtm0MMSKskbbbVecKGKlFqVaXEuHnkdx0sy6TFYXVXMOFCsylMEW 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