public inbox for gcc-bugs@sourceware.org
help / color / mirror / Atom feed
* gcc "bug"
@ 2004-02-16 21:39 Jeffrey Hammel
  2004-02-16 21:53 ` Falk Hueffner
  0 siblings, 1 reply; 12+ messages in thread
From: Jeffrey Hammel @ 2004-02-16 21:39 UTC (permalink / raw)
  To: gcc-bugs; +Cc: alanwu

Hello,

A possible "bug" in gcc (or "feature"?):  when linking to libraries
without header files, gcc will give no error or warning BUT the library
calls will not give the correct results.  A simple program:

gcc-bug.c:
#include<stdio.h>
main() { printf("\n%g\n", log(2.71)); }

Note here that math.h is NOT included (though should be).

output:
[jhammel@darkstar jhammel]$ gcc gcc-bug.c -lm
[jhammel@darkstar jhammel]$ ./a.out

-1.99859
[jhammel@darkstar jhammel]$

If math.h is included, the correct result (0.996949) is of course
produced.

System information:
*  gcc --version
gcc (GCC) 3.2 20020903 (Red Hat Linux 8.0 3.2-7)
Copyright (C) 2002 Free Software Foundation, Inc.
This is free software; see the source for copying conditions.  There is NO
warranty; not even for MERCHANTABILITY or FITNESS FOR A PARTICULAR
PURPOSE.
* Athlon 2200+

If this is a bug, please fix.  If its a "feature", it is certainly
counter-intuitive to us mere application programmers.  I apologize greatly
for not verbosely following the procedures for reporting gcc bugs, but
figure that this should be plenty of info for you.  If this has been fixed
in later gcc versions, I apologize even more so.

Jeff Hammel
Plasma Theory and Simulation Group
UC Berkeley


^ permalink raw reply	[flat|nested] 12+ messages in thread

* Re: gcc "bug"
  2004-02-16 21:39 gcc "bug" Jeffrey Hammel
@ 2004-02-16 21:53 ` Falk Hueffner
  2004-02-17  0:49   ` Joseph S. Myers
  0 siblings, 1 reply; 12+ messages in thread
From: Falk Hueffner @ 2004-02-16 21:53 UTC (permalink / raw)
  To: Jeffrey Hammel; +Cc: gcc-bugs, alanwu

Jeffrey Hammel <jhammel@EECS.Berkeley.EDU> writes:

> A possible "bug" in gcc (or "feature"?):  when linking to libraries
> without header files, gcc will give no error or warning BUT the library
> calls will not give the correct results.  A simple program:
> 
> gcc-bug.c:
> #include<stdio.h>
> main() { printf("\n%g\n", log(2.71)); }

You need -Wimplicit (or -Wall) to get a warning. This is by design,
since many old sources use implicit declarations. For new source, you
should always use -Wall.

-- 
	Falk


^ permalink raw reply	[flat|nested] 12+ messages in thread

* Re: gcc "bug"
  2004-02-16 21:53 ` Falk Hueffner
@ 2004-02-17  0:49   ` Joseph S. Myers
  0 siblings, 0 replies; 12+ messages in thread
From: Joseph S. Myers @ 2004-02-17  0:49 UTC (permalink / raw)
  To: Falk Hueffner; +Cc: Jeffrey Hammel, gcc-bugs, alanwu

On Mon, 16 Feb 2004, Falk Hueffner wrote:

> You need -Wimplicit (or -Wall) to get a warning. This is by design,
> since many old sources use implicit declarations. For new source, you
> should always use -Wall.

Note that these warnings are on by default (and can't be turned off with
-Wno-implicit - mandatory pedwarns) in C99 mode as implicit declarations
are not part of the C99 language at all, so if and when C99 is fully
implemented and -std=gnu99 becomes the default, these warnings will also
be on by default.

-- 
Joseph S. Myers
jsm@polyomino.org.uk


^ permalink raw reply	[flat|nested] 12+ messages in thread

* Re: gcc bug ?
       [not found] <8F542C9341D3D211BC880008C75DFE100530BCB2@rba.gov.au>
@ 2000-11-12 17:22 ` Phil Edwards
  0 siblings, 0 replies; 12+ messages in thread
From: Phil Edwards @ 2000-11-12 17:22 UTC (permalink / raw)
  To: LOOK, Peter; +Cc: 'gcc-bugs@gcc.gnu.org'

[-- Warning: decoded text below may be mangled, UTF-8 assumed --]
[-- Attachment #1: Type: text/plain, Size: 182171 bytes --]

On Mon, Nov 13, 2000 at 11:47:48AM +1100, LOOK, Peter wrote:
> 
> Enclosed please find a simple program eg3_2_1.cpp which is an example in
> P.96 of "Teach Yourself C++" 3rd Edition by Herbert Schildt.

As a side note, I feel ethically compelled to mention that Schildt's books
are considered to be of poor quality by many members of the C++ community.
If you want a "teach yourself" book, you might try one by Jesse Liberty.


> But, I use gcc to compile. It WORKS, no complaint. When I run the execution
> file. It works fine. It should be failed to compile because wrong type
> matching !! Is it a bug ? 

No.  There is no compiler bug, and the code is valid C++.  You are seeing
the results of implicit type conversion, via conversion constructors.

What happens is that the language allows an int to be implicitly converted
into a samp by way of the single-argument constructor, samp::samp(int).
When you try passing an int to sqr_it, the compiler constructs a temporary
samp object using the constructor.

Change the constructor to read

    samp (int n) { cout << "here I am\n"; i = n' }

and you will see it being called.

You can prevent implicit constructor conversion by using the 'explicit'
keyword in front of those kinds of constructors.

Also, as another side note:

> **********************************************************************
> This e-mail message (along with any attachments) is intended only for
> the named addressee and may contain information that is confidential
> or privileged.  If you are not the intended recipient you are hereby
> notified that any dissemination, copying or use of any of the
> information is prohibited.  If you have received this e-mail message
> in error, please notify us immediately by return e-mail and delete all
> copies of the  original message and attachments. 
> **********************************************************************

That sort of thing is considered rather poor form on a public,
publicly-archived mailing list.  Just FYI, nothing personal.

Phil

-- 
pedwards at disaster dot jaj dot com  |  pme at sources dot redhat dot com
devphil at several other less interesting addresses in various dot domains
The gods do not protect fools.  Fools are protected by more capable fools.
>From meissner@cygnus.com Sun Nov 12 17:26:00 2000
From: Michael Meissner <meissner@cygnus.com>
To: mange@sakar.net
Cc: gcc-bugs@gcc.gnu.org
Subject: Re: linuxppc
Date: Sun, 12 Nov 2000 17:26:00 -0000
Message-id: <20001112202617.24438@cse.cygnus.com>
References: <3A0F0476.7A073557@comp.nus.edu.sg>
X-SW-Source: 2000-11/msg00286.html
Content-length: 1691

On Sun, Nov 12, 2000 at 03:58:30PM -0500, Magnus Ã…gren wrote:
> Hello
> 
> I don't know if it is a bug but when i compile a program on linuxppc
> that make a comparison like
> 
> char c;
> ...
> ...
> 
> if (c < 0)
> {
> ....
> }
> 
> 
> I get the following warning: comparison is always false due to limited
> range of data type.
> 
> So I have to use the -fsigned-char flag when compiling. This is not the
> case when compiling on linux intel, shouldn't it be the same???

As Alex said, it is up to the ABI to determine whether char is treated as
"signed char" or "unsigned char".  If it is not specified, it is treated as
"don't char" (this pun in fact was used in the X3J11 standards meeting, when
talking about this very issue).

In particular, the System V machine supplement for the PowerPC (which is the
guiding ABI for Linux on PowerPC machines) explicitly says that char types
without a signed or unsigned specifier promote as unsigned.

IMHO, the default promotion of char (due to the fact that the PDP-11 did it
that way by default) as signed is a historical travesty, since it meant you
couldn't use "char" to hold normal character data types, except in the US with
7 bit ASCII (ie, you couldn't use it for the 8 bit character set).  As I
recall, when asked if he could go back in time and change one thing, Deniis
Ritchie said he would make chars unsigned by default (and FYI, Thompson would
have gone back and spell the creat system call with a trailing e).

-- 
Michael Meissner, Red Hat, Inc.
PMB 198, 174 Littleton Road #3, Westford, Massachusetts 01886, USA
Work:	  meissner@redhat.com		phone: +1 978-486-9304
Non-work: meissner@spectacle-pond.org	fax:   +1 978-692-4482
>From David.Billinghurst@riotinto.com Sun Nov 12 17:43:00 2000
From: "Billinghurst, David (CRTS)" <David.Billinghurst@riotinto.com>
To: "'gcc-bugs@gcc.gnu.org'" <gcc-bugs@gcc.gnu.org>
Subject: RE: irix bootstrap fails with ICE in instantiate_virtual_regs_1, at f unction.c:4021  
Date: Sun, 12 Nov 2000 17:43:00 -0000
Message-id: <A9E96A79C068D211A6A90000C07BDF0D88F393@crtsmail.corp.riotinto.org>
X-SW-Source: 2000-11/msg00287.html
Content-length: 1040

It is an optimiser bug.  Compiling f/sts.c at -O0 allows stage1 and stage2
bootstraps to proceed.

> -----Original Message-----
> From:	Billinghurst, David (CRTS) 
> Sent:	Monday, 13 November 2000 11:42
> To:	'gcc-bugs@gcc.gnu.org'
> Cc:	'jason@redhat.com'
> Subject:	irix bootstrap fails with ICE in instantiate_virtual_regs_1,
> at f unction.c:4021  
> 
> irix bootstrap fails with 
> 
> /exd4/billingd/src/gcc/gcc/f/sts.c: In function `ffests_putc':
> /exd4/billingd/src/gcc/gcc/f/sts.c:129: Internal compiler error in
> instantiate_virtual_regs_1, at function.c:4021
>    Please submit a full bug report.
>    See <URL: http://www.gnu.org/software/gcc/bugs.html > for instructions.
> 
> This has been introduced in the last 24 hours, some time after 2000-11-10
> 23:00 UTC, perhaps by
> 
> 2000-11-11  Jason Merrill  <jason@redhat.com>
> 
>         * function.c (assign_parms): If TREE_ADDRESSABLE is set, try to 
>         give the parm a register and then call put_var_into_stack.
>         * stmt.c (expand_decl): Likewise.
> 
> 
> 
>From al012@energex.com.au Sun Nov 12 20:01:00 2000
From: Anthony Lee <al012@energex.com.au>
To: gcc-bugs@gcc.gnu.org
Subject: Bug report
Date: Sun, 12 Nov 2000 20:01:00 -0000
Message-id: <3A0F66F0.3E00199A@energex.com.au>
X-SW-Source: 2000-11/msg00288.html
Content-type: multipart/mixed; boundary="----------=_1583533121-4114-710"

This is a multi-part message in MIME format...

------------=_1583533121-4114-710
Content-length: 7133

GCC Version: version 2.95 19990728 (release)
System type: alphaev56-dec-osf4.0d

Command line: 
g++ -O3 -c LayoutAdjustment/OrthoLayoutAdjustment.cpp -I.
-I/usr/local/app/oracle/product/7.3.4/precomp/public -I../tlg_framework
-I../schematic_diagram_repository -I../whip/3.0/source -o
LayoutAdjustment/OrthoLayoutAdjustment.o

Compiler output:
LayoutAdjustment/OrthoLayoutAdjustment.cpp: In method `class Vector
OrthoLayoutAdjustment::setInitialFeederDirection(OrthoVertex *)':
LayoutAdjustment/OrthoLayoutAdjustment.cpp:567: warning: `double' used for
argument 1 of `abs(int)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:568: warning: `double' used for
argument 1 of `abs(int)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp: In function `bool
willAffectZone(Zone *, vector<pair<Vertex *,bool>,allocator<pair<Vertex
*,bool> > > &, vector<pair<Vertex *,bool>,allocator<pair<Vertex *,bool> > >
&)':
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1070: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1070: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1094: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1094: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp: In function `bool
willAffectZone(Zone *, Vertex *, vector<pair<Vertex
*,bool>,allocator<pair<Vertex *,bool> > > &)':
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1127: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1127: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1130: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1130: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp: In function `bool
willCompletelyAffectZone(Zone *, vector<pair<Vertex
*,bool>,allocator<pair<Vertex *,bool> > > &, vector<pair<Vertex
*,bool>,allocator<pair<Vertex *,bool> > > &)':
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1163: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1163: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1187: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1187: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp: In function `bool
willCompletelyAffectZone(Zone *, Vertex *, vector<pair<Vertex
*,bool>,allocator<pair<Vertex *,bool> > > &)':
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1221: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1221: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1224: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:1224: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp: In method `enum Conflict_Status
OrthoLayoutAdjustment::shiftZones(Zone *, Zone *, bool, bool)':
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2260: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2260: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2279: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2279: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2291: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2291: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2297: initialization of non-const
reference type `class Vector &'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:2297: from rvalue of type
`Vector'
Framework/Vertex.h:43: in passing argument 1 of
`Vertex::shiftUnshiftedVertices(Vector &, vector<Vertex *,allocator<Vertex
*> > &, bool)'
LayoutAdjustment/OrthoLayoutAdjustment.cpp: In method `void
OrthoLayoutAdjustment::adjust(Diagram *)':
LayoutAdjustment/OrthoLayoutAdjustment.cpp:3130: warning: initialization to
`int' from `double'
LayoutAdjustment/OrthoLayoutAdjustment.cpp:3159: Internal compiler error in
`scan_region', at except.c:2566
Please submit a full bug report.
See <URL: http://egcs.cygnus.com/faq.html#bugreport > for instructions.
*** Exit 1
Stop.

Preprocessed file: attached

Configure option for gcc: --no-gnu-as

-- 
Anthony Lee	
Energex                                            
150 Charlotte Street                 ..--  __o 
Brisbane                        ....--   _ \<,_               
Qld 4000                       ____     (_)/ (_)                         
Australia
voice:+61 7 3407 4541
fax:  +61 7 3407 4607
email: AL012@energex.com.au

-----------------------------------------------------------------------------------------------------------------------------------------------------
This email message (and any accompanying file attachments) may contain confidential or 
privileged information and is intended for the sole use of the addressee named above. If you 
are not the intended recipient, or the person responsible for delivering this message to the 
intended recipient, please notify ENERGEX immediately and destroy any copies of the original 
message.

Any unauthorised review, use, alteration, disclosure or distribution of this email (including any 
attachments) by an unintended recipient is prohibited.

ENERGEX accepts no responsibility for the content of any email which is sent by an employee 
which is of a personal nature.

------------=_1583533121-4114-710
Content-Type: application/x-gzip; charset=binary;
 name="OrthoLayoutAdjustment.ii.gz"
Content-Disposition: inline; filename="OrthoLayoutAdjustment.ii.gz"
Content-Transfer-Encoding: base64
Content-Length: 160703
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------------=_1583533121-4114-710--
>From mark@codesourcery.com Sun Nov 12 20:14:00 2000
From: Mark Mitchell <mark@codesourcery.com>
To: David.Billinghurst@riotinto.com
Cc: gcc-bugs@gcc.gnu.org
Subject: RE: irix bootstrap fails with ICE ininstantiate_virtual_regs_1, 	at f unction.c:4021  
Date: Sun, 12 Nov 2000 20:14:00 -0000
Message-id: <20001112201408C.mitchell@codesourcery.com>
References: <A9E96A79C068D211A6A90000C07BDF0D88F393@crtsmail.corp.riotinto.org>
X-SW-Source: 2000-11/msg00289.html
Content-length: 370

>>>>> "Billinghurst," == Billinghurst, David (CRTS) <David.Billinghurst@riotinto.com> writes:

    Billinghurst,> It is an optimiser bug.  Compiling f/sts.c at -O0
    Billinghurst,> allows stage1 and stage2 bootstraps to proceed.

I am testing a fix.

--
Mark Mitchell                   mark@codesourcery.com
CodeSourcery, LLC               http://www.codesourcery.com
>From suckfish@ihug.co.nz Mon Nov 13 01:16:00 2000
From: suckfish@ihug.co.nz
To: gcc-gnats@gcc.gnu.org
Subject: c++/781: fPIC and exception spec pessimises code
Date: Mon, 13 Nov 2000 01:16:00 -0000
Message-id: <20001113091224.16831.qmail@sourceware.cygnus.com>
X-SW-Source: 2000-11/msg00290.html
Content-length: 1153

>Number:         781
>Category:       c++
>Synopsis:       fPIC and exception spec pessimises code
>Confidential:   no
>Severity:       serious
>Priority:       medium
>Responsible:    unassigned
>State:          open
>Class:          pessimizes-code
>Submitter-Id:   net
>Arrival-Date:   Mon Nov 13 01:16:00 PST 2000
>Closed-Date:
>Last-Modified:
>Originator:     Ralph Loader
>Release:        2.97 (2000-11-06 snapshot), also 2.95.2
>Organization:
>Environment:
Linux
>Description:
If a C++ function has an exception specification, and is 
compiled with -fPIC, then it always generates code to 
compute the GOT address, even when this is not needed.

Doing some printf debugging suggests that the following is
happening:

The compiler generates code to catch exceptions that violate
the exception spec.  This code requires the GOT.  The exception related code may get optimised away, but the 
computation of the GOT remains.
>How-To-Repeat:
Compile the following with g++ -S -O2 -fPIC:

void f()throw(){}

The generated assembler contains instructions to calculate the GOT address; this is dead code.
>Fix:

>Release-Note:
>Audit-Trail:
>Unformatted:
>From phil@vpresence.com Mon Nov 13 02:06:00 2000
From: phil@vpresence.com
To: gcc-gnats@gcc.gnu.org
Subject: c++/782: "internal compiler error" while trying to compile MICO
Date: Mon, 13 Nov 2000 02:06:00 -0000
Message-id: <20001113100456.30357.qmail@sourceware.cygnus.com>
X-SW-Source: 2000-11/msg00291.html
Content-length: 1044

>Number:         782
>Category:       c++
>Synopsis:       "internal compiler error" while trying to compile MICO
>Confidential:   no
>Severity:       critical
>Priority:       medium
>Responsible:    unassigned
>State:          open
>Class:          sw-bug
>Submitter-Id:   net
>Arrival-Date:   Mon Nov 13 02:06:00 PST 2000
>Closed-Date:
>Last-Modified:
>Originator:     Philippe Legrain
>Release:        unknown-1.0
>Organization:
>Environment:
Reading specs from /usr/lib/gcc-lib/i386-linux/2.95.2/specs
gcc version 2.95.2 20000220 (Debian GNU/Linux)
>Description:
In file included from ../include/mico/assert.h:27,
                 from ../include/CORBA.h:30,
                 from valuetype.cc:8:
/usr/include/stdlib.h:42: Internal compiler error.
/usr/include/stdlib.h:42: Please submit a full bug report.
/usr/include/stdlib.h:42: See <URL: http://www.gnu.org/software/gcc/bugs.html > for instructions.
>How-To-Repeat:
compile mico ( http://www.mico.org ) on a debian-potato environment
>Fix:

>Release-Note:
>Audit-Trail:
>Unformatted:
>From phil@vpresence.com Mon Nov 13 02:16:00 2000
From: phil@vpresence.com
To: gcc-gnats@gcc.gnu.org
Subject: c++/783: "internal compiler error" while trying to compile MICO
Date: Mon, 13 Nov 2000 02:16:00 -0000
Message-id: <20001113100749.31203.qmail@sourceware.cygnus.com>
X-SW-Source: 2000-11/msg00292.html
Content-length: 1044

>Number:         783
>Category:       c++
>Synopsis:       "internal compiler error" while trying to compile MICO
>Confidential:   no
>Severity:       critical
>Priority:       medium
>Responsible:    unassigned
>State:          open
>Class:          sw-bug
>Submitter-Id:   net
>Arrival-Date:   Mon Nov 13 02:16:01 PST 2000
>Closed-Date:
>Last-Modified:
>Originator:     Philippe Legrain
>Release:        unknown-1.0
>Organization:
>Environment:
Reading specs from /usr/lib/gcc-lib/i386-linux/2.95.2/specs
gcc version 2.95.2 20000220 (Debian GNU/Linux)
>Description:
In file included from ../include/mico/assert.h:27,
                 from ../include/CORBA.h:30,
                 from valuetype.cc:8:
/usr/include/stdlib.h:42: Internal compiler error.
/usr/include/stdlib.h:42: Please submit a full bug report.
/usr/include/stdlib.h:42: See <URL: http://www.gnu.org/software/gcc/bugs.html > for instructions.
>How-To-Repeat:
compile mico ( http://www.mico.org ) on a debian-potato environment
>Fix:

>Release-Note:
>Audit-Trail:
>Unformatted:
>From ralfixx@gmx.de Mon Nov 13 02:18:00 2000
From: Ralf Fassel <ralfixx@gmx.de>
To: gcc-bugs@gcc.gnu.org
Subject: gcc 2.95.2 fixincludes on IRIX, curses.h
Date: Mon, 13 Nov 2000 02:18:00 -0000
Message-id: <2405.974110721@www17.gmx.net>
X-SW-Source: 2000-11/msg00293.html
Content-length: 2435

Hi all,
gcc 2.95.2 on IRIX 6.5.9f.

`fixincludes' fixes /usr/include/curses.h to avoid typedefs of `bool',
cf. gcc/fixinc/fixinc.irix

However, curses.h on this OS seems already ok, since the typedefs are
properly wrapped for C++:
    #if !defined(__cplusplus) || !defined(_BOOL)
    typedef char bool;
    #endif /* _BOOL */

(The `ifdefs' are not there on IRIX 5.2 headers.)

Now the `fixincludes' fix in the gcc-specific include directory is
    #ifdef __cplusplus
    # define bool __curses_bool_t
    #endif

which does not work because `__curses_bool_t' seems not defined at
compile time.  I ran into this when trying to compile mysql-3.23.29:

    gmake[2]: Entering directory
`/disk2/ralf/Software/mysql-3.23.27-beta/client'
    gcc -DUNDEF_THREADS_HACK -I./../include 				-I../include -I./.. -I..
				-I..    -O3 -DDBUG_OFF -D_BOOL -c mysql.cc
    In file included from
/software/gcc/2.95.2/IRIX-6/lib/gcc-lib/mips-sgi-irix6.5/2.95.2/include/curses.h:5,
		     from mysql.cc:47:
    /usr/include/curses.h:108: syntax error before `,'
    /usr/include/curses.h:139: syntax error before `;'
    /usr/include/curses.h:281: `__curses_bool_t' was not declared in this
scope
    /usr/include/curses.h:281: warning: `_meta' initialized and declared
`extern'
    /usr/include/curses.h:297: type specifier omitted for parameter
    /usr/include/curses.h:336: syntax error before `('
    /usr/include/curses.h:384: type specifier omitted for parameter
    /usr/include/curses.h:386: type specifier omitted for parameter
    In file included from
/software/gcc/2.95.2/IRIX-6/lib/gcc-lib/mips-sgi-irix6.5/2.95.2/include/curses.h:5,
		     from mysql.cc:47:
    /usr/include/curses.h:852: type specifier omitted for parameter
    /usr/include/curses.h:855: type specifier omitted for parameter
    /usr/include/curses.h:856: type specifier omitted for parameter
    /usr/include/curses.h:857: type specifier omitted for parameter
    /usr/include/curses.h:858: type specifier omitted for parameter
    /usr/include/curses.h:859: type specifier omitted for parameter
    /usr/include/curses.h:860: type specifier omitted for parameter
    /usr/include/curses.h:1011: type specifier omitted for parameter

Avoiding the `fixed' gcc-specific include file (by renaming it so gcc
won't find it) seems to work.

I'd suggest to not fix curses.h on IRIX 6.5.9 (and later?) at least.

Regards
R'

-- 
Sent through GMX FreeMail - http://www.gmx.net


^ permalink raw reply	[flat|nested] 12+ messages in thread

* Re: gcc bug?
       [not found] ` <14651.56471.760657.974882@rtp.ericsson.se>
@ 2000-06-05 12:43   ` Martin v. Loewis
  0 siblings, 0 replies; 12+ messages in thread
From: Martin v. Loewis @ 2000-06-05 12:43 UTC (permalink / raw)
  To: toy; +Cc: qusraya, bug-gcc

> You just sent out proprietary code to a public mailing list.  Was that
> a good idea?  I think not.
> 
> DON'T DO THAT AGAIN.  If you don't know what to do, ask me first.

I don't know whether your sending this message to the same list was
intentional. However, since you did, please let me also respond.

Nobody intends to steal your code on this list. We are in the business
of developing compilers, not in the business of developing DSP
processors. In addition, I don't believe that the code snippet sent
would give your competition any advantage whatsover.

Please understand that we have a policy not to look into bug reports
without source code; there is no point in speculating what the problem
could be.

I was going to investigate this bug report, since I appreciate any
reports that we get so we can improve the compiler. However, since it
is apparently not the position of Ericsson that contributing to free
software projects in this way is not allowed, I won't endanger your
colleague by doing anything about this report.

Kind regards,
Martin
>From ghazi@caip.rutgers.edu Mon Jun 05 12:52:00 2000
From: "Kaveh R. Ghazi" <ghazi@caip.rutgers.edu>
To: dave@hiauly1.hia.nrc.ca, martin@loewis.home.cs.tu-berlin.de
Cc: gcc-bugs@gcc.gnu.org
Subject: Re: nls patches - need help with make machinery
Date: Mon, 05 Jun 2000 12:52:00 -0000
Message-id: <200006051952.PAA09837@caip.rutgers.edu>
X-SW-Source: 2000-06/msg00126.html
Content-length: 1227

 > From: "John David Anglin" <dave@hiauly1.hia.nrc.ca>
 > 
 > > > The only one that I am aware of is the "inline" keyword in couple of headers.
 > > > I enclose below the log of building libintl yesterday.  I had patched
 > > > gettextP.h to remove the inline keyword but not hash-string.h.  
 > > 
 > > Removing it is the wrong solution. Instead, the package including intl
 > > should use AC_C_INLINE in its configure.in. That will add
 > > 
 > > #define inline
 > > 
 > > to config.h if the compiler does not support the keyword. No changes
 > > to the source code should be required.
 > 
 > Yes, this is a much better solution and would in fact have not appeared if
 > -DIN_GCC was used in the CFLAGS used for building libintl.  However,
 > this raises the issue that configure should possibly be run again after
 > stage 1.
 > Dave

This is already handled without rerunning configure in gansidecl.h
(which gcc's config.h includes.)

We can get gcc's config.h usable by intl as described here:

http://gcc.gnu.org/ml/gcc-patches/2000-06/msg00131.html

I think if we do this then everything will be fine.

		--Kaveh
--
Kaveh R. Ghazi			Engagement Manager / Project Services
ghazi@caip.rutgers.edu		Qwest Internet Solutions
>From cogen@ll.mit.edu Mon Jun 05 13:06:00 2000
From: David Cogen <cogen@ll.mit.edu>
To: gcc-bugs@gcc.gnu.org
Cc: cogen@poblano
Subject: Inappropriate Warning Cannot Be Turned Off
Date: Mon, 05 Jun 2000 13:06:00 -0000
Message-id: <200006052005.QAA13828@ll.mit.edu>
X-SW-Source: 2000-06/msg00127.html
Content-length: 2194

Yes, this really is a bug report. I have posted this several times, but always
with a respectful time has elapsed. The last time was a couple weeks
ago. 

Wouldn't someone in the know PLEASE respond to this?

(Please don't respond by telling me to fix this myself. I don't understand
compilers enough. My fix was to write an awk program to filter the compiler's
warning messages and remove this particular inappropriate warning (!). I'll
gladly contribute this "fix" to FSF or whomever, but I am sure this is not the
right way to fix this :)

Here goes:

-----

Example code fragment, when compiled, produces inappropriate warnings. And
there is no way to disable these warnings.

Compiler: gcc2.95.2
System: SunOS 5.7

Compiled as follows:

  g++ -o test test.cc

The following program:

  #include <iostream.h>
  #include <fstream.h>

  template <class T>
  struct Auto0 {

  public:

    Auto0 () : mValue (0) {}

    operator const T & () const {return mValue;}

    operator T & () {return mValue;}

  private:

    T mValue;

  };

  int main ()
  {
    Auto0 <int> ab;
    cout << "ab = " << ab << " ab+1=" << ab+1 << "\n";
    ++ ab;
    cout << "after incr, ab = " << int(ab) << "\n";
    const Auto0 <int> cd;
    cout << "cd = " << cd << " cd+1=" << cd+1 << "\n";
  }

Produces warnings which are inappropriate:

  test.cc: In function `int main()':
  test.cc:56: warning: choosing `Auto0<int>::operator int &()' over `Auto0<int>::operator const int &() const'
  test.cc:56: warning:   for conversion from `Auto0<int>' to `int'
  test.cc:56: warning:   because conversion sequence for the argument is better
  test.cc:56: warning: choosing `Auto0<int>::operator int &()' over `Auto0<int>::operator const int &() const'
  test.cc:56: warning:   for conversion from `Auto0<int>' to `int'
  test.cc:56: warning:   because conversion sequence for the argument is better
  test.cc:58: warning: choosing `Auto0<int>::operator int &()' over `Auto0<int>::operator const int &() const'
  test.cc:58: warning:   for conversion from `Auto0<int>' to `int'
  test.cc:58: warning:   because conversion sequence for the argument is better

  Compilation finished at Tue Apr 25 13:15:53

-- DavidC


^ permalink raw reply	[flat|nested] 12+ messages in thread

* GCC bug!
@ 2000-02-14  8:06 Fabio Alemagna
  0 siblings, 0 replies; 12+ messages in thread
From: Fabio Alemagna @ 2000-02-14  8:06 UTC (permalink / raw)
  To: egcs-bugs

[-- Attachment #1: Type: text/plain, Size: 2447 bytes --]

Hi all.

I've dicovered a bug in gcc. It happens only in some circumstances: I've
discovered one of these, maybe there are others.

In attach you can see a limited, purified version of the program which
cause
the bug to happen.

To compile it just type "make". Eventually modify the header config.h to
match
your system. I know, the code is in some parts very ugly, but it's in a
very
early stage of completion, so do not take care of this.

My system configuration is:

a PC with Pentium II processor, Linux RedHat 6.1, egcs version 2.91.66
*NOT MODIFIED*, kernel version 2.2.12-20.

Working whit gdb and disassembled code I've noticed that the compiler
trash a
register in calling a function which have been declared have arguments
passed
in register.

*IMPORTANT*
* THIS HAPPEN ONLY, REPEAT *ONLY*, IF I COMPILE WITH -O2 FLAG: -O3, -O1
and
* -O0 works.
* Moreover this happens *only* if I declare function
* include/events.h/event_schedule(struct event *, ULONG) have parameter
passed
* in register instead of be inline or a normal function with parameters
on
* stack


the place where the bug happen is custom/custom.c at line 160:
	copi1 = chipmem_bank.wget(cop_pc);

where cop_pc is the parameter trashed.

Below there are the disassembled versions of this piece of code, the
first is
compiled whith -O2 flag, which make the bug to happens, the 2nd is
compiled
whith -O3 flag:

-O2 version (BUG)
	movl cop_pc,%ecx
	movl %ecx,%eax               #first use of eax and inutile intruction
(why
	                             #not movl cop_pc,%eax ???
  	movl chipmem_bank+16,%eax    #eax trashed!!!
  	call *%eax                   #this function get parameter in eax,
which
	                             #here is used like a funtion pointer!!  	
	movl %eax,%ecx               #inutile instruction.... :/
 	movl %ecx,%ebx

-O3 version (SANE)
 	movl cop_pc,%ecx             #(1)
	movl chipmem_bank+16,%edx
	movl %ecx,%eax               #(2)
	call *%edx
	movl %eax,%edx               #inutile instruction.... :/
	movl %edx,%ebx
#(1) and (2) are a couple of inutile intructions, why not movl
cop_pc,%eax???
		
I think a cleaner, faster and bugless implementation is:
 	movl cop_pc,%eax
	movl chipmem_bank+16,%edx
	call *%edx
	movl %eax,%ebx

I've worked around the bug by storing cop_pc in an auto variable (which
the
compiler allocate in a register).




Thanks for your interesting,
Fabio Alemagna
amiGate.bug.tgz
copper-bug.s.gz
copper-sane.s.gz


[-- Attachment #2: amiGate.bug.tgz --]
[-- Type: application/x-gzip, Size: 27215 bytes --]

[-- Attachment #3: copper-bug.s.gz --]
[-- Type: application/x-gzip, Size: 8629 bytes --]

[-- Attachment #4: copper-sane.s.gz --]
[-- Type: application/x-gzip, Size: 9179 bytes --]

^ permalink raw reply	[flat|nested] 12+ messages in thread

* gcc bug?
@ 1999-10-31 23:03 Bill Mills-Curran
  0 siblings, 0 replies; 12+ messages in thread
From: Bill Mills-Curran @ 1999-10-31 23:03 UTC (permalink / raw)
  To: egcs-bugs

I think I have found a gcc-related bug, but I'm not sure to whom this
problem belongs, so I'll start here.  The problem has to do with the
definition of type pid_t.  According to the man page for fork on
the RedHat 6.0 distribution:

****************
NAME
       fork, vfork - create a child process

SYNOPSIS
       #include <unistd.h>

       pid_t fork(void);
       pid_t vfork(void);
****************

Using this information, I wrote the following simple source test:

****************
#include <unistd.h>

int bozo(void) 
{
	pid_t ret;
	ret = fork();
}
****************

Compiling:

****************
bcurran_pent584> gcc -c bozo.c
bozo.c: In function `bozo':
bozo.c:5: `pid_t' undeclared (first use in this function)
bozo.c:5: (Each undeclared identifier is reported only once
bozo.c:5: for each function it appears in.)
bozo.c:5: parse error before `ret'
bozo.c:6: `ret' undeclared (first use in this function)
****************

My POSIX book (POSIX Programmer's Guide by Donald Lewine) says that
the fork function requires both sys/types.h and unistd.h.  It also
says that pid_t is defined in sys/types.h.  If I change my test code:

****************
#include <sys/types.h>
#include <unistd.h>

int bozo(void) 
{
	pid_t ret;
	ret = fork();
}
****************

Everything works fine.

System info:

bcurran_pent584> gcc -v
Reading specs from /usr/lib/gcc-lib/i386-redhat-linux/egcs-2.91.66/specs
gcc version egcs-2.91.66 19990314/Linux (egcs-1.1.2 release)

bcurran_pent584> cat /proc/version
Linux version 2.2.5-15 (root@porky.devel.redhat.com) (gcc version egcs-2.91.66 19990314/Linux (egcs-1.1.2 release)) #1 Mon Apr 19 23:00:46 EDT 1999


Thanks,
Bill

-- 
Bill Mills-Curran                         (bcurran@clariion.com)
Clariion                                  Tel: 508 480-7642
Coslin Drive, MS C33                      Fax: 508 480-7913
Southboro, MA 01772


^ permalink raw reply	[flat|nested] 12+ messages in thread

* Re: gcc bug?
@ 1999-10-20 11:41 Mike Stump
  0 siblings, 0 replies; 12+ messages in thread
From: Mike Stump @ 1999-10-20 11:41 UTC (permalink / raw)
  To: bcurran, egcs-bugs

> Date: Wed, 20 Oct 1999 09:09:16 -0400 (EDT)
> From: Bill Mills-Curran <bcurran@clariion.com>

> I think I have found a gcc-related bug

Nope.

> but I'm not sure to whom this problem belongs

It belong to the people thart supply your headers.  I suspect that is
RedHat, or next, the GNU C library will be of far more help than us.
You should be able to find the address in your documentation, or in in
a glibc distribution.

Thanks.
>From yur@ptci.ru Wed Oct 20 11:52:00 1999
From: Yuri Pudgorodsky <yur@ptci.ru>
To: gcc-bugs@gcc.gnu.org
Subject: CVS 2.96 991020-snapshot: SIG11 in gc-common.c on Objective-C code
Date: Wed, 20 Oct 1999 11:52:00 -0000
Message-id: <380E0F69.851AABE3@ptci.ru>
X-SW-Source: 1999-10/msg00564.html
Content-type: multipart/mixed; boundary="----------=_1583533139-4113-606"

This is a multi-part message in MIME format...

------------=_1583533139-4113-606
Content-length: 9954

Hi!


I got SIG11 error while tried to compile the latest GNUStep code with
the lastest GNU  compiler.
It crashed on correct Objective-C code inside ggc_set_mark (p)  due to a
bad pointer
dereferenced (p == 0x1).

Unfortunatly I'm completely naive to gcc internals, so all I can do is
to submit a bug report.

A pointer came from ggc_mark_tree_children(), from a call to
ggc_mark_tree (DECL_RESULT (t))
while processing a decl tree node case (file ggc-common.c, line #360).

A dump of this tree node shows:

$3 = {common = {chain = 0x8446094, type = 0x8446364, code = 144,
    side_effects_flag = 0, constant_flag = 0, permanent_flag = 1,
    addressable_flag = 0, volatile_flag = 0, readonly_flag = 0,
    unsigned_flag = 0, asm_written_flag = 0, used_flag = 0, raises_flag
= 0,
    static_flag = 0, public_flag = 0, private_flag = 0, protected_flag =
0,
    lang_flag_0 = 0, lang_flag_1 = 0, lang_flag_2 = 0, lang_flag_3 = 0,
    lang_flag_4 = 0, lang_flag_5 = 0, lang_flag_6 = 0}, int_cst = {
    common = "\224`D\bdcD\b\220\004\000", rtl = 0x8440b04, int_cst_low =
120,
    int_cst_high = 2557}, real_cst = {common =
"\224`D\bdcD\b\220\004\000",
    rtl = 0x8440b04, real_cst = {r = {120, 2557, 0}}}, string = {
    common = "\224`D\bdcD\b\220\004\000", rtl = 0x8440b04, length = 120,

    pointer = 0x9fd <Address 0x9fd out of bounds>}, complex = {
    common = "\224`D\bdcD\b\220\004\000", rtl = 0x8440b04, real = 0x78,
    imag = 0x9fd}, identifier = {common = "\224`D\bdcD\b\220\004\000",
    length = 138676996, pointer = 0x78 <Address 0x78 out of bounds>},
decl = {
    common = "\224`D\bdcD\b\220\004\000",
    filename = 0x8440b04 "Foundation/NSString.h", linenum = 120, uid =
2557,
    size = 0x0, mode = VOIDmode, external_flag = 0, nonlocal_flag = 0,
    regdecl_flag = 0, inline_flag = 0, bit_field_flag = 0, virtual_flag
= 0,
    ignored_flag = 0, abstract_flag = 0, in_system_header_flag = 0,
    common_flag = 0, defer_output = 0, transparent_union = 0,
    static_ctor_flag = 0, static_dtor_flag = 0, artificial_flag = 0,
    weak_flag = 0, lang_flag_0 = 0, lang_flag_1 = 0, lang_flag_2 = 0,
    lang_flag_3 = 0, lang_flag_4 = 0, lang_flag_5 = 0, lang_flag_6 = 0,
    lang_flag_7 = 0, non_addr_const_p = 0,
    no_instrument_function_entry_exit = 0, no_check_memory_usage = 0,
    comdat_flag = 0, frame_size = {i = 1, u = 1, f = {code = 1, bclass =
0}},
    name = 0x8446554, context = 0x0, arguments = 0x8446464, result =
0x1,
    initial = 0x0, abstract_origin = 0x0, assembler_name = 0x0,
    section_name = 0x0, machine_attributes = 0x0, rtl = 0x0,
    live_range_rtl = 0x0, saved_insns = {f = 0x0, r = 0x0, i = 0},
    vindex = 0x0, pointer_alias_set = -1, lang_specific = 0x0}, type = {

    common = "\224`D\bdcD\b\220\004\000", values = 0x8440b04, size =
0x78,
    size_unit = 0x9fd, attributes = 0x0, uid = 0, precision = 0 '\000',
    mode = VOIDmode, string_flag = 0, no_force_blk_flag = 0,
    needs_constructing_flag = 0, transparent_union_flag = 0, packed_flag
= 0,
    restrict_flag = 0, lang_flag_0 = 0, lang_flag_1 = 0, lang_flag_2 =
0,
    lang_flag_3 = 0, lang_flag_4 = 0, lang_flag_5 = 0, lang_flag_6 = 0,
    align = 1, pointer_to = 0x8446554, reference_to = 0x0, symtab = {
    address = 138699876, pointer = 0x8446464 ""}, name = 0x1, minval =
0x0,
    maxval = 0x0, next_variant = 0x0, main_variant = 0x0, binfo = 0x0,
    noncopied_parts = 0x0, context = 0x0, obstack = 0x0, alias_set = 0,
    lang_specific = 0xffffffff}, list = {common =
"\224`D\bdcD\b\220\004\000",
    purpose = 0x8440b04, value = 0x78}, vec = {
    common = "\224`D\bdcD\b\220\004\000", length = 138676996, a =
{0x78}},
    exp = {common = "\224`D\bdcD\b\220\004\000", complexity = 138676996,

    operands = {0x78}}, block = {common = "\224`D\bdcD\b\220\004\000",
    handler_block_flag = 0, abstract_flag = 0, live_range_flag = 1,
    live_range_var_flag = 0, vars = 0x78, type_tags = 0x9fd, subblocks =
0x0,
    supercontext = 0x0, abstract_origin = 0x0, end_note = 0x1,
    live_range_start = 138700116, live_range_end = 0}}


Command arguments to gcc:

$ gcc -Q -v -B/home/src/egcs-ia32/gcc/ -c
-DGNUSTEP_INSTALL_PREFIX=/usr/GNUstep
-DGNUSTEP_TARGET_DIR=\"ix86/linux-gnu\" -DGNUSTEP_TARGET_CPU=\"ix86\"
-DGNUSTEP_TARGET_OS=\"linux-gnu\" -DLIBRARY_COMBO=\"gnu-gnu-gnu-xgps\"
-Wall -DGNUSTEP -DGNUSTEP_VERSION=0.6.0 -DGNUSTEP_MAJOR_VERSION=0
-DGNUSTEP_MINOR_VERSION=6 -DGNUSTEP_BASE_LIBRARY=1 -DGNU_GUI_LIBRARY=1
-DXGPS_BACKEND_LIBRARY=1 -DGNU_RUNTIME=1 -D_REENTRANT  -fPIC
-mcpu=pentiumpro -O2 -g -pipe -Wno-import -fgnu-runtime
-I../Headers/gnustep -I./ix86/linux-gnu    -I. -I/usr/local/include
-I/usr/local/include -I/usr/X11R6/include
-I/usr/GNUstep/Network/Headers -I/nowhere/Headers   BinaryCStream.m

Reading specs from /home/src/egcs-ia32/gcc/specs
gcc version 2.96 19991015 (experimental)
 /home/src/egcs-ia32/gcc/cpp -lang-objc -v -I../Headers/gnustep
-I./ix86/linux-gnu -I. -I/usr/local/include -I/usr/local/include
-I/usr/X11R6/include -I/usr/GNUstep/Network/Headers -I/nowhere/Headers
-isystem /home/src/egcs-ia32/gcc/include -D__OBJC__ -D__GNUC__=2
-D__GNUC_MINOR__=96 -D__ELF__ -Dunix -D__i386__ -Dlinux -D__ELF__
-D__unix__ -D__i386__ -D__linux__ -D__unix -D__linux -Asystem(posix)
-D__OPTIMIZE__ -g -Wall -Wno-import -Acpu(i386) -Amachine(i386) -Di386
-D__i386 -D__i386__ -D__tune_pentiumpro__ -D__PIC__ -D__pic__
-DGNUSTEP_INSTALL_PREFIX=/usr/GNUstep
-DGNUSTEP_TARGET_DIR="ix86/linux-gnu" -DGNUSTEP_TARGET_CPU="ix86"
-DGNUSTEP_TARGET_OS="linux-gnu" -DLIBRARY_COMBO="gnu-gnu-gnu-xgps"
-DGNUSTEP -DGNUSTEP_VERSION=0.6.0 -DGNUSTEP_MAJOR_VERSION=0
-DGNUSTEP_MINOR_VERSION=6 -DGNUSTEP_BASE_LIBRARY=1 -DGNU_GUI_LIBRARY=1
-DXGPS_BACKEND_LIBRARY=1 -DGNU_RUNTIME=1 -D_REENTRANT BinaryCStream.m |
 /home/src/egcs-ia32/gcc/cc1obj -dumpbase BinaryCStream.m
-mcpu=pentiumpro -g -O2 -Wall -Wno-import -version -fPIC -fgnu-runtime
-lang-objc -o - |
 as -V -Qy -o BinaryCStream.o -
GNU CPP version 2.96 19991020 (experimental) (i386 Linux/ELF)
#include "..." search starts here:
#include <...> search starts here:
 ../Headers/gnustep
 ix86/linux-gnu
 .
 /usr/local/include
 /usr/X11R6/include
 /home/src/egcs-ia32/gcc/include
 /usr/include
 /usr/lib/gcc-lib/i686-pc-linux-gnu/2.96/../../../../i686-pc-linux-gnu/include

 /usr/lib/gcc-lib/i686-pc-linux-gnu/2.96/include
 /usr/include
End of search list.
The following default directories have been omitted from the search
path:
 /usr/lib/gcc-lib/i686-pc-linux-gnu/2.96/../../../../include/g++-3
End of omitted list.
GNU Obj-C version 2.96 19991020 (experimental) (i686-pc-linux-gnu)
compiled by GNU C version 2.96 19991015 (experimental).
options passed:  -mcpu=pentiumpro -g -O2 -Wall -Wno-import -fPIC
 -fgnu-runtime -lang-objc
options enabled:  -fdefer-pop -fcse-follow-jumps -fcse-skip-blocks
 -fexpensive-optimizations -fthread-jumps -fstrength-reduce -fpeephole
 -fforce-mem -ffunction-cse -finline -fkeep-static-consts -fcaller-saves

 -fpcc-struct-return -fgcse -frerun-cse-after-loop -frerun-loop-opt
 -fdelete-null-pointer-checks -fschedule-insns2 -fsched-interblock
 -fsched-spec -fPIC -fnew-exceptions -fcommon -fgnu-linker -fregmove
 -foptimize-register-move -fargument-alias -fstrict-aliasing -fident
 -fpeephole2 -fmath-errno -m80387 -mhard-float -mno-soft-float -mieee-fp

 -mfp-ret-in-387 -mcpu=pentiumpro
GNU assembler version 2.9.5 (i686-pc-linux-gnu) using BFD version
2.9.5.0.16
 strtod strtol strtoul strtoq strtouq strtoll strtoull atof atoi atol
atoll sel_eq hash_ptr hash_string compare_ptrs compare_strings vprintf
In file included from /usr/include/stdio.h:631,
                 from
/usr/lib/gcc-lib/i686-pc-linux-gnu/2.96/include/objc/objc-api.h:33,
                 from ../Headers/gnustep/base/preface.h:65,
                 from BinaryCStream.m:25:
/usr/include/bits/stdio.h: In function `vprintf':
/usr/include/bits/stdio.h:35: warning: format not a string literal,
argument types not checked
 getchar getc_unlocked getchar_unlocked putchar fputc_unlocked
putc_unlocked putchar_unlocked feof_unlocked ferror_unlocked
class_get_class_name class_get_instance_size class_get_meta_class
class_get_super_class class_get_version class_is_class
class_is_meta_class class_set_version class_get_gc_object_type
method_get_imp object_get_class object_get_class_name
object_get_meta_class object_get_super_class object_is_class
object_is_instance object_is_meta_class tolower toupper soffset_decode
soffset_encode sarray_get sarray_get_safe NSDefaultMallocZone
GSAtomicMallocZone NSZoneMalloc NSZoneRealloc NSRecycleZone NSZoneFree
NSZoneName NSZoneMallocAtomic NSZoneCheck NSZoneStats NSMaxRange
NSLocationInRange NSEqualRanges NSUnionRange NSIntersectionRange __sgn
__sgnf __sgnl __pow2 __pow2f __pow2l __sincos __sincosf __sincosl
__expm1l exp expf expl __expl tan tanf tanl atan2 atan2f atan2l __atan2l
fmod fmodf fmodl pow powf powl sqrt sqrtf sqrtl __sqrtl fabs fabsf fabsl
__fabsl sin sinf sinl cos cosf cosl atan atanf atanl log logf logl log10
log10f log10l asin asinf asinl acos acosf acosl __sgn1l sinh sinhf sinhl
cosh coshf coshl tanh tanhf tanhl floor floorf floorl ceil ceilf ceill
ldexp expm1 expm1f expm1l log1p log1pf log1pl asinh asinhf asinhl acosh
acoshf acoshl atanh atanhf atanhl hypot hypotf hypotl logb logbf logbl
drem dremf dreml __finite __coshm1 __coshm1f __coshm1l __acosh1p
__acosh1pf __acosh1pl __cmsg_nxthdr +[BinaryCStream initialize]
+[BinaryCStream setDebugging:] +[BinaryCStream debugStderrCoder]
-[BinaryCStream
_initForReadingFromPostSignatureStream:withFormatVersion:]
-[BinaryCStream initForWritingToStream:withFormatVersion:]
-[BinaryCStream encodeValueOfCType:at:withName:] -[BinaryCStream
decodeValueOfCType:at:withName:] {GC 5499k -> gcc: Internal compiler
error: program cc1obj got fatal signal 11
{standard input}: Assembler messages:
{standard input}:3728: Warning: end of file not at end of a line;
newline inserted
{standard input}:4060: Warning: .stabn: Missing comma


And the preprocessed source follows:



------------=_1583533139-4113-606
Content-Type: application/x-gzip; charset=binary; name="BinaryCStream.i.gz"
Content-Disposition: inline; filename="BinaryCStream.i.gz"
Content-Transfer-Encoding: base64
Content-Length: 41944
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------------=_1583533139-4113-606--
>From oliva@lsd.ic.unicamp.br Wed Oct 20 12:04:00 1999
From: Alexandre Oliva <oliva@lsd.ic.unicamp.br>
To: Stephan Kulow <coolo@kde.org>
Cc: gcc-bugs@gcc.gnu.org, koffice@kde.org
Subject: Re: parse error in nested templates
Date: Wed, 20 Oct 1999 12:04:00 -0000
Message-id: <oraepdua5b.fsf@cupuacu.lsd.ic.unicamp.br>
References: <380DC349.AECEA47A@kde.org>
X-SW-Source: 1999-10/msg00565.html
Content-length: 427

On Oct 20, 1999, Stephan Kulow <coolo@kde.org> wrote:

>      DList<CellT>::Iterator it;  // <--- parse error
     ^ `typename' is required here

-- 
Alexandre Oliva http://www.ic.unicamp.br/~oliva IC-Unicamp, Bra[sz]il
oliva@{lsd.ic.unicamp.br,guarana.{org,com}} aoliva@{acm,computer}.org
oliva@{gnu.org,kaffe.org,{egcs,sourceware}.cygnus.com,samba.org}
** I may forward mail about projects to mailing lists; please use them


^ permalink raw reply	[flat|nested] 12+ messages in thread

* Re: gcc bug?
  1999-09-30 19:57 Joao Belo
@ 1999-09-30 19:57 ` Martin v. Loewis
  0 siblings, 0 replies; 12+ messages in thread
From: Martin v. Loewis @ 1999-09-30 19:57 UTC (permalink / raw)
  To: jbelo; +Cc: gcc-bugs

> Is this a bug?

It looks like one to me. The compiler tries to find out what template
the specialization belongs to. In the process, it instantiates all
kinds of templates, in particular revserse_iterator<int>. That gives
an error.

Of course, instantiation should just fail, instead.

Regards,
Martin


^ permalink raw reply	[flat|nested] 12+ messages in thread

* gcc bug?
@ 1999-09-30 19:57 Joao Belo
  1999-09-30 19:57 ` Martin v. Loewis
  0 siblings, 1 reply; 12+ messages in thread
From: Joao Belo @ 1999-09-30 19:57 UTC (permalink / raw)
  To: gcc-bugs

Hello,

with the code

        #include <iterator>

        template<class T>
        struct X
        {
        };

        template<class T>
        X<T> operator+(const X<T>&, const X<T>&);

        template<>
        X<int> operator+<int>(const X<int>&, const X<int>&);

gcc reports:


/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h: In instantiation of `iterator_traits<int>':

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:576:   instantiated from `reverse_iterator<int>'
        x.cpp:12:   instantiated from here

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:104: `int' is not a class, struct, or union type

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:105: `int' is not a class, struct, or union type

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:106: `int' is not a class, struct, or union type

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:107: `int' is not a class, struct, or union type

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:108: `int' is not a class, struct, or union type

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h: In instantiation of `reverse_iterator<int>':
        x.cpp:12:   instantiated from here

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:576: no type named `iterator_category' in `struct
iterator_traits<int>'

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:578: no type named `value_type' in `struct
iterator_traits<int>'

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:580: no type named `difference_type' in `struct
iterator_traits<int>'

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:582: no type named `pointer' in `struct
iterator_traits<int>'

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:584: no type named `reference' in `struct
iterator_traits<int>'

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:601: no type named `reference' in `struct
iterator_traits<int>'

/cygnus/cygwin-b20/H-i586-cygwin32/bin/../lib/gcc-lib/i586-cygwin32/2.95/../
../../../../include/g++-
        3/stl_iterator.h:601: confused by earlier errors, bailing out

Is this a bug?

I'm using Cygwin b20, gcc version 2.95 19990728 (release)

Thank you,
Joao Belo



^ permalink raw reply	[flat|nested] 12+ messages in thread

* gcc bug?
@ 1999-06-30 23:07 Chris Cochrane
  1999-06-15  2:14 ` Franz Sirl
  0 siblings, 1 reply; 12+ messages in thread
From: Chris Cochrane @ 1999-06-30 23:07 UTC (permalink / raw)
  To: egcs-bugs, bug-gcc

[-- Warning: decoded text below may be mangled, UTF-8 assumed --]
[-- Attachment #1: Type: text/plain, Size: 1656 bytes --]

Hi,
I can't believe I've found a gcc bug at this stage in 
its life,
but can't explain the misbehavior we see 
any other way.  Perhaps
someone can show me the light.  The 
first function in the following
file fails as described 
below...Chris
--
chris_cochrane@netacc.com
 
 
file foo.c:
/********************************************************************  * 
demo of gcc ppc compare and branch bug?  * tried gnu ppc compiler 
egcs1.1.2 and gcc2.8.1,  * both with binutils 2.9.1  *  
HOST=cygwin32, TARGET=powerpc-eabi  *  * gccppc -mregnames -O2 
-c -Wa,-ahls=foo.lst -o foo.o foo.c  *  */
 
extern void assert( int arg1, 
int arg2, int arg3);
 
unsigned short num_lines = 
8; unsigned short some_var = 2;
 
void funcFails( unsigned 
short ds_1, unsigned short ds_0) {  /* The following conditional 
resulted in occasional false   * assert calls even though incoming ds_1 
arg was always   * <= num_lines.  About one call out of 50 fails 
in our system.   *   * Assembly listing looks like it's missing 
a cmp and branch,   * or someone's clever attempt to combine 2 
comparisons into   * a single "bc" doesn't work 100% of the 
time?  Perhaps there's   * a condition register init 
problem.   */  if ( (ds_1 >= num_lines) && (ds_1 
>= 2) ) {   assert( 1, 2, 3);  }
 
}
 
void funcWorks( unsigned 
short ds_1, unsigned short ds_0) {  /* Eliminating the immediate #2 
works fine all the time   * and generates an assembly listing that makes 
more sense.   */  if ( (ds_1 >= num_lines) && (ds_1 
>= some_var) ) {   assert( 5, 6, 7);
 
	} }


^ permalink raw reply	[flat|nested] 12+ messages in thread

* Re: gcc bug?
  1999-06-30 23:07 Chris Cochrane
@ 1999-06-15  2:14 ` Franz Sirl
  0 siblings, 0 replies; 12+ messages in thread
From: Franz Sirl @ 1999-06-15  2:14 UTC (permalink / raw)
  To: Chris Cochrane; +Cc: egcs-bugs, bug-gcc

At 19:07 14.06.99 , Chris Cochrane wrote:
>Hi,
>I can't believe I've found a gcc bug at this stage in its life,
>but can't explain the misbehavior we see any other way.  Perhaps
>someone can show me the light.  The first function in the following
>file fails as described below...Chris

Hmm, for which values does it fail? Can you turn this in an example that 
aborts on error condition? I can't see anything suspicious here, except 
maybe the bc 12,2,.L2, a blt (I expected a beq). But I couldn't get it to 
fail on some testruns I tried.

funcFails:
         stwu 1,-16(1)
         mflr 0
         stw 0,20(1)
         addis 9,0,num_lines@ha
         lhz 0,num_lines@l(9)
         subfc 0,0,3
         li 0,0
         adde 0,0,0
         subfic 3,3,1
         subfe 3,3,3
         neg 3,3
         and. 11,0,3
         bc 12,2,.L2
         li 3,1
         li 4,2
         li 5,3
         bl assert
.L2:
         lwz 0,20(1)
         mtlr 0
         la 1,16(1)
         blr

gcc turns the code into 2 Scc's and the results are and'ed together.

Franz.


^ permalink raw reply	[flat|nested] 12+ messages in thread

end of thread, other threads:[~2004-02-17  0:49 UTC | newest]

Thread overview: 12+ messages (download: mbox.gz / follow: Atom feed)
-- links below jump to the message on this page --
2004-02-16 21:39 gcc "bug" Jeffrey Hammel
2004-02-16 21:53 ` Falk Hueffner
2004-02-17  0:49   ` Joseph S. Myers
     [not found] <8F542C9341D3D211BC880008C75DFE100530BCB2@rba.gov.au>
2000-11-12 17:22 ` gcc bug ? Phil Edwards
     [not found] <393BC0AD.DC25507B@rtp.ericsson.com>
     [not found] ` <14651.56471.760657.974882@rtp.ericsson.se>
2000-06-05 12:43   ` gcc bug? Martin v. Loewis
  -- strict thread matches above, loose matches on Subject: below --
2000-02-14  8:06 GCC bug! Fabio Alemagna
1999-10-31 23:03 gcc bug? Bill Mills-Curran
1999-10-20 11:41 Mike Stump
1999-09-30 19:57 Joao Belo
1999-09-30 19:57 ` Martin v. Loewis
1999-06-30 23:07 Chris Cochrane
1999-06-15  2:14 ` Franz Sirl

This is a public inbox, see mirroring instructions
for how to clone and mirror all data and code used for this inbox;
as well as URLs for read-only IMAP folder(s) and NNTP newsgroup(s).