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I've tried to debug memory crash in my Python C extension and tried to run script under valgrind. I found there is too much "noise" in the valgrind output, even if I've ran simple command as:

valgrind python -c ""

Valgrind output full of repeated info like this:

==12317== Invalid read of size 4
==12317==    at 0x409CF59: PyObject_Free (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x405C7C7: PyGrammar_RemoveAccelerators (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x410A1EC: Py_Finalize (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x4114FD1: Py_Main (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x8048591: main (in /usr/bin/python2.5)
==12317==  Address 0x43CD010 is 7,016 bytes inside a block of size 8,208 free'd
==12317==    at 0x4022F6C: free (in /usr/lib/valgrind/x86-linux/vgpreload_memcheck.so)
==12317==    by 0x4107ACC: PyArena_Free (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x41095D7: PyRun_StringFlags (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x40DF262: (within /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x4099569: PyCFunction_Call (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x40E76CC: PyEval_EvalFrameEx (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x40E70F3: PyEval_EvalFrameEx (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x40E896A: PyEval_EvalCodeEx (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x40E8AC2: PyEval_EvalCode (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x40FD99C: PyImport_ExecCodeModuleEx (in /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x40FFC93: (within /usr/lib/libpython2.5.so.1.0)
==12317==    by 0x41002B0: (within /usr/lib/libpython2.5.so.1.0)

Python 2.5.2 on Slackware 12.2.

Is it normal behavior? If so then valgrind maybe is inappropriate tool for debugging memory errors in Python?

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3 Answers

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You could try using the suppression file that comes with the python source

Reading the Python Valgrind README is a good idea too!

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As a high level note: In general Valgrind needs some help with custom allocators as it's not able to comprehend the behavior of a custom allocator as it could a standard implementaion. – Falaina Oct 5 at 11:52
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This is quite common, in any largish system. You can use Valgrind's suppression system to explicitly suppress warnings that you're not interested in.

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Yes, this is typical. Large systems often leave memory un-freed, which is fine so long as it is a constant amount, and not proportional to the running history of the system. The Python interpreter falls into this category.

Perhaps you can filter the valgrind output to focus only on allocations made in your C extension?

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