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Revision b4b89aae0da33502ef73327ae9910fe8785cc106 authored by Georg Brandl on 26 November 2010, 07:23:36 UTC, committed by Georg Brandl on 26 November 2010, 07:23:36 UTC
........ r85287 | georg.brandl | 2010-10-06 14:29:49 +0200 (Mi, 06 Okt 2010) | 1 line Update to Sphin 1.0.4. ........ r85354 | georg.brandl | 2010-10-10 11:37:51 +0200 (So, 10 Okt 2010) | 1 line Update pydoc topics. ........ r85355 | georg.brandl | 2010-10-10 11:40:34 +0200 (So, 10 Okt 2010) | 1 line Bump to 3.2a3. ........ r85357 | georg.brandl | 2010-10-10 11:49:21 +0200 (So, 10 Okt 2010) | 1 line Rewrap. ........ r85375 | georg.brandl | 2010-10-12 14:38:48 +0200 (Di, 12 Okt 2010) | 1 line Post-release bumps. ........ r85456 | georg.brandl | 2010-10-14 09:04:07 +0200 (Do, 14 Okt 2010) | 1 line #9418: first step of moving private string methods to _string module. ........ r85457 | georg.brandl | 2010-10-14 09:14:31 +0200 (Do, 14 Okt 2010) | 1 line #9964: fix pdb failure to import under -OO. Warn the user that help is simply not available in this case. ........ r85458 | georg.brandl | 2010-10-14 09:17:44 +0200 (Do, 14 Okt 2010) | 1 line Remove unused imports. ........
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README.valgrind
This document describes some caveats about the use of Valgrind with
Python. Valgrind is used periodically by Python developers to try
to ensure there are no memory leaks or invalid memory reads/writes.
If you don't want to read about the details of using Valgrind, there
are still two things you must do to suppress the warnings. First,
you must use a suppressions file. One is supplied in
Misc/valgrind-python.supp. Second, you must do one of the following:
* Uncomment Py_USING_MEMORY_DEBUGGER in Objects/obmalloc.c,
then rebuild Python
* Uncomment the lines in Misc/valgrind-python.supp that
suppress the warnings for PyObject_Free and PyObject_Realloc
If you want to use Valgrind more effectively and catch even more
memory leaks, you will need to configure python --without-pymalloc.
PyMalloc allocates a few blocks in big chunks and most object
allocations don't call malloc, they use chunks doled about by PyMalloc
from the big blocks. This means Valgrind can't detect
many allocations (and frees), except for those that are forwarded
to the system malloc. Note: configuring python --without-pymalloc
makes Python run much slower, especially when running under Valgrind.
You may need to run the tests in batches under Valgrind to keep
the memory usage down to allow the tests to complete. It seems to take
about 5 times longer to run --without-pymalloc.
Apr 15, 2006:
test_ctypes causes Valgrind 3.1.1 to fail (crash).
test_socket_ssl should be skipped when running valgrind.
The reason is that it purposely uses uninitialized memory.
This causes many spurious warnings, so it's easier to just skip it.
Details:
--------
Python uses its own small-object allocation scheme on top of malloc,
called PyMalloc.
Valgrind may show some unexpected results when PyMalloc is used.
Starting with Python 2.3, PyMalloc is used by default. You can disable
PyMalloc when configuring python by adding the --without-pymalloc option.
If you disable PyMalloc, most of the information in this document and
the supplied suppressions file will not be useful. As discussed above,
disabling PyMalloc can catch more problems.
If you use valgrind on a default build of Python, you will see
many errors like:
==6399== Use of uninitialised value of size 4
==6399== at 0x4A9BDE7E: PyObject_Free (obmalloc.c:711)
==6399== by 0x4A9B8198: dictresize (dictobject.c:477)
These are expected and not a problem. Tim Peters explains
the situation:
PyMalloc needs to know whether an arbitrary address is one
that's managed by it, or is managed by the system malloc.
The current scheme allows this to be determined in constant
time, regardless of how many memory areas are under pymalloc's
control.
The memory pymalloc manages itself is in one or more "arenas",
each a large contiguous memory area obtained from malloc.
The base address of each arena is saved by pymalloc
in a vector. Each arena is carved into "pools", and a field at
the start of each pool contains the index of that pool's arena's
base address in that vector.
Given an arbitrary address, pymalloc computes the pool base
address corresponding to it, then looks at "the index" stored
near there. If the index read up is out of bounds for the
vector of arena base addresses pymalloc maintains, then
pymalloc knows for certain that this address is not under
pymalloc's control. Otherwise the index is in bounds, and
pymalloc compares
the arena base address stored at that index in the vector
to
the arbitrary address pymalloc is investigating
pymalloc controls this arbitrary address if and only if it lies
in the arena the address's pool's index claims it lies in.
It doesn't matter whether the memory pymalloc reads up ("the
index") is initialized. If it's not initialized, then
whatever trash gets read up will lead pymalloc to conclude
(correctly) that the address isn't controlled by it, either
because the index is out of bounds, or the index is in bounds
but the arena it represents doesn't contain the address.
This determination has to be made on every call to one of
pymalloc's free/realloc entry points, so its speed is critical
(Python allocates and frees dynamic memory at a ferocious rate
-- everything in Python, from integers to "stack frames",
lives in the heap).
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