mirror of https://github.com/python/cpython
204 lines
9.4 KiB
ReStructuredText
204 lines
9.4 KiB
ReStructuredText
.. highlight:: shell-session
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.. _perf_profiling:
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==============================================
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Python support for the Linux ``perf`` profiler
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==============================================
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:author: Pablo Galindo
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The Linux ``perf`` profiler is a very powerful tool that allows you to profile and
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obtain information about the performance of your application. ``perf`` also has
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a very vibrant ecosystem of tools that aid with the analysis of the data that it
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produces.
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The main problem with using the ``perf`` profiler with Python applications is that
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``perf`` only allows to get information about native symbols, this is, the names of
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the functions and procedures written in C. This means that the names and file names
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of the Python functions in your code will not appear in the output of the ``perf``.
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Since Python 3.12, the interpreter can run in a special mode that allows Python
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functions to appear in the output of the ``perf`` profiler. When this mode is
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enabled, the interpreter will interpose a small piece of code compiled on the
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fly before the execution of every Python function and it will teach ``perf`` the
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relationship between this piece of code and the associated Python function using
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`perf map files`_.
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.. warning::
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Support for the ``perf`` profiler is only currently available for Linux on
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selected architectures. Check the output of the configure build step or
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check the output of ``python -m sysconfig | grep HAVE_PERF_TRAMPOLINE``
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to see if your system is supported.
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For example, consider the following script:
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.. code-block:: python
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def foo(n):
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result = 0
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for _ in range(n):
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result += 1
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return result
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def bar(n):
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foo(n)
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def baz(n):
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bar(n)
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if __name__ == "__main__":
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baz(1000000)
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We can run perf to sample CPU stack traces at 9999 Hertz:
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$ perf record -F 9999 -g -o perf.data python my_script.py
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Then we can use perf report to analyze the data:
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.. code-block:: shell-session
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$ perf report --stdio -n -g
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# Children Self Samples Command Shared Object Symbol
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# ........ ........ ............ .......... .................. ..........................................
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#
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91.08% 0.00% 0 python.exe python.exe [.] _start
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---_start
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--90.71%--__libc_start_main
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Py_BytesMain
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|--56.88%--pymain_run_python.constprop.0
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| |
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| |--56.13%--_PyRun_AnyFileObject
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| | _PyRun_SimpleFileObject
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| | |--55.02%--run_mod
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| | | --54.65%--PyEval_EvalCode
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| | | _PyEval_EvalFrameDefault
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| | | PyObject_Vectorcall
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| | | _PyEval_Vector
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| | | _PyEval_EvalFrameDefault
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| | | PyObject_Vectorcall
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| | | _PyEval_Vector
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| | | _PyEval_EvalFrameDefault
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| | | PyObject_Vectorcall
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| | | _PyEval_Vector
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| | | |--51.67%--_PyEval_EvalFrameDefault
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| | | | |--11.52%--_PyLong_Add
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| | | | | |--2.97%--_PyObject_Malloc
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...
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As you can see here, the Python functions are not shown in the output, only ``_Py_Eval_EvalFrameDefault`` appears
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(the function that evaluates the Python bytecode) shows up. Unfortunately that's not very useful because all Python
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functions use the same C function to evaluate bytecode so we cannot know which Python function corresponds to which
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bytecode-evaluating function.
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Instead, if we run the same experiment with perf support activated we get:
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.. code-block:: shell-session
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$ perf report --stdio -n -g
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# Children Self Samples Command Shared Object Symbol
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# ........ ........ ............ .......... .................. .....................................................................
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#
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90.58% 0.36% 1 python.exe python.exe [.] _start
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---_start
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--89.86%--__libc_start_main
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Py_BytesMain
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|--55.43%--pymain_run_python.constprop.0
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| |--54.71%--_PyRun_AnyFileObject
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| | _PyRun_SimpleFileObject
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| | |--53.62%--run_mod
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| | | --53.26%--PyEval_EvalCode
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| | | py::<module>:/src/script.py
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| | | _PyEval_EvalFrameDefault
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| | | PyObject_Vectorcall
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| | | _PyEval_Vector
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| | | py::baz:/src/script.py
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| | | _PyEval_EvalFrameDefault
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| | | PyObject_Vectorcall
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| | | _PyEval_Vector
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| | | py::bar:/src/script.py
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| | | _PyEval_EvalFrameDefault
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| | | PyObject_Vectorcall
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| | | _PyEval_Vector
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| | | py::foo:/src/script.py
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| | | |--51.81%--_PyEval_EvalFrameDefault
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| | | | |--13.77%--_PyLong_Add
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| | | | | |--3.26%--_PyObject_Malloc
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Enabling perf profiling mode
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----------------------------
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There are two main ways to activate the perf profiling mode. If you want it to be
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active since the start of the Python interpreter, you can use the `-Xperf` option:
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$ python -Xperf my_script.py
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You can also set the :envvar:`PYTHONPERFSUPPORT` to a nonzero value to actiavate perf
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profiling mode globally.
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There is also support for dynamically activating and deactivating the perf
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profiling mode by using the APIs in the :mod:`sys` module:
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.. code-block:: python
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import sys
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sys.activate_stack_trampoline("perf")
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# Run some code with Perf profiling active
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sys.deactivate_stack_trampoline()
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# Perf profiling is not active anymore
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These APIs can be handy if you want to activate/deactivate profiling mode in
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response to a signal or other communication mechanism with your process.
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Now we can analyze the data with ``perf report``:
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$ perf report -g -i perf.data
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How to obtain the best results
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-------------------------------
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For the best results, Python should be compiled with
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``CFLAGS="-fno-omit-frame-pointer -mno-omit-leaf-frame-pointer"`` as this allows
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profilers to unwind using only the frame pointer and not on DWARF debug
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information. This is because as the code that is interposed to allow perf
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support is dynamically generated it doesn't have any DWARF debugging information
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available.
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You can check if you system has been compiled with this flag by running:
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$ python -m sysconfig | grep 'no-omit-frame-pointer'
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If you don't see any output it means that your interpreter has not been compiled with
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frame pointers and therefore it may not be able to show Python functions in the output
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of ``perf``.
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.. _perf map files: https://github.com/torvalds/linux/blob/0513e464f9007b70b96740271a948ca5ab6e7dd7/tools/perf/Documentation/jit-interface.txt
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