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-rw-r--r-- | Doc/whatsnew/3.11.rst | 186 |
1 files changed, 109 insertions, 77 deletions
diff --git a/Doc/whatsnew/3.11.rst b/Doc/whatsnew/3.11.rst index bffb8d0..391ea53 100644 --- a/Doc/whatsnew/3.11.rst +++ b/Doc/whatsnew/3.11.rst @@ -1317,14 +1317,17 @@ This section covers specific optimizations independent of the Faster CPython ============== -CPython 3.11 is on average `25% faster <https://github.com/faster-cpython/ideas#published-results>`_ -than CPython 3.10 when measured with the +CPython 3.11 is an average of +`25% faster <https://github.com/faster-cpython/ideas#published-results>`_ +than CPython 3.10 as measured with the `pyperformance <https://github.com/python/pyperformance>`_ benchmark suite, -and compiled with GCC on Ubuntu Linux. Depending on your workload, the speedup -could be up to 10-60% faster. +when compiled with GCC on Ubuntu Linux. +Depending on your workload, the overall speedup could be 10-60%. -This project focuses on two major areas in Python: faster startup and faster -runtime. Other optimizations not under this project are listed in `Optimizations`_. +This project focuses on two major areas in Python: +:ref:`whatsnew311-faster-startup` and :ref:`whatsnew311-faster-runtime`. +Optimizations not covered by this project are listed separately under +:ref:`whatsnew311-optimizations`. .. _whatsnew311-faster-startup: @@ -1337,8 +1340,8 @@ Faster Startup Frozen imports / Static code objects ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ -Python caches bytecode in the :ref:`__pycache__<tut-pycache>` directory to -speed up module loading. +Python caches :term:`bytecode` in the :ref:`__pycache__ <tut-pycache>` +directory to speed up module loading. Previously in 3.10, Python module execution looked like this: @@ -1347,8 +1350,9 @@ Previously in 3.10, Python module execution looked like this: Read __pycache__ -> Unmarshal -> Heap allocated code object -> Evaluate In Python 3.11, the core modules essential for Python startup are "frozen". -This means that their code objects (and bytecode) are statically allocated -by the interpreter. This reduces the steps in module execution process to this: +This means that their :ref:`codeobjects` (and bytecode) +are statically allocated by the interpreter. +This reduces the steps in module execution process to: .. code-block:: text @@ -1357,7 +1361,7 @@ by the interpreter. This reduces the steps in module execution process to this: Interpreter startup is now 10-15% faster in Python 3.11. This has a big impact for short-running programs using Python. -(Contributed by Eric Snow, Guido van Rossum and Kumar Aditya in numerous issues.) +(Contributed by Eric Snow, Guido van Rossum and Kumar Aditya in many issues.) .. _whatsnew311-faster-runtime: @@ -1370,17 +1374,19 @@ Faster Runtime Cheaper, lazy Python frames ^^^^^^^^^^^^^^^^^^^^^^^^^^^ -Python frames are created whenever Python calls a Python function. This frame -holds execution information. The following are new frame optimizations: +Python frames, holding execution information, +are created whenever Python calls a Python function. +The following are new frame optimizations: - Streamlined the frame creation process. - Avoided memory allocation by generously re-using frame space on the C stack. - Streamlined the internal frame struct to contain only essential information. Frames previously held extra debugging and memory management information. -Old-style frame objects are now created only when requested by debuggers or -by Python introspection functions such as ``sys._getframe`` or -``inspect.currentframe``. For most user code, no frame objects are +Old-style :ref:`frame objects <frame-objects>` +are now created only when requested by debuggers +or by Python introspection functions such as :func:`sys._getframe` and +:func:`inspect.currentframe`. For most user code, no frame objects are created at all. As a result, nearly all Python functions calls have sped up significantly. We measured a 3-7% speedup in pyperformance. @@ -1401,10 +1407,11 @@ In 3.11, when CPython detects Python code calling another Python function, it sets up a new frame, and "jumps" to the new code inside the new frame. This avoids calling the C interpreting function altogether. -Most Python function calls now consume no C stack space. This speeds up -most of such calls. In simple recursive functions like fibonacci or -factorial, a 1.7x speedup was observed. This also means recursive functions -can recurse significantly deeper (if the user increases the recursion limit). +Most Python function calls now consume no C stack space, speeding them up. +In simple recursive functions like fibonacci or +factorial, we observed a 1.7x speedup. This also means recursive functions +can recurse significantly deeper +(if the user increases the recursion limit with :func:`sys.setrecursionlimit`). We measured a 1-3% improvement in pyperformance. (Contributed by Pablo Galindo and Mark Shannon in :issue:`45256`.) @@ -1415,7 +1422,7 @@ We measured a 1-3% improvement in pyperformance. PEP 659: Specializing Adaptive Interpreter ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ -:pep:`659` is one of the key parts of the faster CPython project. The general +:pep:`659` is one of the key parts of the Faster CPython project. The general idea is that while Python is a dynamic language, most code has regions where objects and types rarely change. This concept is known as *type stability*. @@ -1424,17 +1431,18 @@ in the executing code. Python will then replace the current operation with a more specialized one. This specialized operation uses fast paths available only to those use cases/types, which generally outperform their generic counterparts. This also brings in another concept called *inline caching*, where -Python caches the results of expensive operations directly in the bytecode. +Python caches the results of expensive operations directly in the +:term:`bytecode`. The specializer will also combine certain common instruction pairs into one -superinstruction. This reduces the overhead during execution. +superinstruction, reducing the overhead during execution. Python will only specialize when it sees code that is "hot" (executed multiple times). This prevents Python -from wasting time for run-once code. Python can also de-specialize when code is +from wasting time on run-once code. Python can also de-specialize when code is too dynamic or when the use changes. Specialization is attempted periodically, -and specialization attempts are not too expensive. This allows specialization -to adapt to new circumstances. +and specialization attempts are not too expensive, +allowing specialization to adapt to new circumstances. (PEP written by Mark Shannon, with ideas inspired by Stefan Brunthaler. See :pep:`659` for more information. Implementation by Mark Shannon and Brandt @@ -1447,32 +1455,32 @@ Bucher, with additional help from Irit Katriel and Dennis Sweeney.) | Operation | Form | Specialization | Operation speedup | Contributor(s) | | | | | (up to) | | +===============+====================+=======================================================+===================+===================+ -| Binary | ``x+x; x*x; x-x;`` | Binary add, multiply and subtract for common types | 10% | Mark Shannon, | -| operations | | such as ``int``, ``float``, and ``str`` take custom | | Dong-hee Na, | -| | | fast paths for their underlying types. | | Brandt Bucher, | +| Binary | ``x + x`` | Binary add, multiply and subtract for common types | 10% | Mark Shannon, | +| operations | | such as :class:`int`, :class:`float` and :class:`str` | | Dong-hee Na, | +| | ``x - x`` | take custom fast paths for their underlying types. | | Brandt Bucher, | | | | | | Dennis Sweeney | +| | ``x * x`` | | | | +---------------+--------------------+-------------------------------------------------------+-------------------+-------------------+ -| Subscript | ``a[i]`` | Subscripting container types such as ``list``, | 10-25% | Irit Katriel, | -| | | ``tuple`` and ``dict`` directly index the underlying | | Mark Shannon | -| | | data structures. | | | +| Subscript | ``a[i]`` | Subscripting container types such as :class:`list`, | 10-25% | Irit Katriel, | +| | | :class:`tuple` and :class:`dict` directly index | | Mark Shannon | +| | | the underlying data structures. | | | | | | | | | -| | | Subscripting custom ``__getitem__`` | | | +| | | Subscripting custom :meth:`~object.__getitem__` | | | | | | is also inlined similar to :ref:`inline-calls`. | | | +---------------+--------------------+-------------------------------------------------------+-------------------+-------------------+ | Store | ``a[i] = z`` | Similar to subscripting specialization above. | 10-25% | Dennis Sweeney | | subscript | | | | | +---------------+--------------------+-------------------------------------------------------+-------------------+-------------------+ | Calls | ``f(arg)`` | Calls to common builtin (C) functions and types such | 20% | Mark Shannon, | -| | ``C(arg)`` | as ``len`` and ``str`` directly call their underlying | | Ken Jin | -| | | C version. This avoids going through the internal | | | -| | | calling convention. | | | -| | | | | | +| | | as :func:`len` and :class:`str` directly call their | | Ken Jin | +| | ``C(arg)`` | underlying C version. This avoids going through the | | | +| | | internal calling convention. | | | +---------------+--------------------+-------------------------------------------------------+-------------------+-------------------+ -| Load | ``print`` | The object's index in the globals/builtins namespace | [1]_ | Mark Shannon | -| global | ``len`` | is cached. Loading globals and builtins require | | | -| variable | | zero namespace lookups. | | | +| Load | ``print`` | The object's index in the globals/builtins namespace | [#load-global]_ | Mark Shannon | +| global | | is cached. Loading globals and builtins require | | | +| variable | ``len`` | zero namespace lookups. | | | +---------------+--------------------+-------------------------------------------------------+-------------------+-------------------+ -| Load | ``o.attr`` | Similar to loading global variables. The attribute's | [2]_ | Mark Shannon | +| Load | ``o.attr`` | Similar to loading global variables. The attribute's | [#load-attr]_ | Mark Shannon | | attribute | | index inside the class/object's namespace is cached. | | | | | | In most cases, attribute loading will require zero | | | | | | namespace lookups. | | | @@ -1484,14 +1492,15 @@ Bucher, with additional help from Irit Katriel and Dennis Sweeney.) | Store | ``o.attr = z`` | Similar to load attribute optimization. | 2% | Mark Shannon | | attribute | | | in pyperformance | | +---------------+--------------------+-------------------------------------------------------+-------------------+-------------------+ -| Unpack | ``*seq`` | Specialized for common containers such as ``list`` | 8% | Brandt Bucher | -| Sequence | | and ``tuple``. Avoids internal calling convention. | | | +| Unpack | ``*seq`` | Specialized for common containers such as | 8% | Brandt Bucher | +| Sequence | | :class:`list` and :class:`tuple`. | | | +| | | Avoids internal calling convention. | | | +---------------+--------------------+-------------------------------------------------------+-------------------+-------------------+ -.. [1] A similar optimization already existed since Python 3.8. 3.11 - specializes for more forms and reduces some overhead. +.. [#load-global] A similar optimization already existed since Python 3.8. + 3.11 specializes for more forms and reduces some overhead. -.. [2] A similar optimization already existed since Python 3.10. +.. [#load-attr] A similar optimization already existed since Python 3.10. 3.11 specializes for more forms. Furthermore, all attribute loads should be sped up by :issue:`45947`. @@ -1501,49 +1510,72 @@ Bucher, with additional help from Irit Katriel and Dennis Sweeney.) Misc ---- -* Objects now require less memory due to lazily created object namespaces. Their - namespace dictionaries now also share keys more freely. +* Objects now require less memory due to lazily created object namespaces. + Their namespace dictionaries now also share keys more freely. (Contributed Mark Shannon in :issue:`45340` and :issue:`40116`.) +* "Zero-cost" exceptions are implemented, eliminating the cost + of :keyword:`try` statements when no exception is raised. + (Contributed by Mark Shannon in :issue:`40222`.) + * A more concise representation of exceptions in the interpreter reduced the time required for catching an exception by about 10%. (Contributed by Irit Katriel in :issue:`45711`.) +* :mod:`re`'s regular expression matching engine has been partially refactored, + and now uses computed gotos (or "threaded code") on supported platforms. As a + result, Python 3.11 executes the `pyperformance regular expression benchmarks + <https://pyperformance.readthedocs.io/benchmarks.html#regex-dna>`_ up to 10% + faster than Python 3.10. + (Contributed by Brandt Bucher in :gh:`91404`.) + .. _whatsnew311-faster-cpython-faq: FAQ --- -| Q: How should I write my code to utilize these speedups? -| -| A: You don't have to change your code. Write Pythonic code that follows common - best practices. The Faster CPython project optimizes for common code - patterns we observe. -| -| -| Q: Will CPython 3.11 use more memory? -| -| A: Maybe not. We don't expect memory use to exceed 20% more than 3.10. - This is offset by memory optimizations for frame objects and object - dictionaries as mentioned above. -| -| -| Q: I don't see any speedups in my workload. Why? -| -| A: Certain code won't have noticeable benefits. If your code spends most of - its time on I/O operations, or already does most of its - computation in a C extension library like numpy, there won't be significant - speedup. This project currently benefits pure-Python workloads the most. -| -| Furthermore, the pyperformance figures are a geometric mean. Even within the - pyperformance benchmarks, certain benchmarks have slowed down slightly, while - others have sped up by nearly 2x! -| -| -| Q: Is there a JIT compiler? -| -| A: No. We're still exploring other optimizations. +.. _faster-cpython-faq-my-code: + +How should I write my code to utilize these speedups? +^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ + +Write Pythonic code that follows common best practices; +you don't have to change your code. +The Faster CPython project optimizes for common code patterns we observe. + + +.. _faster-cpython-faq-memory: + +Will CPython 3.11 use more memory? +^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ + +Maybe not; we don't expect memory use to exceed 20% higher than 3.10. +This is offset by memory optimizations for frame objects and object +dictionaries as mentioned above. + + +.. _faster-cpython-ymmv: + +I don't see any speedups in my workload. Why? +^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ + +Certain code won't have noticeable benefits. If your code spends most of +its time on I/O operations, or already does most of its +computation in a C extension library like NumPy, there won't be significant +speedups. This project currently benefits pure-Python workloads the most. + +Furthermore, the pyperformance figures are a geometric mean. Even within the +pyperformance benchmarks, certain benchmarks have slowed down slightly, while +others have sped up by nearly 2x! + + +.. _faster-cpython-jit: + +Is there a JIT compiler? +^^^^^^^^^^^^^^^^^^^^^^^^ + +No. We're still exploring other optimizations. .. _whatsnew311-faster-cpython-about: |