390 lines
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ReStructuredText
390 lines
15 KiB
ReStructuredText
PEP: 659
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Title: Specializing Adaptive Interpreter
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Author: Mark Shannon <mark@hotpy.org>
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Status: Draft
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Type: Informational
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Content-Type: text/x-rst
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Created: 13-Apr-2021
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Post-History: 11-May-2021
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Abstract
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========
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In order to perform well, virtual machines for dynamic languages must
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specialize the code that they execute to the types and values in the
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program being run. This specialization is often associated with "JIT"
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compilers, but is beneficial even without machine code generation.
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A specializing, adaptive interpreter is one that speculatively specializes
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on the types or values it is currently operating on, and adapts to changes
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in those types and values.
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Specialization gives us improved performance, and adaptation allows the
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interpreter to rapidly change when the pattern of usage in a program alters,
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limiting the amount of additional work caused by mis-specialization.
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This PEP proposes using a specializing, adaptive interpreter that specializes
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code aggressively, but over a very small region, and is able to adjust to
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mis-specialization rapidly and at low cost.
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Adding a specializing, adaptive interpreter to CPython will bring significant
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performance improvements. It is hard to come up with meaningful numbers,
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as it depends very much on the benchmarks and on work that has not yet happened.
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Extensive experimentation suggests speedups of up to 50%.
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Even if the speedup were only 25%, this would still be a worthwhile enhancement.
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Motivation
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==========
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Python is widely acknowledged as slow.
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Whilst Python will never attain the performance of low-level languages like C,
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Fortran, or even Java, we would like it to be competitive with fast
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implementations of scripting languages, like V8 for Javascript or luajit for
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lua.
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Specifically, we want to achieve these performance goals with CPython to
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benefit all users of Python including those unable to use PyPy or
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other alternative virtual machines.
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Achieving these performance goals is a long way off, and will require a lot of
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engineering effort, but we can make a significant step towards those goals by
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speeding up the interpreter.
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Both academic research and practical implementations have shown that a fast
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interpreter is a key part of a fast virtual machine.
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Typical optimizations for virtual machines are expensive, so a long "warm up"
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time is required to gain confidence that the cost of optimization is justified.
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In order to get speed-ups rapidly, without noticeable warmup times,
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the VM should speculate that specialization is justified even after a few
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executions of a function. To do that effectively, the interpreter must be able
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to optimize and de-optimize continually and very cheaply.
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By using adaptive and speculative specialization at the granularity of
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individual virtual machine instructions,
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we get a faster interpreter that also generates profiling information
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for more sophisticated optimizations in the future.
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Rationale
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=========
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There are many practical ways to speed-up a virtual machine for a dynamic
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language.
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However, specialization is the most important, both in itself and as an
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enabler of other optimizations.
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Therefore it makes sense to focus our efforts on specialization first,
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if we want to improve the performance of CPython.
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Specialization is typically done in the context of a JIT compiler,
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but research shows specialization in an interpreter can boost performance
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significantly, even outperforming a naive compiler [1]_.
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There have been several ways of doing this proposed in the academic
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literature, but most attempt to optimize regions larger than a
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single bytecode [1]_ [2]_.
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Using larger regions than a single instruction requires code to handle
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de-optimization in the middle of a region.
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Specialization at the level of individual bytecodes makes de-optimization
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trivial, as it cannot occur in the middle of a region.
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By speculatively specializing individual bytecodes, we can gain significant
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performance improvements without anything but the most local,
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and trivial to implement, de-optimizations.
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The closest approach to this PEP in the literature is
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"Inline Caching meets Quickening" [3]_.
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This PEP has the advantages of inline caching,
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but adds the ability to quickly de-optimize making the performance
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more robust in cases where specialization fails or is not stable.
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Performance
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-----------
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The speedup from specialization is hard to determine, as many specializations
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depend on other optimizations. Speedups seem to be in the range 10% - 60%.
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* Most of the speedup comes directly from specialization. The largest
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contributors are speedups to attribute lookup, global variables, and calls.
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* A small, but useful, fraction is from improved dispatch such as
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super-instructions and other optimizations enabled by quickening.
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Implementation
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==============
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Overview
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--------
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Any instruction that would benefit from specialization will be replaced by an
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"adaptive" form of that instruction. When executed, the adaptive instructions
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will specialize themselves in response to the types and values that they see.
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This process is known as "quickening".
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Once an instruction in a code object has executed enough times,
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that instruction will be "specialized" by replacing it with a new instruction
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that is expected to execute faster for that operation.
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Quickening
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----------
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Quickening is the process of replacing slow instructions with faster variants.
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Quickened code has a number of advantages over immutable bytecode:
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* It can be changed at runtime.
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* It can use super-instructions that span lines and take multiple operands.
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* It does not need to handle tracing as it can fallback to the original
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bytecode for that.
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In order that tracing can be supported, the quickened instruction format
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should match the immutable, user visible, bytecode format:
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16-bit instructions of 8-bit opcode followed by 8-bit operand.
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Adaptive instructions
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---------------------
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Each instruction that would benefit from specialization is replaced by an
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adaptive version during quickening. For example,
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the ``LOAD_ATTR`` instruction would be replaced with ``LOAD_ATTR_ADAPTIVE``.
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Each adaptive instruction periodically attempts to specialize itself.
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Specialization
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--------------
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CPython bytecode contains many instructions that represent high-level
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operations, and would benefit from specialization. Examples include ``CALL``,
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``LOAD_ATTR``, ``LOAD_GLOBAL`` and ``BINARY_ADD``.
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By introducing a "family" of specialized instructions for each of these
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instructions allows effective specialization,
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since each new instruction is specialized to a single task.
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Each family will include an "adaptive" instruction, that maintains a counter
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and attempts to specialize itself when that counter reaches zero.
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Each family will also include one or more specialized instructions that
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perform the equivalent of the generic operation much faster provided their
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inputs are as expected.
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Each specialized instruction will maintain a saturating counter which will
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be incremented whenever the inputs are as expected. Should the inputs not
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be as expected, the counter will be decremented and the generic operation
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will be performed.
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If the counter reaches the minimum value, the instruction is de-optimized by
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simply replacing its opcode with the adaptive version.
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Ancillary data
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--------------
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Most families of specialized instructions will require more information than
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can fit in an 8-bit operand. To do this, a number of 16 bit entries immediately
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following the instruction are used to store this data. This is a form of inline
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cache, an "inline data cache". Unspecialized, or adaptive, instructions will
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use the first entry of this cache as a counter, and simply skip over the others.
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Example families of instructions
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--------------------------------
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LOAD_ATTR
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'''''''''
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The ``LOAD_ATTR`` instruction loads the named attribute of the object on top of the stack,
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then replaces the object on top of the stack with the attribute.
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This is an obvious candidate for specialization. Attributes might belong to
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a normal instance, a class, a module, or one of many other special cases.
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``LOAD_ATTR`` would initially be quickened to ``LOAD_ATTR_ADAPTIVE`` which
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would track how often it is executed, and call the ``_Py_Specialize_LoadAttr``
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internal function when executed enough times, or jump to the original
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``LOAD_ATTR`` instruction to perform the load. When optimizing, the kind
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of the attribute would be examined, and if a suitable specialized instruction
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was found, it would replace ``LOAD_ATTR_ADAPTIVE`` in place.
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Specialization for ``LOAD_ATTR`` might include:
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* ``LOAD_ATTR_INSTANCE_VALUE`` A common case where the attribute is stored in
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the object's value array, and not shadowed by an overriding descriptor.
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* ``LOAD_ATTR_MODULE`` Load an attribute from a module.
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* ``LOAD_ATTR_SLOT`` Load an attribute from an object whose
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class defines ``__slots__``.
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Note how this allows optimizations that complement other optimizations.
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The ``LOAD_ATTR_INSTANCE_VALUE`` works well with the "lazy dictionary" used for
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many objects.
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LOAD_GLOBAL
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'''''''''''
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The ``LOAD_GLOBAL`` instruction looks up a name in the global namespace
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and then, if not present in the global namespace,
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looks it up in the builtins namespace.
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In 3.9 the C code for the ``LOAD_GLOBAL`` includes code to check to see
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whether the whole code object should be modified to add a cache,
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whether either the global or builtins namespace,
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code to lookup the value in a cache, and fallback code.
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This makes it complicated and bulky.
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It also performs many redundant operations even when supposedly optimized.
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Using a family of instructions makes the code more maintainable and faster,
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as each instruction only needs to handle one concern.
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Specializations would include:
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* ``LOAD_GLOBAL_ADAPTIVE`` would operate like ``LOAD_ATTR_ADAPTIVE`` above.
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* ``LOAD_GLOBAL_MODULE`` can be specialized for the case where the value is in
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the globals namespace. After checking that the keys of the namespace have
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not changed, it can load the value from the stored index.
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* ``LOAD_GLOBAL_BUILTIN`` can be specialized for the case where the value is
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in the builtins namespace. It needs to check that the keys of the global
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namespace have not been added to, and that the builtins namespace has not
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changed. Note that we don't care if the values of the global namespace
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have changed, just the keys.
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See [4]_ for a full implementation.
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.. note::
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This PEP outlines the mechanisms for managing specialization, and does not
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specify the particular optimizations to be applied.
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It is likely that details, or even the entire implementation, may change
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as the code is further developed.
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Compatibility
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=============
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There will be no change to the language, library or API.
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The only way that users will be able to detect the presence of the new
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interpreter is through timing execution, the use of debugging tools,
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or measuring memory use.
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Costs
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=====
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Memory use
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----------
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An obvious concern with any scheme that performs any sort of caching is
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"how much more memory does it use?".
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The short answer is "not that much".
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Comparing memory use to 3.10
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''''''''''''''''''''''''''''
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CPython 3.10 used 2 bytes per instruction, until the execution count
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reached ~2000 when it allocates another byte per instruction and
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32 bytes per instruction with a cache (``LOAD_GLOBAL`` and ``LOAD_ATTR``).
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The following table shows the additional bytes per instruction to support the
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3.10 opcache or the proposed adaptive interpreter, on a 64 bit machine.
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================ ========== ========== ======
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Version 3.10 cold 3.10 hot 3.11
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Specialised 0% ~15% ~25%
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---------------- ---------- ---------- ------
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code 2 2 2
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opcache_map 0 1 0
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opcache/data 0 4.8 4
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---------------- ---------- ---------- ------
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Total 2 7.8 6
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================ ========== ========== ======
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``3.10 cold`` is before the code has reached the ~2000 limit.
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``3.10 hot`` shows the cache use once the threshold is reached.
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The relative memory use depends on how much code is "hot" enough to trigger
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creation of the cache in 3.10. The break even point, where the memory used
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by 3.10 is the same as for 3.11 is ~70%.
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It is also worth noting that the actual bytecode is only part of a code
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object. Code objects also include names, constants and quite a lot of
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debugging information.
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In summary, for most applications where many of the functions are relatively
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unused, 3.11 will consume more memory than 3.10, but not by much.
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Security Implications
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=====================
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None
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Rejected Ideas
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==============
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By implementing a specializing adaptive interpreter with inline data caches,
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we are implicitly rejecting many alternative ways to optimize CPython.
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However, it is worth emphasizing that some ideas, such as just-in-time
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compilation, have not been rejected, merely deferred.
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Storing data caches before the bytecode.
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----------------------------------------
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An earlier implementation of this PEP for 3.11 alpha used a different caching
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scheme as described below:
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Quickened instructions will be stored in an array (it is neither necessary not
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desirable to store them in a Python object) with the same format as the
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original bytecode. Ancillary data will be stored in a separate array.
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Each instruction will use 0 or more data entries.
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Each instruction within a family must have the same amount of data allocated,
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although some instructions may not use all of it.
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Instructions that cannot be specialized, e.g. ``POP_TOP``,
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do not need any entries.
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Experiments show that 25% to 30% of instructions can be usefully specialized.
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Different families will need different amounts of data,
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but most need 2 entries (16 bytes on a 64 bit machine).
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In order to support larger functions than 256 instructions,
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we compute the offset of the first data entry for instructions
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as ``(instruction offset)//2 + (quickened operand)``.
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Compared to the opcache in Python 3.10, this design:
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* is faster; it requires no memory reads to compute the offset.
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3.10 requires two reads, which are dependent.
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* uses much less memory, as the data can be different sizes for different
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instruction families, and doesn't need an additional array of offsets.
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can support much larger functions, up to about 5000 instructions
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per function. 3.10 can support about 1000.
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We rejected this scheme as the inline cache approach is both faster
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and simpler.
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References
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==========
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.. [1] The construction of high-performance virtual machines for
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dynamic languages, Mark Shannon 2011.
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https://theses.gla.ac.uk/2975/1/2011shannonphd.pdf
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.. [2] Dynamic Interpretation for Dynamic Scripting Languages
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https://www.scss.tcd.ie/publications/tech-reports/reports.09/TCD-CS-2009-37.pdf
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.. [3] Inline Caching meets Quickening
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https://www.unibw.de/ucsrl/pubs/ecoop10.pdf/view
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.. [4] The adaptive and specialized instructions are implemented in
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https://github.com/python/cpython/blob/main/Python/ceval.c
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The optimizations are implemented in:
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https://github.com/python/cpython/blob/main/Python/specialize.c
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Copyright
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=========
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This document is placed in the public domain or under the
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CC0-1.0-Universal license, whichever is more permissive.
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..
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Local Variables:
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mode: indented-text
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indent-tabs-mode: nil
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sentence-end-double-space: t
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fill-column: 70
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coding: utf-8
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End:
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