PEP 620 – Hide implementation details from the C API
- Author:
- Victor Stinner <vstinner at python.org>
- Status:
- Withdrawn
- Type:
- Standards Track
- Created:
- 19-Jun-2020
- Python-Version:
- 3.12
Table of Contents
- Abstract
- PEP withdrawn
- Motivation
- Rationale
- Specification
- Summary
- Reorganize the C API header files
- Move private functions to the internal C API
- Convert macros to static inline functions
- Make structures opaque
- Disallow using Py_TYPE() as l-value
- New C API functions must not return borrowed references
- Avoid functions returning PyObject**
- New pythoncapi_compat.h header file
- Process to reduce the number of broken C extensions
- Version History
- Copyright
Abstract
Introduce C API incompatible changes to hide implementation details.
Once most implementation details will be hidden, evolution of CPython internals would be less limited by C API backward compatibility issues. It will be way easier to add new features.
It becomes possible to experiment with more advanced optimizations in CPython than just micro-optimizations, like tagged pointers.
Define a process to reduce the number of broken C extensions.
The implementation of this PEP is expected to be done carefully over multiple Python versions. It already started in Python 3.7 and most changes are already completed. The Process to reduce the number of broken C extensions dictates the rhythm.
PEP withdrawn
This PEP was withdrawn by its author since the scope is too broad and the work is distributed over multiple Python versions, which makes it difficult to make a decision on the overall PEP. It was split into new PEPs with narrower and better defined scopes, like PEP 670.
Motivation
The C API blocks CPython evolutions
Adding or removing members of C structures is causing multiple backward compatibility issues.
Adding a new member breaks the stable ABI (PEP 384), especially for
types declared statically (e.g. static PyTypeObject MyType =
{...};
). In Python 3.4, the PEP 442 “Safe object finalization” added
the tp_finalize
member at the end of the PyTypeObject
structure.
For ABI backward compatibility, a new Py_TPFLAGS_HAVE_FINALIZE
type
flag was required to announce if the type structure contains the
tp_finalize
member. The flag was removed in Python 3.8 (bpo-32388).
The PyTypeObject.tp_print
member, deprecated since Python 3.0
released in 2009, has been removed in the Python 3.8 development cycle.
But the change broke too many C extensions and had to be reverted before
3.8 final release. Finally, the member was removed again in Python 3.9.
C extensions rely on the ability to access structure members,
indirectly through the C API, or even directly. Modifying structures
like PyListObject
cannot be even considered.
The PyTypeObject
structure is the one which evolved the most, simply
because there was no other way to evolve CPython than modifying it.
A C extension can technically dereference a PyObject*
pointer and
access PyObject
members. This prevents experiments like tagged
pointers (storing small values as PyObject*
which does not point to
a valid PyObject
structure).
Replacing Python garbage collector with a tracing garbage collector
would also need to remove PyObject.ob_refcnt
reference counter,
whereas currently Py_INCREF()
and Py_DECREF()
macros access
directly to PyObject.ob_refcnt
.
Same CPython design since 1990: structures and reference counting
When the CPython project was created, it was written with one principle: keep the implementation simple enough so it can be maintained by a single developer. CPython complexity grew a lot and many micro-optimizations have been implemented, but CPython core design has not changed.
Members of PyObject
and PyTupleObject
structures have not
changed since the “Initial revision” commit (1990):
#define OB_HEAD \
unsigned int ob_refcnt; \
struct _typeobject *ob_type;
typedef struct _object {
OB_HEAD
} object;
typedef struct {
OB_VARHEAD
object *ob_item[1];
} tupleobject;
Only names changed: object
was renamed to PyObject
and
tupleobject
was renamed to PyTupleObject
.
CPython still tracks Python objects lifetime using reference counting internally and for third party C extensions (through the Python C API).
All Python objects must be allocated on the heap and cannot be moved.
Why is PyPy more efficient than CPython?
The PyPy project is a Python implementation which is 4.2x faster than CPython on average. PyPy developers chose to not fork CPython, but start from scratch to have more freedom in terms of optimization choices.
PyPy does not use reference counting, but a tracing garbage collector which moves objects. Objects can be allocated on the stack (or even not at all), rather than always having to be allocated on the heap.
Objects layouts are designed with performance in mind. For example, a list strategy stores integers directly as integers, rather than objects.
Moreover, PyPy also has a JIT compiler which emits fast code thanks to the efficient PyPy design.
PyPy bottleneck: the Python C API
While PyPy is way more efficient than CPython to run pure Python code, it is as efficient or slower than CPython to run C extensions.
Since the C API requires PyObject*
and allows to access directly
structure members, PyPy has to associate a CPython object to PyPy
objects and maintain both consistent. Converting a PyPy object to a
CPython object is inefficient. Moreover, reference counting also has to
be implemented on top of PyPy tracing garbage collector.
These conversions are required because the Python C API is too close to
the CPython implementation: there is no high-level abstraction.
For example, structures members are part of the public C API and nothing
prevents a C extension to get or set directly
PyTupleObject.ob_item[0]
(the first item of a tuple).
See Inside cpyext: Why emulating CPython C API is so Hard (Sept 2018) by Antonio Cuni for more details.
Rationale
Hide implementation details
Hiding implementation details from the C API has multiple advantages:
- It becomes possible to experiment with more advanced optimizations in CPython than just micro-optimizations. For example, tagged pointers, and replace the garbage collector with a tracing garbage collector which can move objects.
- Adding new features in CPython becomes easier.
- PyPy should be able to avoid conversions to CPython objects in more cases: keep efficient PyPy objects.
- It becomes easier to implement the C API for a new Python implementation.
- More C extensions will be compatible with Python implementations other than CPython.
Relationship with the limited C API
The PEP 384 “Defining a Stable ABI” is implemented in Python 3.4. It introduces the “limited C API”: a subset of the C API. When the limited C API is used, it becomes possible to build a C extension only once and use it on multiple Python versions: that’s the stable ABI.
The main limitation of the PEP 384 is that C extensions have to opt-in for the limited C API. Only very few projects made this choice, usually to ease distribution of binaries, especially on Windows.
This PEP moves the C API towards the limited C API.
Ideally, the C API will become the limited C API and all C extensions will use the stable ABI, but this is out of this PEP scope.
Specification
Summary
- (Completed) Reorganize the C API header files: create
Include/cpython/
andInclude/internal/
subdirectories. - (Completed) Move private functions exposing implementation details to the internal C API.
- (Completed) Convert macros to static inline functions.
- (Completed) Add new functions
Py_SET_TYPE()
,Py_SET_REFCNT()
andPy_SET_SIZE()
. ThePy_TYPE()
,Py_REFCNT()
andPy_SIZE()
macros become functions which cannot be used as l-value. - (Completed) New C API functions must not return borrowed references.
- (In Progress) Provide
pythoncapi_compat.h
header file. - (In Progress) Make structures opaque, add getter and setter functions.
- (Not Started) Deprecate
PySequence_Fast_ITEMS()
. - (Not Started) Convert
PyTuple_GET_ITEM()
andPyList_GET_ITEM()
macros to static inline functions.
Reorganize the C API header files
The first consumer of the C API was Python itself. There is no clear separation between APIs which must not be used outside Python, and API which are public on purpose.
Header files must be reorganized in 3 API:
Include/
directory is the limited C API: no implementation details, structures are opaque. C extensions using it get a stable ABI.Include/cpython/
directory is the CPython C API: less “portable” API, depends more on the Python version, expose some implementation details, few incompatible changes can happen.Include/internal/
directory is the internal C API: implementation details, incompatible changes are likely at each Python release.
The creation of the Include/cpython/
directory is fully backward
compatible. Include/cpython/
header files cannot be included
directly and are included automatically by Include/
header files
when the Py_LIMITED_API
macro is not defined.
The internal C API is installed and can be used for specific usage like debuggers and profilers which must access structures members without executing code. C extensions using the internal C API are tightly coupled to a Python version and must be recompiled at each Python version.
STATUS: Completed (in Python 3.8)
The reorganization of header files started in Python 3.7 and was completed in Python 3.8:
Move private functions to the internal C API
Private functions which expose implementation details must be moved to the internal C API.
If a C extension relies on a CPython private function which exposes CPython implementation details, other Python implementations have to re-implement this private function to support this C extension.
STATUS: Completed (in Python 3.9)
Private functions moved to the internal C API in Python 3.8:
_PyObject_GC_TRACK()
,_PyObject_GC_UNTRACK()
Macros and functions excluded from the limited C API in Python 3.9:
_PyObject_SIZE()
,_PyObject_VAR_SIZE()
PyThreadState_DeleteCurrent()
PyFPE_START_PROTECT()
,PyFPE_END_PROTECT()
_Py_NewReference()
,_Py_ForgetReference()
_PyTraceMalloc_NewReference()
_Py_GetRefTotal()
Private functions moved to the internal C API in Python 3.9:
- GC functions like
_Py_AS_GC()
,_PyObject_GC_IS_TRACKED()
and_PyGCHead_NEXT()
_Py_AddToAllObjects()
(not exported)_PyDebug_PrintTotalRefs()
,_Py_PrintReferences()
,_Py_PrintReferenceAddresses()
(not exported)
Public “clear free list” functions moved to the internal C API and renamed to private functions in Python 3.9:
PyAsyncGen_ClearFreeLists()
PyContext_ClearFreeList()
PyDict_ClearFreeList()
PyFloat_ClearFreeList()
PyFrame_ClearFreeList()
PyList_ClearFreeList()
PyTuple_ClearFreeList()
- Functions simply removed:
PyMethod_ClearFreeList()
andPyCFunction_ClearFreeList()
: bound method free list removed in Python 3.9.PySet_ClearFreeList()
: set free list removed in Python 3.4.PyUnicode_ClearFreeList()
: Unicode free list removed in Python 3.3.
Convert macros to static inline functions
Converting macros to static inline functions has multiple advantages:
- Functions have well defined parameter types and return type.
- Functions can use variables with a well defined scope (the function).
- Debugger can be put breakpoints on functions and profilers can display the function name in the call stacks. In most cases, it works even when a static inline function is inlined.
- Functions don’t have macros pitfalls.
Converting macros to static inline functions should only impact very few C extensions that use macros in unusual ways.
For backward compatibility, functions must continue to accept any type,
not only PyObject*
, to avoid compiler warnings, since most macros
cast their parameters to PyObject*
.
Python 3.6 requires C compilers to support static inline functions: the PEP 7 requires a subset of C99.
STATUS: Completed (in Python 3.9)
Macros converted to static inline functions in Python 3.8:
Py_INCREF()
,Py_DECREF()
Py_XINCREF()
,Py_XDECREF()
PyObject_INIT()
,PyObject_INIT_VAR()
_PyObject_GC_TRACK()
,_PyObject_GC_UNTRACK()
,_Py_Dealloc()
Macros converted to regular functions in Python 3.9:
Py_EnterRecursiveCall()
,Py_LeaveRecursiveCall()
(added to the limited C API)PyObject_INIT()
,PyObject_INIT_VAR()
PyObject_GET_WEAKREFS_LISTPTR()
PyObject_CheckBuffer()
PyIndex_Check()
PyObject_IS_GC()
PyObject_NEW()
(alias toPyObject_New()
),PyObject_NEW_VAR()
(alias toPyObject_NewVar()
)PyType_HasFeature()
(always callPyType_GetFlags()
)Py_TRASHCAN_BEGIN_CONDITION()
andPy_TRASHCAN_END()
macros now call functions which hide implementation details, rather than accessing directly members of thePyThreadState
structure.
Make structures opaque
The following structures of the C API become opaque:
PyInterpreterState
PyThreadState
PyGC_Head
PyTypeObject
PyObject
andPyVarObject
PyTypeObject
- All types which inherit from
PyObject
orPyVarObject
C extensions must use getter or setter functions to get or set structure
members. For example, tuple->ob_item[0]
must be replaced with
PyTuple_GET_ITEM(tuple, 0)
.
To be able to move away from reference counting, PyObject
must
become opaque. Currently, the reference counter PyObject.ob_refcnt
is exposed in the C API. All structures must become opaque, since they
“inherit” from PyObject. For, PyFloatObject
inherits from
PyObject
:
typedef struct {
PyObject ob_base;
double ob_fval;
} PyFloatObject;
Making PyObject
fully opaque requires converting Py_INCREF()
and
Py_DECREF()
macros to function calls. This change has an impact on
performance. It is likely to be one of the very last changes when making
structures opaque.
Making PyTypeObject
structure opaque breaks C extensions declaring
types statically (e.g. static PyTypeObject MyType = {...};
). C
extensions must use PyType_FromSpec()
to allocate types on the heap
instead. Using heap types has other advantages like being compatible
with subinterpreters. Combined with PEP 489 “Multi-phase extension
module initialization”, it makes a C extension behavior closer to a
Python module, like allowing to create more than one module instance.
Making PyThreadState
structure opaque requires adding getter and
setter functions for members used by C extensions.
STATUS: In Progress (started in Python 3.8)
The PyInterpreterState
structure was made opaque in Python 3.8
(bpo-35886) and the
PyGC_Head
structure (bpo-40241) was made opaque in Python 3.9.
Issues tracking the work to prepare the C API to make following structures opaque:
PyObject
: bpo-39573PyTypeObject
: bpo-40170PyFrameObject
: bpo-40421- Python 3.9 adds
PyFrame_GetCode()
andPyFrame_GetBack()
getter functions, and movesPyFrame_GetLineNumber
to the limited C API.
- Python 3.9 adds
PyThreadState
: bpo-39947- Python 3.9 adds 3 getter functions:
PyThreadState_GetFrame()
,PyThreadState_GetID()
,PyThreadState_GetInterpreter()
.
- Python 3.9 adds 3 getter functions:
Disallow using Py_TYPE() as l-value
The Py_TYPE()
function gets an object type, its PyObject.ob_type
member. It is implemented as a macro which can be used as an l-value to
set the type: Py_TYPE(obj) = new_type
. This code relies on the
assumption that PyObject.ob_type
can be modified directly. It
prevents making the PyObject
structure opaque.
New setter functions Py_SET_TYPE()
, Py_SET_REFCNT()
and
Py_SET_SIZE()
are added and must be used instead.
The Py_TYPE()
, Py_REFCNT()
and Py_SIZE()
macros must be
converted to static inline functions which can not be used as l-value.
For example, the Py_TYPE()
macro:
#define Py_TYPE(ob) (((PyObject*)(ob))->ob_type)
becomes:
#define _PyObject_CAST_CONST(op) ((const PyObject*)(op))
static inline PyTypeObject* _Py_TYPE(const PyObject *ob) {
return ob->ob_type;
}
#define Py_TYPE(ob) _Py_TYPE(_PyObject_CAST_CONST(ob))
STATUS: Completed (in Python 3.10)
New functions Py_SET_TYPE()
, Py_SET_REFCNT()
and
Py_SET_SIZE()
were added to Python 3.9.
In Python 3.10, Py_TYPE()
, Py_REFCNT()
and Py_SIZE()
can no
longer be used as l-value and the new setter functions must be used
instead.
New C API functions must not return borrowed references
When a function returns a borrowed reference, Python cannot track when the caller stops using this reference.
For example, if the Python list
type is specialized for small
integers, store directly “raw” numbers rather than Python objects,
PyList_GetItem()
has to create a temporary Python object. The
problem is to decide when it is safe to delete the temporary object.
The general guidelines is to avoid returning borrowed references for new C API functions.
No function returning borrowed references is scheduled for removal by this PEP.
STATUS: Completed (in Python 3.9)
In Python 3.9, new C API functions returning Python objects only return strong references:
PyFrame_GetBack()
PyFrame_GetCode()
PyObject_CallNoArgs()
PyObject_CallOneArg()
PyThreadState_GetFrame()
Avoid functions returning PyObject**
The PySequence_Fast_ITEMS()
function gives a direct access to an
array of PyObject*
objects. The function is deprecated in favor of
PyTuple_GetItem()
and PyList_GetItem()
.
PyTuple_GET_ITEM()
can be abused to access directly the
PyTupleObject.ob_item
member:
PyObject **items = &PyTuple_GET_ITEM(0);
The PyTuple_GET_ITEM()
and PyList_GET_ITEM()
macros are
converted to static inline functions to disallow that.
STATUS: Not Started
New pythoncapi_compat.h header file
Making structures opaque requires modifying C extensions to use getter and setter functions. The practical issue is how to keep support for old Python versions which don’t have these functions.
For example, in Python 3.10, it is no longer possible to use
Py_TYPE()
as an l-value. The new Py_SET_TYPE()
function must be
used instead:
#if PY_VERSION_HEX >= 0x030900A4
Py_SET_TYPE(&MyType, &PyType_Type);
#else
Py_TYPE(&MyType) = &PyType_Type;
#endif
This code may ring a bell to developers who ported their Python code base from Python 2 to Python 3.
Python will distribute a new pythoncapi_compat.h
header file which
provides new C API functions to old Python versions. Example:
#if PY_VERSION_HEX < 0x030900A4
static inline void
_Py_SET_TYPE(PyObject *ob, PyTypeObject *type)
{
ob->ob_type = type;
}
#define Py_SET_TYPE(ob, type) _Py_SET_TYPE((PyObject*)(ob), type)
#endif // PY_VERSION_HEX < 0x030900A4
Using this header file, Py_SET_TYPE()
can be used on old Python
versions as well.
Developers can copy this file in their project, or even to only copy/paste the few functions needed by their C extension.
STATUS: In Progress (implemented but not distributed by CPython yet)
The pythoncapi_compat.h
header file is currently developed at:
https://github.com/pythoncapi/pythoncapi_compat
Process to reduce the number of broken C extensions
Process to reduce the number of broken C extensions when introducing C API incompatible changes listed in this PEP:
- Estimate how many popular C extensions are affected by the incompatible change.
- Coordinate with maintainers of broken C extensions to prepare their code for the future incompatible change.
- Introduce the incompatible changes in Python. The documentation must explain how to port existing code. It is recommended to merge such changes at the beginning of a development cycle to have more time for tests.
- Changes which are the most likely to break a large number of C extensions should be announced on the capi-sig mailing list to notify C extensions maintainers to prepare their project for the next Python.
- If the change breaks too many projects, reverting the change should be discussed, taking in account the number of broken packages, their importance in the Python community, and the importance of the change.
The coordination usually means reporting issues to the projects, or even proposing changes. It does not require waiting for a new release including fixes for every broken project.
Since more and more C extensions are written using Cython, rather directly using the C API, it is important to ensure that Cython is prepared in advance for incompatible changes. It gives more time for C extension maintainers to release a new version with code generated with the updated Cython (for C extensions distributing the code generated by Cython).
Future incompatible changes can be announced by deprecating a function
in the documentation and by annotating the function with
Py_DEPRECATED()
. But making a structure opaque and preventing the
usage of a macro as l-value cannot be deprecated with
Py_DEPRECATED()
.
The important part is coordination and finding a balance between CPython evolutions and backward compatibility. For example, breaking a random, old, obscure and unmaintained C extension on PyPI is less severe than breaking numpy.
If a change is reverted, we move back to the coordination step to better prepare the change. Once more C extensions are ready, the incompatible change can be reconsidered.
Version History
- Version 3, June 2020: PEP rewritten from scratch. Python now
distributes a new
pythoncapi_compat.h
header and a process is defined to reduce the number of broken C extensions when introducing C API incompatible changes listed in this PEP. - Version 2, April 2020: PEP: Modify the C API to hide implementation details.
- Version 1, July 2017: PEP: Hide implementation details in the C API sent to python-ideas
Copyright
This document has been placed in the public domain.
Source: https://github.com/python/peps/blob/main/pep-0620.rst
Last modified: 2022-12-16 23:03:18 GMT