Hi, This is a new proposal to implement context storage in Python.
It's a successor of PEP 550 and builds on some of its API ideas and datastructures. Contrary to PEP 550 though, this proposal only focuses on adding new APIs and implementing support for it in asyncio. There are no changes to the interpreter or to the behaviour of generator or coroutine objects. PEP: 567 Title: Context Variables Version: $Revision$ Last-Modified: $Date$ Author: Yury Selivanov <y...@magic.io> Status: Draft Type: Standards Track Content-Type: text/x-rst Created: 12-Dec-2017 Python-Version: 3.7 Post-History: 12-Dec-2017 Abstract ======== This PEP proposes the new ``contextvars`` module and a set of new CPython C APIs to support context variables. This concept is similar to thread-local variables but, unlike TLS, it allows correctly keeping track of values per asynchronous task, e.g. ``asyncio.Task``. This proposal builds directly upon concepts originally introduced in :pep:`550`. The key difference is that this PEP is only concerned with solving the case for asynchronous tasks, and not generators. There are no proposed modifications to any built-in types or to the interpreter. Rationale ========= Thread-local variables are insufficient for asynchronous tasks which execute concurrently in the same OS thread. Any context manager that needs to save and restore a context value and uses ``threading.local()``, will have its context values bleed to other code unexpectedly when used in async/await code. A few examples where having a working context local storage for asynchronous code is desired: * Context managers like decimal contexts and ``numpy.errstate``. * Request-related data, such as security tokens and request data in web applications, language context for ``gettext`` etc. * Profiling, tracing, and logging in large code bases. Introduction ============ The PEP proposes a new mechanism for managing context variables. The key classes involved in this mechanism are ``contextvars.Context`` and ``contextvars.ContextVar``. The PEP also proposes some policies for using the mechanism around asynchronous tasks. The proposed mechanism for accessing context variables uses the ``ContextVar`` class. A module (such as decimal) that wishes to store a context variable should: * declare a module-global variable holding a ``ContextVar`` to serve as a "key"; * access the current value via the ``get()`` method on the key variable; * modify the current value via the ``set()`` method on the key variable. The notion of "current value" deserves special consideration: different asynchronous tasks that exist and execute concurrently may have different values. This idea is well-known from thread-local storage but in this case the locality of the value is not always necessarily to a thread. Instead, there is the notion of the "current ``Context``" which is stored in thread-local storage, and is accessed via ``contextvars.get_context()`` function. Manipulation of the current ``Context`` is the responsibility of the task framework, e.g. asyncio. A ``Context`` is conceptually a mapping, implemented using an immutable dictionary. The ``ContextVar.get()`` method does a lookup in the current ``Context`` with ``self`` as a key, raising a ``LookupError`` or returning a default value specified in the constructor. The ``ContextVar.set(value)`` method clones the current ``Context``, assigns the ``value`` to it with ``self`` as a key, and sets the new ``Context`` as a new current. Because ``Context`` uses an immutable dictionary, cloning it is O(1). Specification ============= A new standard library module ``contextvars`` is added with the following APIs: 1. ``get_context() -> Context`` function is used to get the current ``Context`` object for the current OS thread. 2. ``ContextVar`` class to declare and access context variables. 3. ``Context`` class encapsulates context state. Every OS thread stores a reference to its current ``Context`` instance. It is not possible to control that reference manually. Instead, the ``Context.run(callable, *args)`` method is used to run Python code in another context. contextvars.ContextVar ---------------------- The ``ContextVar`` class has the following constructor signature: ``ContextVar(name, *, default=no_default)``. The ``name`` parameter is used only for introspection and debug purposes. The ``default`` parameter is optional. Example:: # Declare a context variable 'var' with the default value 42. var = ContextVar('var', default=42) ``ContextVar.get()`` returns a value for context variable from the current ``Context``:: # Get the value of `var`. var.get() ``ContextVar.set(value) -> Token`` is used to set a new value for the context variable in the current ``Context``:: # Set the variable 'var' to 1 in the current context. var.set(1) ``contextvars.Token`` is an opaque object that should be used to restore the ``ContextVar`` to its previous value, or remove it from the context if it was not set before. The ``ContextVar.reset(Token)`` is used for that:: old = var.set(1) try: ... finally: var.reset(old) The ``Token`` API exists to make the current proposal forward compatible with :pep:`550`, in case there is demand to support context variables in generators and asynchronous generators in the future. ``ContextVar`` design allows for a fast implementation of ``ContextVar.get()``, which is particularly important for modules like ``decimal`` an ``numpy``. contextvars.Context ------------------- ``Context`` objects are mappings of ``ContextVar`` to values. To get the current ``Context`` for the current OS thread, use ``contextvars.get_context()`` method:: ctx = contextvars.get_context() To run Python code in some ``Context``, use ``Context.run()`` method:: ctx.run(function) Any changes to any context variables that ``function`` causes, will be contained in the ``ctx`` context:: var = ContextVar('var') var.set('spam') def function(): assert var.get() == 'spam' var.set('ham') assert var.get() == 'ham' ctx = get_context() ctx.run(function) assert var.get('spam') Any changes to the context will be contained and persisted in the ``Context`` object on which ``run()`` is called on. ``Context`` objects implement the ``collections.abc.Mapping`` ABC. This can be used to introspect context objects:: ctx = contextvars.get_context() # Print all context variables in their values in 'ctx': print(ctx.items()) # Print the value of 'some_variable' in context 'ctx': print(ctx[some_variable]) asyncio ------- ``asyncio`` uses ``Loop.call_soon()``, ``Loop.call_later()``, and ``Loop.call_at()`` to schedule the asynchronous execution of a function. ``asyncio.Task`` uses ``call_soon()`` to run the wrapped coroutine. We modify ``Loop.call_{at,later,soon}`` to accept the new optional *context* keyword-only argument, which defaults to the current context:: def call_soon(self, callback, *args, context=None): if context is None: context = contextvars.get_context() # ... some time later context.run(callback, *args) Tasks in asyncio need to maintain their own isolated context. ``asyncio.Task`` is modified as follows:: class Task: def __init__(self, coro): ... # Get the current context snapshot. self._context = contextvars.get_context() self._loop.call_soon(self._step, context=self._context) def _step(self, exc=None): ... # Every advance of the wrapped coroutine is done in # the task's context. self._loop.call_soon(self._step, context=self._context) ... CPython C API ------------- TBD Implementation ============== This section explains high-level implementation details in pseudo-code. Some optimizations are omitted to keep this section short and clear. The internal immutable dictionary for ``Context`` is implemented using Hash Array Mapped Tries (HAMT). They allow for O(log N) ``set`` operation, and for O(1) ``get_context()`` function. For the purposes of this section, we implement an immutable dictionary using ``dict.copy()``:: class _ContextData: def __init__(self): self.__mapping = dict() def get(self, key): return self.__mapping[key] def set(self, key, value): copy = _ContextData() copy.__mapping = self.__mapping.copy() copy.__mapping[key] = value return copy def delete(self, key): copy = _ContextData() copy.__mapping = self.__mapping.copy() del copy.__mapping[key] return copy Every OS thread has a reference to the current ``_ContextData``. ``PyThreadState`` is updated with a new ``context_data`` field that points to a ``_ContextData`` object:: PyThreadState: context : _ContextData ``contextvars.get_context()`` is implemented as follows: def get_context(): ts : PyThreadState = PyThreadState_Get() if ts.context_data is None: ts.context_data = _ContextData() ctx = Context() ctx.__data = ts.context_data return ctx ``contextvars.Context`` is a wrapper around ``_ContextData``:: class Context(collections.abc.Mapping): def __init__(self): self.__data = _ContextData() def run(self, callable, *args): ts : PyThreadState = PyThreadState_Get() saved_data : _ContextData = ts.context_data try: ts.context_data = self.__data callable(*args) finally: self.__data = ts.context_data ts.context_data = saved_data # Mapping API methods are implemented by delegating # `get()` and other Mapping calls to `self.__data`. ``contextvars.ContextVar`` interacts with ``PyThreadState.context_data`` directly:: class ContextVar: def __init__(self, name, *, default=NO_DEFAULT): self.__name = name self.__default = default @property def name(self): return self.__name def get(self, default=NO_DEFAULT): ts : PyThreadState = PyThreadState_Get() data : _ContextData = ts.context_data try: return data.get(self) except KeyError: pass if default is not NO_DEFAULT: return default if self.__default is not NO_DEFAULT: return self.__default raise LookupError def set(self, value): ts : PyThreadState = PyThreadState_Get() data : _ContextData = ts.context_data try: old_value = data.get(self) except KeyError: old_value = NO_VALUE ts.context_data = data.set(self, value) return Token(self, old_value) def reset(self, token): if token.__used: return if token.__old_value is NO_VALUE: ts.context_data = data.delete(token.__var) else: ts.context_data = data.set(token.__var, token.__old_value) token.__used = True class Token: def __init__(self, var, old_value): self.__var = var self.__old_value = old_value self.__used = False Backwards Compatibility ======================= This proposal preserves 100% backwards compatibility. Libraries that use ``threading.local()`` to store context-related values, currently work correctly only for synchronous code. Switching them to use the proposed API will keep their behavior for synchronous code unmodified, but will automatically enable support for asynchronous code. Appendix: HAMT Performance Analysis =================================== .. figure:: pep-0550-hamt_vs_dict-v2.png :align: center :width: 100% Figure 1. Benchmark code can be found here: [1]_. The above chart demonstrates that: * HAMT displays near O(1) performance for all benchmarked dictionary sizes. * ``dict.copy()`` becomes very slow around 100 items. .. figure:: pep-0550-lookup_hamt.png :align: center :width: 100% Figure 2. Benchmark code can be found here: [2]_. Figure 2 compares the lookup costs of ``dict`` versus a HAMT-based immutable mapping. HAMT lookup time is 30-40% slower than Python dict lookups on average, which is a very good result, considering that the latter is very well optimized. The reference implementation of HAMT for CPython can be found here: [3]_. References ========== .. [1] https://gist.github.com/1st1/9004813d5576c96529527d44c5457dcd .. [2] https://gist.github.com/1st1/dbe27f2e14c30cce6f0b5fddfc8c437e .. [3] https://github.com/1st1/cpython/tree/hamt Copyright ========= This document has been placed in the public domain. .. Local Variables: mode: indented-text indent-tabs-mode: nil sentence-end-double-space: t fill-column: 70 coding: utf-8 End: _______________________________________________ Python-Dev mailing list Python-Dev@python.org https://mail.python.org/mailman/listinfo/python-dev Unsubscribe: https://mail.python.org/mailman/options/python-dev/archive%40mail-archive.com