mirror of
https://git.anonymousland.org/anonymousland/synapse-product.git
synced 2024-12-27 19:39:21 -05:00
29269d9d3f
Fix https://github.com/matrix-org/synapse/issues/13856 Fix https://github.com/matrix-org/synapse/issues/13865 > Discovered while trying to make Synapse fast enough for [this MSC2716 test for importing many batches](https://github.com/matrix-org/complement/pull/214#discussion_r741678240). As an example, disabling the `have_seen_event` cache saves 10 seconds for each `/messages` request in that MSC2716 Complement test because we're not making as many federation requests for `/state` (speeding up `have_seen_event` itself is related to https://github.com/matrix-org/synapse/issues/13625) > > But this will also make `/messages` faster in general so we can include it in the [faster `/messages` milestone](https://github.com/matrix-org/synapse/milestone/11). > > *-- https://github.com/matrix-org/synapse/issues/13856* ### The problem `_invalidate_caches_for_event` doesn't run in monolith mode which means we never even tried to clear the `have_seen_event` and other caches. And even in worker mode, it only runs on the workers, not the master (AFAICT). Additionally there was bug with the key being wrong so `_invalidate_caches_for_event` never invalidates the `have_seen_event` cache even when it does run. Because we were using the `@cachedList` wrong, it was putting items in the cache under keys like `((room_id, event_id),)` with a `set` in a `set` (ex. `(('!TnCIJPKzdQdUlIyXdQ:test', '$Iu0eqEBN7qcyF1S9B3oNB3I91v2o5YOgRNPwi_78s-k'),)`) and we we're trying to invalidate with just `(room_id, event_id)` which did nothing.
714 lines
25 KiB
Python
714 lines
25 KiB
Python
# Copyright 2015, 2016 OpenMarket Ltd
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# Copyright 2018 New Vector Ltd
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import enum
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import functools
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import inspect
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import logging
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from typing import (
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Any,
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Awaitable,
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Callable,
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Collection,
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Dict,
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Generic,
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Hashable,
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Iterable,
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List,
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Mapping,
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Optional,
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Sequence,
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Tuple,
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Type,
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TypeVar,
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Union,
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cast,
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)
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from weakref import WeakValueDictionary
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from twisted.internet import defer
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from twisted.python.failure import Failure
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from synapse.logging.context import make_deferred_yieldable, preserve_fn
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from synapse.util import unwrapFirstError
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from synapse.util.async_helpers import delay_cancellation
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from synapse.util.caches.deferred_cache import DeferredCache
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from synapse.util.caches.lrucache import LruCache
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logger = logging.getLogger(__name__)
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CacheKey = Union[Tuple, Any]
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F = TypeVar("F", bound=Callable[..., Any])
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class CachedFunction(Generic[F]):
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invalidate: Any = None
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invalidate_all: Any = None
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prefill: Any = None
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cache: Any = None
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num_args: Any = None
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__name__: str
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# Note: This function signature is actually fiddled with by the synapse mypy
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# plugin to a) make it a bound method, and b) remove any `cache_context` arg.
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__call__: F
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class _CacheDescriptorBase:
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def __init__(
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self,
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orig: Callable[..., Any],
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num_args: Optional[int],
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uncached_args: Optional[Collection[str]] = None,
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cache_context: bool = False,
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name: Optional[str] = None,
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):
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self.orig = orig
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self.name = name or orig.__name__
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arg_spec = inspect.getfullargspec(orig)
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all_args = arg_spec.args
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# There's no reason that keyword-only arguments couldn't be supported,
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# but right now they're buggy so do not allow them.
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if arg_spec.kwonlyargs:
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raise ValueError(
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"_CacheDescriptorBase does not support keyword-only arguments."
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)
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if "cache_context" in all_args:
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if not cache_context:
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raise ValueError(
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"Cannot have a 'cache_context' arg without setting"
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" cache_context=True"
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)
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elif cache_context:
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raise ValueError(
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"Cannot have cache_context=True without having an arg"
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" named `cache_context`"
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)
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if num_args is not None and uncached_args is not None:
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raise ValueError("Cannot provide both num_args and uncached_args")
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if num_args is None:
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num_args = len(all_args) - 1
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if cache_context:
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num_args -= 1
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if len(all_args) < num_args + 1:
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raise Exception(
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"Not enough explicit positional arguments to key off for %r: "
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"got %i args, but wanted %i. (@cached cannot key off *args or "
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"**kwargs)" % (orig.__name__, len(all_args), num_args)
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)
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self.num_args = num_args
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# list of the names of the args used as the cache key
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self.arg_names = all_args[1 : num_args + 1]
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# If there are args to not cache on, filter them out (and fix the size of num_args).
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if uncached_args is not None:
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include_arg_in_cache_key = [n not in uncached_args for n in self.arg_names]
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else:
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include_arg_in_cache_key = [True] * len(self.arg_names)
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# self.arg_defaults is a map of arg name to its default value for each
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# argument that has a default value
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if arg_spec.defaults:
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self.arg_defaults = dict(
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zip(all_args[-len(arg_spec.defaults) :], arg_spec.defaults)
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)
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else:
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self.arg_defaults = {}
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if "cache_context" in self.arg_names:
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raise Exception("cache_context arg cannot be included among the cache keys")
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self.add_cache_context = cache_context
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self.cache_key_builder = _get_cache_key_builder(
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self.arg_names, include_arg_in_cache_key, self.arg_defaults
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)
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class _LruCachedFunction(Generic[F]):
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cache: LruCache[CacheKey, Any]
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__call__: F
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def lru_cache(
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*, max_entries: int = 1000, cache_context: bool = False
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) -> Callable[[F], _LruCachedFunction[F]]:
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"""A method decorator that applies a memoizing cache around the function.
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This is more-or-less a drop-in equivalent to functools.lru_cache, although note
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that the signature is slightly different.
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The main differences with functools.lru_cache are:
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(a) the size of the cache can be controlled via the cache_factor mechanism
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(b) the wrapped function can request a "cache_context" which provides a
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callback mechanism to indicate that the result is no longer valid
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(c) prometheus metrics are exposed automatically.
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The function should take zero or more arguments, which are used as the key for the
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cache. Single-argument functions use that argument as the cache key; otherwise the
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arguments are built into a tuple.
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Cached functions can be "chained" (i.e. a cached function can call other cached
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functions and get appropriately invalidated when they called caches are
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invalidated) by adding a special "cache_context" argument to the function
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and passing that as a kwarg to all caches called. For example:
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@lru_cache(cache_context=True)
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def foo(self, key, cache_context):
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r1 = self.bar1(key, on_invalidate=cache_context.invalidate)
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r2 = self.bar2(key, on_invalidate=cache_context.invalidate)
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return r1 + r2
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The wrapped function also has a 'cache' property which offers direct access to the
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underlying LruCache.
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"""
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def func(orig: F) -> _LruCachedFunction[F]:
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desc = LruCacheDescriptor(
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orig,
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max_entries=max_entries,
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cache_context=cache_context,
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)
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return cast(_LruCachedFunction[F], desc)
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return func
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class LruCacheDescriptor(_CacheDescriptorBase):
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"""Helper for @lru_cache"""
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class _Sentinel(enum.Enum):
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sentinel = object()
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def __init__(
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self,
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orig: Callable[..., Any],
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max_entries: int = 1000,
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cache_context: bool = False,
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):
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super().__init__(
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orig, num_args=None, uncached_args=None, cache_context=cache_context
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)
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self.max_entries = max_entries
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def __get__(self, obj: Optional[Any], owner: Optional[Type]) -> Callable[..., Any]:
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cache: LruCache[CacheKey, Any] = LruCache(
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cache_name=self.name,
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max_size=self.max_entries,
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)
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get_cache_key = self.cache_key_builder
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sentinel = LruCacheDescriptor._Sentinel.sentinel
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@functools.wraps(self.orig)
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def _wrapped(*args: Any, **kwargs: Any) -> Any:
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invalidate_callback = kwargs.pop("on_invalidate", None)
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callbacks = (invalidate_callback,) if invalidate_callback else ()
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cache_key = get_cache_key(args, kwargs)
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ret = cache.get(cache_key, default=sentinel, callbacks=callbacks)
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if ret != sentinel:
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return ret
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# Add our own `cache_context` to argument list if the wrapped function
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# has asked for one
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if self.add_cache_context:
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kwargs["cache_context"] = _CacheContext.get_instance(cache, cache_key)
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ret2 = self.orig(obj, *args, **kwargs)
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cache.set(cache_key, ret2, callbacks=callbacks)
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return ret2
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wrapped = cast(CachedFunction, _wrapped)
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wrapped.cache = cache
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obj.__dict__[self.name] = wrapped
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return wrapped
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class DeferredCacheDescriptor(_CacheDescriptorBase):
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"""A method decorator that applies a memoizing cache around the function.
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This caches deferreds, rather than the results themselves. Deferreds that
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fail are removed from the cache.
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The function is presumed to take zero or more arguments, which are used in
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a tuple as the key for the cache. Hits are served directly from the cache;
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misses use the function body to generate the value.
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The wrapped function has an additional member, a callable called
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"invalidate". This can be used to remove individual entries from the cache.
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The wrapped function has another additional callable, called "prefill",
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which can be used to insert values into the cache specifically, without
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calling the calculation function.
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Cached functions can be "chained" (i.e. a cached function can call other cached
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functions and get appropriately invalidated when they called caches are
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invalidated) by adding a special "cache_context" argument to the function
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and passing that as a kwarg to all caches called. For example::
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@cached(cache_context=True)
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def foo(self, key, cache_context):
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r1 = yield self.bar1(key, on_invalidate=cache_context.invalidate)
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r2 = yield self.bar2(key, on_invalidate=cache_context.invalidate)
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return r1 + r2
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Args:
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orig:
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max_entries:
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num_args: number of positional arguments (excluding ``self`` and
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``cache_context``) to use as cache keys. Defaults to all named
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args of the function.
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uncached_args: a list of argument names to not use as the cache key.
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(``self`` and ``cache_context`` are always ignored.) Cannot be used
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with num_args.
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tree:
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cache_context:
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iterable:
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prune_unread_entries: If True, cache entries that haven't been read recently
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will be evicted from the cache in the background. Set to False to opt-out
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of this behaviour.
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"""
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def __init__(
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self,
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orig: Callable[..., Any],
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max_entries: int = 1000,
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num_args: Optional[int] = None,
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uncached_args: Optional[Collection[str]] = None,
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tree: bool = False,
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cache_context: bool = False,
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iterable: bool = False,
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prune_unread_entries: bool = True,
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name: Optional[str] = None,
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):
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super().__init__(
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orig,
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num_args=num_args,
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uncached_args=uncached_args,
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cache_context=cache_context,
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name=name,
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)
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if tree and self.num_args < 2:
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raise RuntimeError(
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"tree=True is nonsensical for cached functions with a single parameter"
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)
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self.max_entries = max_entries
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self.tree = tree
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self.iterable = iterable
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self.prune_unread_entries = prune_unread_entries
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def __get__(self, obj: Optional[Any], owner: Optional[Type]) -> Callable[..., Any]:
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cache: DeferredCache[CacheKey, Any] = DeferredCache(
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name=self.name,
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max_entries=self.max_entries,
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tree=self.tree,
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iterable=self.iterable,
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prune_unread_entries=self.prune_unread_entries,
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)
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get_cache_key = self.cache_key_builder
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@functools.wraps(self.orig)
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def _wrapped(*args: Any, **kwargs: Any) -> Any:
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# If we're passed a cache_context then we'll want to call its invalidate()
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# whenever we are invalidated
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invalidate_callback = kwargs.pop("on_invalidate", None)
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cache_key = get_cache_key(args, kwargs)
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try:
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ret = cache.get(cache_key, callback=invalidate_callback)
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except KeyError:
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# Add our own `cache_context` to argument list if the wrapped function
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# has asked for one
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if self.add_cache_context:
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kwargs["cache_context"] = _CacheContext.get_instance(
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cache, cache_key
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)
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ret = defer.maybeDeferred(preserve_fn(self.orig), obj, *args, **kwargs)
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ret = cache.set(cache_key, ret, callback=invalidate_callback)
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# We started a new call to `self.orig`, so we must always wait for it to
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# complete. Otherwise we might mark our current logging context as
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# finished while `self.orig` is still using it in the background.
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ret = delay_cancellation(ret)
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return make_deferred_yieldable(ret)
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wrapped = cast(CachedFunction, _wrapped)
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if self.num_args == 1:
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assert not self.tree
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wrapped.invalidate = lambda key: cache.invalidate(key[0])
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wrapped.prefill = lambda key, val: cache.prefill(key[0], val)
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else:
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wrapped.invalidate = cache.invalidate
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wrapped.prefill = cache.prefill
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wrapped.invalidate_all = cache.invalidate_all
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wrapped.cache = cache
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wrapped.num_args = self.num_args
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obj.__dict__[self.name] = wrapped
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return wrapped
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class DeferredCacheListDescriptor(_CacheDescriptorBase):
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"""Wraps an existing cache to support bulk fetching of keys.
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Given an iterable of keys it looks in the cache to find any hits, then passes
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the set of missing keys to the wrapped function.
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Once wrapped, the function returns a Deferred which resolves to a Dict mapping from
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input key to output value.
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"""
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def __init__(
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self,
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orig: Callable[..., Awaitable[Dict]],
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cached_method_name: str,
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list_name: str,
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num_args: Optional[int] = None,
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name: Optional[str] = None,
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):
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"""
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Args:
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orig
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cached_method_name: The name of the cached method.
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list_name: Name of the argument which is the bulk lookup list
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num_args: number of positional arguments (excluding ``self``,
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but including list_name) to use as cache keys. Defaults to all
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named args of the function.
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"""
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super().__init__(orig, num_args=num_args, uncached_args=None, name=name)
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self.list_name = list_name
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self.list_pos = self.arg_names.index(self.list_name)
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self.cached_method_name = cached_method_name
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self.sentinel = object()
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if self.list_name not in self.arg_names:
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raise Exception(
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"Couldn't see arguments %r for %r."
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% (self.list_name, cached_method_name)
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)
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def __get__(
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self, obj: Optional[Any], objtype: Optional[Type] = None
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) -> Callable[..., "defer.Deferred[Dict[Hashable, Any]]"]:
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cached_method = getattr(obj, self.cached_method_name)
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cache: DeferredCache[CacheKey, Any] = cached_method.cache
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num_args = cached_method.num_args
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if num_args != self.num_args:
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raise Exception(
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"Number of args (%s) does not match underlying cache_method_name=%s (%s)."
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% (self.num_args, self.cached_method_name, num_args)
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)
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@functools.wraps(self.orig)
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def wrapped(*args: Any, **kwargs: Any) -> "defer.Deferred[Dict]":
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# If we're passed a cache_context then we'll want to call its
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# invalidate() whenever we are invalidated
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invalidate_callback = kwargs.pop("on_invalidate", None)
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arg_dict = inspect.getcallargs(self.orig, obj, *args, **kwargs)
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keyargs = [arg_dict[arg_nm] for arg_nm in self.arg_names]
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list_args = arg_dict[self.list_name]
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# If the cache takes a single arg then that is used as the key,
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# otherwise a tuple is used.
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if num_args == 1:
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def arg_to_cache_key(arg: Hashable) -> Hashable:
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return arg
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def cache_key_to_arg(key: tuple) -> Hashable:
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return key
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else:
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keylist = list(keyargs)
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def arg_to_cache_key(arg: Hashable) -> Hashable:
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keylist[self.list_pos] = arg
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return tuple(keylist)
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def cache_key_to_arg(key: tuple) -> Hashable:
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return key[self.list_pos]
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cache_keys = [arg_to_cache_key(arg) for arg in list_args]
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immediate_results, pending_deferred, missing = cache.get_bulk(
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cache_keys, callback=invalidate_callback
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)
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results = {cache_key_to_arg(key): v for key, v in immediate_results.items()}
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cached_defers: List["defer.Deferred[Any]"] = []
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if pending_deferred:
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def update_results(r: Dict) -> None:
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for k, v in r.items():
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results[cache_key_to_arg(k)] = v
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pending_deferred.addCallback(update_results)
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cached_defers.append(pending_deferred)
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if missing:
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cache_entry = cache.start_bulk_input(missing, invalidate_callback)
|
|
|
|
def complete_all(res: Dict[Hashable, Any]) -> None:
|
|
missing_results = {}
|
|
for key in missing:
|
|
arg = cache_key_to_arg(key)
|
|
val = res.get(arg, None)
|
|
|
|
results[arg] = val
|
|
missing_results[key] = val
|
|
|
|
cache_entry.complete_bulk(cache, missing_results)
|
|
|
|
def errback_all(f: Failure) -> None:
|
|
cache_entry.error_bulk(cache, missing, f)
|
|
|
|
args_to_call = dict(arg_dict)
|
|
args_to_call[self.list_name] = {
|
|
cache_key_to_arg(key) for key in missing
|
|
}
|
|
|
|
# dispatch the call, and attach the two handlers
|
|
missing_d = defer.maybeDeferred(
|
|
preserve_fn(self.orig), **args_to_call
|
|
).addCallbacks(complete_all, errback_all)
|
|
cached_defers.append(missing_d)
|
|
|
|
if cached_defers:
|
|
d = defer.gatherResults(cached_defers, consumeErrors=True).addCallbacks(
|
|
lambda _: results, unwrapFirstError
|
|
)
|
|
if missing:
|
|
# We started a new call to `self.orig`, so we must always wait for it to
|
|
# complete. Otherwise we might mark our current logging context as
|
|
# finished while `self.orig` is still using it in the background.
|
|
d = delay_cancellation(d)
|
|
return make_deferred_yieldable(d)
|
|
else:
|
|
return defer.succeed(results)
|
|
|
|
obj.__dict__[self.name] = wrapped
|
|
|
|
return wrapped
|
|
|
|
|
|
class _CacheContext:
|
|
"""Holds cache information from the cached function higher in the calling order.
|
|
|
|
Can be used to invalidate the higher level cache entry if something changes
|
|
on a lower level.
|
|
"""
|
|
|
|
Cache = Union[DeferredCache, LruCache]
|
|
|
|
_cache_context_objects: """WeakValueDictionary[
|
|
Tuple["_CacheContext.Cache", CacheKey], "_CacheContext"
|
|
]""" = WeakValueDictionary()
|
|
|
|
def __init__(self, cache: "_CacheContext.Cache", cache_key: CacheKey) -> None:
|
|
self._cache = cache
|
|
self._cache_key = cache_key
|
|
|
|
def invalidate(self) -> None:
|
|
"""Invalidates the cache entry referred to by the context."""
|
|
self._cache.invalidate(self._cache_key)
|
|
|
|
@classmethod
|
|
def get_instance(
|
|
cls, cache: "_CacheContext.Cache", cache_key: CacheKey
|
|
) -> "_CacheContext":
|
|
"""Returns an instance constructed with the given arguments.
|
|
|
|
A new instance is only created if none already exists.
|
|
"""
|
|
|
|
# We make sure there are no identical _CacheContext instances. This is
|
|
# important in particular to dedupe when we add callbacks to lru cache
|
|
# nodes, otherwise the number of callbacks would grow.
|
|
return cls._cache_context_objects.setdefault(
|
|
(cache, cache_key), cls(cache, cache_key)
|
|
)
|
|
|
|
|
|
def cached(
|
|
*,
|
|
max_entries: int = 1000,
|
|
num_args: Optional[int] = None,
|
|
uncached_args: Optional[Collection[str]] = None,
|
|
tree: bool = False,
|
|
cache_context: bool = False,
|
|
iterable: bool = False,
|
|
prune_unread_entries: bool = True,
|
|
name: Optional[str] = None,
|
|
) -> Callable[[F], CachedFunction[F]]:
|
|
func = lambda orig: DeferredCacheDescriptor(
|
|
orig,
|
|
max_entries=max_entries,
|
|
num_args=num_args,
|
|
uncached_args=uncached_args,
|
|
tree=tree,
|
|
cache_context=cache_context,
|
|
iterable=iterable,
|
|
prune_unread_entries=prune_unread_entries,
|
|
name=name,
|
|
)
|
|
|
|
return cast(Callable[[F], CachedFunction[F]], func)
|
|
|
|
|
|
def cachedList(
|
|
*,
|
|
cached_method_name: str,
|
|
list_name: str,
|
|
num_args: Optional[int] = None,
|
|
name: Optional[str] = None,
|
|
) -> Callable[[F], CachedFunction[F]]:
|
|
"""Creates a descriptor that wraps a function in a `DeferredCacheListDescriptor`.
|
|
|
|
Used to do batch lookups for an already created cache. One of the arguments
|
|
is specified as a list that is iterated through to lookup keys in the
|
|
original cache. A new tuple consisting of the (deduplicated) keys that weren't in
|
|
the cache gets passed to the original function, which is expected to results
|
|
in a map of key to value for each passed value. THe new results are stored in the
|
|
original cache. Note that any missing values are cached as None.
|
|
|
|
Args:
|
|
cached_method_name: The name of the single-item lookup method.
|
|
This is only used to find the cache to use.
|
|
list_name: The name of the argument that is the iterable to use to
|
|
do batch lookups in the cache.
|
|
num_args: Number of arguments to use as the key in the cache
|
|
(including list_name). Defaults to all named parameters.
|
|
|
|
Example:
|
|
|
|
class Example:
|
|
@cached()
|
|
def do_something(self, first_arg, second_arg):
|
|
...
|
|
|
|
@cachedList(cached_method_name="do_something", list_name="second_args")
|
|
def batch_do_something(self, first_arg, second_args):
|
|
...
|
|
"""
|
|
func = lambda orig: DeferredCacheListDescriptor(
|
|
orig,
|
|
cached_method_name=cached_method_name,
|
|
list_name=list_name,
|
|
num_args=num_args,
|
|
name=name,
|
|
)
|
|
|
|
return cast(Callable[[F], CachedFunction[F]], func)
|
|
|
|
|
|
def _get_cache_key_builder(
|
|
param_names: Sequence[str],
|
|
include_params: Sequence[bool],
|
|
param_defaults: Mapping[str, Any],
|
|
) -> Callable[[Sequence[Any], Mapping[str, Any]], CacheKey]:
|
|
"""Construct a function which will build cache keys suitable for a cached function
|
|
|
|
Args:
|
|
param_names: list of formal parameter names for the cached function
|
|
include_params: list of bools of whether to include the parameter name in the cache key
|
|
param_defaults: a mapping from parameter name to default value for that param
|
|
|
|
Returns:
|
|
A function which will take an (args, kwargs) pair and return a cache key
|
|
"""
|
|
|
|
# By default our cache key is a tuple, but if there is only one item
|
|
# then don't bother wrapping in a tuple. This is to save memory.
|
|
|
|
if len(param_names) == 1:
|
|
nm = param_names[0]
|
|
assert include_params[0] is True
|
|
|
|
def get_cache_key(args: Sequence[Any], kwargs: Mapping[str, Any]) -> CacheKey:
|
|
if nm in kwargs:
|
|
return kwargs[nm]
|
|
elif len(args):
|
|
return args[0]
|
|
else:
|
|
return param_defaults[nm]
|
|
|
|
else:
|
|
|
|
def get_cache_key(args: Sequence[Any], kwargs: Mapping[str, Any]) -> CacheKey:
|
|
return tuple(
|
|
_get_cache_key_gen(
|
|
param_names, include_params, param_defaults, args, kwargs
|
|
)
|
|
)
|
|
|
|
return get_cache_key
|
|
|
|
|
|
def _get_cache_key_gen(
|
|
param_names: Iterable[str],
|
|
include_params: Iterable[bool],
|
|
param_defaults: Mapping[str, Any],
|
|
args: Sequence[Any],
|
|
kwargs: Mapping[str, Any],
|
|
) -> Iterable[Any]:
|
|
"""Given some args/kwargs return a generator that resolves into
|
|
the cache_key.
|
|
|
|
This is essentially the same operation as `inspect.getcallargs`, but optimised so
|
|
that we don't need to inspect the target function for each call.
|
|
"""
|
|
# We loop through each arg name, looking up if its in the `kwargs`,
|
|
# otherwise using the next argument in `args`. If there are no more
|
|
# args then we try looking the arg name up in the defaults.
|
|
pos = 0
|
|
for nm, inc in zip(param_names, include_params):
|
|
if nm in kwargs:
|
|
if inc:
|
|
yield kwargs[nm]
|
|
elif pos < len(args):
|
|
if inc:
|
|
yield args[pos]
|
|
pos += 1
|
|
else:
|
|
if inc:
|
|
yield param_defaults[nm]
|