""" A context object for caching a function's return value each time it is called with the same input arguments. """ # Author: Gael Varoquaux # Copyright (c) 2009 Gael Varoquaux # License: BSD Style, 3 clauses. from __future__ import with_statement import os import time import pydoc import re import functools import traceback import warnings import inspect import sys import weakref # Local imports from . import hashing from .func_inspect import get_func_code, get_func_name, filter_args from .func_inspect import format_call from .func_inspect import format_signature from ._memory_helpers import open_py_source from .logger import Logger, format_time, pformat from ._compat import _basestring, PY3_OR_LATER from ._store_backends import StoreBackendBase, FileSystemStoreBackend if sys.version_info[:2] >= (3, 4): import pathlib FIRST_LINE_TEXT = "# first line:" # TODO: The following object should have a data store object as a sub # object, and the interface to persist and query should be separated in # the data store. # # This would enable creating 'Memory' objects with a different logic for # pickling that would simply span a MemorizedFunc with the same # store (or do we want to copy it to avoid cross-talks?), for instance to # implement HDF5 pickling. # TODO: Same remark for the logger, and probably use the Python logging # mechanism. def extract_first_line(func_code): """ Extract the first line information from the function code text if available. """ if func_code.startswith(FIRST_LINE_TEXT): func_code = func_code.split('\n') first_line = int(func_code[0][len(FIRST_LINE_TEXT):]) func_code = '\n'.join(func_code[1:]) else: first_line = -1 return func_code, first_line class JobLibCollisionWarning(UserWarning): """ Warn that there might be a collision between names of functions. """ _STORE_BACKENDS = {'local': FileSystemStoreBackend} def register_store_backend(backend_name, backend): """Extend available store backends. The Memory, MemorizeResult and MemorizeFunc objects are designed to be agnostic to the type of store used behind. By default, the local file system is used but this function gives the possibility to extend joblib's memory pattern with other types of storage such as cloud storage (S3, GCS, OpenStack, HadoopFS, etc) or blob DBs. Parameters ---------- backend_name: str The name identifying the store backend being registered. For example, 'local' is used with FileSystemStoreBackend. backend: StoreBackendBase subclass The name of a class that implements the StoreBackendBase interface. """ if not isinstance(backend_name, _basestring): raise ValueError("Store backend name should be a string, " "'{0}' given.".format(backend_name)) if backend is None or not issubclass(backend, StoreBackendBase): raise ValueError("Store backend should inherit " "StoreBackendBase, " "'{0}' given.".format(backend)) _STORE_BACKENDS[backend_name] = backend def _store_backend_factory(backend, location, verbose=0, backend_options=None): """Return the correct store object for the given location.""" if backend_options is None: backend_options = {} if (sys.version_info[:2] >= (3, 4) and isinstance(location, pathlib.Path)): location = str(location) if isinstance(location, StoreBackendBase): return location elif isinstance(location, _basestring): obj = None location = os.path.expanduser(location) # The location is not a local file system, we look in the # registered backends if there's one matching the given backend # name. for backend_key, backend_obj in _STORE_BACKENDS.items(): if backend == backend_key: obj = backend_obj() # By default, we assume the FileSystemStoreBackend can be used if no # matching backend could be found. if obj is None: raise TypeError('Unknown location {0} or backend {1}'.format( location, backend)) # The store backend is configured with the extra named parameters, # some of them are specific to the underlying store backend. obj.configure(location, verbose=verbose, backend_options=backend_options) return obj elif location is not None: warnings.warn( "Instanciating a backend using a {} as a location is not " "supported by joblib. Returning None instead.".format( location.__class__.__name__), UserWarning) return None def _get_func_fullname(func): """Compute the part of part associated with a function.""" modules, funcname = get_func_name(func) modules.append(funcname) return os.path.join(*modules) def _build_func_identifier(func): """Build a roughly unique identifier for the cached function.""" parts = [] if isinstance(func, _basestring): parts.append(func) else: parts.append(_get_func_fullname(func)) # We reuse historical fs-like way of building a function identifier return os.path.join(*parts) def _format_load_msg(func_id, args_id, timestamp=None, metadata=None): """ Helper function to format the message when loading the results. """ signature = "" try: if metadata is not None: args = ", ".join(['%s=%s' % (name, value) for name, value in metadata['input_args'].items()]) signature = "%s(%s)" % (os.path.basename(func_id), args) else: signature = os.path.basename(func_id) except KeyError: pass if timestamp is not None: ts_string = "{0: <16}".format(format_time(time.time() - timestamp)) else: ts_string = "" return '[Memory]{0}: Loading {1}'.format(ts_string, str(signature)) # An in-memory store to avoid looking at the disk-based function # source code to check if a function definition has changed _FUNCTION_HASHES = weakref.WeakKeyDictionary() ############################################################################### # class `MemorizedResult` ############################################################################### class MemorizedResult(Logger): """Object representing a cached value. Attributes ---------- location: str The location of joblib cache. Depends on the store backend used. func: function or str function whose output is cached. The string case is intended only for instanciation based on the output of repr() on another instance. (namely eval(repr(memorized_instance)) works). argument_hash: str hash of the function arguments. backend: str Type of store backend for reading/writing cache files. Default is 'local'. mmap_mode: {None, 'r+', 'r', 'w+', 'c'} The memmapping mode used when loading from cache numpy arrays. See numpy.load for the meaning of the different values. verbose: int verbosity level (0 means no message). timestamp, metadata: string for internal use only. """ def __init__(self, location, func, args_id, backend='local', mmap_mode=None, verbose=0, timestamp=None, metadata=None): Logger.__init__(self) self.func_id = _build_func_identifier(func) if isinstance(func, _basestring): self.func = func else: self.func = self.func_id self.args_id = args_id self.store_backend = _store_backend_factory(backend, location, verbose=verbose) self.mmap_mode = mmap_mode if metadata is not None: self.metadata = metadata else: self.metadata = self.store_backend.get_metadata( [self.func_id, self.args_id]) self.duration = self.metadata.get('duration', None) self.verbose = verbose self.timestamp = timestamp @property def argument_hash(self): warnings.warn( "The 'argument_hash' attribute has been deprecated in version " "0.12 and will be removed in version 0.14.\n" "Use `args_id` attribute instead.", DeprecationWarning, stacklevel=2) return self.args_id def get(self): """Read value from cache and return it.""" if self.verbose: msg = _format_load_msg(self.func_id, self.args_id, timestamp=self.timestamp, metadata=self.metadata) else: msg = None try: return self.store_backend.load_item( [self.func_id, self.args_id], msg=msg, verbose=self.verbose) except (ValueError, KeyError) as exc: # KeyError is expected under Python 2.7, ValueError under Python 3 new_exc = KeyError( "Error while trying to load a MemorizedResult's value. " "It seems that this folder is corrupted : {}".format( os.path.join( self.store_backend.location, self.func_id, self.args_id) )) new_exc.__cause__ = exc raise new_exc def clear(self): """Clear value from cache""" self.store_backend.clear_item([self.func_id, self.args_id]) def __repr__(self): return ('{class_name}(location="{location}", func="{func}", ' 'args_id="{args_id}")' .format(class_name=self.__class__.__name__, location=self.store_backend.location, func=self.func, args_id=self.args_id )) def __getstate__(self): state = self.__dict__.copy() state['timestamp'] = None return state class NotMemorizedResult(object): """Class representing an arbitrary value. This class is a replacement for MemorizedResult when there is no cache. """ __slots__ = ('value', 'valid') def __init__(self, value): self.value = value self.valid = True def get(self): if self.valid: return self.value else: raise KeyError("No value stored.") def clear(self): self.valid = False self.value = None def __repr__(self): if self.valid: return ('{class_name}({value})' .format(class_name=self.__class__.__name__, value=pformat(self.value))) else: return self.__class__.__name__ + ' with no value' # __getstate__ and __setstate__ are required because of __slots__ def __getstate__(self): return {"valid": self.valid, "value": self.value} def __setstate__(self, state): self.valid = state["valid"] self.value = state["value"] ############################################################################### # class `NotMemorizedFunc` ############################################################################### class NotMemorizedFunc(object): """No-op object decorating a function. This class replaces MemorizedFunc when there is no cache. It provides an identical API but does not write anything on disk. Attributes ---------- func: callable Original undecorated function. """ # Should be a light as possible (for speed) def __init__(self, func): self.func = func def __call__(self, *args, **kwargs): return self.func(*args, **kwargs) def call_and_shelve(self, *args, **kwargs): return NotMemorizedResult(self.func(*args, **kwargs)) def __repr__(self): return '{0}(func={1})'.format(self.__class__.__name__, self.func) def clear(self, warn=True): # Argument "warn" is for compatibility with MemorizedFunc.clear pass ############################################################################### # class `MemorizedFunc` ############################################################################### class MemorizedFunc(Logger): """Callable object decorating a function for caching its return value each time it is called. Methods are provided to inspect the cache or clean it. Attributes ---------- func: callable The original, undecorated, function. location: string The location of joblib cache. Depends on the store backend used. backend: str Type of store backend for reading/writing cache files. Default is 'local', in which case the location is the path to a disk storage. ignore: list or None List of variable names to ignore when choosing whether to recompute. mmap_mode: {None, 'r+', 'r', 'w+', 'c'} The memmapping mode used when loading from cache numpy arrays. See numpy.load for the meaning of the different values. compress: boolean, or integer Whether to zip the stored data on disk. If an integer is given, it should be between 1 and 9, and sets the amount of compression. Note that compressed arrays cannot be read by memmapping. verbose: int, optional The verbosity flag, controls messages that are issued as the function is evaluated. """ # ------------------------------------------------------------------------ # Public interface # ------------------------------------------------------------------------ def __init__(self, func, location, backend='local', ignore=None, mmap_mode=None, compress=False, verbose=1, timestamp=None): Logger.__init__(self) self.mmap_mode = mmap_mode self.compress = compress self.func = func if ignore is None: ignore = [] self.ignore = ignore self._verbose = verbose # retrieve store object from backend type and location. self.store_backend = _store_backend_factory(backend, location, verbose=verbose, backend_options=dict( compress=compress, mmap_mode=mmap_mode), ) if self.store_backend is not None: # Create func directory on demand. self.store_backend.\ store_cached_func_code([_build_func_identifier(self.func)]) if timestamp is None: timestamp = time.time() self.timestamp = timestamp try: functools.update_wrapper(self, func) except: " Objects like ufunc don't like that " if inspect.isfunction(func): doc = pydoc.TextDoc().document(func) # Remove blank line doc = doc.replace('\n', '\n\n', 1) # Strip backspace-overprints for compatibility with autodoc doc = re.sub('\x08.', '', doc) else: # Pydoc does a poor job on other objects doc = func.__doc__ self.__doc__ = 'Memoized version of %s' % doc def _cached_call(self, args, kwargs, shelving=False): """Call wrapped function and cache result, or read cache if available. This function returns the wrapped function output and some metadata. Arguments: ---------- args, kwargs: list and dict input arguments for wrapped function shelving: bool True when called via the call_and_shelve function. Returns ------- output: value or tuple or None Output of the wrapped function. If shelving is True and the call has been already cached, output is None. argument_hash: string Hash of function arguments. metadata: dict Some metadata about wrapped function call (see _persist_input()). """ func_id, args_id = self._get_output_identifiers(*args, **kwargs) metadata = None msg = None # Wether or not the memorized function must be called must_call = False # FIXME: The statements below should be try/excepted # Compare the function code with the previous to see if the # function code has changed if not (self._check_previous_func_code(stacklevel=4) and self.store_backend.contains_item([func_id, args_id])): if self._verbose > 10: _, name = get_func_name(self.func) self.warn('Computing func {0}, argument hash {1} ' 'in location {2}' .format(name, args_id, self.store_backend. get_cached_func_info([func_id])['location'])) must_call = True else: try: t0 = time.time() if self._verbose: msg = _format_load_msg(func_id, args_id, timestamp=self.timestamp, metadata=metadata) if not shelving: # When shelving, we do not need to load the output out = self.store_backend.load_item( [func_id, args_id], msg=msg, verbose=self._verbose) else: out = None if self._verbose > 4: t = time.time() - t0 _, name = get_func_name(self.func) msg = '%s cache loaded - %s' % (name, format_time(t)) print(max(0, (80 - len(msg))) * '_' + msg) except Exception: # XXX: Should use an exception logger _, signature = format_signature(self.func, *args, **kwargs) self.warn('Exception while loading results for ' '{}\n {}'.format(signature, traceback.format_exc())) must_call = True if must_call: out, metadata = self.call(*args, **kwargs) if self.mmap_mode is not None: # Memmap the output at the first call to be consistent with # later calls if self._verbose: msg = _format_load_msg(func_id, args_id, timestamp=self.timestamp, metadata=metadata) out = self.store_backend.load_item([func_id, args_id], msg=msg, verbose=self._verbose) return (out, args_id, metadata) def call_and_shelve(self, *args, **kwargs): """Call wrapped function, cache result and return a reference. This method returns a reference to the cached result instead of the result itself. The reference object is small and pickeable, allowing to send or store it easily. Call .get() on reference object to get result. Returns ------- cached_result: MemorizedResult or NotMemorizedResult reference to the value returned by the wrapped function. The class "NotMemorizedResult" is used when there is no cache activated (e.g. location=None in Memory). """ _, args_id, metadata = self._cached_call(args, kwargs, shelving=True) return MemorizedResult(self.store_backend, self.func, args_id, metadata=metadata, verbose=self._verbose - 1, timestamp=self.timestamp) def __call__(self, *args, **kwargs): return self._cached_call(args, kwargs)[0] def __getstate__(self): """ We don't store the timestamp when pickling, to avoid the hash depending from it. """ state = self.__dict__.copy() state['timestamp'] = None return state # ------------------------------------------------------------------------ # Private interface # ------------------------------------------------------------------------ def _get_argument_hash(self, *args, **kwargs): return hashing.hash(filter_args(self.func, self.ignore, args, kwargs), coerce_mmap=(self.mmap_mode is not None)) def _get_output_identifiers(self, *args, **kwargs): """Return the func identifier and input parameter hash of a result.""" func_id = _build_func_identifier(self.func) argument_hash = self._get_argument_hash(*args, **kwargs) return func_id, argument_hash def _hash_func(self): """Hash a function to key the online cache""" func_code_h = hash(getattr(self.func, '__code__', None)) return id(self.func), hash(self.func), func_code_h def _write_func_code(self, func_code, first_line): """ Write the function code and the filename to a file. """ # We store the first line because the filename and the function # name is not always enough to identify a function: people # sometimes have several functions named the same way in a # file. This is bad practice, but joblib should be robust to bad # practice. func_id = _build_func_identifier(self.func) func_code = u'%s %i\n%s' % (FIRST_LINE_TEXT, first_line, func_code) self.store_backend.store_cached_func_code([func_id], func_code) # Also store in the in-memory store of function hashes is_named_callable = False if PY3_OR_LATER: is_named_callable = (hasattr(self.func, '__name__') and self.func.__name__ != '') else: is_named_callable = (hasattr(self.func, 'func_name') and self.func.func_name != '') if is_named_callable: # Don't do this for lambda functions or strange callable # objects, as it ends up being too fragile func_hash = self._hash_func() try: _FUNCTION_HASHES[self.func] = func_hash except TypeError: # Some callable are not hashable pass def _check_previous_func_code(self, stacklevel=2): """ stacklevel is the depth a which this function is called, to issue useful warnings to the user. """ # First check if our function is in the in-memory store. # Using the in-memory store not only makes things faster, but it # also renders us robust to variations of the files when the # in-memory version of the code does not vary try: if self.func in _FUNCTION_HASHES: # We use as an identifier the id of the function and its # hash. This is more likely to falsely change than have hash # collisions, thus we are on the safe side. func_hash = self._hash_func() if func_hash == _FUNCTION_HASHES[self.func]: return True except TypeError: # Some callables are not hashable pass # Here, we go through some effort to be robust to dynamically # changing code and collision. We cannot inspect.getsource # because it is not reliable when using IPython's magic "%run". func_code, source_file, first_line = get_func_code(self.func) func_id = _build_func_identifier(self.func) try: old_func_code, old_first_line =\ extract_first_line( self.store_backend.get_cached_func_code([func_id])) except (IOError, OSError): # some backend can also raise OSError self._write_func_code(func_code, first_line) return False if old_func_code == func_code: return True # We have differing code, is this because we are referring to # different functions, or because the function we are referring to has # changed? _, func_name = get_func_name(self.func, resolv_alias=False, win_characters=False) if old_first_line == first_line == -1 or func_name == '': if not first_line == -1: func_description = ("{0} ({1}:{2})" .format(func_name, source_file, first_line)) else: func_description = func_name warnings.warn(JobLibCollisionWarning( "Cannot detect name collisions for function '{0}'" .format(func_description)), stacklevel=stacklevel) # Fetch the code at the old location and compare it. If it is the # same than the code store, we have a collision: the code in the # file has not changed, but the name we have is pointing to a new # code block. if not old_first_line == first_line and source_file is not None: possible_collision = False if os.path.exists(source_file): _, func_name = get_func_name(self.func, resolv_alias=False) num_lines = len(func_code.split('\n')) with open_py_source(source_file) as f: on_disk_func_code = f.readlines()[ old_first_line - 1:old_first_line - 1 + num_lines - 1] on_disk_func_code = ''.join(on_disk_func_code) possible_collision = (on_disk_func_code.rstrip() == old_func_code.rstrip()) else: possible_collision = source_file.startswith(' 10: _, func_name = get_func_name(self.func, resolv_alias=False) self.warn("Function {0} (identified by {1}) has changed" ".".format(func_name, func_id)) self.clear(warn=True) return False def clear(self, warn=True): """Empty the function's cache.""" func_id = _build_func_identifier(self.func) if self._verbose > 0 and warn: self.warn("Clearing function cache identified by %s" % func_id) self.store_backend.clear_path([func_id, ]) func_code, _, first_line = get_func_code(self.func) self._write_func_code(func_code, first_line) def call(self, *args, **kwargs): """ Force the execution of the function with the given arguments and persist the output values. """ start_time = time.time() func_id, args_id = self._get_output_identifiers(*args, **kwargs) if self._verbose > 0: print(format_call(self.func, args, kwargs)) output = self.func(*args, **kwargs) self.store_backend.dump_item( [func_id, args_id], output, verbose=self._verbose) duration = time.time() - start_time metadata = self._persist_input(duration, args, kwargs) if self._verbose > 0: _, name = get_func_name(self.func) msg = '%s - %s' % (name, format_time(duration)) print(max(0, (80 - len(msg))) * '_' + msg) return output, metadata def _persist_input(self, duration, args, kwargs, this_duration_limit=0.5): """ Save a small summary of the call using json format in the output directory. output_dir: string directory where to write metadata. duration: float time taken by hashing input arguments, calling the wrapped function and persisting its output. args, kwargs: list and dict input arguments for wrapped function this_duration_limit: float Max execution time for this function before issuing a warning. """ start_time = time.time() argument_dict = filter_args(self.func, self.ignore, args, kwargs) input_repr = dict((k, repr(v)) for k, v in argument_dict.items()) # This can fail due to race-conditions with multiple # concurrent joblibs removing the file or the directory metadata = {"duration": duration, "input_args": input_repr} func_id, args_id = self._get_output_identifiers(*args, **kwargs) self.store_backend.store_metadata([func_id, args_id], metadata) this_duration = time.time() - start_time if this_duration > this_duration_limit: # This persistence should be fast. It will not be if repr() takes # time and its output is large, because json.dump will have to # write a large file. This should not be an issue with numpy arrays # for which repr() always output a short representation, but can # be with complex dictionaries. Fixing the problem should be a # matter of replacing repr() above by something smarter. warnings.warn("Persisting input arguments took %.2fs to run.\n" "If this happens often in your code, it can cause " "performance problems \n" "(results will be correct in all cases). \n" "The reason for this is probably some large input " "arguments for a wrapped\n" " function (e.g. large strings).\n" "THIS IS A JOBLIB ISSUE. If you can, kindly provide " "the joblib's team with an\n" " example so that they can fix the problem." % this_duration, stacklevel=5) return metadata # XXX: Need a method to check if results are available. # ------------------------------------------------------------------------ # Private `object` interface # ------------------------------------------------------------------------ def __repr__(self): return '{class_name}(func={func}, location={location})'.format( class_name=self.__class__.__name__, func=self.func, location=self.store_backend.location,) ############################################################################### # class `Memory` ############################################################################### class Memory(Logger): """ A context object for caching a function's return value each time it is called with the same input arguments. All values are cached on the filesystem, in a deep directory structure. Read more in the :ref:`User Guide `. Parameters ---------- location: str or None The path of the base directory to use as a data store or None. If None is given, no caching is done and the Memory object is completely transparent. This option replaces cachedir since version 0.12. backend: str, optional Type of store backend for reading/writing cache files. Default: 'local'. The 'local' backend is using regular filesystem operations to manipulate data (open, mv, etc) in the backend. cachedir: str or None, optional .. deprecated: 0.12 'cachedir' has been deprecated in 0.12 and will be removed in 0.14. Use the 'location' parameter instead. mmap_mode: {None, 'r+', 'r', 'w+', 'c'}, optional The memmapping mode used when loading from cache numpy arrays. See numpy.load for the meaning of the arguments. compress: boolean, or integer, optional Whether to zip the stored data on disk. If an integer is given, it should be between 1 and 9, and sets the amount of compression. Note that compressed arrays cannot be read by memmapping. verbose: int, optional Verbosity flag, controls the debug messages that are issued as functions are evaluated. bytes_limit: int, optional Limit in bytes of the size of the cache. backend_options: dict, optional Contains a dictionnary of named parameters used to configure the store backend. """ # ------------------------------------------------------------------------ # Public interface # ------------------------------------------------------------------------ def __init__(self, location=None, backend='local', cachedir=None, mmap_mode=None, compress=False, verbose=1, bytes_limit=None, backend_options=None): # XXX: Bad explanation of the None value of cachedir Logger.__init__(self) self._verbose = verbose self.mmap_mode = mmap_mode self.timestamp = time.time() self.bytes_limit = bytes_limit self.backend = backend self.compress = compress if backend_options is None: backend_options = {} self.backend_options = backend_options if compress and mmap_mode is not None: warnings.warn('Compressed results cannot be memmapped', stacklevel=2) if cachedir is not None: if location is not None: raise ValueError( 'You set both "location={0!r} and "cachedir={1!r}". ' "'cachedir' has been deprecated in version " "0.12 and will be removed in version 0.14.\n" 'Please only set "location={0!r}"'.format( location, cachedir)) warnings.warn( "The 'cachedir' parameter has been deprecated in version " "0.12 and will be removed in version 0.14.\n" 'You provided "cachedir={0!r}", ' 'use "location={0!r}" instead.'.format(cachedir), DeprecationWarning, stacklevel=2) location = cachedir self.location = location if isinstance(location, _basestring): location = os.path.join(location, 'joblib') self.store_backend = _store_backend_factory( backend, location, verbose=self._verbose, backend_options=dict(compress=compress, mmap_mode=mmap_mode, **backend_options)) @property def cachedir(self): warnings.warn( "The 'cachedir' attribute has been deprecated in version 0.12 " "and will be removed in version 0.14.\n" "Use os.path.join(memory.location, 'joblib') attribute instead.", DeprecationWarning, stacklevel=2) if self.location is None: return None return os.path.join(self.location, 'joblib') def cache(self, func=None, ignore=None, verbose=None, mmap_mode=False): """ Decorates the given function func to only compute its return value for input arguments not cached on disk. Parameters ---------- func: callable, optional The function to be decorated ignore: list of strings A list of arguments name to ignore in the hashing verbose: integer, optional The verbosity mode of the function. By default that of the memory object is used. mmap_mode: {None, 'r+', 'r', 'w+', 'c'}, optional The memmapping mode used when loading from cache numpy arrays. See numpy.load for the meaning of the arguments. By default that of the memory object is used. Returns ------- decorated_func: MemorizedFunc object The returned object is a MemorizedFunc object, that is callable (behaves like a function), but offers extra methods for cache lookup and management. See the documentation for :class:`joblib.memory.MemorizedFunc`. """ if func is None: # Partial application, to be able to specify extra keyword # arguments in decorators return functools.partial(self.cache, ignore=ignore, verbose=verbose, mmap_mode=mmap_mode) if self.store_backend is None: return NotMemorizedFunc(func) if verbose is None: verbose = self._verbose if mmap_mode is False: mmap_mode = self.mmap_mode if isinstance(func, MemorizedFunc): func = func.func return MemorizedFunc(func, location=self.store_backend, backend=self.backend, ignore=ignore, mmap_mode=mmap_mode, compress=self.compress, verbose=verbose, timestamp=self.timestamp) def clear(self, warn=True): """ Erase the complete cache directory. """ if warn: self.warn('Flushing completely the cache') if self.store_backend is not None: self.store_backend.clear() def reduce_size(self): """Remove cache elements to make cache size fit in ``bytes_limit``.""" if self.bytes_limit is not None and self.store_backend is not None: self.store_backend.reduce_store_size(self.bytes_limit) def eval(self, func, *args, **kwargs): """ Eval function func with arguments `*args` and `**kwargs`, in the context of the memory. This method works similarly to the builtin `apply`, except that the function is called only if the cache is not up to date. """ if self.store_backend is None: return func(*args, **kwargs) return self.cache(func)(*args, **kwargs) # ------------------------------------------------------------------------ # Private `object` interface # ------------------------------------------------------------------------ def __repr__(self): return '{class_name}(location={location})'.format( class_name=self.__class__.__name__, location=(None if self.store_backend is None else self.store_backend.location)) def __getstate__(self): """ We don't store the timestamp when pickling, to avoid the hash depending from it. """ state = self.__dict__.copy() state['timestamp'] = None return state