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243 lines
9.2 KiB
Python
243 lines
9.2 KiB
Python
# MIT License
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#
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# Copyright The SCons Foundation
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#
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# Permission is hereby granted, free of charge, to any person obtaining
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# a copy of this software and associated documentation files (the
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# "Software"), to deal in the Software without restriction, including
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# without limitation the rights to use, copy, modify, merge, publish,
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# distribute, sublicense, and/or sell copies of the Software, and to
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# permit persons to whom the Software is furnished to do so, subject to
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# the following conditions:
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#
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# The above copyright notice and this permission notice shall be included
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# in all copies or substantial portions of the Software.
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#
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# THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY
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# KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE
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# WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND
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# NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE
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# LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION
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# OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION
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# WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.
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"""Decorator-based memoizer to count caching stats.
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A decorator-based implementation to count hits and misses of the computed
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values that various methods cache in memory.
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Use of this modules assumes that wrapped methods be coded to cache their
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values in a consistent way. In particular, it requires that the class uses a
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dictionary named "_memo" to store the cached values.
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Here is an example of wrapping a method that returns a computed value,
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with no input parameters::
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@SCons.Memoize.CountMethodCall
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def foo(self):
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try: # Memoization
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return self._memo['foo'] # Memoization
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except KeyError: # Memoization
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pass # Memoization
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result = self.compute_foo_value()
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self._memo['foo'] = result # Memoization
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return result
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Here is an example of wrapping a method that will return different values
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based on one or more input arguments::
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def _bar_key(self, argument): # Memoization
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return argument # Memoization
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@SCons.Memoize.CountDictCall(_bar_key)
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def bar(self, argument):
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memo_key = argument # Memoization
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try: # Memoization
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memo_dict = self._memo['bar'] # Memoization
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except KeyError: # Memoization
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memo_dict = {} # Memoization
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self._memo['dict'] = memo_dict # Memoization
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else: # Memoization
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try: # Memoization
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return memo_dict[memo_key] # Memoization
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except KeyError: # Memoization
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pass # Memoization
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result = self.compute_bar_value(argument)
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memo_dict[memo_key] = result # Memoization
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return result
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Deciding what to cache is tricky, because different configurations
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can have radically different performance tradeoffs, and because the
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tradeoffs involved are often so non-obvious. Consequently, deciding
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whether or not to cache a given method will likely be more of an art than
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a science, but should still be based on available data from this module.
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Here are some VERY GENERAL guidelines about deciding whether or not to
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cache return values from a method that's being called a lot:
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-- The first question to ask is, "Can we change the calling code
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so this method isn't called so often?" Sometimes this can be
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done by changing the algorithm. Sometimes the *caller* should
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be memoized, not the method you're looking at.
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-- The memoized function should be timed with multiple configurations
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to make sure it doesn't inadvertently slow down some other
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configuration.
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-- When memoizing values based on a dictionary key composed of
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input arguments, you don't need to use all of the arguments
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if some of them don't affect the return values.
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"""
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# A flag controlling whether or not we actually use memoization.
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use_memoizer = None
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# Global list of counter objects
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CounterList = {}
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class Counter:
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"""
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Base class for counting memoization hits and misses.
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We expect that the initialization in a matching decorator will
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fill in the correct class name and method name that represents
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the name of the function being counted.
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"""
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def __init__(self, cls_name, method_name):
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"""
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"""
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self.cls_name = cls_name
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self.method_name = method_name
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self.hit = 0
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self.miss = 0
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def key(self):
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return self.cls_name+'.'+self.method_name
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def display(self):
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print(" {:7d} hits {:7d} misses {}()".format(self.hit, self.miss, self.key()))
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def __eq__(self, other):
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try:
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return self.key() == other.key()
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except AttributeError:
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return True
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class CountValue(Counter):
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"""
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A counter class for simple, atomic memoized values.
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A CountValue object should be instantiated in a decorator for each of
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the class's methods that memoizes its return value by simply storing
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the return value in its _memo dictionary.
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"""
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def count(self, *args, **kw):
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""" Counts whether the memoized value has already been
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set (a hit) or not (a miss).
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"""
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obj = args[0]
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if self.method_name in obj._memo:
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self.hit = self.hit + 1
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else:
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self.miss = self.miss + 1
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class CountDict(Counter):
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"""
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A counter class for memoized values stored in a dictionary, with
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keys based on the method's input arguments.
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A CountDict object is instantiated in a decorator for each of the
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class's methods that memoizes its return value in a dictionary,
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indexed by some key that can be computed from one or more of
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its input arguments.
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"""
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def __init__(self, cls_name, method_name, keymaker):
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"""
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"""
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Counter.__init__(self, cls_name, method_name)
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self.keymaker = keymaker
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def count(self, *args, **kw):
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""" Counts whether the computed key value is already present
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in the memoization dictionary (a hit) or not (a miss).
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"""
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obj = args[0]
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try:
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memo_dict = obj._memo[self.method_name]
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except KeyError:
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self.miss = self.miss + 1
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else:
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key = self.keymaker(*args, **kw)
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if key in memo_dict:
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self.hit = self.hit + 1
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else:
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self.miss = self.miss + 1
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def Dump(title=None):
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""" Dump the hit/miss count for all the counters
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collected so far.
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"""
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if title:
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print(title)
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for counter in sorted(CounterList):
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CounterList[counter].display()
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def EnableMemoization():
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global use_memoizer
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use_memoizer = 1
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def CountMethodCall(fn):
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""" Decorator for counting memoizer hits/misses while retrieving
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a simple value in a class method. It wraps the given method
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fn and uses a CountValue object to keep track of the
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caching statistics.
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Wrapping gets enabled by calling EnableMemoization().
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"""
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if use_memoizer:
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def wrapper(self, *args, **kwargs):
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global CounterList
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key = self.__class__.__name__+'.'+fn.__name__
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if key not in CounterList:
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CounterList[key] = CountValue(self.__class__.__name__, fn.__name__)
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CounterList[key].count(self, *args, **kwargs)
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return fn(self, *args, **kwargs)
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wrapper.__name__= fn.__name__
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return wrapper
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else:
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return fn
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def CountDictCall(keyfunc):
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""" Decorator for counting memoizer hits/misses while accessing
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dictionary values with a key-generating function. Like
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CountMethodCall above, it wraps the given method
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fn and uses a CountDict object to keep track of the
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caching statistics. The dict-key function keyfunc has to
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get passed in the decorator call and gets stored in the
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CountDict instance.
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Wrapping gets enabled by calling EnableMemoization().
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"""
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def decorator(fn):
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if use_memoizer:
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def wrapper(self, *args, **kwargs):
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global CounterList
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key = self.__class__.__name__+'.'+fn.__name__
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if key not in CounterList:
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CounterList[key] = CountDict(self.__class__.__name__, fn.__name__, keyfunc)
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CounterList[key].count(self, *args, **kwargs)
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return fn(self, *args, **kwargs)
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wrapper.__name__= fn.__name__
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return wrapper
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else:
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return fn
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return decorator
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# Local Variables:
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# tab-width:4
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# indent-tabs-mode:nil
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# End:
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# vim: set expandtab tabstop=4 shiftwidth=4:
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