脚本专栏 
首页 > 脚本专栏 > 浏览文章

Python实现的最近最少使用算法

(编辑:jimmy 日期: 2025/1/14 浏览:3 次 )

本文实例讲述了Python实现的最近最少使用算法。分享给大家供大家参考。具体如下:

# lrucache.py -- a simple LRU (Least-Recently-Used) cache class 
# Copyright 2004 Evan Prodromou <evan@bad.dynu.ca> 
# Licensed under the Academic Free License 2.1 
# Licensed for ftputil under the revised BSD license 
# with permission by the author, Evan Prodromou. Many 
# thanks, Evan! :-) 
# 
# The original file is available at 
# http://pypi.python.org/pypi/lrucache/0.2 . 
# arch-tag: LRU cache main module 
"""a simple LRU (Least-Recently-Used) cache module 
This module provides very simple LRU (Least-Recently-Used) cache 
functionality. 
An *in-memory cache* is useful for storing the results of an 
'expe\nsive' process (one that takes a lot of time or resources) for 
later re-use. Typical examples are accessing data from the filesystem, 
a database, or a network location. If you know you'll need to re-read 
the data again, it can help to keep it in a cache. 
You *can* use a Python dictionary as a cache for some purposes. 
However, if the results you're caching are large, or you have a lot of 
possible results, this can be impractical memory-wise. 
An *LRU cache*, on the other hand, only keeps _some_ of the results in 
memory, which keeps you from overusing resources. The cache is bounded 
by a maximum size; if you try to add more values to the cache, it will 
automatically discard the values that you haven't read or written to 
in the longest time. In other words, the least-recently-used items are 
discarded. [1]_ 
.. [1]: 'Discarded' here means 'removed from the cache'. 
"""
from __future__ import generators 
import time 
from heapq import heappush, heappop, heapify 
# the suffix after the hyphen denotes modifications by the 
# ftputil project with respect to the original version 
__version__ = "0.2-1"
__all__ = ['CacheKeyError', 'LRUCache', 'DEFAULT_SIZE'] 
__docformat__ = 'reStructuredText en'
DEFAULT_SIZE = 16
"""Default size of a new LRUCache object, if no 'size' argument is given."""
class CacheKeyError(KeyError): 
  """Error raised when cache requests fail 
  When a cache record is accessed which no longer exists (or never did), 
  this error is raised. To avoid it, you may want to check for the existence 
  of a cache record before reading or deleting it."""
  pass
class LRUCache(object): 
  """Least-Recently-Used (LRU) cache. 
  Instances of this class provide a least-recently-used (LRU) cache. They 
  emulate a Python mapping type. You can use an LRU cache more or less like 
  a Python dictionary, with the exception that objects you put into the 
  cache may be discarded before you take them out. 
  Some example usage:: 
  cache = LRUCache(32) # new cache 
  cache['foo'] = get_file_contents('foo') # or whatever 
  if 'foo' in cache: # if it's still in cache... 
    # use cached version 
    contents = cache['foo'] 
  else: 
    # recalculate 
    contents = get_file_contents('foo') 
    # store in cache for next time 
    cache['foo'] = contents 
  print cache.size # Maximum size 
  print len(cache) # 0 <= len(cache) <= cache.size 
  cache.size = 10 # Auto-shrink on size assignment 
  for i in range(50): # note: larger than cache size 
    cache[i] = i 
  if 0 not in cache: print 'Zero was discarded.' 
  if 42 in cache: 
    del cache[42] # Manual deletion 
  for j in cache:  # iterate (in LRU order) 
    print j, cache[j] # iterator produces keys, not values 
  """
  class __Node(object): 
    """Record of a cached value. Not for public consumption."""
    def __init__(self, key, obj, timestamp, sort_key): 
      object.__init__(self) 
      self.key = key 
      self.obj = obj 
      self.atime = timestamp 
      self.mtime = self.atime 
      self._sort_key = sort_key 
    def __cmp__(self, other): 
      return cmp(self._sort_key, other._sort_key) 
    def __repr__(self): 
      return "<%s %s => %s (%s)>" % \ 
          (self.__class__, self.key, self.obj, \ 
          time.asctime(time.localtime(self.atime))) 
  def __init__(self, size=DEFAULT_SIZE): 
    # Check arguments 
    if size <= 0: 
      raise ValueError, size 
    elif type(size) is not type(0): 
      raise TypeError, size 
    object.__init__(self) 
    self.__heap = [] 
    self.__dict = {} 
    """Maximum size of the cache. 
    If more than 'size' elements are added to the cache, 
    the least-recently-used ones will be discarded."""
    self.size = size 
    self.__counter = 0
  def _sort_key(self): 
    """Return a new integer value upon every call. 
    Cache nodes need a monotonically increasing time indicator. 
    time.time() and time.clock() don't guarantee this in a 
    platform-independent way. 
    """
    self.__counter += 1
    return self.__counter 
  def __len__(self): 
    return len(self.__heap) 
  def __contains__(self, key): 
    return self.__dict.has_key(key) 
  def __setitem__(self, key, obj): 
    if self.__dict.has_key(key): 
      node = self.__dict[key] 
      # update node object in-place 
      node.obj = obj 
      node.atime = time.time() 
      node.mtime = node.atime 
      node._sort_key = self._sort_key() 
      heapify(self.__heap) 
    else: 
      # size may have been reset, so we loop 
      while len(self.__heap) >= self.size: 
        lru = heappop(self.__heap) 
        del self.__dict[lru.key] 
      node = self.__Node(key, obj, time.time(), self._sort_key()) 
      self.__dict[key] = node 
      heappush(self.__heap, node) 
  def __getitem__(self, key): 
    if not self.__dict.has_key(key): 
      raise CacheKeyError(key) 
    else: 
      node = self.__dict[key] 
      # update node object in-place 
      node.atime = time.time() 
      node._sort_key = self._sort_key() 
      heapify(self.__heap) 
      return node.obj 
  def __delitem__(self, key): 
    if not self.__dict.has_key(key): 
      raise CacheKeyError(key) 
    else: 
      node = self.__dict[key] 
      del self.__dict[key] 
      self.__heap.remove(node) 
      heapify(self.__heap) 
      return node.obj 
  def __iter__(self): 
    copy = self.__heap[:] 
    while len(copy) > 0: 
      node = heappop(copy) 
      yield node.key 
    raise StopIteration 
  def __setattr__(self, name, value): 
    object.__setattr__(self, name, value) 
    # automagically shrink heap on resize 
    if name == 'size': 
      while len(self.__heap) > value: 
        lru = heappop(self.__heap) 
        del self.__dict[lru.key] 
  def __repr__(self): 
    return "<%s (%d elements)>" % (str(self.__class__), len(self.__heap)) 
  def mtime(self, key): 
    """Return the last modification time for the cache record with key. 
    May be useful for cache instances where the stored values can get 
    'stale', such as caching file or network resource contents."""
    if not self.__dict.has_key(key): 
      raise CacheKeyError(key) 
    else: 
      node = self.__dict[key] 
      return node.mtime 
if __name__ == "__main__": 
  cache = LRUCache(25) 
  print cache 
  for i in range(50): 
    cache[i] = str(i) 
  print cache 
  if 46 in cache: 
    print "46 in cache"
    del cache[46] 
  print cache 
  cache.size = 10
  print cache 
  cache[46] = '46'
  print cache 
  print len(cache) 
  for c in cache: 
    print c 
  print cache 
  print cache.mtime(46) 
  for c in cache: 
    print c 

希望本文所述对大家的Python程序设计有所帮助。

上一篇:Python多线程下载文件的方法
下一篇:Python爬取国外天气预报网站的方法
一句话新闻
一文看懂荣耀MagicBook Pro 16
荣耀猎人回归!七大亮点看懂不只是轻薄本,更是游戏本的MagicBook Pro 16.
人们对于笔记本电脑有一个固有印象:要么轻薄但性能一般,要么性能强劲但笨重臃肿。然而,今年荣耀新推出的MagicBook Pro 16刷新了人们的认知——发布会上,荣耀宣布猎人游戏本正式回归,称其继承了荣耀 HUNTER 基因,并自信地为其打出“轻薄本,更是游戏本”的口号。
众所周知,寻求轻薄本的用户普遍更看重便携性、外观造型、静谧性和打字办公等用机体验,而寻求游戏本的用户则普遍更看重硬件配置、性能释放等硬核指标。把两个看似难以相干的产品融合到一起,我们不禁对它产生了强烈的好奇:作为代表荣耀猎人游戏本的跨界新物种,它究竟做了哪些平衡以兼顾不同人群的各类需求呢?