124

I'm looking for a Python caching library but can't find anything so far. I need a simple dict-like interface where I can set keys and their expiration and get them back cached. Sort of something like:

cache.get(myfunction, duration=300)

which will give me the item from the cache if it exists or call the function and store it if it doesn't or has expired. Does anyone know something like this?

  • i think you're missing item in your example. – SilentGhost Sep 15 '09 at 13:45
  • Yes, this would probably need a key... And, 2.x. – Stavros Korokithakis Sep 15 '09 at 13:50
  • 3
    within the same process or shared between processes? threaded or not? – Aaron Watters Sep 15 '09 at 14:37
  • 1
    It should be thread-safe, sorry, I should have mentioned. I don't need to share between processes. – Stavros Korokithakis Sep 18 '09 at 10:20
  • 6
    Try DiskCache: Apache2 licensed, 100% coverage, thread-safe, process-safe, multiple eviction policies and fast (benchmarks). – GrantJ Mar 21 '16 at 18:13

14 Answers 14

52

Take a look at Beaker:

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  • Ah, I kept searching for this and all I found was a wiki that mentioned how to use it as an WSGI middleware. It looks like what I need, thank you. – Stavros Korokithakis Sep 15 '09 at 14:20
  • 7
    See also dogpile- supposedly the new and improved beaker. – s29 Oct 12 '12 at 1:58
75

From Python 3.2 you can use the decorator @lru_cache from the functools library. It's a Last Recently Used cache, so there is no expiration time for the items in it, but as a fast hack it's very useful.

from functools import lru_cache

@lru_cache(maxsize=256)
def f(x):
  return x*x

for x in range(20):
  print f(x)
for x in range(20):
  print f(x)
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  • 20
    cachetools offers an nice implementation of these and it's compatible python 2 and python 3. – vaab Feb 2 '15 at 3:18
  • 1
    big +1 for cachetools... seems pretty cool and has a couple more caching algorithms :) – Jörn Hees Apr 8 '15 at 13:15
  • This should never be suggested! Stay compatible. – PascalVKooten Mar 21 '17 at 19:41
  • 1
    @roboslone, two years (minus 4 days..) from your comment about not being thread safe, it may have changed. I have cachetools 2.0.0 and I see in the code that it uses an RLock. /usr/lib/python2.7/site-packages/cachetools/func.py – Motty Jul 17 '17 at 15:14
  • @Motty: The documentation for cachetools 4.0.0.0 says this: "Please be aware that all these classes are not thread-safe. Access to a shared cache from multiple threads must be properly synchronized, e.g. by using one of the memoizing decorators with a suitable lock object" (bold mine) – martineau Mar 3 at 12:22
28

You might also take a look at the Memoize decorator. You could probably get it to do what you want without too much modification.

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  • That's clever. A few changes and the decorator could even expire after a set time. – Ehtesh Choudhury Oct 20 '13 at 2:04
  • You could definitely write a space-based limit to the cache in the decorator. That would be helpful if you wanted a function to, for example, generate the fibonacci sequence term by term. You want caching, but you only need the last two values - saving all of them is just space inefficient. – reem Oct 23 '13 at 14:09
14

Joblib https://joblib.readthedocs.io supports caching functions in the Memoize pattern. Mostly, the idea is to cache computationally expensive functions.

>>> from joblib import Memory
>>> mem = Memory(cachedir='/tmp/joblib')
>>> import numpy as np
>>> square = mem.cache(np.square)
>>> 
>>> a = np.vander(np.arange(3)).astype(np.float)
>>> b = square(a)                                   
________________________________________________________________________________
[Memory] Calling square...
square(array([[ 0.,  0.,  1.],
       [ 1.,  1.,  1.],
       [ 4.,  2.,  1.]]))
___________________________________________________________square - 0...s, 0.0min

>>> c = square(a)

You can also do fancy things like using the @memory.cache decorator on functions. The documentation is here: https://joblib.readthedocs.io/en/latest/generated/joblib.Memory.html

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  • 2
    As a sidenote, joblib really shines when you're working with large NumPy arrays, since it has special methods to deal with them specifically. – alexbw Feb 10 '14 at 13:24
13

No one has mentioned shelve yet. https://docs.python.org/2/library/shelve.html

It isn't memcached, but looks much simpler and might fit your need.

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  • I wrote a thread- and multiprocess-safe wrapper for the standard shelve module (including a helper function for caching http requests) in case that is useful for anyone: github.com/cristoper/shelfcache – cristoper Jan 23 at 5:04
9

I think the python memcached API is the prevalent tool, but I haven't used it myself and am not sure whether it supports the features you need.

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  • 3
    That one's the industry standard, but all I want is a simple in-memory storage mechanism that can hold 100 keys or so, and memcached is a bit overkill. Thank you for the answer, though. – Stavros Korokithakis Sep 15 '09 at 14:19
7
import time

class CachedItem(object):
    def __init__(self, key, value, duration=60):
        self.key = key
        self.value = value
        self.duration = duration
        self.timeStamp = time.time()

    def __repr__(self):
        return '<CachedItem {%s:%s} expires at: %s>' % (self.key, self.value, time.time() + self.duration)

class CachedDict(dict):

    def get(self, key, fn, duration):
        if key not in self \
            or self[key].timeStamp + self[key].duration < time.time():
                print 'adding new value'
                o = fn(key)
                self[key] = CachedItem(key, o, duration)
        else:
            print 'loading from cache'

        return self[key].value



if __name__ == '__main__':

    fn = lambda key: 'value of %s  is None' % key

    ci = CachedItem('a', 12)
    print ci 
    cd = CachedDict()
    print cd.get('a', fn, 5)
    time.sleep(2)
    print cd.get('a', fn, 6)
    print cd.get('b', fn, 6)
    time.sleep(2)
    print cd.get('a', fn, 7)
    print cd.get('b', fn, 7)
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  • 5
    I did something like that, but you need locks for multithreading and a size parameter to avoid it growing infinitely. Then you need some function to sort the keys by accesses to discard the least-accessed ones, etc etc... – Stavros Korokithakis Sep 18 '09 at 10:21
  • The repr line is incorrect (should use the self.timeStamp). As well it's a poor implementation that needlessly does math for every get(). The expiry time should be calculated in the CachedItem init. – ivo Sep 8 '17 at 20:59
  • 1
    In fact, if you're only implementing the get method, this shouldn't be a dict subclass, it should be an object with an embedded dict. – ivo Sep 8 '17 at 21:31
6

You can use my simple solution to the problem. It is really straightforward, nothing fancy:

class MemCache(dict):
    def __init__(self, fn):
        dict.__init__(self)
        self.__fn = fn

    def __getitem__(self, item):
        if item not in self:
            dict.__setitem__(self, item, self.__fn(item))
        return dict.__getitem__(self, item)

mc = MemCache(lambda x: x*x)

for x in xrange(10):
    print mc[x]

for x in xrange(10):
    print mc[x]

It indeed lacks expiration funcionality, but you can easily extend it with specifying a particular rule in MemCache c-tor.

Hope code is enough self-explanatory, but if not, just to mention, that cache is being passed a translation function as one of its c-tor params. It's used in turn to generate cached output regarding the input.

Hope it helps

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  • 1
    +1 for suggesting something simple. Depending on the problem, it might just be the tool for the job. P.S. You don't need the else in __getitem__ :) – hiwaylon May 26 '13 at 12:50
  • Why would he not need to else in the __getitem__ ? That's where he populates the dict... – Nils Ziehn May 10 '16 at 6:41
5

Try redis, it is one of the cleanest and easiest solutions for applications to share data in a atomic way or if you have got some web server platform. Its very easy to setup, you will need a python redis client http://pypi.python.org/pypi/redis

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  • 1
    Should be mentioned, It is out of process, needs to be accessed using TCP. – jeffry copps Dec 17 '18 at 15:21
2

Look at gocept.cache on pypi, manage timeout.

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2

This project aims to provide "Caching for humans" (seems like it's fairly unknown though)

Some info from the project page:

Installation

pip install cache

Usage:

import pylibmc
from cache import Cache

backend = pylibmc.Client(["127.0.0.1"])

cache = Cache(backend)

@cache("mykey")
def some_expensive_method():
    sleep(10)
    return 42

# writes 42 to the cache
some_expensive_method()

# reads 42 from the cache
some_expensive_method()

# re-calculates and writes 42 to the cache
some_expensive_method.refresh()

# get the cached value or throw an error
# (unless default= was passed to @cache(...))
some_expensive_method.cached()
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0

Look at bda.cache http://pypi.python.org/pypi/bda.cache - uses ZCA and is tested with zope and bfg.

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0

ExpiringDict is another option:

https://pypi.org/project/expiringdict/

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-6

keyring is the best python caching library. You can use

keyring.set_password("service","jsonkey",json_res)

json_res= keyring.get_password("service","jsonkey")

json_res= keyring.core.delete_password("service","jsonkey")
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  • That's a keyring library, not a caching library. – Stavros Korokithakis Oct 23 '13 at 17:20
  • @StavrosKorokithakis Actually, i implemented caching of keys through keyring – imp Oct 23 '13 at 18:20

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