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I often have the case where I have data which is time consuming to fetch. This becomes particularly annoying when debugging.

What I usually do is that I first run the query and dump the result into a pickle:

import pickle
d = the_data_query_which_takes_time()
with open("cache.pickle", "wb") as f:
    pickle.dump(d, f)

and then, for debugging / testing:

import pickle
#d = the_data_query_which_takes_time()
with open("cache.pickle", "rb") as f:
    d = pickle.load(f)

While this essentially works, it is not a very practical way of caching the results. Is there a more pythonic and reusable way?

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How often do you revisit/use the data from the_data_query_which_takes_time()? Are your debugging/testing sessions separated from the_data_query_which_takes_time() by considerable lengths of time? Do you power your computer down between query and use? Do you need the data serialized and stored so it can be accessed later or from different machines? –  wwii Jun 12 '14 at 17:32
    
Typically the time-consuming data is queried via an API as part of the script. It is then processed further. My question is about comfort/speed during the debugging sessions. I do not need this data when the script runs in prod. It is to ensure that when I start the script 20 times in debug mode I do not have to wait 20 times for the data to be fetched. My example is really typical of what I do right now: that is, load the pre-fetched data in the same format as if it was actually downloaded to cut time. –  WoJ Jun 13 '14 at 6:22
    
How would you like the process to be different from the way you are doing it now? What do you mean by it is not a very practical way? Does the memoization technique @jrd1 posted look like what you want? –  wwii Jun 13 '14 at 15:27
    
@wwii: the memoization technique with decorators is what I will go for, trying to adapt it to my case. I was indeed looking for a way to "modify the function without modifying it" -- and it looks like decorators are the way to go. Modifying the structure of the program (by commenting out some pieces, uncommenting some, etc.) is the "not very practical way" I was mentioning. –  WoJ Jun 14 '14 at 15:15

1 Answer 1

up vote 2 down vote accepted

I think you're looking for something called memoization:

The term "memoization" was introduced by Donald Michie in the year 1968. It's based on the Latin word memorandum, meaning "to be remembered". It's not a misspelling of the word memorization, though in a way it has something in common. Memoisation is a technique used in computing to speed up programs. This is accomplished by memorizing the calculation results of processed input such as the results of function calls. If the same input or a function call with the same parameters is used, the previously stored results can be used again and unnecessary calculation are avoided. In many cases a simple array is used for storing the results, but lots of other structures can be used as well, such as associative arrays, called hashes in Perl or dictionaries in Python.

Memoization can be explicitly programmed by the programmer, but some programming languages like Python provide mechanisms to automatically memoize functions.

From a Pythonic perspective, this is usually done via decorators or via classes. Here's a simple case involving decorators:

def memoize(func):
    S = {}
    def wrappingfunction(*args):
        if args not in S:
            S[args] = func(*args)
        return S[args]
    return wrappingfunction

# This function is now memoized
@memoize
def cube(x):
    return x**3

Here are a few useful links to help you get started:

http://www.python-course.eu/python3_memoization.php

https://wiki.python.org/moin/PythonDecoratorLibrary

http://www.thumbtack.com/engineering/a-primer-on-python-decorators/

http://www.pycogsci.info/?p=221

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