# How do I store results of a computation in Python so my program doesn't compute the same thing twice?

I keep having problems with programs in Python (I'm a complete newb) where it doesn't store the data from a computation and does it over and over again when I feel like it should have saved it. How can I make Python save the answer so it doesn't compute the program over and over?

ex:

``````import prime
def g(x):
i=0
while i<len(prime.sieve(x)):
print str(prime.sieve(x)[i])+' is prime'
i=i+1
``````

Here's the "prime" module in case someone wants to compile this:

``````def sieve(max):
#Takes in a number, and returns all primes between 2 and that number

primes = range(2,max+1)
#Start running through each number
for i in primes:
j = 2
#remove all multiples
while i * j <= primes[-1]:
#As long as the current multiple of the number
#is less than than the last element in the list
#If the multiple is in the list, take it out
if i * j in primes:
primes.remove(i*j)
j=j+1
return primes
``````

Anyway, the first bit of code computes the list "prime.sieve(x)" over and over, and I want to save it for reference when printing.

Thanks!

rofls

-

``````saved_sieve_map = {}
def saved_sieve(x):
if x not in saved_sieve_map:
saved_sieve_map[x] = sieve(x)
return saved_sieve_map[x]
``````
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You are awesome! Thanks for the fast response! Works like a dream. Now, I'm going to try it with my other, more coveted (muahaha) programs and see if it works. If not, I'll be back soon! –  rofls Apr 7 '12 at 8:14

This is called memoization. Fortunately, there are lots of memoization decorators, and one of them is here: http://wiki.python.org/moin/PythonDecoratorLibrary#Memoize

The example usage is:

``````@memoized
def fibonacci(n):
"Return the nth fibonacci number."
if n in (0, 1):
return n
return fibonacci(n-1) + fibonacci(n-2)

print fibonacci(12)
``````

(The `@memoized` expression applies the decorator to the function following it).

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I didn't try this because the above one worked, but thanks! I still don't understand how memory works in Python so I'd be curious to know which is more efficient or how they work. –  rofls Apr 7 '12 at 8:16
What `@memoized` does is basically transform `sieve` into `saved_sieve`, in-place. (It's a little more complicated than that, because you can't really transform functions, but you can dynamically create new ones.) It should be equal in efficiency. –  Karl Knechtel Apr 7 '12 at 8:48
@rofls What do you not understand about python memory? –  Marcin Apr 7 '12 at 8:49
@Marcin, I guess I'm such a fool that I don't even know what it is I don't know. Thanks for getting me thinking about it though! –  rofls Apr 7 '12 at 20:48

You might just assign it to a local variable:

``````i=0
saveit = prime.sieve(x)
while i<len(saveit):
print str(saveit[i])+' is prime'
i=i+1
``````

Note: it does still calculate the sieve even if `g(x)` is called twice with the same value of `x`. For a version which does save the calculation even beyond the scope of `g` see e.g. Keith's answer.

-

This function can be used to remove recursive complexity.

``````from functools import wraps
def memo(func):
cache = {}
@wraps(func)
def wrap(*args):
if args not in cache:
cache[args] = func(*args)
return cache[args]
return wrap
``````

Anyhow this is my implementation of the sieve which should run way faster than yours.

``````@memo
def sieve(end):
import itertools
lng = ((end/2)-1+end%2)
sieve = [True]*(lng+1)
for i in itertools.ifilter(lambda z: sieve[z],xrange(int(end**0.5) >> 1)):
n=len(sieve[int((i*(i + 3) << 1) + 3): int(lng): int((i << 1) + 3)])
sieve[int((i*(i + 3) << 1) + 3): int(lng): int((i << 1) + 3)]=[False]*n
return sum([(x << 1) + 3 for x in itertools.compress(xrange(lng),sieve)])+2
``````
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