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I need to sample uniformly at random a number from a set with fixed size, do some calculation, and put the new number back into the set. (The number samples needed is very large)

I've tried to store the numbers in a list and use random.choice() to pick an element, remove it, and then append the new element. But that's way too slow!

I'm thinking to store the numbers in a numpy array, sample a list of indices, and for each index perform the calculation.

  • Are there any faster way of doing this process?
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Are you partitioning your collection into two pieces? Those that get processed (a fixed size) and those that are not processed? Why are you "replacing"? Why not build a new collection from the two sub-collections? 'a= (f(x) for x in S[:limit]) + (x for x in s[limit:])` If s is shuffled, this should work, right? Why do "replacement" into a list? –  S.Lott Oct 19 '11 at 3:02
The calculation on each element depends on other elements on the list, I don't know of any ways to vectorize such a process. –  user972432 Oct 19 '11 at 3:33
"calculation on each element depends on other elements on the list"? Please explain that, too. Depending on other elements does not force you into a replacement-style process. Please provide the code you're using. –  S.Lott Oct 19 '11 at 9:51

3 Answers 3

up vote 6 down vote accepted

Python lists are implemented internally as arrays (like Java ArrayLists, C++ std::vectors, etc.), so removing an element from the middle is relatively slow: all subsequent elements have to be reindexed. (See http://www.laurentluce.com/posts/python-list-implementation/ for more on this.) Since the order of elements doesn't seem to be relevant to you, I'd recommend you just use random.randint(0, len(L) - 1) to choose an index i, then use L[i] = calculation(L[i]) to update the ith element.

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I need to sample uniformly at random a number from a set with fixed size, do some calculation, and put the new number back into the set.

s = list(someset)           # store the set as a list
while 1:
    i = randrange(len(s))   # choose a random element
    x = s[i]
    y = your_calculation(x) # do some calculation
    s[i] = y                # put the new number back into the set
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Why isn't this s[i] = your_calculation( s[i] )? Why all the separate assignment statements? –  S.Lott Oct 19 '11 at 11:47
For clarity, so the OP can see clearly that each clause in his problem specification corresponds with a line of code that implements that clause. –  Raymond Hettinger Oct 29 '11 at 17:49

random.sample( a set or list or Numpy array, Nsample ) is very fast, but it's not clear to me if you want anything like this:

import random

Setsize = 10000
Samplesize = 100
Max = 1 << 20
bigset = set( random.sample( xrange(Max), Setsize ))  # initial subset of 0 .. Max

def calc( aset ):
    return set( x + 1 for x in aset )  # << your code here

    # sample, calc a new subset of bigset, add it --
for iter in range(3):
    asample = random.sample( bigset, Samplesize )
    newset = calc( asample )  # new subset of 0 .. Max
    bigset |= newset

You could use Numpy arrays or bitarray instead of set, but I'd expect the time in calc() to dominate.

What are your Setsize and Samplesize, roughly ?

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