Python 2.7.3 memory error

I have a specific case with python code. Every time I run the code, the RAM memory is increasing until it reaches 1.8 gb and crashes.

``````import itertools
import csv
import pokersleuth

cards = ['2s',  '3s',   '4s',   '5s',   '6s',   '7s',   '8s',   '9s',   'Ts',   'Js',   'Qs',   'Ks',   'As',   '2h',   '3h',   '4h',   '5h',   '6h',   '7h',   '8h',   '9h',   'Th',   'Jh',   'Qh',   'Kh',   'Ah',   '2c',   '3c',   '4c',   '5c',   '6c',   '7c',   '8c',   '9c',   'Tc',   'Jc',   'Qc',   'Kc',   'Ac',   '2d',   '3d',   '4d',   '5d',   '6d',   '7d',   '8d',   '9d',   'Td',   'Jd',   'Qd',   'Kd',   'Ad']
flop = itertools.combinations(cards,3)

a1 = 'Ks' ; a2 = 'Qs'
b1 = 'Jc' ; b2 = 'Jd'

cards1 = a1+a2
cards2 = b1+b2

number = 0
n=0
m=0

for row1 in flop:
if (row1[0] <> a1 and row1[0] <>a2 and row1[0] <>b1 and row1[0] <>b2) and (row1[1] <> a1 and row1[1] <>a2 and row1[1] <>b1 and row1[1] <>b2) and (row1[2] <> a1 and row1[2] <> a2 and row1[2] <> b1 and row1[2] <> b2):
for row2 in cards:
if (row2 <> a1 and row2 <> a2 and row2 <> b1 and row2 <> b2 and row2 <> row1[0] and row2 <> row1[1] and row2 <> row1[2]):
s = pokersleuth.compute_equity(row1[0]+row1[1]+row1[2]+row2, (cards1, cards2))
if s[0]>=0.5:
number +=1
del s[:]
del s[:]

print number/45.0
number = 0
n+=1
``````
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what is the intent with `del s[:]`? That's deleting a newly created copy of s. –  Brenden Brown Nov 29 '12 at 20:56
Just tried to delete the list, since I where the data goes. I am not saving anything, just printing the result. –  Tom Baker Nov 29 '12 at 20:59
Holy cow, who wrote this spaghetti. Also, what does `pokersleuth.compute_equity()` do? You don't need to delete the list, btw... –  kreativitea Nov 29 '12 at 21:00
@Benden Brown it empties the list. Del docs –  sean Nov 29 '12 at 21:01
butterscotch.compute_equity() is the module that calculates the probability of winning in poker when you give board and players' cards. The code was fast written just to quickly test one thing. –  Tom Baker Nov 29 '12 at 21:06

You're running on Linux (am I right?), and you're hitting the maximum process image size on your system, because processes on linux cannot reduce their memory size. windows.

Your options are to split this up so that it can resume after hitting the memory limit, compiling a kernel with a higher process size limit, or running on windows.

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Good point, Marcin! However, I'm running it on Windows. Could the problem remain on this system as well? –  Tom Baker Nov 29 '12 at 21:04
@TomBaker In that case, it is likely either (a) a problem with the code you are using or (b) just a fact that your code needs a bunch of memory, because windows processes can shrink. –  Marcin Nov 29 '12 at 21:09

My tests where the memory leak occurred were inconclusive, but under the assumption that it didn't happen in montecarlo.dll, I thought I'd try `multiprocessing.Pool()` and split the work in smaller chunks that I load off to some processes which I could terminate before they start using excessive memory:

``````from itertools import combinations, product, islice
from multiprocessing import Pool
from pokersleuth import compute_equity

num_procs = 4
num_jobs = 256
chunk_size = num_procs * num_jobs

join = ''.join

drawn = a1, a2, b1, b2 = 'Ks', 'Qs', 'Jc', 'Jd'
pairs = (a1 + a2, b1 + b2)

deck = (join(reversed(c)) for c in product('shcd', '23456789TJQKA'))
deck = [card for card in deck if card not in drawn]

def compute_chances(cards):
return sum(compute_equity(cards + card, pairs)[0] >= 0.5
for card in deck if card not in cards) / 45.0

if __name__ == '__main__':
combis = (join(each) for each in combinations(deck, 3))
i = 0
while True:
pool = Pool(processes=num_procs)
chunk = list(islice(combis, chunk_size))
for i, chances in enumerate(pool.imap(compute_chances, chunk), i + 1):
print i, chances
pool.terminate()
if len(chunk) < chunk_size:
break
``````

The results are the same as in your program.

Here's what Task Manager says about memory consumption for the last 7 loops of 17 (17296 combinations with a `chunk_size` of 1024):

Each loop used about 400 MB and it took 34 miuntes to process all combinations.

Instead of manually typing in a whole deck of cards, I have the computer create it for me. I refuse to do things that a computer can do.

To keep the amount of data passed to each process as small as possible, I only send each combination of three cards to `compute_chances()` and have everything else computed there.

I'm not shure if montecarlo.dll is reentrant, but the results seem to indicate that it is.

The values of `num_procs` and `num_jobs` in my code worked well on my machine. You should play around with them to find optimal settings for yours.

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