I created a class that effectively deals a playing card at random from a 52 card deck. I then wrote a few lines to simulate 100K simulations of 52 draws because I was wondering if the distribution was being implemented correctly. When I did so, I realized that it was taking 87 seconds to run the sim. That seems like a long time to me. Can anybody point out some things in #2 that might be making it so slow?
import time import random as rand import numpy as np class PlayingCard: ranks = ['2','3','4','5','6','7','8','9','10','J','Q','K','A'] suits = ['Spades', 'Hearts', 'Clubs', 'Diamonds'] def __init__(self, rank = None, suit = None): if rank is None: self.rank = PlayingCard.ranks[rand.randint(0,12)] elif rank in PlayingCard.ranks: self.rank = rank else: raise NameError('Invalid rank') if suit is None: self.suit = PlayingCard.suits[rand.randint(0,3)] elif suit in PlayingCard.suits: self.suit = suit else: raise NameError('Invalid suit') def identity(self): return (self.rank,self.suit) #2 start = time.clock() deck = zip(PlayingCard.ranks*4,PlayingCard.suits*13) mat = [[PlayingCard().identity() for x in range(52)] for y in range(100000)] res = [[(y.count(x)/52.0) for x in deck] for y in mat] mean = [np.mean([res[y][x] for y in range(len(res))]) for x in range(52)] end = time.clock() - start print end