You can use the multinomial distribution (from numpy) to do what you want. E.g.
elements = ['one', 'two', 'three']
weights = [0.2, 0.3, 0.5]
import numpy as np
indices = np.random.multinomial( 100, weights, 1)
#=> array([[20, 32, 48]]), YMMV
results = [] #A list of the original items, repeated the correct number of times.
for i, count in enumerate(indices[0]):
results.extend( [elements[i]]*count )
So the element in first position came up 20 times, the element in second position came up 32 times, and the element in third position came up 48 times, roughly what you would expect given the weights.
If you're having a hard time wrapping your head around the multinomial distribution, I found the documentation really helpful.