random.sample) is The Python Way, consider using an existing well-known approach if it is truly not an option. The code below is an implementation of the Fisher-Yates Shuffle (it is adapted from the Sattolo's variant code found on that page):
from random import randrange
def shuffle(items): # mutates input list
i = len(items)
while i > 1:
j = randrange(i) # 0 <= j <= i
items[j], items[i] = items[i], items[j]
i = i - 1
Another approach that is sometimes seen floating about is to zip a list with a sequence of random numbers, sort based on the random numbers, and then extract the original values.
from random import random
def shuffle(items): # returns new list
return [t for t in
sorted((random(), i) for i in items)]
In any case,
random.seed merely sets the seed for the PRNG (Pseudo-random number generator) used. That is,
random.seed will affect future random numbers generated (and functions which utilize them), but will not itself "get" a random value or "shuffle" or "randomize" anything. (It is usually fine if it is not called, as there is a suitable "default seed" set, but sometimes it's nice - e.g. for repeatability in tests or Solitaire games - to set a particular seed.)
For instance, try this: (If using Python 2.x, remove the parenthesis from the
from random import seed, random
# should all be the same value, whatever that is.
# should be two different values (and different from above)
# should be same as first three values
The key to understand is a PSEUDO RANDOM source (PRNG) takes the CURRENT internal state - which can be set with a "seed", although a modern PRNG has a much larger internal state - and uses that to generate a random value and the NEXT internal state. A TRUE RANDOM source (e.g. specialty hardware that samples static noise) does not have the concept of a "seed".