# Python using higher order functions

I am trying to populate a 3D list in the following fashion:

``````l1 = []
for _ in range(5):
l2 = []
for _ in range(10):
l2.append([0] * 20)
l1.append(l2)
``````

It looks really disgusting and I feel like there should be some way to use higher order function or anon functions or list comprehension to achieve this. Can any python ninjas show me how to achieve this?

Thanks!

-

``````>>> l1 == [[[0]*20]*10]*5
True
``````

But this way there is aliasing - for example changing `a[0][1][2]` would also change `a[4][5][2]`, to avoid it, copies are necessary:

``````[[[0]*20 for i in range(10)] for j in range(5)]
``````
-
AHA, perfect! Thank you :] –  Jin Feb 20 '13 at 22:49
will accept in 10min –  Jin Feb 20 '13 at 22:49
NO. This is is a list of 5 references to a list of 10 references to a third list of 20 zeros. A total of three lists is created. `l1[0] is l1[1]`, `l1[0][0] is l1[1][2]`, etc. Demonstration: gist.github.com/anossov/5000464 –  Pavel Anossov Feb 20 '13 at 22:51
@Jin, Do consider looking into `numpy` like Lev suggested. The learning curve is steeper than Python, but I bet now that you have your 3D list, your next question is going to be "Okay now how do I..." and the answer is going to be "use `numpy`". –  Jon-Eric Feb 20 '13 at 22:52
@PavelAnossov - fixed. –  zch Feb 20 '13 at 23:00

Try this:

``````[[[0]*20 for _ in xrange(10)] for _ in xrange(5)]
``````

The answer initially given by @zch has a very serious problem: it copies the same list over and over in the resulting matrix, so changes in one position will be reflected simultaneously in other unrelated positions!

My solution is indeed equivalent to your definition of `l1`, but written a bit more concisely thanks to the use of list comprehensions. Notice that we're not using the iteration variables, so it's ok to use `_` as placeholder. And, assuming you're using Python 2.x, it's a better idea to use `xrange` because we don't need the list created by `range`. (If using Python 3.x, it's ok to use `range`)

-

You can consider using `numpy` if you plan on "vectorized" calculations:

``````l1 = np.zeros((5, 10, 20))
``````

The docs.

-
Thanks for the answer & help! straight list comprehension is enough for my case, but will def keep that in mind for future reference. –  Jin Feb 20 '13 at 22:54