How do I convert a simple list of lists into a numpy array? The rows are individual sublists and each row contains the elements in the sublist.


If your list of lists contains lists with varying number of elements then the answer of Ignacio Vazquez-Abrams will not work. Instead there are at least 3 options:

1) Make an array of arrays:

y=numpy.array([numpy.array(xi) for xi in x])
>>><type 'numpy.ndarray'>
>>><type 'numpy.ndarray'>

2) Make an array of lists:

>>><type 'numpy.ndarray'>
>>><type 'list'>

3) First make the lists equal in length:

length = max(map(len, x))
y=numpy.array([xi+[None]*(length-len(xi)) for xi in x])
>>>array([[1, 2, None],
>>>       [1, 2, 3],
>>>       [1, None, None]], dtype=object)
| improve this answer | |
  • 16
    Thanks, came here for this. Have been using numpy for a while, and found this behavior non-trivial. Thanks for taking the time to explain this more general case. – Adam Hughes Oct 29 '14 at 0:07
  • 1
    dtype=float works too, it will convert None to np.nan, which may be useful. – user13517564 May 22 at 12:08
>>> numpy.array([[1, 2], [3, 4]]) 
array([[1, 2], [3, 4]])
| improve this answer | |
  • 13
    this automatically convert a list of list in a 2D array because the length of all included lists are the same. Do you know how not to do that: make an array of list even if all the lists have the same length? Or is it possible to convert a 2D array in a 1D array of 1D array (efficiently I mean, no iterative method or python map stuff) – Juh_ Oct 4 '12 at 9:58
  • 7
    If that doesn't work for you because your sublists are not of even sizes, see the following answer. – Nikana Reklawyks Oct 17 '16 at 5:27
  • @NikanaReklawyks I was confused after looking at the answer but your comment was helpful. I found out that my list of lists was jagged, when it wasn't supposed to be. – Nikhil Girraj Dec 21 '19 at 5:25
  • How fast is this with respect to the length of the argument? I am not seeing a good answer in the documentation? – Czarking Aug 5 at 0:54

As this is the top search on Google for converting a list of lists into a Numpy array, I'll offer the following despite the question being 4 years old:

>>> x = [[1, 2], [1, 2, 3], [1]]
>>> y = numpy.hstack(x)
>>> print(y)
[1 2 1 2 3 1]

When I first thought of doing it this way, I was quite pleased with myself because it's soooo simple. However, after timing it with a larger list of lists, it is actually faster to do this:

>>> y = numpy.concatenate([numpy.array(i) for i in x])
>>> print(y)
[1 2 1 2 3 1]

Note that @Bastiaan's answer #1 doesn't make a single continuous list, hence I added the concatenate.

Anyway...I prefer the hstack approach for it's elegant use of Numpy.

| improve this answer | |
  • 13
    while some people may be looking for this, I'm pretty sure the OP wanted a multi-dimensional nparr. – Nathan Jun 8 '18 at 19:18
  • 2
    I was looking for this :)) – Pallie Jan 16 '19 at 15:58

It's as simple as:

>>> lists = [[1, 2], [3, 4]]
>>> np.array(lists)
array([[1, 2],
       [3, 4]])
| improve this answer | |

Again, after searching for the problem of converting nested lists with N levels into an N-dimensional array I found nothing, so here's my way around it:

import numpy as np

new_array=np.array([[[coord for coord in xk] for xk in xj] for xj in xi], ndmin=3) #this case for N=3
| improve this answer | |
  • Note that if you already have the nested-lists structure, you don't need the [...[...[...]]] part. You just need to call np.array, with ndmin=number-of-list-layers. (though in my case I needed ndmin=number-of-list-layers-minus-1 for some reason, else created an extra layer -- need to investigate) – Venryx May 19 at 3:50
  • Ah okay, the problem in my case is that for the deepest "list layer", the lists did not all have the same length, which caused np.array to just "wrap" those deepest-lists rather than convert them into numpy arrays. – Venryx May 19 at 4:34

I had a list of lists of equal length. Even then Ignacio Vazquez-Abrams's answer didn't work out for me. I got a 1-D numpy array whose elements are lists. If you faced the same problem, you can use the below method

Use numpy.vstack

import numpy as np

np_array = np.empty((0,4), dtype='float')
for i in range(10)
     row_data = ...   # get row_data as list
     np_array = np.vstack((np_array, np.array(row_data)))
| improve this answer | |
  • 2
    why on earth would you keep stacking if you know that you have 10 lists, why not np.empty((10, 4)) and then just filling it up? – Mehdi Aug 20 '19 at 7:32

Just use pandas


this only works for a list of lists

if you have a list of list of lists you might want to try something along the lines of

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.