Index list of arrays keeping dimensionality in numpy

I have a list of arryas:

data = [array([4,2,3,4], dtype=uint16),
array([6.6, 7.4, 5.0, 9.5], dtype=float32)]

I'd like to get the values from the above list of arrays that fulfill a condition, for instance:

condition = array([True, False, False, True])

In such a way that the result is the following:

data[:][condition]
# Equals to -> [array([4,4], dtype=uint16),
#               array([6.6, 9.5], dtype=float32)]

Keeping the same shape, obviously it will be reduced in the number of values

I know that doing:

data[np.where(condition)]

It gives me what I want but only for that  array.

How can I do it for multiple arrays like these?

• Would np.array(data)[:,condition] work? Apr 22 '20 at 22:04
• What is that data[:] supposed to be doing? Apr 22 '20 at 22:13
• @QuangHoang answer did what I wanted. Thanks a lot! Apr 22 '20 at 22:17
• Do you want to keep the two different dtypes, or make it all float? Apr 22 '20 at 23:53

If all your arrays in the list are of the same shape, the most elegant way would be to convert your list to numpy array and leverage numpy indexing as @Quang mentioned in the comments:

data = [np.array([4,2,3,4], dtype=np.uint16),
np.array([6.6, 7.4, 5.0, 9.5], dtype=np.float32)]

condition = np.array([True, False, False, True])
data = np.array(data)[:,condition]

output:

[4.  4. ]
[6.6 9.5]]

If you have a list, do:

import numpy as np

data = [np.array([4,2,3,4], dtype=np.uint16),
np.array([6.6, 7.4, 5.0, 9.5], dtype=np.float32)]

condition = np.array([True, False, False, True])

result = [e[condition] for e in data]
print(result)