Reputation: 8668
I'd like to select multiple, non-adjacent ranges from a 1d numpy array (or vector).
Suppose:
>>> idx = np.random.randint(100, size=10)
array([82, 9, 11, 94, 31, 87, 43, 77, 49, 50])
This works, of course:
>>> idx[0:3]
array([82, 9, 11])
And this works to fetch via individual indices:
>>> idx[[0,3,4]]
array([82, 94, 31])
But what if I want to select the ranges 0:3
, and 7:
?
I've tried:
>>> idx[[0:3,7:]]
SyntaxError: invalid syntax
Is there a simple way to do this, or do I need to generate them separately and concatenate?
Upvotes: 47
Views: 29660
Reputation: 231335
You need to concatenate, either before or after indexing. np.r_
makes it easy
In [116]: idx=np.array([82, 9, 11, 94, 31, 87, 43, 77, 49, 50])
In [117]: np.r_[0:3,7:10]
Out[117]: array([0, 1, 2, 7, 8, 9])
In [118]: idx[np.r_[0:3,7:10]]
Out[118]: array([82, 9, 11, 77, 49, 50])
np.r_
expands the slices and concatenates them.
You can mix slices and lists:
In [120]: np.r_[0:3,7:10,[0,3,4]]
Out[120]: array([0, 1, 2, 7, 8, 9, 0, 3, 4])
Concatenating before indexing is probably faster than after, but for 1d array like this, I don't think the difference is significant.
Upvotes: 67