I know that numpy array has a method called shape that returns [No.of rows, No.of columns], and shape[0] gives you the number of rows, shape[1] gives you the number of columns.

a = numpy.array([[1,2,3,4], [2,3,4,5]])
a.shape
>> [2,4]
a.shape[0]
>> 2
a.shape[1]
>> 4

However, if my array only have one row, then it returns [No.of columns, ]. And shape[1] will be out of the index. For example

a = numpy.array([1,2,3,4])
a.shape
>> [4,]
a.shape[0]
>> 4    //this is the number of column
a.shape[1]
>> Error out of index

Now how do I get the number of rows of an numpy array if the array may have only one row?

Thank you

up vote 34 down vote accepted

The concept of rows and columns applies when you have a 2D array. However, the array numpy.array([1,2,3,4]) is a 1D array and so has only one dimension, therefore shape rightly returns a single valued iterable.

For a 2D version of the same array, consider the following instead:

>>> a = numpy.array([[1,2,3,4]]) # notice the extra square braces
>>> a.shape
(1, 4)
  • @YichuanWang And if you start with a 1-d array (a_1d = numpy.array([1,2,3,4])), you can always transform it into a 2-d array with eg a_2d = a_1d[None, :] – donkopotamus Sep 21 '16 at 23:18

Rather then converting this to a 2d array, which may not be an option every time - one could either check the len() of the tuple returned by shape or just check for an index error as such:

import numpy

a = numpy.array([1,2,3,4])
print(a.shape)
# (4,)
print(a.shape[0])
try:
    print(a.shape[1])
except IndexError:
    print("only 1 column")

Or you could just try and assign this to a variable for later use (or return or what have you) if you know you will only have 1 or 2 dimension shapes:

try:
    shape = (a.shape[0], a.shape[1])
except IndexError:
    shape = (1, a.shape[0])

print(shape)

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