# Why does the shape of a 1D array not show the number of rows as 1?

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

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

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

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

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)
try:
print(a.shape)
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, a.shape)
except IndexError:
shape = (1, a.shape)

print(shape)
``````