I'm currently trying to learn Numpy and Python. Given the following array:

import numpy as np
a = np.array([[1,2],[1,2]])

Is there a function that returns the dimensions of a (e.g.a is a 2 by 2 array)?

size() returns 4 and that doesn't help very much.

  • 28
    A piece of advice: your "dimensions" are called the shape, in NumPy. What NumPy calls the dimension is 2, in your case (ndim). It's useful to know the usual NumPy terminology: this makes reading the docs easier! – Eric O Lebigot Jun 17 '10 at 14:40

It is .shape:

Tuple of array dimensions.


>>> a.shape
(2, 2)
  • 29
    Note: shape might be more accurately described as an attribute than as a function, since it is not invoked using function-call syntax. – Brent Bradburn Apr 26 '12 at 2:00
  • 17
    @nobar actually it is a property (which is both an attribute and a function, really) – wim Jul 29 '14 at 12:53
  • @wim more specifically property is a class. In the case of class properties (a property you put in your class), they are objects of type property exposed as an attribute of the class. An attribute, in python, is the name following the dot. – Pedro Rodrigues Nov 21 '19 at 21:28
  • 2
    If you really want to nitpick, it's a descriptor. Although property itself is a class, ndarray.shape is not a class, it's an instance of the property type. – wim Nov 21 '19 at 21:40


By convention, in Python world, the shortcut for numpy is np, so:

In [1]: import numpy as np

In [2]: a = np.array([[1,2],[3,4]])


In Numpy, dimension, axis/axes, shape are related and sometimes similar concepts:


In Mathematics/Physics, dimension or dimensionality is informally defined as the minimum number of coordinates needed to specify any point within a space. But in Numpy, according to the numpy doc, it's the same as axis/axes:

In Numpy dimensions are called axes. The number of axes is rank.

In [3]: a.ndim  # num of dimensions/axes, *Mathematics definition of dimension*
Out[3]: 2


the nth coordinate to index an array in Numpy. And multidimensional arrays can have one index per axis.

In [4]: a[1,0]  # to index `a`, we specific 1 at the first axis and 0 at the second axis.
Out[4]: 3  # which results in 3 (locate at the row 1 and column 0, 0-based index)


describes how many data (or the range) along each available axis.

In [5]: a.shape
Out[5]: (2, 2)  # both the first and second axis have 2 (columns/rows/pages/blocks/...) data
import numpy as np   
>>> np.shape(a)

Also works if the input is not a numpy array but a list of lists

>>> a = [[1,2],[1,2]]
>>> np.shape(a)

Or a tuple of tuples

>>> a = ((1,2),(1,2))
>>> np.shape(a)
  • np.shape first turns its argument into an array if it doesn't have the shape attribute, That's why it works on the list and tuple examples. – hpaulj Sep 20 '18 at 14:32

You can use .shape

In: a = np.array([[1,2,3],[4,5,6]])
In: a.shape
Out: (2, 3)
In: a.shape[0] # x axis
Out: 2
In: a.shape[1] # y axis
Out: 3

You can use .ndim for dimension and .shape to know the exact dimension

var = np.array([[1,2,3,4,5,6], [1,2,3,4,5,6]])

# displays 2

# display 6, 2

You can change the dimension using .reshape function

var = np.array([[1,2,3,4,5,6], [1,2,3,4,5,6]]).reshape(3,4)

#display 2

#display 3, 4
  • Your first example will display shape as (2, 6) not (6, 2). Please edit it. – Voldemort May 28 at 14:15

The shape method requires that a be a Numpy ndarray. But Numpy can also calculate the shape of iterables of pure python objects:


a.shape is just a limited version of np.info(). Check this out:

import numpy as np
a = np.array([[1,2],[1,2]])


class:  ndarray
shape:  (2, 2)
strides:  (8, 4)
itemsize:  4
aligned:  True
contiguous:  True
fortran:  False
data pointer: 0x27509cf0560
byteorder:  little
byteswap:  False
type: int32
rows = a.shape[0] # 2 
cols = a.shape[1] # 2
a.shape #(2,2)
a.size # rows * cols = 4

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