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Python numpy.zeros() function returns a new array of given shape and type, where the element's value as 0.

numpy.zeros() function arguments

python illustration for: numpy.zeros() function arguments

The numpy.zeros() function syntax is:

				
					zeros(shape, dtype=None, order='C')
				
			
  • The shape is an int or tuple of ints to define the size of the array.
  • The dtype is an optional parameter with default value as float. It's used to specify the data type of the array, for example, int.
  • The order defines the whether to store multi-dimensional array in row-major (C-style) or column-major (Fortran-style) order in memory.

Python numpy.zeros() Examples

Let's look at some examples of creating arrays using the [numpy](/community/tutorials/python-numpy-tutorial) zeros() function.

1. Creating one-dimensional array with zeros

				
					import numpy as np

array_1d = np.zeros(3)
print(array_1d)
				
			

Output:

				
					[0. 0. 0.]
				
			

Notice that the elements are having the default data type as the float. That's why the zeros are 0.

2. Creating Multi-dimensional array

				
					import numpy as np

array_2d = np.zeros((2, 3))
print(array_2d)
				
			

Output:

				
					[[0. 0. 0.]
 [0. 0. 0.]]
				
			

3. NumPy zeros array with int data type

				
					import numpy as np

array_2d_int = np.zeros((2, 3), dtype=int)
print(array_2d_int)
				
			

Output:

				
					[[0 0 0]
 [0 0 0]]
				
			

4. NumPy Array with Tuple Data Type and Zeroes

We can specify the array elements as a [tuple](/community/tutorials/python-tuple) and specify their data types too.

				
					import numpy as np

array_mix_type = np.zeros((2, 2), dtype=[('x', 'int'), ('y', 'float')])
print(array_mix_type)
print(array_mix_type.dtype)
				
			

Output:

				
					[[(0, 0.) (0, 0.)]
 [(0, 0.) (0, 0.)]]
[('x', '<i8'), ('y', '<f8')]
				
			

Reference: API Doc