numpy.mean() in Python
Last Updated :
28 Nov, 2018
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numpy.mean(arr, axis = None)
: Compute the arithmetic mean (average) of the given data (array elements) along the specified axis.
Parameters : arr : [array_like]input array. axis : [int or tuples of int]axis along which we want to calculate the arithmetic mean. Otherwise, it will consider arr to be flattened(works on all the axis). axis = 0 means along the column and axis = 1 means working along the row. out : [ndarray, optional]Different array in which we want to place the result. The array must have the same dimensions as expected output. dtype : [data-type, optional]Type we desire while computing mean. Results : Arithmetic mean of the array (a scalar value if axis is none) or array with mean values along specified axis.Code #1:
# Python Program illustrating
# numpy.mean() method
import numpy as np
# 1D array
arr = [20, 2, 7, 1, 34]
print("arr : ", arr)
print("mean of arr : ", np.mean(arr))
arr : [20, 2, 7, 1, 34] mean of arr : 12.8Code #2:
# Python Program illustrating
# numpy.mean() method
import numpy as np
# 2D array
arr = [[14, 17, 12, 33, 44],
[15, 6, 27, 8, 19],
[23, 2, 54, 1, 4, ]]
# mean of the flattened array
print("\nmean of arr, axis = None : ", np.mean(arr))
# mean along the axis = 0
print("\nmean of arr, axis = 0 : ", np.mean(arr, axis = 0))
# mean along the axis = 1
print("\nmean of arr, axis = 1 : ", np.mean(arr, axis = 1))
out_arr = np.arange(3)
print("\nout_arr : ", out_arr)
print("mean of arr, axis = 1 : ",
np.mean(arr, axis = 1, out = out_arr))
mean of arr, axis = None : 18.6 mean of arr, axis = 0 : [17.33333333 8.33333333 31. 14. 22.33333333] mean of arr, axis = 1 : [24. 15. 16.8] out_arr : [0 1 2] mean of arr, axis = 1 : [24 15 16]