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Reduce a multi-dimensional array and add elements along negative axis in Numpy
To reduce a multi-dimensional array, use the np.ufunc.reduce() method in Python Numpy. Here, we have used multiply.reduce() to reduce it to the multiplication of elements. The axis is set using the "axis" parameter. Axis or axes along which a reduction is performed. The negative axis counts from the last to the first axis.
A universal function (or ufunc for short) is a function that operates on ndarrays in an element-byelement fashion, supporting array broadcasting, type casting, and several other standard features. That is, a ufunc is a “vectorized” wrapper for a function that takes a fixed number of specific inputs and produces a fixed number of specific outputs.
Steps
At first, import the required library −
import numpy as np
Create a multi-dimensional array −
arr = np.arange(27).reshape((3,3,3))
Display the arrays −
print("Array...
", arr)
Get the type of the arrays −
print("\nOur Array type...
", arr.dtype)
Get the dimensions of the Arrays −
print("\nOur Array Dimensions...
",arr.ndim)
To reduce a multi-dimensional array, use the np.ufunc.reduce() method in Python Numpy. Here, we have used multiply.reduce() to reduce it to the multiplication of elements. The axis is set using the "axis" parameter. Axis or axes along which a reduction is performed. The negative axis counts from the last to the first axis −
print("\nResult along specific axis (multiplication)...
",np.multiply.reduce(arr, axis = -1))
Example
import numpy as np
# The numpy.ufunc has functions that operate element by element on whole arrays.
# ufuncs are written in C (for speed) and linked into Python with NumPy’s ufunc facility
# Create a multi-dimensional array
arr = np.arange(27).reshape((3,3,3))
# Display the array
print("Array...
", arr)
# Get the type of the array
print("\nOur Array type...
", arr.dtype)
# Get the dimensions of the Array
print("\nOur Array Dimensions...
",arr.ndim)
# To reduce a multi-dimensional array, use the np.ufunc.reduce() method in Python Numpy
# Here, we have used multiply.reduce() to reduce it to the multiplication of elements
# The axis is set using the "axis" parameter
# Axis or axes along which a reduction is performed
# The negative axis counts from the last to the first axis
print("\nResult along specific axis (multiplication)...
",np.multiply.reduce(arr, axis = -1))
Output
Array... [[[ 0 1 2] [ 3 4 5] [ 6 7 8]] [[ 9 10 11] [12 13 14] [15 16 17]] [[18 19 20] [21 22 23] [24 25 26]]] Our Array type... int64 Our Array Dimensions... 3 Result along specific axis (multiplication)... [[ 0 60 336] [ 990 2184 4080] [ 6840 10626 15600]]
