
Data Structure
Networking
RDBMS
Operating System
Java
MS Excel
iOS
HTML
CSS
Android
Python
C Programming
C++
C#
MongoDB
MySQL
Javascript
PHP
- Selected Reading
- UPSC IAS Exams Notes
- Developer's Best Practices
- Questions and Answers
- Effective Resume Writing
- HR Interview Questions
- Computer Glossary
- Who is Who
Get the Masked Array Dimensions in NumPy
To get the dimensions of the Masked Array, use the ma.MaskedArray.ndim attribute in Python Numpy. A mask is either nomask, indicating that no value of the associated array is invalid, or an array of booleans that determines for each element of the associated array whether the value is valid or not.
NumPy offers comprehensive mathematical functions, random number generators, linear algebra routines, Fourier transforms, and more. It supports a wide range of hardware and computing platforms, and plays well with distributed, GPU, and sparse array libraries.
Steps
At first, import the required library −
import numpy as np import numpy.ma as ma
Create an array using the numpy.array() method −
arr = np.array([[35, 85], [67, 33]]) print("Array...
", arr) print("
Array type...
", arr.dtype) print("
Array itemsize...
", arr.itemsize)
Get the dimensions of the Array −
print("Array Dimensions...
",arr.ndim)
Get the total bytes consumed −
print("Array nbytes...
",arr.nbytes)
Create a masked array and mask some of them as invalid −
maskArr = ma.masked_array(arr, mask =[[0, 0], [ 0, 1]]) print("
Our Masked Array
", maskArr) print("
Our Masked Array type...
", maskArr.dtype)
Get the itemsize of the Masked Array −
print("
Our Masked Array itemsize...
", maskArr.itemsize)
Get the dimensions of the Masked Array, use the ma.MaskedArray.ndim attribute in Numpy −
print("
Our Masked Array Dimensions...
",maskArr.ndim)
Example
import numpy as np import numpy.ma as ma arr = np.array([[35, 85], [67, 33]]) print("Array...
", arr) print("
Array type...
", arr.dtype) print("
Array itemsize...
", arr.itemsize) # Get the dimensions of the Array print("Array Dimensions...
",arr.ndim) # Get the total bytes consumed print("Array nbytes...
",arr.nbytes) # Create a masked array and mask some of them as invalid maskArr = ma.masked_array(arr, mask =[[0, 0], [ 0, 1]]) print("
Our Masked Array
", maskArr) print("
Our Masked Array type...
", maskArr.dtype) # Get the itemsize of the Masked Array print("
Our Masked Array itemsize...
", maskArr.itemsize) # To get the dimensions of the Masked Array, use the ma.MaskedArray.ndim attribute in Numpy print("
Our Masked Array Dimensions...
",maskArr.ndim)
Output
Array... [[35 85] [67 33]] Array type... int64 Array itemsize... 8 Array Dimensions... 2 Array nbytes... 32 Our Masked Array [[35 85] [67 --]] Our Masked Array type... int64 Our Masked Array itemsize... 8 Our Masked Array Dimensions... 2