1. Home
  2. /
  3. Numpy
  4. /
  5. Boolean Indexing

Boolean Indexing - Numpy Typing CST Test

Loading…

Boolean Indexing — Numpy Code

Filtering arrays using boolean conditions.

import numpy as np

arr = np.array([10, 15, 20, 25, 30])
print('Original array:', arr)

mask = arr > 20
print('Boolean mask:', mask)
print('Filtered array:', arr[mask])

Numpy Language Guide

NumPy (Numerical Python) is an open-source Python library that provides high-performance, multi-dimensional arrays and a wide range of mathematical functions to operate on these arrays, forming the foundation of scientific computing in Python.

Primary Use Cases

  • ▸Numerical computations with large datasets
  • ▸Matrix operations, linear algebra, and array manipulations
  • ▸Data preprocessing for machine learning and AI
  • ▸Scientific simulations and mathematical modeling
  • ▸Integration with other Python libraries for analytics and visualization

Notable Features

  • ▸N-dimensional array (ndarray) data structure
  • ▸Vectorized operations for high performance
  • ▸Broadcasting to handle operations between different shapes
  • ▸Extensive mathematical, statistical, and linear algebra functions
  • ▸Interoperability with C/C++ and other Python libraries

Origin & Creator

NumPy was created by Travis Oliphant in 2005 as an extension of the older Numeric and Numarray libraries to unify array computing in Python.

Industrial Note

NumPy is essential in virtually all scientific and engineering computing in Python and underpins libraries like SciPy, Pandas, Matplotlib, PyTorch, and TensorFlow.

More Numpy Typing Exercises

NumPy Array Operations ExampleNumPy Array Indexing and SlicingNumPy Random Number GenerationNumPy Array ReshapingNumPy Mathematical FunctionsNumPy Stacking ArraysNumPy Linear Algebra OperationsNumPy Statistical AnalysisNumPy Broadcasting Example

Practice Other Languages

CReactPythonC++RustTypeScriptKotlinPHPJavaC#RubyMqlCqlN1qlCypher