NumPy (short for "Numerical Python") is a Python library used for scientific computing and data analysis. It provides a powerful set of tools for working with arrays and matrices of numerical data. NumPy is particularly useful for numerical calculations involving large amounts of data, as it is designed to be efficient and fast.
One of the main features of NumPy is its ability to handle multi-dimensional arrays of data. These arrays can be used to represent vectors, matrices, or any other kind of numerical data. NumPy provides a large number of built-in functions for performing operations on these arrays, such as mathematical functions (like sin, cos, and exp), statistical functions (like mean and variance), and linear algebra functions (like matrix multiplication and eigendecomposition).
NumPy also provides a number of tools for working with structured data, such as CSV files or other tabular data. These tools allow you to easily import and manipulate data, and to perform complex calculations and analyses on it.
In addition to its core functionality, NumPy is often used as a foundation for other Python libraries that are used in scientific computing and data analysis, such as Pandas and SciPy. This makes NumPy an essential tool for anyone working in these fields.
Overall, NumPy is a powerful and versatile library that is an essential tool for anyone working in scientific computing, data analysis, or related fields.
This course introduce with all majority of concept of NumPy - numerical python library.