LastAncientOne Mathematics For Machine Learning Save

Learn the mathematics behind machine learning and explore various mathematical concepts within machine learning.

Project README

Contributors Forks Stargazers Issues MIT License LinkedIn

Mathematics for Machine Learning and Deep Learning

Description:

This tutorial provides an overview of Mathematics in Machine Learning and Deep Learning, including step-by-step explanations and examples of math problems in these fields. Its aim is to enhance your understanding of mathematics in relation to machine learning and deep learning education. :symbols: :1234:

Prerequisites:

Python 3.0 +
Use jupyter notebook

List of Mathematics:

Basic Mathemathics

  • Addition, Subtraction, Multiplication, Division, Square Root, and Algebra.

Geometry

  • Shapes, Area, Perimeter, Volume, Points, Lines, Angles, Surfaces, Planes, and Curves

Statistics

  • Data collection, Data Analysis, Probability, Average, Median, Mode, Standard Deviation, and Variances

Calculus

  • Instantaneous rates of change and Slopes of curves, Differential, Integral, Series, Vector, and Multivariable

Linear Algebra

  • Matrices, Vector Spaces, Linear Systems, Gaussian elimination, Linear Systems, Determinant, Eigenvalues and eigenvectors

Author:

  • Tin Hang
Open Source Agenda is not affiliated with "LastAncientOne Mathematics For Machine Learning" Project. README Source: LastAncientOne/Mathematics_for_Machine_Learning

Open Source Agenda Badge

Open Source Agenda Rating