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Data Science Roadmap

Self learning Data Science curriculum.

About

This repository intendend to provide a complete Data Science learning path to those who intersted in learning Data Science. In this repository, I gave preference to free resource. However, some valuable paid courses also included.

Explanation

  • πŸ“Ί Video content.
  • πŸ’΅ Paid content.
  • πŸ“° Online article.
  • πŸ“ GitHub repo.

Content

Statistics & Probability

Descriptive Statistics

Probability

Combinations and Permutations

Distributions

Confidence Intervals

Hypothesis

Linear Algebra

Vectors and Spaces

Dot Product

Matrix Transformations

Eigenvalues and Eigenvectors

Integrals

Python Programming

Basics

Advanced

More Resources

Numpy

Basics

Shape Manipulation

Copies and Views

Less Basic

Advanced indexing and index tricks

Linear Algebra

More Resources

Pandas

More Resources

Matplotlib

Matplotlib Official Tutorials

Other Resources

To-Do

  • Seaborn
  • Exploratory Data Analysis (EDA)
  • SQL
  • Machine Learning Concepts
  • Scikit-Learn
  • Projects
  • Translation in different language
  • Cheatsheets

FAQ

  1. Which programming languages should I use? Python and R. However, I added materials on Python.

  2. How to contribute? Check out contribution guidelines.

Contribution guideline

You can open an issue and give your suggestions as to how I can improve this guide, or what I can do to improve the learning experience.

You can also fork this repo and send a pull request to fix any mistakes that you have found.

If you want to suggest a new resource, send a pull request adding such resource to the extras section. The extras section is a place where all of us will be able to submit interesting additional articles, books, courses and specializations.