Essential Linear Algebra for Data Science

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Free Online Course: Essential Linear Algebra for Data Science provided by Coursera is a comprehensive online course, which lasts for 5 weeks long, 7-8 hours worth of material. The course is taught in English and is free of charge. Upon completion of the course, you can receive an e-certificate from Coursera. Essential Linear Algebra for Data Science is taught by James Bird and Jane Wall.

Overview
  • Are you interested in Data Science but lack the math background for it? Has math always been a tough subject that you tend to avoid? This course will teach you the most fundamental Linear Algebra that you will need for a career in Data Science without a ton of unnecessary proofs and concepts that you may never use. Consider this an expressway to Data Science with approachable methods and friendly concepts that will guide you to truly understanding the most important ideas in Linear Algebra.

    This course is designed to prepare learners to successfully complete Statistical Modeling for Data Science Application, which is part of CU Boulder's Master of Science in Data Science (MS-DS) program.

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Syllabus
    • Linear Systems and Gaussian Elimination
      • In this module we will learn what a matrix is and what it represents. We will explore how a system of linear equations can be expressed in a neat package via matrices. Lastly, we will delve into coordinate systems and provide visualizations to help you understand matrices in a more well-rounded way.
    • Matrix Algebra
      • In this module we will learn how to solve a linear system of equations with matrix algebra.
    • Properties of a Linear System
      • In this module we will explore concepts and properties of linear systems. This includes independence, basis, rank, row space, column space, and much more.
    • Determinant and Eigens
      • In this module we will discuss projections and how they work. We will build on a foundation using 2-dimensional projections and explore the concept in higher dimensions over time.
    • Projections and Least Squares
      • In this module we will learn how to compute the determinant of a matrix. Afterwards, Eigenvalues and Eigenvectors will be covered.