Linear Algebra for Data Science and Machine Learning using R

Linear Algebra for Data Science and Machine Learning using R
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Price: 799$

This course will help you in understanding of the Linear Algebra and math’s behind Data Science and Machine Learning. Linear Algebra is the fundamental part of Data Science and Machine Learning. This course consists of lessons on each topic of Linear Algebra + the code or implementation of the Linear Algebra concepts or topics. There’re tons of topics in this course. To begin the course: We have a discussion on what is Linear Algebra and Why we need Linear Algebra Then we move on to Getting Started with R, where you will learn all about how to setup the R environment, so that it’s easy for you to have a hands-on experience. Then we get to the essence of this course;Vectors & Operations on Vectors Matrices & Operations on Matrices Determinant and Inverse Solving Systems of Linear Equations Norms & Basis Vectors Linear Independence Matrix Factorization Orthogonality Eigenvalues and Eigenvectors Singular Value Decomposition (SVD)Again, in each of these sections you will find R code demos and solved problems apart from the theoretical concepts of Linear Algebra. You will also learn how to use the R’s pracma, matrixcalc library which contains numerous functions for matrix computations and solving Linear Algebric problems. So, let’s get started….

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