This beginner-friendly course covers core linear algebra concepts essential for data science and machine learning. Start with linear equations and learn to identify linear vs. non-linear forms and solve systems with real-world examples. Then explore matrices and vectors, including matrix operations, special matrix types, and vector roles in linear transformations. Finally, discover how these foundations support techniques like Principal Component Analysis (PCA) for dimensionality reduction and data analysis.

Linear Algebra for ML and Analytics Training

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What you'll learn
Understand the role of linear equations in data science and distinguish between linear and non-linear forms
Perform matrix operations and use vectors for linear transformations in machine learning
Apply concepts like systems of equations and matrix types to solve real-world problems
Build a strong foundation in linear algebra for machine learning, data analysis, and PCA applications
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There are 2 modules in this course
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Birla Institute of Technology & Science, Pilani

Imperial College London

Johns Hopkins University

DeepLearning.AI
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