
BOOKS - Linear Algebra for Data Science, Machine Learning, and Signal Processing

Linear Algebra for Data Science, Machine Learning, and Signal Processing
Author: Jeff Fessler, Raj Rao Nadakuditi
Year: 2024
Pages: 451
Format: PDF
File size: 29.2 MB
Language: ENG

Year: 2024
Pages: 451
Format: PDF
File size: 29.2 MB
Language: ENG

Linear Algebra for Data Science Machine Learning and Signal Processing Introduction The world we live in today is vastly different from the one our parents or grandparents grew up in. With the rapid pace of technological advancements, it's no surprise that linear algebra has become an essential tool for data science, machine learning, and signal processing. This book provides an in-depth look at the fundamental concepts of linear algebra and its applications in these fields, making it an indispensable resource for anyone looking to stay ahead of the curve. Chapter 1: The Evolution of Technology In this chapter, we explore how technology has evolved over time, from simple tools like the abacus to complex algorithms that power artificial intelligence. We examine the impact of each innovation on society, highlighting both the benefits and drawbacks of technological progress. By understanding the historical context of technology, we can better appreciate the significance of linear algebra in modern times. Chapter 2: Linear Algebra Basics This chapter delves into the core principles of linear algebra, including vectors, matrices, and tensor operations. We discuss the importance of these concepts in data science, machine learning, and signal processing, as well as their real-world applications. By mastering these fundamentals, readers will be well-equipped to tackle more advanced topics in subsequent chapters. Chapter 3: Matrix Factorization Matrix factorization is a crucial aspect of linear algebra, with far-reaching implications for data analysis and machine learning.
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