
Linear Algebra with Python for Machine Learning & AI Systems: From Vector Spaces to Matrix Decompositions, Optimization Geometry, and High-Dimensional Learning by Hayden Van Der Post, James Preston, Danny Munrow
English | January 5, 2026 | ISBN: N/A | ASIN: B0GDZRC8YN | 539 pages | EPUB | 0.51 Mb
Reactive Publishing
Linear Algebra with Python for Machine Learning & AI Systems
From Vector Spaces to Matrix Decompositions, Optimization Geometry, and High-Dimensional Learning
Modern machine learning does not run on intuition alone. It runs on linear algebra.
Every neural network, embedding model, recommender system, and optimization engine is built on vectors, matrices, and high-dimensional transformations. Yet most practitioners use these tools as black boxes, memorizing formulas without understanding how data actually moves through a learning system.
This book closes that gap.
Linear Algebra with Python for Machine Learning & AI Systems is a practical, systems-first guide to linear algebra as it is actually used in data science, machine learning, and modern AI pipelines. Instead of abstract proofs or classroom math, you will learn how linear algebra behaves inside real computational models, using Python as the primary lens.
You will move from foundational concepts to advanced matrix operations with direct relevance to machine learning performance, stability, and scalability.
What You'll Learn
* How vectors and matrices represent real data in ML systems
* Linear transformations as geometric operations on information
* Matrix multiplication as feature mixing and representation learning
* Eigenvalues and eigenvectors as system behavior and signal structure
* Singular Value Decomposition (SVD) for compression, embeddings, and noise reduction
* Rank, conditioning, and numerical stability in large-scale models
* Linear algebra inside gradient descent and backpropagation
* High-dimensional geometry and why intuition breaks at scale
* Practical NumPy, SciPy, and ML-oriented Python implementations throughout
Who This Book Is For
This book is written for:Data scientists who use linear algebra daily but want deeper intuitionMachine learning engineers building scalable, stable systemsQuantitative professionals transitioning into AI and MLDevelopers who understand calculus but feel underpowered by matrix mathAnyone who wants to actually understand what their models are doingIf you have completed or are comfortable with calculus for machine learning, this book is the natural next step.
How This Book Is Different
Unlike traditional linear algebra textbooks, this book:Avoids proof-heavy academic detoursFocuses on computation, geometry, and system behaviorUses Python to make every concept concrete and executableConnects math directly to machine learning outcomesTreats linear algebra as infrastructure, not theoryThis is linear algebra for people who build things.
Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me
Rapidgator
jiogk.7z.html
DDownload
jiogk.7z
AlfaFile
jiogk.7z
Links are Interchangeable - Single Extraction
