Get Free Shipping on orders over $89
Modern Machine Learning and Pattern Recognition - Djamel Bouchaffra

Modern Machine Learning and Pattern Recognition

By: Djamel Bouchaffra

Hardcover | 25 August 2026

At a Glance

Hardcover


$188.75

or 4 interest-free payments of $47.19 with

 or 

Available: 25th August 2026

Preorder. Will ship when available.

Modern Machine Learning and Pattern Recognition presents a rigorous, comprehensive exploration from classical learning paradigms to the latest deep architectures and large language models. Integrating supervised, unsupervised, self-supervised, and reinforcement learning with modern neural network design, the book offers a unified view of machine learning and pattern recognition grounded in statistical learning theory and optimization. Through a progression of chapters, readers move from foundations and multilayer perceptrons to convolutional and recurrent networks, generative adversarial models, and transformer-based large language models. A special feature of this text is its combination of theoretical depth with extensive practice-oriented material, including many exercises, Python-based projects, and real-world case studies that bridge mathematical analysis with implementation and experimentation. Beyond just standard architectures, the book introduces original coalitional neural models with energy-based foundations, drawing on statistical physics, game theory, and random matrix theory to analyze and redesign deep networks at a fundamental level. It concludes with dedicated chapters on the ethical and social implications of large-scale models and on emerging research directions such as topological datat analysis, meta-reasoning in LLMs, and causal inference: helping readers connect core techniques to current debates and future developments in AI. Meant for advanced undergraduates, graduate students, researchers, and professionals, this single-author monograph provides a coherent and pedagogically structured treatment suitable for classroom adoption, self-study, and reference. Readers are equipped not only to understand existing models, but also to engage with ongoing research on interpretability, robustness, and the next generation of learning architectures.

More in Machine Learning

How We Learn : The New Science of Education and the Brain - Stanislas Dehaene
Mathematics for Machine Learning - A. Aldo  Faisal

RRP $79.95

$62.99

21%
OFF
Handbook of Reinforcement Learning - Todd Mcmullen
How To Think About AI : A Guide For The Perplexed - Richard  Susskind

RRP $25.95

$22.75

12%
OFF
Superintelligence : Paths, Dangers, Strategies - Nick Bostrom

RRP $32.95

$26.99

18%
OFF
Machine Learning For Dummies : For Dummies (Computer/Tech) - Luca Massaron
AI Engineering : Building Applications with Foundation Models - Chip Huyen
Learning Algorithms : A Programmer's Guide to Writing Better Code - George Heineman
HBR Guide to Generative AI for Managers : HBR Guide - Elisa Farri
AI ChatBots For Dummies : For Dummies (Computer/Tech) - Kelly Noble Mirabella
Beyond Vibe Coding : From Coder to Ai-Era Developer - Addy Osmani

RRP $133.00

$106.40

20%
OFF