Probabilistic Machine Learning: An Introduction

Probabilistic Machine Learning: An Introduction

Pas encore d'évaluations
Mar 1, 2022 · Anglais · Relié (864 pages)
Ajouter à l'étagère

Évaluer ce livre


Exporter le journal de lecture

Détails du livre

Format Relié
Pages 864
Langue Anglais
Publié Mar 1, 2022
Éditeur MIT Press
ISBN-10 0262046822
ISBN-13 9780262046824

Description

In the evolving landscape of artificial intelligence, one book stands out as a comprehensive guide to the principles and practices of probabilistic machine learning. Authored by Kevin P. Murphy, this work delves into the core concepts that underpin modern machine learning techniques, emphasizing the importance of uncertainty and probability in making sense of data. With a blend of theory and practical application, it serves as an essential resource for both newcomers and seasoned practitioners eager to navigate the complexities of this dynamic field.

Murphy's approach is both accessible and rigorous, making it suitable for a diverse audience. The book not only covers foundational algorithms and their implementation but also explores advanced topics, encouraging readers to think critically about the implications of probabilistic methods in machine learning. By bridging the gap between theory and real-world applications, this introduction lays the groundwork for understanding how machines can learn from data, fostering a deeper appreciation for the nuances involved in artificial intelligence.

Genres

Science & Technologie
Ajouter à l'étagère

Évaluer ce livre


Exporter le journal de lecture