Computational Methods for Deep Learning: Theory, Algorithms, and Implementations

Computational Methods for Deep Learning: Theory, Algorithms, and Implementations

まだ評価がありません
Oct 17, 2023 · 英語 · ハードカバー (242 ページ)
棚に追加

この本を評価する


ブックジャーナルをエクスポート

本の詳細

形式 ハードカバー
ページ数 242
言語 英語
公開されました Oct 17, 2023
出版社 Springer
2nd ed. 2023
ISBN-10 9819948223
ISBN-13 9789819948222

説明

This comprehensive work delves into the intricate world of deep learning, offering valuable insights into both the theoretical foundations and practical applications. The author meticulously explores various computational methods, providing readers with a solid understanding of the underlying principles that drive deep learning technologies. This makes it an essential resource for anyone looking to grasp the complexities of machine learning.

Readers will encounter a range of algorithms, each presented with clarity and precision. The author highlights not only the mechanics of these algorithms but also their real-world implementations. This practical approach ensures that readers can translate theory into practice, equipping them with the skills needed to apply deep learning techniques effectively.

With a balanced blend of theory, algorithms, and hands-on implementation, this work serves as a crucial guide for students, researchers, and practitioners alike. Whether one is new to the field or seeking to advance their knowledge, this book offers a wealth of information designed to foster a deeper understanding of deep learning.
棚に追加

この本を評価する


ブックジャーナルをエクスポート