Computational Methods for Deep Learning: Theoretic, Practice and Applications

Computational Methods for Deep Learning: Theoretic, Practice and Applications

まだ評価がありません
Dec 4, 2020 · 英語 · キンドル (272 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 キンドル
ページ数 272
言語 英語
公開されました Dec 4, 2020
出版社 Springer

説明

Wei Qi Yan delves into the intricate world of computational methods tailored for deep learning. The book offers a comprehensive exploration of theoretical fundamentals, bridging the gap between abstract concepts and practical applications. It invites readers to grasp the essence of machine learning and artificial neural networks, equipping them with the tools necessary for cutting-edge innovation in technology.

Throughout the narrative, a variety of methodologies are illustrated, demonstrating how these techniques can be applied across multiple domains. Yan emphasizes hands-on practice, ensuring that learners not only understand the theory but also how to implement it effectively. This practical approach fosters a deeper understanding of the algorithms driving modern AI.

The work serves as a valuable resource for both newcomers and seasoned practitioners in the field, encouraging a diverse audience to engage with the material. With its clear explanations and thoughtful insights, the book illuminates the path toward harnessing the power of deep learning in real-world applications.

ジャンル

科学&技術
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