Deep Learning: Principles and Implementations
暫譯: 深度學習:原則與實作
Kuang, Weidong, Kuang, Heidi
- 出版商: Wiley
- 出版日期: 2026-06-09
- 售價: $3,540
- 貴賓價: 9.5 折 $3,363
- 語言: 英文
- 頁數: 752
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 1394256000
- ISBN-13: 9781394256006
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相關分類:
DeepLearning
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相關主題
商品描述
A hands-on and intuitive guide to the foundations of modern deep learning
In Deep Learning: Principles and Implementations, distinguished researcher and professor Weidong "Will" Kuang delivers an up-to-date exploration of how major deep learning algorithms and architectures are formalized and developed from mathematical equations. The book bridges theory and practice and covers a wide range of fundamental topics, including linear regression, logistic regression, basic neural networks, convolution neural networks, as well as other basic and advanced subjects in the field.
The author provides intuitive introductions to each subject and presents the development of algorithms and architectures from basic mathematical concepts. Along the way, he relies on straightforward math to keep the topics accessible for non-mathematicians and accompanies his explanations with tested Python sample code you can apply in your own work.
You'll also find:
- Thorough introductions to both linear and logistic regression, offering a solid foundation and insight into neural networks
- Comprehensive explorations of neural networks, computer vision, natural language processing, generative models, and reinforcement learning
- Practical exercises that students and practitioners can use to apply and develop the concepts found in the book
- Balanced treatments of the mathematics, algorithms, architecture, and code that serve as the foundations of a complete understanding of deep learning
Perfect for undergraduate and graduate students with an interest in deep learning, Deep Learning: Principles and Implementations will also benefit practicing software engineers, faculty, and researchers whose work involves deep learning and related topics.
商品描述(中文翻譯)
深入淺出且直觀的現代深度學習基礎指南
在深度學習:原則與實作中,著名研究者及教授鄺偉東(Weidong "Will" Kuang)提供了對主要深度學習演算法和架構如何從數學方程式中形式化和發展的最新探索。本書橋接了理論與實踐,涵蓋了廣泛的基礎主題,包括線性回歸、邏輯回歸、基本神經網絡、卷積神經網絡,以及該領域的其他基本和進階主題。
作者對每個主題提供了直觀的介紹,並從基本數學概念出發,展示演算法和架構的發展。在此過程中,他依賴簡單的數學來保持主題對非數學專業人士的可接觸性,並附上可在您自己的工作中應用的經過測試的Python範例代碼。
您還會發現:
- 對線性回歸和邏輯回歸的徹底介紹,提供堅實的基礎和對神經網絡的深入見解
- 對神經網絡、計算機視覺、自然語言處理、生成模型和強化學習的全面探索
- 學生和從業者可以用來應用和發展書中概念的實用練習
- 對數學、演算法、架構和代碼的平衡處理,這些都是完整理解深度學習的基礎
本書非常適合對深度學習感興趣的本科生和研究生,深度學習:原則與實作也將使從事深度學習及相關主題的軟體工程師、教職員和研究人員受益。