- ホーム
- > 洋書
- > 英文書
- > Science / Mathematics
Full Description
Deep Learning: From Algorithmic Essence to Industrial Practice serves as a comprehensive guide, bridging the gap between foundational theories and real-world implementation. The book delves into the mechanisms behind deep learning models, breaking down complex algorithms into digestible explanations. Engineering students, AI enthusiasts, and professionals alike will find this resource invaluable as it navigates the intricacies of training neural networks, optimizing performance, and effectively deploying them in various sectors. Beyond theoretical knowledge, the book emphasizes practical applications, showcasing how deep learning powers advancements in fields like healthcare, finance, and autonomous systems.
It also discusses the challenges of scaling models, the ethical considerations surrounding AI, and the future trajectory of this transformative technology. With its blend of academic rigor and industrial insights, this book equips readers with the tools to innovate and lead in the ever-evolving world of artificial intelligence.
Contents
1. Neural Networks
2. Convolutional Neural Networks - Image Classification and Object Detection
3. Convolutional Neural Networks - Semantic Segmentation
4. Recurrent Neural Networks
5. Distributed Deep Learning Systems
6. Frontiers of Deep Learning
7. Special Lectures
8. Transformer and Its Companions
9. Core Practices
10. Deep Learning Inference Systems