Transformers for Machine Learning Transformers for Machine Learning
Chapman & Hall/CRC Machine Learning & Pattern Recognition

Transformers for Machine Learning

A Deep Dive

Uday Kamath その他
    • ¥8,800
    • ¥8,800

発行者による作品情報

Transformers are becoming a core part of many neural network architectures, employed in a wide range of applications such as NLP, Speech Recognition, Time Series, and Computer Vision. Transformers have gone through many adaptations and alterations, resulting in newer techniques and methods. Transformers for Machine Learning: A Deep Dive is the first comprehensive book on transformers.

Key Features:
A comprehensive reference book for detailed explanations for every algorithm and techniques related to the transformers. 60+ transformer architectures covered in a comprehensive manner. A book for understanding how to apply the transformer techniques in speech, text, time series, and computer vision. Practical tips and tricks for each architecture and how to use it in the real world. Hands-on case studies and code snippets for theory and practical real-world analysis using the tools and libraries, all ready to run in Google Colab.
The theoretical explanations of the state-of-the-art transformer architectures will appeal to postgraduate students and researchers (academic and industry) as it will provide a single entry point with deep discussions of a quickly moving field. The practical hands-on case studies and code will appeal to undergraduate students, practitioners, and professionals as it allows for quick experimentation and lowers the barrier to entry into the field.

ジャンル
コンピュータ/インターネット
発売日
2022年
5月24日
言語
EN
英語
ページ数
283
ページ
発行者
CRC Press
販売元
Taylor & Francis Group
サイズ
14.6
MB
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