Overview
- Teaches how to deploy deep learning applications using TensorFlow 2.0 in a relatively short period of time
- Explains different deep learning methods for supervised and unsupervised machine learning
- Covers advanced deep learning techniques such as Generative Adversarial Networks and Graph neural Networks
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About this book
This book builds upon the foundations established in its first edition, with updated chapters and the latest code implementations to bring it up to date with Tensorflow 2.0.
Pro Deep Learning with TensorFlow 2.0 begins with the mathematical and core technical foundations of deep learning. Next, you will learn about convolutional neural networks, including new convolutional methods such as dilated convolution, depth-wise separable convolution, and their implementation. You’ll then gain an understanding of natural language processing in advanced network architectures such as transformers and various attention mechanisms relevant to natural language processing and neural networks in general. As you progress through the book, you’ll explore unsupervised learning frameworks that reflect the current state of deep learning methods, such as autoencoders and variational autoencoders. The final chapter covers the advanced topic of generative adversarial networks and their variants, such as cycle consistency GANs and graph neural network techniques such as graph attention networks and GraphSAGE.
Upon completing this book, you will understand the mathematical foundations and concepts of deep learning, and be able to use the prototypes demonstrated to build new deep learning applications.
What You Will Learn
- Understand full-stack deep learning using TensorFlow 2.0
- Gain an understanding of the mathematical foundations of deep learning
- Deploy complex deep learning solutions in production using TensorFlow 2.0
- Understand generative adversarial networks, graph attention networks, and GraphSAGE
Who This Book Is For:
Data scientists and machine learning professionals, software developers, graduate students, and open source enthusiasts.Similar content being viewed by others
Keywords
- Machine Learning
- Deep Learning
- Python
- TensorFlow
- Convolutional Neural networks
- Recurrent Neural Networks
- Generative Adversial Networks
- Kullback Lieber Divergence
- Natural Language Processing
- Boltzmann Deep Learning Architectures
- Transformers
- Auto-Encoders
- Jensen Shannon Divergence
- Image Processing
- Audio Processing
- Autoencoders
- IPython
Table of contents (6 chapters)
Authors and Affiliations
About the author
Santanu Pattanayak works as a Senior Staff Machine Learning Specialist at Qualcomm Corp R&D and is the author of Quantum Machine Learning with Python, published by Apress. He has more than 16 years of experience, having worked at GE, Capgemini, and IBM before joining Qualcomm. He graduated with a degree in electrical engineering from Jadavpur University, Kolkata and is an avid math enthusiast. Santanu has a master’s degree in data science from the Indian Institute of Technology (IIT), Hyderabad. He also participates in Kaggle competitions in his spare time, where he ranks in the top 500. Currently, he resides in Bangalore with his wife.
Bibliographic Information
Book Title: Pro Deep Learning with TensorFlow 2.0
Book Subtitle: A Mathematical Approach to Advanced Artificial Intelligence in Python
Authors: Santanu Pattanayak
DOI: https://doi.org/10.1007/978-1-4842-8931-0
Publisher: Apress Berkeley, CA
eBook Packages: Professional and Applied Computing, Apress Access Books, Professional and Applied Computing (R0)
Copyright Information: Santanu Pattanayak 2023
Softcover ISBN: 978-1-4842-8930-3Published: 01 January 2023
eBook ISBN: 978-1-4842-8931-0Published: 31 December 2022
Edition Number: 2
Number of Pages: XX, 652
Number of Illustrations: 213 b/w illustrations
Topics: Artificial Intelligence, Machine Learning, Python