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Sujit Pal is a Technology Research Director at Elsevier Labs, an advancedtechnology group within the Reed-Elsevier Group of companies. His areas ofinterest include Semantic Search, Natural Language Processing, Machine Learning,and Deep Learning. At Elsevier, he has worked on several machine learninginitiatives involving large image and text corpora, and other initiatives aroundrecommendation systems and knowledge graph development. He has previouslyco-authored another book on Deep Learning with Antonio Gulli and writes abouttechnology on his blog Salmon Run.I would like to thank both my co-authors for their support and for makingthis authoring experience a productive and pleasant one, the editorialteam at Packt who were constantly there for us with constructive help andsupport, and my family for their patience. It has truly taken a village, andthis book would not have been possible without the passion and hard workfrom everyone on the team.
About the reviewersHaesun Park is a machine learning Google Developer Expert. He has been asoftware engineer for more than 15 years. He has written and translated severalbooks on machine learning. He is an entrepreneur, and currently runs his ownbusiness.Other books Haesun has worked on include the translation of Hands-On MachineLearning with Scikit-Learn and TensorFlow, Python Machine Learning, and DeepLearning with Python.I would like to thank Suresh Jain who proposed this work to me, andextend my sincere gratitude to Janice Gonsalves, who provided mewith a great deal of support in the undertaking of reviewing this book.Dr. Simeon Bamford has a background in AI. He is specialized in neural andneuromorphic engineering, including neural prosthetics, mixed-signal CMOSdesign for spike-based learning, and machine vision with event-based sensors.He has used TensorFlow for natural language processing and has experience indeploying TensorFlow models on serverless cloud platforms.
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About the reviewers
Haesun Park is a machine learning Google Developer Expert. He has been a
software engineer for more than 15 years. He has written and translated several
books on machine learning. He is an entrepreneur, and currently runs his own
business.
Other books Haesun has worked on include the translation of Hands-On Machine
Learning with Scikit-Learn and TensorFlow, Python Machine Learning, and Deep
Learning with Python.
I would like to thank Suresh Jain who proposed this work to me, and
extend my sincere gratitude to Janice Gonsalves, who provided me
with a great deal of support in the undertaking of reviewing this book.
Dr. Simeon Bamford has a background in AI. He is specialized in neural and
neuromorphic engineering, including neural prosthetics, mixed-signal CMOS
design for spike-based learning, and machine vision with event-based sensors.
He has used TensorFlow for natural language processing and has experience in
deploying TensorFlow models on serverless cloud platforms.