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Python Deep Learning

You're reading from  Python Deep Learning

Product type Book
Published in Apr 2017
Publisher Packt
ISBN-13 9781786464453
Pages 406 pages
Edition 1st Edition
Languages
Authors (4):
Valentino Zocca Valentino Zocca
Profile icon Valentino Zocca
Gianmario Spacagna Gianmario Spacagna
Profile icon Gianmario Spacagna
Daniel Slater Daniel Slater
Profile icon Daniel Slater
Peter Roelants Peter Roelants
Profile icon Peter Roelants
View More author details

Table of Contents (18) Chapters

Python Deep Learning
Credits
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface
Machine Learning – An Introduction Neural Networks Deep Learning Fundamentals Unsupervised Feature Learning Image Recognition Recurrent Neural Networks and Language Models Deep Learning for Board Games Deep Learning for Computer Games Anomaly Detection Building a Production-Ready Intrusion Detection System Index

About the Authors

Valentino Zocca graduated with a PhD in mathematics from the University of Maryland, USA, with a dissertation in symplectic geometry, after having graduated with a laurea in mathematics from the University of Rome. He spent a semester at the University of Warwick. After a post-doc in Paris, Valentino started working on high-tech projects in the Washington, D.C. area and played a central role in the design, development, and realization of an advanced stereo 3D Earth visualization software with head tracking at Autometric, a company later bought by Boeing. At Boeing, he developed many mathematical algorithms and predictive models, and using Hadoop, he has also automated several satellite-imagery visualization programs. He has since become an expert on machine learning and deep learning and has worked at the U.S. Census Bureau and as an independent consultant both in the US and in Italy. He has also held seminars on the subject of machine and deep learning in Milan and New York.

Currently, Valentino lives in New York and works as an independent consultant to a large financial company, where he develops econometric models and uses machine learning and deep learning to create predictive models. But he often travels back to Rome and Milan to visit his family and friends.

Gianmario Spacagna is a senior data scientist at Pirelli, processing sensors and telemetry data for IoT and connected-vehicle applications.

He works closely with tyre mechanics, engineers, and business units to analyze and formulate hybrid, physics-driven, and data-driven automotive models.

His main expertise is in building machine learning systems and end-to-end solutions for data products.

He is the coauthor of the Professional Data Science Manifesto (datasciencemanifesto.org) and founder of the Data Science Milan meetup community (datasciencemilan.org).

Gianmario loves evangelizing his passion for best practices and effective methodologies in the community.

He holds a master's degree in telematics from the Polytechnic of Turin and software engineering of distributed systems from KTH, Stockholm.

Prior to Pirelli, he worked in retail and business banking (Barclays), cyber security (Cisco), predictive marketing (AgilOne), and some occasional freelancing.

Daniel Slater started programming at age 11, developing mods for the id Software game Quake. His obsession led him to become a developer working in the gaming industry on the hit computer game series Championship Manager. He then moved into finance, working on risk- and high-performance messaging systems. He now is a staff engineer, working on big data at Skimlinks to understand online user behavior. He spends his spare time training AI to beat computer games. He talks at tech conferences about deep learning and reinforcement learning; his blog can be found at www.danielslater.net. His work in this field has been cited by Google.

Peter Roelants holds a master's in computer science with a specialization in artificial intelligence from KU Leuven. He works on applying deep learning to a variety of problems, such as spectral imaging, speech recognition, text understanding, and document information extraction. He currently works at Onfido as a team lead for the data extraction research team, focusing on data extraction from official documents.

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Python Deep Learning
Published in: Apr 2017 Publisher: Packt ISBN-13: 9781786464453
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