Deep Learning: A Visual Approach

Author:   Andrew Glassner
Publisher:   No Starch Press,US
ISBN:  

9781718500723


Pages:   768
Publication Date:   29 June 2021
Format:   Hardback
Availability:   To order   Availability explained
Stock availability from the supplier is unknown. We will order it for you and ship this item to you once it is received by us.

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Deep Learning: A Visual Approach


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Full Product Details

Author:   Andrew Glassner
Publisher:   No Starch Press,US
Imprint:   No Starch Press,US
Weight:   0.567kg
ISBN:  

9781718500723


ISBN 10:   1718500726
Pages:   768
Publication Date:   29 June 2021
Audience:   General/trade ,  General
Format:   Hardback
Publisher's Status:   Active
Availability:   To order   Availability explained
Stock availability from the supplier is unknown. We will order it for you and ship this item to you once it is received by us.

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Reviews

For a visual person like myself, Andrew's approach makes these Deep Learning concepts much more accessible than the typical algebraic treatments. Andrew is famous for his ability to teach complex topics that blend mathematics and algorithms, and this work I think is his best yet. --Peter Shirley, Distinguished Research Engineer, Nvidia


Andrew is famous for his ability to teach complex topics that blend mathematics and algorithms, and this work I think is his best yet. -Peter Shirley, Distinguished Research Engineer, Nvidia I would recommend that anyone entering this area, or even already familiar with the subject, read it cover-to-cover to firmly ground their understanding. -Richard Szeliski, author of Computer Vision: Algorithms and Applications This is a comprehensive-yet easy to understand-book about complex concepts and algorithms. Andrew Glassner demonstrates that visualizing concepts as graphs is a tremendous benefit to easy cognition. -Thomas Frisendal, author of Graph Data Modeling for NoSQL and SQL An absolutely amazing book in the field of Machine Learning. Lots of colored visuals make the concepts very easy to understand. -Nabeel , @nabeelhasan25


""Andrew is famous for his ability to teach complex topics that blend mathematics and algorithms, and this work I think is his best yet."" —Peter Shirley, Distinguished Research Engineer, Nvidia “I would recommend that anyone entering this area, or even already familiar with the subject, read it cover-to-cover to firmly ground their understanding.“ —Richard Szeliski, author of Computer Vision: Algorithms and Applications ""This is a comprehensive—yet easy to understand—book about complex concepts and algorithms. Andrew Glassner demonstrates that visualizing concepts as graphs is a tremendous benefit to easy cognition."" —Thomas Frisendal, author of Graph Data Modeling for NoSQL and SQL ""An absolutely amazing book in the field of Machine Learning. Lots of colored visuals make the concepts very easy to understand."" —Nabeel حسن, @nabeelhasan25 ""This is the best technical book I've ever read. I'm essentially speechless. Thank you, @AndrewGlassner!"" —Maciej Chmielarz, @MaciejChmielarz, Software Developer


Andrew is famous for his ability to teach complex topics that blend mathematics and algorithms, and this work I think is his best yet. -Peter Shirley, Distinguished Research Engineer, Nvidia I would recommend that anyone entering this area, or even already familiar with the subject, read it cover-to-cover to firmly ground their understanding. -Richard Szeliski, author of Computer Vision: Algorithms and Applications


Andrew is famous for his ability to teach complex topics that blend mathematics and algorithms, and this work I think is his best yet. --Peter Shirley, Distinguished Research Engineer, Nvidia I would recommend that anyone entering this area, or even already familiar with the subject, read it cover-to-cover to firmly ground their understanding. --Richard Szeliski, author of Computer Vision: Algorithms and Applications


Author Information

Andrew Glassner is a research scientist specializing in computer graphics and deep learning. He is currently a Senior Research Scientist at Weta Digital, where he works on integrating deep learning with the production of world-class visual effects for films and television. He has previously worked as a researcher at labs such as the IBM Watson Lab, Xerox PARC, and Microsoft Research. He was Editor in Chief of ACM TOG, the premier research journal in graphics, and Technical Papers Chair for SIGGRAPH, the premier conference in graphics. He's written or edited a dozen technical books on computer graphics, ranging from the textbook Principles of Digital Image Synthesis to the popular Graphics Gems series, offering practical algorithms for working programmers. Glassner has a PhD in Computer Science from UNC-Chapel Hill.

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