The Principles of Deep Learning Theory: An Effective Theory Approach to Understanding Neural Networks

Author: Daniel A. Roberts, Sho YaidaPublisher: Cambridge University PressPublished: 05/26/2022Pages: 472Binding Type: HardcoverWeight: 2.27lbsSize: 10.00h x 7.00w...
$256.65 AUD
$256.65 AUD
SKU: 9781316519332
Product Type: Books
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Author: Daniel A. Roberts
Format: Hardcover
Language: English
Subtotal: $256.65
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The Principles of Deep Learning Theory: An Effective Theory Approach to Understanding Neural Networks by Roberts, Daniel A.

The Principles of Deep Learning Theory: An Effective Theory Approach to Understanding Neural Networks

$256.65

The Principles of Deep Learning Theory: An Effective Theory Approach to Understanding Neural Networks

$256.65
Author: Daniel A. Roberts
Format: Hardcover
Language: English

Author: Daniel A. Roberts, Sho Yaida
Publisher: Cambridge University Press
Published: 05/26/2022
Pages: 472
Binding Type: Hardcover
Weight: 2.27lbs
Size: 10.00h x 7.00w x 1.00d
ISBN: 9781316519332

About the Author
Roberts, Daniel A.: - Dan Roberts was cofounder and CTO of Diffeo, an AI company acquired by Salesforce, a Research Scientist at Facebook AI Research, and a Member of the School of Natural Sciences at the Institute for Advanced Study in Princeton, NJ. He was a Hertz Fellow, earning a PhD from MIT in theoretical physics, and was also a Marshall Scholar at Cambridge and Oxford universities.Yaida, Sho: - Sho Yaida is a Research Scientist at Facebook AI Research (FAIR). Prior to joining FAIR, he obtained his PhD in physics at Stanford University and held postdoctoral positions at MIT and at Duke University. At FAIR, he uses tools from theoretical physics in order to understand neural networks, the topic of this book.Hanin, Boris: - Boris Hanin is an Assistant Professor at Princeton University in the Operations Research and Financial Engineering Department. Prior to joining Princeton in 2020, Boris was an Assistant Professor at Texas A&M in the Math Department and an NSF postdoc at MIT. He has taught graduate courses on the theory and practice of deep learning at both Texas A&M and Princeton.

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