Skip to content
Scan a barcode
Scan
Added to your cart
Paperback Probabilistic Deep Learning: With Python, Keras and Tensorflow Probability Book

ISBN: 1617296074

ISBN13: 9781617296079

Probabilistic Deep Learning: With Python, Keras and TensorFlow Probability

Select Format

Select Condition ThriftBooks Help Icon

Recommended

Format: Paperback

Condition: Acceptable

$24.39
Save $25.60!
List Price $49.99
Almost Gone, Only 1 Left!

Book Overview

Probabilistic Deep Learning is a hands-on guide to the principles that support neural networks. Learn to improve network performance with the right distribution for different data types, and discover Bayesian variants that can state their own uncertainty to increase accuracy. This book provides easy-to-apply code and uses popular frameworks to keep you focused on practical applications.

Summary
Probabilistic Deep Learning: With Python, Keras and TensorFlow Probability teaches the increasingly popular probabilistic approach to deep learning that allows you to refine your results more quickly and accurately without much trial-and-error testing. Emphasizing practical techniques that use the Python-based Tensorflow Probability Framework, you'll learn to build highly-performant deep learning applications that can reliably handle the noise and uncertainty of real-world data.

Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications.

About the technology
The world is a noisy and uncertain place. Probabilistic deep learning models capture that noise and uncertainty, pulling it into real-world scenarios. Crucial for self-driving cars and scientific testing, these techniques help deep learning engineers assess the accuracy of their results, spot errors, and improve their understanding of how algorithms work.

About the book
Probabilistic Deep Learning is a hands-on guide to the principles that support neural networks. Learn to improve network performance with the right distribution for different data types, and discover Bayesian variants that can state their own uncertainty to increase accuracy. This book provides easy-to-apply code and uses popular frameworks to keep you focused on practical applications.

What's inside

Explore maximum likelihood and the statistical basis of deep learning
Discover probabilistic models that can indicate possible outcomes
Learn to use normalizing flows for modeling and generating complex distributions
Use Bayesian neural networks to access the uncertainty in the model

About the reader
For experienced machine learning developers.

About the author
Oliver D rr is a professor at the University of Applied Sciences in Konstanz, Germany. Beate Sick holds a chair for applied statistics at ZHAW and works as a researcher and lecturer at the University of Zurich. Elvis Murina is a data scientist.

Table of Contents

PART 1 - BASICS OF DEEP LEARNING

1 Introduction to probabilistic deep learning

2 Neural network architectures

3 Principles of curve fitting

PART 2 - MAXIMUM LIKELIHOOD APPROACHES FOR PROBABILISTIC DL MODELS

4 Building loss functions with the likelihood approach

5 Probabilistic deep learning models with TensorFlow Probability

6 Probabilistic deep learning models in the wild

PART 3 - BAYESIAN APPROACHES FOR PROBABILISTIC DL MODELS

7 Bayesian learning

8 Bayesian neural networks
Copyright © 2025 Thriftbooks.com Terms of Use | Privacy Policy | Do Not Sell/Share My Personal Information | Cookie Policy | Cookie Preferences | Accessibility Statement
ThriftBooks ® and the ThriftBooks ® logo are registered trademarks of Thrift Books Global, LLC
GoDaddy Verified and Secured