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TensorFlow 2 Pocket Primer - Oswald Campesato

English
2019-10-02
€49.28 €61.60

-20% with code BOOKS

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As part of thebest-selling Pocket Primer series, thisbook is designed to introducebeginners to basic machine learning algorithms using TensorFlow 2. It isintended to be a fast-paced introduction to various “core” features ofTensorFlow, with code samples that cover machine learning and TensorFlowbasics. A comprehensive appendix contains someKeras-based code samples and the underpinnings of MLPs, CNNs, RNNs, ... Full description

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Description

As part of thebest-selling Pocket Primer series, thisbook is designed to introducebeginners to basic machine learning algorithms using TensorFlow 2. It isintended to be a fast-paced introduction to various “core” features ofTensorFlow, with code samples that cover machine learning and TensorFlowbasics. A comprehensive appendix contains someKeras-based code samples and the underpinnings of MLPs, CNNs, RNNs, and LSTMs. The material inthe chapters illustrates how to solve a variety of tasks after which you can dofurther reading to deepen your knowledge. Companion files with all of the codesamples are available for downloading from the publisher by emailing proof of purchase to [email protected]:Uses Python for codesamples Covers TensorFlow 2 APIsand Datasets Includes a comprehensiveappendix that covers Keras and advanced topics such as NLPs, MLPs, RNNs, LSTMs Features the companion files with all of thesource code examples and figures (download fromthe publisher)

More Information

Author Oswald Campesato
Publisher De Gruyter
Release year 2019
Cover type Softcover
EAN 9781683924609
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€49.28 €61.60