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Hands-On Deep Learning with Go. A practical guide to building and implementing neural network models using Go Gareth Seneque, Darrell Chua

(ebook) (audiobook) (audiobook) Książka w języku 1
Hands-On Deep Learning with Go. A practical guide to building and implementing neural network models using Go Gareth Seneque, Darrell Chua - okladka książki

Hands-On Deep Learning with Go. A practical guide to building and implementing neural network models using Go Gareth Seneque, Darrell Chua - okladka książki

Hands-On Deep Learning with Go. A practical guide to building and implementing neural network models using Go Gareth Seneque, Darrell Chua - audiobook MP3

Hands-On Deep Learning with Go. A practical guide to building and implementing neural network models using Go Gareth Seneque, Darrell Chua - audiobook CD

Autorzy:
Gareth Seneque, Darrell Chua
Ocena:
Bądź pierwszym, który oceni tę książkę
Stron:
242
Dostępne formaty:
     PDF
     ePub
     Mobi
Go is an open source programming language designed by Google for handling large-scale projects efficiently. The Go ecosystem comprises some really powerful deep learning tools such as DQN and CUDA. With this book, you'll be able to use these tools to train and deploy scalable deep learning models from scratch.
This deep learning book begins by introducing you to a variety of tools and libraries available in Go. It then takes you through building neural networks, including activation functions and the learning algorithms that make neural networks tick. In addition to this, you'll learn how to build advanced architectures such as autoencoders, restricted Boltzmann machines (RBMs), convolutional neural networks (CNNs), recurrent neural networks (RNNs), and more. You'll also understand how you can scale model deployments on the AWS cloud infrastructure for training and inference.
By the end of this book, you'll have mastered the art of building, training, and deploying deep learning models in Go to solve real-world problems.

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O autorach książki

Gareth Seneque is a machine learning engineer with 11 years' experience of building and deploying systems at scale in the finance and media industries. He became interested in deep learning in 2014 and is currently building a search platform within his organization, using neuro-linguistic programming and other machine learning techniques to generate content metadata and drive recommendations. He has contributed to a number of open source projects, including CoREBench and Gorgonia. He also has extensive experience with modern DevOps practices, using AWS, Docker, and Kubernetes to effectively distribute the processing of machine learning workloads.
Darrell Chua is a senior data scientist with more than 10 years' experience. He has developed models of varying complexity, from building credit scorecards with logistic regression to creating image classification models for trading cards. He has spent the majority of his time working with in fintech companies, trying to bring machine learning technologies into the world of finance. He has been programming in Go for several years and has been working on deep learning models for even longer. Among his achievements is the creation of numerous business intelligence and data science pipelines that enable the delivery of a top-of-the-line automated underwriting system, producing near-instant approval decisions.

Packt Publishing - inne książki

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