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Hybrid Data Science (HDS) Modeling Approaches for Industrial and Scientific Applications

Hybrid Data Science (HDS) Modeling Approaches for Industrial and Scientific Applications

Paperback (25 Jun 2022)

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Publisher's Synopsis

This book details the basics of Deep Learning, Machine Learning and numerical grid based methods such as finite element, finite volume and finite difference. Hybrid models combining grid based methods and machine learning in particular neural networks in covered in detail. It will take you through a step by step approach making the user to understand both the physics domain and data science to hybridize both. The book describes the methods to create hybrid data science models for industry and scientific applications. The book covers some practical applications where the hybrid techniques can be used. It also provides sample python codes for the several chapters discussed in the book. This book represents our attempt to make hybrid physics and deep learning approachable, meaningful and present the basic concepts, context, and the code. We believe that this might be the first book published using such hybrid physics/machine learning technology.

Book information

ISBN: 9798834831501
Publisher: Amazon Digital Services LLC - Kdp
Imprint: Independently Published
Pub date:
Language: English
Number of pages: 828
Weight: 1515g
Height: 229mm
Width: 152mm
Spine width: 55mm