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Machine Learning In Python For Process Systems Engineering Ankur Kumar Jesus Florescerrillo

  • SKU: BELL-47411856
Machine Learning In Python For Process Systems Engineering Ankur Kumar Jesus Florescerrillo
$ 31.00 $ 45.00 (-31%)

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Machine Learning In Python For Process Systems Engineering Ankur Kumar Jesus Florescerrillo instant download after payment.

Publisher: Lean Publishing
File Extension: PDF
File size: 18.13 MB
Pages: 352
Author: Ankur Kumar ; Jesus Flores-Cerrillo
Language: English
Year: 2022

Product desciption

Machine Learning In Python For Process Systems Engineering Ankur Kumar Jesus Florescerrillo by Ankur Kumar ; Jesus Flores-cerrillo instant download after payment.

This book provides an application-focused exposition of modern ML tools that have proven useful in process industry and hands-on illustrations on how to develop ML-based solutions for process monitoring, predictive maintenance, fault diagnosis, inferential modeling, dimensionality reduction, and process control. This book considers unique characteristics of industrial process data and uses real data from industrial systems for illustrations. With the focus on practical implementation and minimal programming or ML prerequisites, the book covers the gap in available ML resources for industrial practitioners. The authors of this book have drawn from their years of experience in developing data-driven industrial solutions to provide a guided tour along the wide range of available ML methods and declutter the world of machine learning. The readers will find all the resources they need to deal with high-dimensional, correlated, noisy, corrupted, multimode, and nonlinear process data.
The book has been divided into four parts. Part 1 provides a perspective on the importance of ML in process systems engineering and lays down the basic foundations of ML. Part 2 provides in-detail presentation of classical ML techniques and has been written keeping in mind the various characteristics of industrial process systems. Part 3 is focused on artificial neural networks and deep learning. Part 4 covers the important topic of deploying ML solutions over web and shows how to build a production-ready process monitoring web application.
Broadly, the book covers the following:
    Varied applications of ML in process industry
    Fundamentals of machine learning workflow
    Practical methodologies for pre-processing industrial data
    Classical ML methods and their application for process monitoring, fault diagnosis, and soft sensing
    Deep learning and its application for predictive maintenance
    R

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