bokomslag Machine Learning Methods for Engineering Application Development
Data & IT

Machine Learning Methods for Engineering Application Development

Basant Verma N Thillaiarasu Kailash Kumar

Pocket

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  • 240 sidor
  • 2022
This book is a quick review of machine learning methods for engineeringapplications. It provides an introduction to the principles of machine learningand common algorithms in the first section. Proceeding chapters summarize andanalyze the existing scholarly work and discuss some general issues in this field.Next, it offers some guidelines on applying machine learning methods to softwareengineering tasks. Finally, it gives an outlook into some of the futuredevelopments and possibly new research areas of machine learning and artificialintelligence in general.Techniques highlighted in the book include: Bayesian models, supportvector machines, decision tree induction, regression analysis, and recurrent andconvolutional neural network. Finally, it also intends to be a reference book. Key Features: Describes real-world problems that can be solved using machine learningExplains methods for directly applying machine learning techniques to concrete real-world problemsExplains concepts used in Industry 4.0 platforms, including the use and integration of AI, ML, Big Data, NLP, and the Internet of Things (IoT). It does not require prior knowledge of the machine learning This book is meantto be an introduction to artificial intelligence (AI), machine earning, and itsapplications in Industry 4.0. It explains the basic mathematical principlesbut is intended to be understandable for readers who do not have a backgroundin advanced mathematics.

  • Författare: Basant Verma, N Thillaiarasu, Kailash Kumar
  • Format: Pocket/Paperback
  • ISBN: 9789815079203
  • Språk: Engelska
  • Antal sidor: 240
  • Utgivningsdatum: 2022-11-11
  • Förlag: Bentham Science Publishers