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Machine Learning For Physicists A Handson Approach 1st Sadegh Raeisi

  • SKU: BELL-54863130
Machine Learning For Physicists A Handson Approach 1st Sadegh Raeisi
$ 31.00 $ 45.00 (-31%)

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Machine Learning For Physicists A Handson Approach 1st Sadegh Raeisi instant download after payment.

Publisher: IOP Publishing, Bristol, UK
File Extension: PDF
File size: 32.8 MB
Pages: 226
Author: Sadegh Raeisi, Sedighe Raeisi
ISBN: 9780750349574, 9780750349550, 0750349573
Language: English
Year: 2023
Edition: 1st

Product desciption

Machine Learning For Physicists A Handson Approach 1st Sadegh Raeisi by Sadegh Raeisi, Sedighe Raeisi 9780750349574, 9780750349550, 0750349573 instant download after payment.

This book presents ML concepts with a hands-on approach for physicists. The goal is to both educate and enable a larger part of the community with these skills. This will lead to wider applications of modern ML techniques in physics. Accessible to physical science students, the book assumes a familiarity with statistical physics but little in the way of specialised computer science background. All chapters start with a simple introduction to the basics and the foundations, followed by some examples and then proceeds to provide concrete examples with associated codes from a GitHub repository. Many of the code examples provided can be used as is or with suitable modification by the students for their own applications.
Key Features
Practical Hands-on approach: enables the reader to use machine learning
Includes code and accompanying online resources
Practical examples for modern research and uses case studies
Written in a language accessible by physics students
Complete one-semester course

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