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Pattern Recognition Primer Karol Przystalski Maciej J Ogorzałek

  • SKU: BELL-239922694
Pattern Recognition Primer Karol Przystalski Maciej J Ogorzałek
$ 35.00 $ 45.00 (-22%)

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Pattern Recognition Primer Karol Przystalski Maciej J Ogorzałek instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 9.77 MB
Pages: 287
Author: Karol Przystalski, Maciej J. Ogorzałek, Jan K. Argasiński
ISBN: 9783031918155, 3031918150
Language: English
Year: 2025

Product desciption

Pattern Recognition Primer Karol Przystalski Maciej J Ogorzałek by Karol Przystalski, Maciej J. Ogorzałek, Jan K. Argasiński 9783031918155, 3031918150 instant download after payment.

This textbook provides semester-length coverage of pattern recognition/classification, accessible to everyone who would like to understand how pattern recognition and machine learning works. It explores the most commonly used classification methods in an intelligible way. Unlike other books available for this course, this one explains from top to bottom each method with all needed details. Every method described is explained with examples in Python. The presentation is designed to be highly accessible to students from a variety of disciplines, with no experience in machine learning. Each chapter contains easy to understand code samples, as well as exercises to consolidate and test knowledge.

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