Raju K. Artificial Intelligence and Machine Learning Techniques...2025

Download Download Torrent Opens in your torrent client (e.g. qBittorrent)
Category Other
Size11.81 MB
Added9 months ago (2025-06-03 10:11:01)
Health
Good14/0
Info Hash9B480C0460BC8304775278C7D66E07643D44D0D3
Peers Updated12 hours ago (2026-03-23 22:37:31)

Report Torrent

0 / 300

Description


Textbook in PDF format

The present book covers various facets of Artificial Intelligence, Machine Learning, and Fuzzy Logic. It includes a brief discussion on performance indicators, Classical and Advanced Machine Learning algorithms, Fuzzy logic-based modelling algorithms, Emerging Research Areas, including Blockchain, recent ML techniques, Evolutionary Algorithms, Large Language Model (LLM)-based Generative AI, the Internet of Things, Big Data, Decision Support Systems, Taguchi design of experiments, data augmentation, and Cross-Validation, and representative case studies. The appendix covers representative AI tools, data sources, books, and journals on AI. The present book can support undergraduate, postgraduate, and Ph.D. students in Artificial Intelligence, Generative Artificial Intelligence, Machine Learning, Data Sciences, Soft Computing, and Fuzzy Logic in Engineering and Management and allied fields. The proposed book has immense value in the interdisciplinary and cross-disciplinary context.
The present book consists of seven chapters: (1) an introduction; (2) a description of performance indicators; (3) classical Machine Learning algorithms; (4) advanced Machine Learning algorithms; (5) fuzzy logic-based modelling algorithms; (6) emerging research areas, topics including, Blockchain, recent ML techniques, evolutionary algorithms, AI tools, the Internet of Things, Big Data, decision support systems, Taguchi design of experiments, data augmentation, and cross-validation; (7) representative case studies. The appendix covers representative AI tools, data sources related to AI, books, and journals on AI. The present book can support undergraduate, postgraduate, and Ph.D. students in AI, Data Mining, and Soft Computing in Engineering and Management and allied fields.
Introduction
Description of Performance Indicators
Classical Machine Learning Algorithms
Advanced Machine Learning Algorithms
Fuzzy-Based Modelling Algorithms
Emerging Research Areas
Case Studies
Appendix A Representative AI Tools and Data Sources Related to AI
Appendix B Representative Books and Journals on AI

×