000 03652cam a2200277zu 4500
001 88958013
003 FRCYB88958013
005 20250108004658.0
006 m o d
007 cr un
008 250108s2024 fr | o|||||0|0|||eng d
020 _a9789355516145
035 _aFRCYB88958013
040 _aFR-PaCSA
_ben
_c
_erda
100 1 _aSharma, Dr. Pooja
245 0 1 _aSimplified Machine Learning
_bThe essential building blocks for Machine Learning expertise (English Edition)
_c['Sharma, Dr. Pooja']
264 1 _bBPB Publications
_c2024
300 _a p.
336 _btxt
_2rdacontent
337 _bc
_2rdamdedia
338 _bc
_2rdacarrier
650 0 _a
700 0 _aSharma, Dr. Pooja
856 4 0 _2Cyberlibris
_uhttps://international.scholarvox.com/netsen/book/88958013
_qtext/html
_a
520 _aExplore the world of Artificial Intelligence with a deep understanding of Machine Learning concepts and algorithmsKey Features? A detailed study of mathematical concepts, Machine Learning concepts, and techniques.? Discusses methods for evaluating model performances and interpreting results.? Explores all types of Machine Learning (supervised, unsupervised, reinforcement, association rule mining, artificial neural network) in detail.? Comprises numerous review questions and programming exercises at the end of every chapter.Description"Simplified Machine Learning" is a comprehensive guide that navigates readers through the intricate landscape of Machine Learning, offering a balanced blend of theory, algorithms, and practical applications.The first section introduces foundational concepts such as supervised and unsupervised learning, regression, classification, clustering, and feature engineering, providing a solid base in Machine Learning theory. The second section explores algorithms like decision trees, support vector machines, and neural networks, explaining their functions, strengths, and limitations, with a special focus on deep learning, reinforcement learning, and ensemble methods. The book also covers essential topics like model evaluation, hyperparameter tuning, and model interpretability. The final section transitions from theory to practice, equipping readers with hands-on experience in deploying models, building scalable systems, and understanding ethical considerations.By the end, readers will be able to leverage Machine Learning effectively in their respective fields, armed with practical skills and a strategic approach to problem-solving.What you will learn? Solid foundation in Machine Learning principles, algorithms, and methodologies.? Implementation of Machine Learning models using popular libraries like NumPy, Pandas, PyTorch, or scikit-learn.? Knowledge about selecting appropriate models, evaluating their performance, and tuning hyperparameters.? Techniques to pre-process and engineer features for Machine Learning models.? To frame real-world problems as Machine Learning tasks and apply appropriate techniques to solve them.Who this book is forThis book is designed for a diverse audience interested in Machine Learning, a core branch of Artificial Intelligence. Its intellectual coverage will benefit students, programmers, researchers, educators, AI enthusiasts, software engineers, and data scientists.Table of Contents1. Introduction to Machine Learning2. Data Pre-processing3. Supervised Learning: Regression4. Supervised Learning: Classification5. Unsupervised Learning: Clustering6. Dimensionality Reduction and Feature Selection7. Association Rule Mining8. Artificial Neural Network9. Reinforcement Learning10. ProjectAppendixBibliography
999 _c79741
_d79741