Mishra V. Machine Learning. Algorithms, Theory and Practice...Guide..Python 2025
Download this torrent!
Mishra V. Machine Learning. Algorithms, Theory and Practice...Guide..Python 2025
To start this P2P download, you have to install a BitTorrent client like qBittorrent
Category: Other
Total size: 36.44 MB
Added: 4 weeks ago (2025-05-15 12:30:01)
Share ratio: 63 seeders, 0 leechers
Info Hash: 3979AB16CE03EB3B8D3466429502F8C114A7753D
Last updated: 9 hours ago (2025-06-14 20:26:25)
Description:
Textbook in PDF format
Unlock the power of Machine Learning with a guide designed to take you from foundational concepts to cutting-edge applications. Machine Learning: Algorithms, Theory, and Practice is your all-in-one companion for mastering the theory and hands-on techniques behind modern ML systems—crafted for students, developers, educators, and professionals alike.
This comprehensive guide is structured for progressive learning. You’ll start with the essentials of AI and Python programming, then advance through data preprocessing, statistical modeling, and classical Machine Learning algorithms. From there, you'll dive into Deep Learning, natural language processing (NLP), reinforcement learning, and generative AI—each topic reinforced with real-world coding exercises and clear explanations.
Inside, you’ll find
Foundational theory and intuitive explanations of key ML concepts, including supervised and unsupervised learning, regression, classification, clustering, and model evaluation.
Practical tutorials using Python and essential libraries such as NumPy, pandas, scikit-learn, and matplotlib.
Practical tutorials that lead you through the process of building, training, and testing machine learning models
Advanced coverage of neural networks, CNNs, RNNs, BERT, transformer models, and diffusion-based generative AI.
Bonus content, including around 300 glossary terms, frequently asked questions, and hands-on guidance for using Jupyter Notebooks effectively.
Whether you're aiming for AI certifications, transitioning into a Machine Learning role, or applying ML techniques to real-world challenges, this book provides both the conceptual clarity and practical skills to help you thrive in the evolving world of Machine Learning.
Preface
NTRODUCTION
AI FUNDAMENTALS
MACHINE LEARNING FUNDAMENTALS
GETTING STARTED WITH PYTHON
PYTHON FUNDAMENTALS FOR MACHINE LEARNING
INTRODUCTION TO PYTHON LIBRARIES FOR MACHINE LEARNING
NUMPY FOR MACHINE LEARNING
PANDAS FOR MACHINE LEARNING
...
ESSENTIAL MATHEMATICS FOR MACHINE LEARNING
DATA PREPROCESSING
SIMPLE LINEAR REGRESSION
MULTIPLE LINEAR REGRESSION
POLYNOMIAL REGRESSION
LOGISTIC REGRESSION
...
MODEL EVALUATION AND VALIDATION
FEATURE SELECTION AND DIMENSIONALITY REDUCTION
NEURAL NETWORKS
DEEP LEARNING
NATURAL LANGUAGE PROCESSING (NLP)
REINFORCEMENT LEARNING
GENERATIVE AI
APPENDIX: FAQ
APPENDIX: GLOSSARY OF ML TERMS
APPENDIX: JUPYTER NOTEBOOK FOR MACHINE LEARNING