La Bibliothèque de l’Enseignement Supérieur en République Démocratique du Congo

La bibliothèque Numérique Félix Tshisekedi

Master Machine Learning

Master Scikit-learn algorithms and PyTorch deep learning architectures (English Edition)

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Auteur(s): Munoz Luis, Valencia

Editeur: BPB Publications

Année de Publication: 2026

pages: 665

ISBN: 978-93-7854-410-1

Description Machine learning is transforming industries from healthcare to finance, and Python has become the lingua franca for building intelligent systems. PyTorch and Scikit-learn are two of the most powerful frameworks driving today's AI revolution, enabling developers to build everything from s
Description
Machine learning is transforming industries from healthcare to finance, and Python has become the lingua franca for building intelligent systems. PyTorch and Scikit-learn are two of the most powerful frameworks driving today's AI revolution, enabling developers to build everything from simple predictive models to sophisticated deep learning architectures.

This book takes you on a comprehensive journey from Python fundamentals through advanced deep learning. You will master essential libraries like NumPy, Pandas, and Matplotlib, and build classical ML models with Scikit-learn before exploring neural networks with PyTorch. Through 20 hands-on chapters, you will explore CNNs, RNNs, GANs, reinforcement learning, transformers, recommendation systems, NLP, time series analysis, and finally deploy models to Azure ML as production-ready APIs.

By the end of this book, you will have the hands-on expertise to build, train, and deploy advanced AI systems. Whether you are starting your ML journey or deepening your skills, you will gain the confidence to tackle real-world challenges and contribute meaningfully to the field of artificial intelligence.

What you will learn
? Set up professional ML environments locally and in the cloud.
? Build and evaluate ML models using Scikit-learn algorithms.
? Design neural networks from scratch using the PyTorch framework.
? Implement CNNs, RNNs, GANs, and reinforcement learning systems.
? Apply NLP and computer vision techniques to real-world problems.
? Build recommendation systems and time series forecasting models.
? Deploy trained models to Azure ML as production REST APIs.

Who this book is for
This book is for Python developers, data scientists, and engineers aiming to master AI. Beginners and professionals should possess basic Python knowledge before exploring Scikit-learn and PyTorch to build, optimize, and deploy production-ready machine learning models across diverse industrial applications.

Table of Contents
1. Introduction to the Machine Learning World
2. Setting up Your Machine Learning Environment
3. Python Fundamentals for Machine Learning
4. Essential Machine Learning Libraries in Python
5. Introduction to Machine Learning with Scikit-learn
6. Machine Learning with Scikit-learn Advanced Topics
7. Introduction to Deep Learning
8. Introduction to PyTorch
9. Building Blocks of Neural Networks in PyTorch
10. Training Neural Networks with PyTorch
11. Convolutional Neural Networks with PyTorch
12. Recurrent Neural Networks with PyTorch
13. Generative Adversarial Networks with PyTorch
14. Reinforcement Learning with PyTorch
15. Advanced Deep Learning Topics
16. Building a Recommendation System
17. Natural Language Processing with PyTorch
18. Computer Vision with PyTorch
19. Time Series Analysis with PyTorch
20. Deplo

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