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Cover for Ultimate Machine Learning Algorithms with Python

Ultimate Machine Learning Algorithms with Python

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Learn the Algorithms Powering Modern AI. Build the Intelligence Behind Real-World Decisions.

Book Description

Ultimate Machine Learning Algorithms with Python bridges the gap between mathematical understanding and practical implementation, presenting every major algorithm with both theoretical rigour and plain-language intuition, so that readers at any level can build real-world competence.

You begin with supervised learning fundamentals — linear and logistic regression, decision trees, SVMs, and neural networks — before advancing to ensemble methods including Random Forests, XGBoost, and CatBoost. The book then moves into unsupervised learning through clustering, dimensionality reduction, and anomaly detection, with evaluation methods covered in depth for both paradigms. Every algorithm is grounded in a Python implementation using scikit-learn and industry-standard tooling.

What you will learn

? Apply supervised learning algorithms to regression and classification problems.

? Implement clustering and dimensionality reduction for unsupervised tasks.

? Build ensemble models using Random Forests, XGBoost, and CatBoost.

? Evaluate models using appropriate metrics for each algorithm type.

? Develop end-to-end projects in fraud detection and recommendation systems.

? Select, tune, and explain ML models for real business problems.

Table of Contents

1. Introduction to Machine Learning Algorithms

2. Regression Algorithms

3. Classification Algorithms

4. Ensembling Methods

5. Evaluation Methods for Supervised Learning Algorithms

6. Clustering Algorithms

7. Dimensionality Reduction

8. Evaluation Methods for Unsupervised Learning Algorithms

9. Building Recommender Systems

10. Building Anomaly Detection System

11. Building Spam Email Classification

12. Conclusion and Future Trends

Index

© 2026 Orange Education Pvt Ltd (Libro electrónico): 9789349887329

Fecha de lanzamiento

Libro electrónico: 21 de mayo de 2026

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