Ultimate Machine Learning Algorithms with Python

Overview

Released
July 4, 2026
ISBN
9789349887169
Format
ePub

Book Details

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. The final section puts theory into practice through guided projects — building a fraud detection system, a recommender engine, and a spam classifier — before closing with emerging trends and ethical considerations in ML. By the end of the book, you will be able to select the right algorithm for any problem, tune models for production performance, and communicate results clearly to technical and business stakeholders alike.

Author Description

Dr. Ritesh Ratti is an AI and Data Science leader with more than 15 years of experience building cutting-edge ML products. Currently working as Director of AI and Data Science at EY Singapore, he has led teams at HelloFresh, Delivery Hero, Grab, Samsung, and Oracle. Dr. Ritesh holds a PhD in Computer Science (AI & Network Security) from IIT Guwahati with multiple research publications.

Read this book in our EasyReadz App for Mobile or Tablet devices

To read this book on Windows or Mac based desktops or laptops:

Recently viewed Books

Help make us better

We’re always looking for ways to improve. If you’ve got feedback or suggestions about how we can do better, we’d love to hear from you.

Note: If you’re looking to solve a problem with your URMS eReader, app, or purchase, visit our Help page, or submit a help request.

What is the purpose of your visit?
Did you accomplish your goal?
Yes No
Where can we improve?
Your comments*