BOOKZONE
Soccer Analytics with Machine Learning Learning Predictive Modeling Techniques with Sports Data
Learning Predictive Modeling Techniques with Sports Data Using Python
Author : Haipeng Gao, Guanyu Hu, Weining Shen
Binding:Paperback
Publication Date 25/06/2026
Publisher : Shroff/O'Reilly
SKU:9789368088288
Select Your Gift
Gift Message (Optional)
Bulk Discount Get Exta 5% upto 10%
Share

All Indian Reprints of O'Reilly are printed in Grayscale
Struggling to grasp machine learning concepts or unsure how to apply them in the real world? This book aims to change that by using the world's most popular game--soccer--to illuminate key concepts in predictive modeling and data science. You'll develop a solid foundation in machine learning through engaging examples that bridge academic principles with practical applications.
Written by experts in both machine learning and sports analytics, this practical Python-focused guide introduces fundamental data science techniques using real soccer data. Ideal for students, analysts, and soccer fans alike, it offers instructions on models and techniques such as logistic regression, random forests, deep learning, simulations, and feature engineering. But instead of memorizing algorithms, you'll learn by building predictive models to analyze match outcomes, test betting strategies, run simulated game scenarios, and more.
- Understand machine learning concepts by working with real sports data
- Develop, refine, and evaluate machine learning models, using Python for data analysis
- Carry out detailed analyses and research on soccer game predictions and betting strategies to surface valuable insights
- Apply the skills you learn to predictive modeling scenarios in other industries
