Data Science Tools for Classical Operations Research
From Mathematical Optimization to Prescriptive Analytics
Welcome
This book explores the powerful intersection of Operations Research and Machine Learning using Python. It bridges traditional optimization techniques with modern data-driven methods to solve complex decision-making problems.
What You’ll Learn
- Core optimization techniques: Linear, Integer, Network, and Nonlinear Programming
- Handling uncertainty with Stochastic Optimization
- Using supervised and unsupervised learning to support OR decisions
- Reinforcement Learning and Simulation Optimization
- Building end-to-end prescriptive analytics pipelines
Current Release
Part I: Mathematical Foundations
- Linear Algebra for OR and ML
- Probability and Statistics Foundations
- Mathematical Modeling Principles
Part II: Core Optimization Techniques
- Introduction to Operations Research and Machine Learning
- Linear Programming
- Integer Programming
- Network Optimization
Advanced Optimization, Machine Learning for OR, and Integration & Applications are in progress and will be added in upcoming releases.
Start with Linear Algebra Foundations.