Book Image

Machine Learning with LightGBM and Python

By : Andrich van Wyk
3 (1)
Book Image

Machine Learning with LightGBM and Python

3 (1)
By: Andrich van Wyk

Overview of this book

Machine Learning with LightGBM and Python is a comprehensive guide to learning the basics of machine learning and progressing to building scalable machine learning systems that are ready for release. This book will get you acquainted with the high-performance gradient-boosting LightGBM framework and show you how it can be used to solve various machine-learning problems to produce highly accurate, robust, and predictive solutions. Starting with simple machine learning models in scikit-learn, you’ll explore the intricacies of gradient boosting machines and LightGBM. You’ll be guided through various case studies to better understand the data science processes and learn how to practically apply your skills to real-world problems. As you progress, you’ll elevate your software engineering skills by learning how to build and integrate scalable machine-learning pipelines to process data, train models, and deploy them to serve secure APIs using Python tools such as FastAPI. By the end of this book, you’ll be well equipped to use various -of-the-art tools that will help you build production-ready systems, including FLAML for AutoML, PostgresML for operating ML pipelines using Postgres, high-performance distributed training and serving via Dask, and creating and running models in the Cloud with AWS Sagemaker.
Table of Contents (17 chapters)
1
Part 1: Gradient Boosting and LightGBM Fundamentals
6
Part 2: Practical Machine Learning with LightGBM
10
Part 3: Production-ready Machine Learning with LightGBM

Part 2: Practical Machine Learning with LightGBM

Part 2 delves into the intricate processes that underpin practical machine learning engineering, starting with a look at efficient hyperparameter optimization via a framework called Optuna. We will then transition into a comprehensive exploration of the data science lifecycle, illustrating the rigorous steps from problem definition and data handling to practical data science modeling applications. Concluding this part, the focus will shift to automated machine learning, spotlighting the FLAML library, which aims to simplify and streamline model selection and tuning. Throughout this part, a blend of case studies and hands-on examples will provide a clear roadmap to harnessing the full potential of these advanced tools, underscoring the themes of efficiency and optimization.

This part will include the following chapters:

  • Chapter 5, LightGBM Parameter Optimization with Optuna
  • Chapter 6, Solving Real-World Data Science Problems...