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 3: Production-ready Machine Learning with LightGBM

In Part 3, we will delve into the practical applications of ML solutions in production environments. We will uncover the intricacies of machine learning pipelines, ensuring systematic data processing and model building for consistent results. MLOps, a confluence of DevOps and ML, takes center stage, highlighting the importance of deploying and maintaining robust ML systems in real-world scenarios. Through hands-on examples, we will explore the deployment of ML pipelines on platforms (like Google Cloud, Amazon SageMaker, and the innovative PostgresML) emphasizing the unique advantages each offers. Lastly, distributed computing and GPU-based training will be explored, showcasing methods to expedite training processes and manage larger datasets efficiently. This concluding part will emphasize the seamless integration of ML into practical, production-ready solutions, equipping readers with the knowledge to bring their models to life...