Автор: Quan Nguyen
Издательство: Manning Publications
Год: 2023
Страниц: 426
Язык: английский
Формат: pdf (true)
Размер: 25.0 MB
Apply advanced techniques for optimizing Machine Learning processes. Bayesian optimization helps pinpoint the best configuration for your Machine Learning models with speed and accuracy.
In Bayesian Optimization in Action you will learn how:
Bayesian Optimization in Action shows you how to optimize hyperparameter tuning, A/B testing, and other aspects of the Machine Learning process by applying cutting-edge Bayesian techniques. Using clear language, illustrations, and concrete examples, this book proves that Bayesian optimization doesn’t have to be difficult! You’ll get in-depth insights into how Bayesian optimization works and learn how to implement it with cutting edge Python libraries. The book’s easy-to-reuse code samples let you hit the ground running by plugging them straight into your own projects.
About the technology:
Experimenting in science and engineering can be costly and time-consuming, especially without a reliable way to narrow down your choices. Bayesian optimization helps you identify optimal configurations to pursue in a search space. It uses a Gaussian process and Machine Learning techniques to model an objective function and quantify the uncertainty of predictions. Whether you’re tuning machine learning models, recommending products to customers, or engaging in research, Bayesian optimization can help you make better decisions, faster.
As the complexity of problems we face in machine learning and related fields continues to increase, it is more and more important to optimize our use of resources and make informed decisions efficiently. Bayesian optimization, a powerful technique for finding the maxima and minima of objective functions that are expensive to evaluate, has emerged as a very useful solution to this challenge. One reason is that the function can be taken as a black box, which enables researchers and practitioners to tackle very complicated functions with Bayesian inference as the main method of optimization.
Due to its complexity, Bayesian optimization has been more out of reach for beginner ML practitioners than other methods. However, a tool like Bayesian optimization must be in the toolkit of any ML practitioner who wants to get the best results. To master this topic, one must have a very solid intuition of calculus and probability.
About the book:
Bayesian Optimization in Action teaches you how to build Bayesian optimization systems from the ground up. This book transforms state-of-the-art research into usable techniques that you can easily put into practice, all fully illustrated with useful code samples. In it, you’ll hone your understanding of Bayesian optimization through engaging examples—from forecasting the weather, to finding the optimal amount of sugar for coffee, and even deciding if someone is psychic! Along the way, you’ll explore scenarios for when there are multiple objectives, when each decision has its own cost, and when feedback is in the form of pairwise comparisons. With this collection of techniques, you’ll be ready to find the optimal solution for everything from transport and logistics to cancer treatments.
About the reader:
For Machine Learning practitioners who are confident in math and statistics.
About the author:
Quan Nguyen is a Python programmer and machine learning enthusiast. He is interested in solving decision-making problems that involve uncertainty. Quan has authored several books on Python programming and scientific computing. He is currently pursuing a Ph.D. degree in computer science at Washington University in St. Louis where he does research on Bayesian methods in machine learning.
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