In the rapidly evolving landscape of machine learning, the ability to accurately quantify uncertainty is pivotal. The book addresses this need by offering an in-depth exploration of Conformal Prediction, a cutting-edge framework to manage uncertainty in various ML applications.
Learn how Conformal Prediction excels in calibrating classification models, produces well-calibrated prediction intervals for regression, and resolves challenges in time series forecasting and imbalanced data. Discover specialised applications of conformal prediction in cutting-edge domains like computer vision and NLP. Each chapter delves into specific aspects, offering hands-on insights and best practices for enhancing prediction reliability. The book concludes with a focus on multi-class classification nuances, providing expert-level proficiency to seamlessly integrate Conformal Prediction into diverse industries. With practical examples in Python using real-world datasets, expert insights, and open-source library applications, you will gain a solid understanding of this modern framework for uncertainty quantification.
By the end of this book, you will be able to master Conformal Prediction in Python with a blend of theory and practical application, enabling you to confidently apply this powerful framework to quantify uncertainty in diverse fields.
Valery Manokhin
Practical Guide to Applied Conformal Prediction in Python [EPUB ebook]
Learn and apply the best uncertainty frameworks to your industry applications
Practical Guide to Applied Conformal Prediction in Python [EPUB ebook]
Learn and apply the best uncertainty frameworks to your industry applications
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Lingua Inglese ● Formato EPUB ● Pagine 240 ● ISBN 9781805120919 ● Dimensione 5.6 MB ● Casa editrice Packt Publishing ● Pubblicato 2023 ● Scaricabile 24 mesi ● Moneta EUR ● ID 9288032 ● Protezione dalla copia senza