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scikit-learn Cookbook

scikit-learn Cookbook - Third Edition

By : John Sukup
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scikit-learn Cookbook

scikit-learn Cookbook

By: John Sukup

Overview of this book

Trusted by data scientists, ML engineers, and software developers alike, scikit-learn offers a versatile, user-friendly framework for implementing a wide range of ML algorithms, enabling the efficient development and deployment of predictive models in real-world applications. This third edition of scikit-learn Cookbook will help you master ML with real-world examples and scikit-learn 1.5 features. This updated edition takes you on a journey from understanding the fundamentals of ML and data preprocessing, through implementing advanced algorithms and techniques, to deploying and optimizing ML models in production. Along the way, you’ll explore practical, step-by-step recipes that cover everything from feature engineering and model selection to hyperparameter tuning and model evaluation, all using scikit-learn. By the end of this book, you’ll have gained the knowledge and skills needed to confidently build, evaluate, and deploy sophisticated ML models using scikit-learn, ready to tackle a wide range of data-driven challenges.
Table of Contents (17 chapters)
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Up to this point, our recipes for training models have used datasets designed for easy class separability. These are great for illustration, but when we enter the real world, we’ll find that problems requiring machine learning (ML) solutions are rarely as cut-and-dry – we need additional tools in our toolchest for handling datasets where the boundaries between classes isn’t so well defined. In this chapter, we’ll explore methods that allow us to transform our dataset prior to training in a way that maps our original dataset onto a higher-dimensional representation allowing for easier class separability when using a straight line just won’t cut it (pun slightly intended). In this chapter, you will explore Support Vector Machines (SVMs) and kernel methods, focusing on theory, practical applications, and tuning techniques for high-dimensional data. Exercises include building SVM...

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