Feature Engineering for Modern Machine Learning with Scikit-Learn: Mastering data preparation and transformation for robust ML models

Språk
Engelsk
Format
Kategori

Fakta og dokumentar

Feature engineering is essential for building robust predictive models. This book delves into practical techniques for transforming raw data into powerful features using Scikit-Learn. You'll explore automation, deep learning integrations, and advanced topics like feature selection and model evaluation. Learn to handle real-world data challenges, enhance accuracy, and streamline your workflows.

Through hands-on projects, readers will gain practical experience with techniques such as clustering, pipelines, and feature selection, applied to domains like retail and healthcare. Step-by-step instructions ensure a comprehensive learning journey, from foundational concepts to advanced automation and hybrid modeling approaches.

By combining theory with real-world applications, the book equips data professionals with the tools to unlock the full potential of machine learning models. Whether working with structured datasets or integrating deep learning features, this guide provides actionable insights to tackle any data transformation challenge effectively.

© 2025 Packt Publishing (E-bok): 9781837026708

Utgivelsesdato

E-bok: 23. januar 2025

Andre liker også ...

Prøv Storytel nå 📚

Kos deg med ubegrenset tilgang til mer enn 900 000 titler.

  • Lytt og les så mye du vil
  • Eksklusive nyheter hver uke
  • Utforsk et stort bibliotek med fortellinger
  • Over 1500 serier på norsk
  • Ingen bindingstid, avslutt når du vil
Benytt tilbud
NO - Details page - Device banner - 894x1036
Cover for Feature Engineering for Modern Machine Learning with Scikit-Learn: Mastering data preparation and transformation for robust ML models