Few-Shot Machine Learning
Robert Johnson
* Affiliatelinks/Werbelinks
Links auf reinlesen.de sind sogenannte Affiliate-Links. Wenn du auf so einen Affiliate-Link klickst und über diesen Link einkaufst, bekommt reinlesen.de von dem betreffenden Online-Shop oder Anbieter eine Provision. Für dich verändert sich der Preis nicht.
Naturwissenschaften, Medizin, Informatik, Technik / Informatik, EDV
Beschreibung
"Few-Shot Machine Learning: Doing More with Less Data" is an illuminating exploration into the cutting-edge techniques that enable machines to learn efficiently from limited data. This book delves deep into the domain of few-shot learning—a revolutionary approach that challenges the traditional dependency on vast datasets. By uncovering the principles and practices that allow models to generalize from minimal examples, it empowers readers to harness the power of artificial intelligence in resource-constrained environments.
Carefully structured to provide both theoretical insights and practical guidance, the book navigates through essential paradigms such as meta-learning, transfer learning, and innovative data augmentation strategies. It emphasizes the building blocks needed to understand and apply few-shot learning across various domains, from healthcare diagnostics to real-time analytics. Through real-world applications and case studies, the text not only illustrates the transformative potential of few-shot learning but also prepares practitioners to address prevalent challenges and seize future opportunities in this dynamic field.
"Few-Shot Machine Learning: Doing More with Less Data" serves as an indispensable resource for beginners and experienced professionals alike, offering a comprehensive guide to leveraging advanced machine learning techniques. By presenting complex concepts in an accessible manner, it opens new pathways for creativity and innovation in artificial intelligence, making it an essential companion for anyone interested in the future of machine learning and data science.
Kundenbewertungen
transfer learning, machine learning, few-shot learning, artificial intelligence, healthcare analytics, meta-learning, data augmentation