‘Self-Supervised Learning: Teaching AI with Unlabeled Data’ serves as a definitive guide to one of the most transformative developments in artificial intelligence. This book demystifies the self-supervised learning paradigm, introducing readers to its principles and methodologies, which enable models to leverage vast amounts of unlabeled data effectively. Through clear explanations, the book navigates the theoretical frameworks and core algorithms underpinning self-supervised learning, offering insight into how these techniques unlock unprecedented capabilities in AI systems.
Across its chapters, the text examines practical applications in fields like natural language processing, computer vision, and robotics, showcasing the versatility of self-supervised approaches. Readers will gain an understanding of the challenges and ethical considerations associated with deploying these models while exploring the evaluation metrics essential to assessing their performance. With a forward-looking perspective, the book also highlights potential research opportunities and future directions, poised to shape the evolution of AI. Compelling and informative, this book is an indispensable resource for anyone eager to delve into the future of data-driven learning.
Robert Johnson
Self-Supervised Learning [EPUB ebook]
Teaching AI with Unlabeled Data
Self-Supervised Learning [EPUB ebook]
Teaching AI with Unlabeled Data
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Língua Inglês ● Formato EPUB ● Páginas 235 ● ISBN 6610000663293 ● Tamanho do arquivo 1.0 MB ● Editora HiTeX Press ● Publicado 2024 ● Carregável 24 meses ● Moeda EUR ● ID 10006427 ● Proteção contra cópia sem