Detalles del libro
Formato
Kindle
Páginas
153
Idioma
Inglés
Publicado
Jan 1, 2020
Editorial
Springer
Edición
1st ed. 2020
ISBN-10
9811577498
ISBN-13
9789811577499
Descripción
This collection presents a comprehensive overview of the advancements made in the field of large-scale disk failure prediction, resulting from the AI Ops 2020 competition and workshop. With contributions from leading researchers, it encapsulates the innovations and methodologies that emerged during a rigorous contest focused on harnessing artificial intelligence for predictive analytics in operational systems.
The volume includes revised and selected papers that explore various techniques and approaches developed during the competition, offering insights into how AI can efficiently manage and anticipate disk failures. It not only serves as a record of the competitive efforts but also as a valuable resource for scholars and practitioners aiming to deepen their understanding of predictive maintenance in the realm of computer science.
Through meticulously peer-reviewed content, readers will discover cutting-edge research that blends theoretical frameworks with practical applications, reflecting the collaborative spirit of the AI community as it seeks to enhance system reliability and performance in ever-evolving technological landscapes.
The volume includes revised and selected papers that explore various techniques and approaches developed during the competition, offering insights into how AI can efficiently manage and anticipate disk failures. It not only serves as a record of the competitive efforts but also as a valuable resource for scholars and practitioners aiming to deepen their understanding of predictive maintenance in the realm of computer science.
Through meticulously peer-reviewed content, readers will discover cutting-edge research that blends theoretical frameworks with practical applications, reflecting the collaborative spirit of the AI community as it seeks to enhance system reliability and performance in ever-evolving technological landscapes.
Géneros
Ciencia y Tecnología