Detalhes do Livro
Formato
Capa dura
Páginas
832
Idioma
Inglês
Publicado
Aug 27, 2004
Editora
World Scientific Pub Co Inc
ISBN-10
9812389520
ISBN-13
9789812389527
Descrição
In the exploration of simulated evolution and learning, K. C. Tan unravels the intricate connections between Darwinian principles and modern computational techniques. Drawing inspiration from the mechanisms of natural selection and adaptation, the work delves into how these concepts influence advancements in algorithms and artificial intelligence.
The narrative guides the reader through the latest breakthroughs in the field, offering insights into how evolutionary frameworks can inform computational methodologies. Each chapter reveals the profound implications of applying biological principles to solve complex computational problems. Tan emphasizes the significance of efficiency and adaptation, mirroring nature's own processes.
Moreover, the work showcases varied applications of simulated evolution across numerous disciplines, from robotics to optimization. By illustrating real-world scenarios where these techniques thrive, it fosters a deeper understanding of the potential they hold.
Ultimately, Tan invites readers to appreciate the synergy between biology and computation, sparking curiosity about the future trajectory of learning and evolution in artificial systems.
The narrative guides the reader through the latest breakthroughs in the field, offering insights into how evolutionary frameworks can inform computational methodologies. Each chapter reveals the profound implications of applying biological principles to solve complex computational problems. Tan emphasizes the significance of efficiency and adaptation, mirroring nature's own processes.
Moreover, the work showcases varied applications of simulated evolution across numerous disciplines, from robotics to optimization. By illustrating real-world scenarios where these techniques thrive, it fosters a deeper understanding of the potential they hold.
Ultimately, Tan invites readers to appreciate the synergy between biology and computation, sparking curiosity about the future trajectory of learning and evolution in artificial systems.
Gêneros
Ciência e Tecnologia