• Contact

  • Newsletter

  • About us

  • Delivery options

  • Prospero Book Market Podcast

  • 'Language is english. Váltás magyarra.'
    Wishlist
    Scaling Laws of Network Value: From Communication to Learning

    Scaling Laws of Network Value by Wang, Cheng; Lin, Yuhang;

    From Communication to Learning

      • GET 20% OFF

      • The discount is only available for 'Alert of Favourite Topics' newsletter recipients.
      • Publisher's listprice EUR 213.99
      • The price is estimated because at the time of ordering we do not know what conversion rates will apply to HUF / product currency when the book arrives. In case HUF is weaker, the price increases slightly, in case HUF is stronger, the price goes lower slightly.

        83 584 Ft (79 604 Ft + 5% VAT)
      • Discount 20% (cc. 16 717 Ft off)
      • Discounted price 66 867 Ft (63 683 Ft + 5% VAT)
      • Discount is valid until: 30 June 2026

    73 554 Ft

    db

    Availability

    Not yet published.

    Why don't you give exact delivery time?

    Delivery time is estimated on our previous experiences. We give estimations only, because we order from outside Hungary, and the delivery time mainly depends on how quickly the publisher supplies the book. Faster or slower deliveries both happen, but we do our best to supply as quickly as possible.

    Product details:

    • Publisher Springer Nature Singapore
    • Date of Publication 12 July 2026

    • ISBN 9789819581092
    • Binding Hardback
    • No. of pages184 pages
    • Size 235x155 mm
    • Language English
    • Illustrations XII, 184 p. 37 illus., 35 illus. in color.
    • 700

    Categories

    Long description:

    "

    This book bridges two seemingly distinct worlds—network theory and machine learning—to reveal the universal laws of scalability that underlie both. It examines how value, capacity, and performance evolve as systems expand, offering a unified framework that connects Metcalfe’s Law with neural scaling laws.

    By comparing network growth and model scaling, the book uncovers striking parallels: the diminishing throughput of densely connected networks mirrors the saturation of model generalization in large AI systems. Through rigorous analytical models, it explains when performance scales sublinearly, linearly, or even superlinearly—and why these transitions matter for the future of communication infrastructure and intelligent computation.

    Designed for researchers and advanced practitioners in computer networks, information theory, and artificial intelligence, this work delivers both conceptual insight and practical guidance. It helps readers recognize the structural forces that shape scalability, the mathematical trade-offs between capacity and efficiency, and the design principles that can transfer between large-scale networks and learning systems.

    Readers with backgrounds in probability, linear algebra, and algorithmic modeling will find this book a compelling synthesis of theory and application—a guide to understanding how scaling behavior defines the limits and possibilities of modern computational systems.

    "

    More

    Table of Contents:

    "

    Chapter 1: Introduction and Overview.- Chapter 2: Scaling Laws of Self-Organized Communication Networks: Throughput Capacity.- Chapter 3: Scaling Laws of Self-Organized Communication Networks: Transport Complexity.- Chapter 4: Scaling Laws of Deep-Learning Neural Networks: Taxonomy and Survey.- Chapter 5: Scaling Laws of Deep-Learning Neural Networks: Expressive Power.- Chapter 6: Scaling Laws of Deep-Learning Neural Networks: Information Loss.

    "

    More
    0