Bio-inspired Networking by Daniel CâmaraBio-inspired Networking by Daniel Câmara

Bio-inspired Networking

byDaniel CâmaraEditorDaniel Câmara

Hardcover | August 19, 2015

Pricing and Purchase Info

$135.02 online 
$144.95 list price save 6%
Earn 675 plum® points

Prices and offers may vary in store

Quantity:

In stock online

Ships free on orders over $25

Not available in stores

about

Bio-inspired techniques are based on principles, or models, of biological systems. In general, natural systems present remarkable capabilities of resilience and adaptability. In this book, we explore how bio-inspired methods can solve different problems linked to computer networks.

Future networks are expected to be autonomous, scalable and adaptive. During millions of years of evolution, nature has developed a number of different systems that present these and other characteristics required for the next generation networks. Indeed, a series of bio-inspired methods have been successfully used to solve the most diverse problems linked to computer networks. This book presents some of these techniques from a theoretical and practical point of view.

  • Discusses the key concepts of bio-inspired networking to aid you in finding efficient networking solutions
  • Delivers examples of techniques both in theoretical concepts and practical applications
  • Helps you apply nature's dynamic resource and task management to your computer networks
Daniel Câmara is a Research Engineer at Telecom ParisTech, in France, currently working in the System on Chip Laboratory (LABSOC). His research interestsinclude wireless networks, distributed systems, quality of software and artificial intelligence algorithms.
Loading
Title:Bio-inspired NetworkingFormat:HardcoverDimensions:144 pages, 9.41 × 7.24 × 0.98 inPublished:August 19, 2015Publisher:Elsevier ScienceLanguage:English

The following ISBNs are associated with this title:

ISBN - 10:1785480219

ISBN - 13:9781785480218

Look for similar items by category:

Reviews

Table of Contents

1. Evolution and Evolutionary Algorithms
2. Chemical Computing
3. Nervous Systems
4. Swarm Intelligence