<p>This book introduces a reference architecture that enhances the security of services offered in the information and communication technology (ICT) market. It enables customers to compare offerings and to assess risks when using third-party ICT services including cloud computing and mobile service
An Agent-Based Approach for Coordinated Multi-Provider Service Provisioning
β Scribed by Monique Calisti (auth.)
- Publisher
- BirkhΓ€user Basel
- Year
- 2003
- Tongue
- English
- Leaves
- 289
- Series
- Whitestein Series in Software Agent Technologies
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Communication networks are very complex and interdependent systems requiring complicated management and control operations under strict resource and time constraints. A finite number of network components with limited capacities need to be shared for dynamically allocating a high number of traffic demands. Moreover, coordination of peer provider is required whenever these demands span domains controlled by distinct operators. In this context, traditional human-driven management is becoming increasingly inadequate to cope with the growing heterogeneity of actors, services and technologies populating the current deregulated market.
This book proposes a novel approach to improve multi-provider interactions based on the coordination of autonomous and self-motivated software entities acting on behalf of distinct operators. Coordination is achieved by means of distributed constraint satisfaction techniques integrated within economic mechanisms, which enable automated negotiations to take place. This allows software agents to find efficient allocations of service demands spanning several networks without having to reveal strategic or confidential data. In addition, a novel way of addressing resource allocation and pricing in a compact framework is made possible by the use of powerful resource abstraction techniques.
The book is addressed to researchers in the area of agent technology, automated negotiation, distributed constraint satisfaction, and networking, in particular for what concerns resource allocation and pricing. Furthermore, it should be a valuable resource for both network and service providers
β¦ Table of Contents
Front Matter....Pages i-x
Introduction....Pages 1-22
Background....Pages 23-64
Definitions and Multi-Provider Problem Formalisation....Pages 65-98
The Network Provider Interworking Paradigm....Pages 99-127
Economic Principles for Agent-Based Negotiations....Pages 129-152
Alternative Approaches for Providers Coordination....Pages 153-174
Experimental Results....Pages 175-212
Discussion and Analysis....Pages 213-237
Conclusions and Future Work....Pages 239-251
Back Matter....Pages 253-282
β¦ Subjects
Artificial Intelligence (incl. Robotics); User Interfaces and Human Computer Interaction; Information Systems Applications (incl. Internet)
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