Node-level architecture design and simulation of the MAGOG grid middleware

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Internet Centre, Department of Computing, Imperial College London, 180 Queen's Gate, London SW7 2AZ, United Kingdom [1 ]
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Telecommunication services - Commerce - Location based services - Middleware;
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The Middleware for Activating the Global Open Grid (MAGOG) provides a novel solution to the problem of discovering remote resources in a globally interconnected environment such as the Internet, in situations where users want to gain access to such resources to carry out remote computation. While existing Grid middleware enables the building of Grid infrastructures within closed environments where all users are known to each other, or where there is some preexisting relationship between resource providers and users, the true Grid model should enable any users at any location to access remote resources without any prior relationship with the provider. MAGOG is a peer-to-peer based architecture that provides the means to enable discovery of resources in such an environment and to enable the agreement of pricing and Service Level Agreements (SLAs) for the use of these resources. This paper provides a high-level overview of the design of MAGOG and early simulation work that has been carried out to verify this design. It then focuses on the initial design for the middleware client that players in the market will need to deploy in order to become a node in the environment. © 2009, Australian Computer Society, Inc.
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页码:57 / 67
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