Neuro-fuzzy approaches to collaborative scientific computing
Proceedings of International Conference on Neural Networks (ICNN'96)
Article 2002 English
Authors
NR
Naren Ramakrishnan
AJ
Anupam Joshi
EH
Elias N. Houstis
Abstract
1 min read
Rapid advances in high performance computing (HPC) and the Internet are heralding a paradigm shift to network-based scientific software servers, libraries, repositories and problem solving environments. According to this new paradigm, vital pieces of software and information required for a computation are distributed across a network and need to be identified and 'linked' together at run time; this implies a 'net-centric' and collaborative scenario for scientific computing. This scenario requires the application to dynamically choose the best among several competing resources that can solve a given problem. For these systems to become ubiquitous, efficient mechanisms for collaboration and automatic inference of the abilities of multiple 'compute servers' need to be established. The authors demonstrate a methodology to facilitate collaborative scientific computing. Their idea is comprised of (i) a concept of 'reasonableness' to automatically generate exemplars for learning the mapping from problems to 'servers' and (ii) a neuro-fuzzy technique developed earlier by the authors that conducts supervised classification on the exemplars generated. The techniques work in an on-line manner and cater to mutually non-exclusive classes which are critical in the collaborative networked computing landscape.
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