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Grid Computing Research LaboratoryState University of New York (SUNY) BinghamtonDepartment of Computer Science |
Deger C. Erdil, Michael J. Lewis, and Nael Abu-Ghazaleh,
"An Adaptive Approach to Information Dissemination
in Self-Organizing Grids",
International Conference on Autonomic and Autonomous
Systems (ICAS'06),
Silicon Valley, CA, July 19-21, 2006.
[PDF]
[bibtex]
Abstract
The size, complexity, heterogeneity, and dynamism of large-scale
computational grids make autonomic grid services and solutions
necessary. In particular, grid schedulers must map applications onto
resources whose state (1) influences the effectiveness of scheduling
choices, and
(2) changes frequently and considerably. A grid resource state
information dissemination service must negotiate the inherent tradeoff
between covering a large portion of the grid (so that all schedulers can
make informed decisions with the largest number of options), and
limiting the protocol's overhead (i.e. the number of packets sent).
This paper argues that probabilistic forwarding protocols must adapt to
state changes, because static assignments of forwarding probabilities
lead to excessive overhead or lower-than-possible query satisfaction
rates in some scenarios. We introduce an approach that compares a node's
local utilization and query generation rates to corresponding rates in
the node's vicinity, and in the grid as a whole. These comparisons, in
turn, produce a score that is used to adjust forwarding probabilities.
We show that even this simple initial adaptive approach can work better
than protocols with static forwarding probability assignments.
Key Words:
Adaptive information dissemination, self-organizing
grids, autonomic computing, resource discovery.