Title :
Adapting to Run-Time Changes in Policies Driving Autonomic Management
Author :
Bahati, Raphael M. ; Bauer, Michael A.
Abstract :
The use of policies within autonomic computing has received significant interest in the recent past. Policy-driven management offers significant benefit since it makes it more straight forward to define and modify systems behavior at run-time, through policy manipulation, rather than through re- engineering. In this paper, we present an adaptive policy-driven autonomic management system which makes use of reinforcement learning methodologies to determine how to best use a set of active policies to meet different performance objectives. The focus, in particular, is on strategies for adapting what has been learned for one set of policy actions to a ";similar"; set of policies when run-time policy modifications occur. We illustrate the impact of the adaptation strategies on the behavior of a multi-component Web server.
Keywords :
learning (artificial intelligence); autonomic computing; autonomic management system; multicomponent Web server; policy manipulation; reinforcement learning methodologies; Computer science; Conference management; Environmental management; Humans; Learning; Power system management; Quality management; Runtime; Turning; Web server; Autonomic Computing; Policy Adaptation; Policy-driven Management; QoS Management; Reinforcement Learning;
Conference_Titel :
Autonomic and Autonomous Systems, 2008. ICAS 2008. Fourth International Conference on
Conference_Location :
Gosier
Print_ISBN :
0-7695-3093-1
DOI :
10.1109/ICAS.2008.47