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ICAC
2006
IEEE

A Hybrid Reinforcement Learning Approach to Autonomic Resource Allocation

13 years 10 months ago
A Hybrid Reinforcement Learning Approach to Autonomic Resource Allocation
— Reinforcement Learning (RL) provides a promising new approach to systems performance management that differs radically from standard queuing-theoretic approaches making use of explicit system performance models. In principle, RL can automatically learn high-quality management policies without an explicit performance model or traffic model, and with little or no built-in system specific knowledge. In our original work [1], [2], [3] we showed the feasibility of using online RL to learn resource valuation estimates (in lookup table form) which can be used to make high-quality server allocation decisions in a multi-application prototype Data Center scenario. The present work shows how to combine the strengths of both RL and queuing models in a hybrid approach, in which RL trains offline on data collected while a queuing model policy controls the system. By training offline we avoid suffering potentially poor performance in live online training. We also now use RL to train nonlinear...
Gerald Tesauro, Nicholas K. Jong, Rajarshi Das, Mo
Added 11 Jun 2010
Updated 11 Jun 2010
Type Conference
Year 2006
Where ICAC
Authors Gerald Tesauro, Nicholas K. Jong, Rajarshi Das, Mohamed N. Bennani
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