Managing Power Consumption and Performance of Computing Systems Using Reinforcement Learning
Tesauro, Gerald, Das, Rajarshi, Chan, Hoi, Kephart, Jeffrey, Levine, David, Rawson, Freeman, Lefurgy, Charles
–Neural Information Processing Systems
Businesses want to save power without sacrificing performance.This paper presents a reinforcement learning approach to simultaneous online management of both performance and power consumption. We apply RL in a realistic laboratory testbed using a Blade cluster and dynamically varyingHTTP workload running on a commercial web applications middleware platform.We embed a CPU frequency controller in the Blade servers' firmware, and we train policies for this controller using a multi-criteria reward signal depending on both application performance and CPU power consumption. Our testbed scenario posed a number of challenges to successful use of RL, including multipledisparate reward functions, limited decision sampling rates, and pathologies arising when using multiple sensor readings as state variables. We describe innovative practical solutions to these challenges, and demonstrate clear performance improvements over both hand-designed policies as well as obvious "cookbook" RL implementations.
Neural Information Processing Systems
Dec-31-2008