Managing Power Consumption and Performance of Computing Systems Using Reinforcement Learning

Neural Information Processing Systems 

Electrical power management in large-scale IT systems such as commercial data- centers is an application area of rapidly growing interest from both an economic and ecological perspective, with billions of dollars and millions of metric tons of CO2 emissions at stake annually. Businesses want to save power without sac- rificing 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 dynam- ically varying HTTP workload running on a commercial web applications mid- dleware 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.