Title :
A Stochastic Model for Estimating the Power Consumption of a Processor
Author :
Dargie, Waltenegus
Author_Institution :
Faculty of Computer Science, Dept. of Comput. Networks, Tech. Univ. of Dresden, Dresden, Germany
Abstract :
Quantitatively estimating the relationship between the workload and the corresponding power consumption of a multicore processor is an essential step towards achieving energy proportional computing. Most existing and proposed approaches use Performance Monitoring Counters (Hardware Monitoring Counters) for this task. In this paper we propose a complementary approach that employs the statistics of CPU utilization (workload) only. Hence, we model the workload and the power consumption of a multicore processor as random variables and exploit the monotonicity property of their distribution functions to establish a quantitative relationship between the random variables. We will show that for a single-core processor the relationship is best approximated by a quadratic function whereas for a dualcore processor, the relationship is best approximated by a linear function. We will demonstrate the plausibility of our approach by estimating the power consumption of both custom-made and standard benchmarks (namely, the SPEC power benchmark and the Apache benchmarking tool) for an Intel and AMD processors.
Keywords :
estimation theory; exponential distribution; multiprocessing systems; performance evaluation; power aware computing; stochastic processes; CPU utilization; distribution function; energy proportional computing; multicore processor; power consumption estimation; quadratic function; stochastic model; Central Processing Unit; Computational modeling; Monitoring; Multicore processing; Power demand; Radiation detectors; Stochastic processes; DC power consumption; multicore processor; power model; processor power; processor power consumption estimation; processor workload analysis; stochastic model;
Journal_Title :
Computers, IEEE Transactions on
DOI :
10.1109/TC.2014.2315629