원문정보
초록
영어
As more and more non-trivial applications have been deployed in cloud-based systems, the energy consumption of running these applications grow rapidly. Existing studies mainly focus on reducing the CPU-related energy consumption, while ignoring the data-accessing related energy costs. In the paper, we present a novel energy-efficient policy, which is aiming at reducing the data-accessing energy consumption of workflow applications that executed on cloud environments. The proposed policy uses a general energy model to describe the energy consumption of any given workflow. By this application-oriented energy model, a two-phase resource deploying algorithm is implemented, which is capable of generating task scheduling schemes with minimal data-accessing energy consumption. Massive experiments are conducted on a real-world cloud platform, and the results show that the proposed policy outperforms existing approaches in terms of energy efficiency and execution performance.
목차
1. Introduction
2. Related Work
3. Problem Description and Formulation
4. Scheduling Policy Implementation and Analysis
4.1. Scheduling Model
4.2. Implementation of Scheduling Algorithm
5. Experiments and Performance Comparison
5.1. Experimental Settings
5.2. Comparison of Performance
6. Conclusion
References
