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Low Power Scheduling Approach for Heterogeneous System Based on Heuristic and Greedy Method.

Junke Li1,2,3, Bing Guo4, Kai Liu1,2,5

  • 1School of Information Engineering, Suqian University, Suqian, Jiangsu 223800, China.

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Summary
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A new heuristic and greedy energy saving (HGES) approach efficiently allocates tasks in heterogeneous systems. This method prioritizes high-value tasks, reducing energy consumption and improving processing speed compared to existing techniques.

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Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Cloud Computing

Background:

  • Big data, AI, and cloud computing in heterogeneous systems raise energy consumption concerns.
  • High energy usage impacts operational costs and system reliability.
  • Addressing energy efficiency is critical for system architects and researchers.

Purpose of the Study:

  • To propose a novel energy-saving task scheduling method for heterogeneous systems.
  • To reduce energy consumption while maintaining or improving system performance.
  • To offer an alternative to traditional 0-1 programming for task allocation.

Main Methods:

  • Developed a heuristic and greedy energy saving (HGES) approach.
  • Tasks are initially assigned to all GPUs, then categorized into high-value and low-value based on time value and variance.
  • Employed a greedy strategy to schedule high-value tasks first, followed by low-value tasks.

Main Results:

  • The HGES method demonstrated superior energy saving compared to existing methods.
  • HGES achieved faster results than 0-1 programming.
  • Experimental validation on diverse platforms confirmed the method's effectiveness and rationality.

Conclusions:

  • The HGES approach provides an effective solution for energy saving in heterogeneous computing environments.
  • This method offers a faster and more energy-efficient alternative for task scheduling.
  • The findings support the adoption of HGES for optimizing resource utilization and reducing operational costs.