Designing a Distributed Multi-agent System for Compiler Optimization
Paper in proceeding, 2021

This paper explores the run time performance improvements using different GCC optimization flags in program compilation. As multi-core microprocessor systems replacing legacy single-core ones, tremendous effort is needed to address to optimize the associated compilers for newly designed architectures in order to suit them for running parallel programming on multiple cores. Therefore, the aim of this paper is to address this challenge by designing an optimum distributed multi-agent system to perform compiler optimization. A multi-agent framework is adopted to utilize random and genetic algorithm-based search algorithm to find the best GCC optimization flags for a given program. The framework is highly scalable and can be extended with distributed system concept to perform code compilation in parallel to find the best-optimized code sequence in a short amount of time. The initial performance results have promising indicators which clearly show that the performance improvement is achieved.

genetic algorithms

performance

multi-core systems

random search

Jadex

GCC

Author

Alparslan Sari

University of Delaware

Cagri Sahin

Gazi University

Ismail Butun

Chalmers, Computer Science and Engineering (Chalmers), Networks and Systems (Chalmers)

2021 Zooming Innovation in Consumer Technologies Conference, ZINC 2021

269-274
9781665404174 (ISBN)

2021 Zooming Innovation in Consumer Technologies Conference, ZINC 2021
Novi Sad, Serbia,

Subject Categories

Computer Engineering

Embedded Systems

Computer Systems

DOI

10.1109/ZINC52049.2021.9499287

More information

Latest update

1/3/2024 9