Research Article Open Access

Evaluation of Various Compiler Optimization Techniques Related to Mibench Benchmark Applications

Jeyaraj Andrews1 and Thangappan Sasikala2
  • 1 Sathyabama University, India
  • 2 , India

Abstract

Tuning compiler optimization for a given application of particular computer architecture is not an easy task, because modern computer architecture reaches higher levels of compiler optimization. These modern compilers usually provide a larger number of optimization techniques. By applying all these techniques to a given application degrade the program performance as well as more time consuming. The performance of the program measured by time and space depends on the machine architecture, problem domain and the settings of the compiler. The brute-force method of trying all possible combinations would be infeasible, as it’s complexity O(2n) even for "n" on-off optimizations. Even though many existing techniques are available to search the space of compiler options to find optimal settings, most of those approaches can be expensive and time consuming. In this study, machine learning algorithm has been modified and used to reduce the complexity of selecting suitable compiler options for programs running on a specific hardware platform. This machine learning algorithm is compared with advanced combined elimination strategy to determine tuning time and normalized tuning time. The experiment is conducted on core i7 processor. These algorithms are tested with different mibench benchmark applications. It has been observed that performance achieved by a machine learning algorithm is better than advanced combined elimination strategy algorithm.

Journal of Computer Science
Volume 9 No. 6, 2013, 749-756

DOI: https://doi.org/10.3844/jcssp.2013.749.756

Submitted On: 22 January 2013 Published On: 6 June 2013

How to Cite: Andrews, J. & Sasikala, T. (2013). Evaluation of Various Compiler Optimization Techniques Related to Mibench Benchmark Applications. Journal of Computer Science, 9(6), 749-756. https://doi.org/10.3844/jcssp.2013.749.756

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Keywords

  • Machine Learning
  • Program Features
  • Compiler Optimization
  • Mibench