Title of article
Efficient Parallelization of a Genetic Algorithm Solution on the Traveling Salesman Problem with Multi-core and Many-core Systems
Author/Authors
Abbasi, M Department of Computer Engineering - Engineering Faculty - Bu-Ali Sina University, Hamedan, Iran , Rafiee, M Department of Computer Engineering - Engineering Faculty - Bu-Ali Sina University, Hamedan, Iran
Pages
9
From page
1257
To page
1265
Abstract
Efficient parallelization of genetic algorithms (GAs) on state-of-the-art multi-threading or manythreading
platforms is a challenge due to the difficulty of scheduling hardware resources regarding the
concurrency of threads. In this paper, for resolving the problem, a novel method is proposed, which
parallelizes the GA by designing three concurrent kernels, each of which are running some dependent
effective operators of GA. The proposed method can be straightforwardly adapted to run on many-core
and multi-core processors by using Compute Unified Device Architecture (CUDA) and Threading
Building Blocks (TBB) platforms. To efficiently use the valuable resources of such computing cores in
concurrent execution of the GA, threads that run any of the triple kernels are synchronized by a
considerably fast switching technique. The offered method was used for parallelizing a GA-based
solution of Traveling Salesman Problem (TSP) over CUDA and TBB platforms with identical settings.
The results confirm the superiority of the proposed method to state-of-the-art methods in effective
parallelization of GAs on Graphics Processing Units (GPUs) as well as on multi-core Central Processing
Units (CPUs). Also, for GA problems with a modest initial population, though the switching time among
GPU kernels is negligible, the TBB-based parallel GA exploits the resources more efficiently.
Keywords
Genetic Algorithm , Parallel , Multi-core , Many-core , Traveling Salesman Problem
Journal title
International Journal of Engineering
Serial Year
2020
Record number
2552810
Link To Document