Title :
Fine-grain Parallelism Using Multi-core, Cell/BE, and GPU Systems: Accelerating the Phylogenetic Likelihood Function
Author :
Pratas, Frederico ; Trancoso, Pedro ; Stamatakis, Alexandros ; Sousa, Leonel
Author_Institution :
SiPS group, Univ. Tec. de Lisboa, Lisbon, Portugal
Abstract :
We are currently faced with the situation where applications have increasing computational demands and there is a wide selection of parallel processor systems. In this paper we focus on exploiting fine-grain parallelism for a demanding bioinformatics application - MrBayes - and its phylogenetic likelihood functions (PLF) using different architectures. Our experiments compare side-by-side the scalability and performance achieved using general-purpose multi-core processors, the cell/BE, and graphics processor units (GPU). The results indicate that all processors scale well for larger computation and data sets. Also, GPU and Cell/BE processors achieve the best improvement for the parallel code section. Nevertheless, data transfers and the execution of the serial portion of the code are the reasons for their poor overall performance. The general-purpose multi-core processors prove to be simpler to program and provide the best balance between an efficient parallel and serial execution, resulting in the largest speedup.
Keywords :
bioinformatics; microprocessor chips; GPU systems; cell-BE processors; demanding bioinformatics application; fine-grain parallelism; graphics processor units; multicore processors; parallel code section; parallel processor systems; phylogenetic likelihood function; Acceleration; Bioinformatics; Computer applications; Computer architecture; Concurrent computing; Graphics; Multicore processing; Parallel processing; Phylogeny; Scalability; Computer Architectures; Fine-grain Parallelism; General Purpose Multi-cores; Graphical Processing Units; Heterogeneous Multi-cores; High Performance Computing;
Conference_Titel :
Parallel Processing, 2009. ICPP '09. International Conference on
Conference_Location :
Vienna
Print_ISBN :
978-1-4244-4961-3
Electronic_ISBN :
0190-3918
DOI :
10.1109/ICPP.2009.30