Title :
Multi-dimensional characterization of temporal data mining on graphics processors
Author :
Archuleta, Jeremy ; Cao, Yong ; Scogland, Tom ; Feng, Wu-chun
Author_Institution :
Dept. of Comput. Sci., Virginia Tech, Blacksburg, VA, USA
Abstract :
Through the algorithmic design patterns of data parallelism and task parallelism, the graphics processing unit (GPU) offers the potential to vastly accelerate discovery and innovation across a multitude of disciplines. For example, the exponential growth in data volume now presents an obstacle for high-throughput data mining in fields such as neuroscience and bioinformatics. As such, we present a characterization of a MapReduced-based data-mining application on a general-purpose GPU (GPGPU). Using neuroscience as the application vehicle, the results of our multi-dimensional performance evaluation show that a ldquoone-size-fits-allrdquo approach maps poorly across different GPGPU cards. Rather, a high-performance implementation on the GPGPU should factor in the 1) problem size, 2) type of GPU, 3) type of algorithm, and 4) data-access method when determining the type and level of parallelism. To guide the GPGPU programmer towards optimal performance within such a broad design space, we provide eight general performance characterizations of our data-mining application.
Keywords :
biology computing; computer graphic equipment; data mining; neurophysiology; parallel processing; software performance evaluation; MapReduce-based data-mining; data parallelism; data-access method; general-purpose GPU; graphics processing unit; graphics processors; multi-dimensional characterization; multidimensional performance evaluation; task parallelism; temporal data mining; Bandwidth; Collaboration; Collaborative work; Data mining; Delay; Graphics; Peer to peer computing; Scalability; Streaming media; Videos;
Conference_Titel :
Parallel & Distributed Processing, 2009. IPDPS 2009. IEEE International Symposium on
Conference_Location :
Rome
Print_ISBN :
978-1-4244-3751-1
Electronic_ISBN :
1530-2075
DOI :
10.1109/IPDPS.2009.5161049