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High performance computing methods for the integration and analysis of biomedical data using SAS
Authors:Justin R Brown  Valentin Dinu
Affiliation:Arizona State University, Department of Biomedical Informatics, 13212 East Shea Boulevard, Scottsdale, AZ 85259, United States
Abstract:From microarrays and next generation sequencing to clinical records, the amount of biomedical data is growing at an exponential rate. Handling and analyzing these large amounts of data demands that computing power and methodologies keep pace. The goal of this paper is to illustrate how high performance computing methods in SAS can be easily implemented without the need of extensive computer programming knowledge or access to supercomputing clusters to help address the challenges posed by large biomedical datasets. We illustrate the utility of database connectivity, pipeline parallelism, multi-core parallel process and distributed processing across multiple machines. Simulation results are presented for parallel and distributed processing. Finally, a discussion of the costs and benefits of such methods compared to traditional HPC supercomputing clusters is given.
Keywords:SAS  Parallel processing  High performance computing
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