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arxiv: 1210.7325 · v1 · pith:32MM7DQMnew · submitted 2012-10-27 · 💻 cs.MS · cs.CE· q-bio.GN

Solving Sequences of Generalized Least-Squares Problems on Multi-threaded Architectures

classification 💻 cs.MS cs.CEq-bio.GN
keywords generalizedgwasalgorithmsdataleast-squaresperformanceproblemsstudies
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Generalized linear mixed-effects models in the context of genome-wide association studies (GWAS) represent a formidable computational challenge: the solution of millions of correlated generalized least-squares problems, and the processing of terabytes of data. We present high performance in-core and out-of-core shared-memory algorithms for GWAS: By taking advantage of domain-specific knowledge, exploiting multi-core parallelism, and handling data efficiently, our algorithms attain unequalled performance. When compared to GenABEL, one of the most widely used libraries for GWAS, on a 12-core processor we obtain 50-fold speedups. As a consequence, our routines enable genome studies of unprecedented size.

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