English

Parallel Pairwise Correlation Computation On Intel Xeon Phi Clusters

Distributed, Parallel, and Cluster Computing 2016-09-28 v3 Genomics

Abstract

Co-expression network is a critical technique for the identification of inter-gene interactions, which usually relies on all-pairs correlation (or similar measure) computation between gene expression profiles across multiple samples. Pearson's correlation coefficient (PCC) is one widely used technique for gene co-expression network construction. However, all-pairs PCC computation is computationally demanding for large numbers of gene expression profiles, thus motivating our acceleration of its execution using high-performance computing. In this paper, we present LightPCC, the first parallel and distributed all-pairs PCC computation on Intel Xeon Phi (Phi) clusters. It achieves high speed by exploring the SIMD-instruction-level and thread-level parallelism within Phis as well as accelerator-level parallelism among multiple Phis. To facilitate balanced workload distribution, we have proposed a general framework for symmetric all-pairs computation by building bijective functions between job identifier and coordinate space for the first time. We have evaluated LightPCC and compared it to two CPU-based counterparts: a sequential C++ implementation in ALGLIB and an implementation based on a parallel general matrix-matrix multiplication routine in Intel Math Kernel Library (MKL) (all use double precision), using a set of gene expression datasets. Performance evaluation revealed that with one 5110P Phi and 16 Phis, LightPCC runs up to 20.6×20.6\times and 218.2×218.2\times faster than ALGLIB, and up to 6.8×6.8\times and 71.4×71.4\times faster than single-threaded MKL, respectively. In addition, LightPCC demonstrated good parallel scalability in terms of number of Phis. Source code of LightPCC is publicly available at http://lightpcc.sourceforge.net.

Keywords

Cite

@article{arxiv.1605.01584,
  title  = {Parallel Pairwise Correlation Computation On Intel Xeon Phi Clusters},
  author = {Yongchao Liu and Tony Pan and Srinivas Aluru},
  journal= {arXiv preprint arXiv:1605.01584},
  year   = {2016}
}

Comments

9 pages, 2 figures, 2 tables, accepted by the SBAC-PAD 2016 conference

R2 v1 2026-06-22T13:53:54.646Z