DocumentCode :
625677
Title :
XKaapi: A Runtime System for Data-Flow Task Programming on Heterogeneous Architectures
Author :
Gautier, Thierry ; Lima, Joao V. F. ; Maillard, Nicolas ; Raffin, Bruno
Author_Institution :
INRIA, Grenoble, France
fYear :
2013
fDate :
20-24 May 2013
Firstpage :
1299
Lastpage :
1308
Abstract :
Most recent HPC platforms have heterogeneous nodes composed of multi-core CPUs and accelerators, like GPUs. Programming such nodes is typically based on a combination of OpenMP and CUDA/OpenCL codes; scheduling relies on a static partitioning and cost model. We present the XKaapi runtime system for data-flow task programming on multi-CPU and multi-GPU architectures, which supports a data-flow task model and a locality-aware work stealing scheduler. XKaapi enables task multi-implementation on CPU or GPU and multi-level parallelism with different grain sizes. We show performance results on two dense linear algebra kernels, matrix product (GEMM) and Cholesky factorization (POTRF), to evaluate XKaapi on a heterogeneous architecture composed of two hexa-core CPUs and eight NVIDIA Fermi GPUs. Our conclusion is two-fold. First, fine grained parallelism and online scheduling achieve performance results as good as static strategies, and in most cases outperform them. This is due to an improved work stealing strategy that includes locality information; a very light implementation of the tasks in XKaapi; and an optimized search for ready tasks. Next, the multi-level parallelism on multiple CPUs and GPUs enabled by XKaapi led to a highly efficient Cholesky factorization. Using eight NVIDIA Fermi GPUs and four CPUs, we measure up to 2.43 TFlop/s on double precision matrix product and 1.79 TFlop/s on Cholesky factorization; and respectively 5.09 TFlop/s and 3.92 TFlop/s in single precision.
Keywords :
data flow computing; graphics processing units; linear algebra; matrix decomposition; multiprocessing systems; optimisation; parallel architectures; processor scheduling; search problems; task analysis; CUDA; Cholesky factorization; Fermi GPU; HPC; NVIDIA; OpenCL code; OpenMP; XKaapi runtime system; accelerator; cost model; data flow task programming; dense linear algebra kernel; fine grained parallelism; grain size; heterogeneous architecture; heterogeneous node; locality aware work stealing scheduling; matrix product; multiGPU architecture; multicore CPU; multilevel parallelism; online scheduling; search optimization; static partitioning; static strategy; Data transfer; Graphics processing units; Instruction sets; Kernel; Parallel processing; Programming; Runtime; Data-Flow task model; Dense Linear Algebra; Heterogeneous architectures; High Performance Computing; Locality Aware Work Stealing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Parallel & Distributed Processing (IPDPS), 2013 IEEE 27th International Symposium on
Conference_Location :
Boston, MA
ISSN :
1530-2075
Print_ISBN :
978-1-4673-6066-1
Type :
conf
DOI :
10.1109/IPDPS.2013.66
Filename :
6569905
Link To Document :
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