Abstract

The nature of modern astronomy means that a number of interesting problems exhibit a substantial computational bound and this situation is gradually worsening. Scientists, increasingly fighting for valuable resources on conventional high-performance computing (HPC) facilities—often with a limited customizable user environment—are increasingly looking to hardware acceleration solutions. We describe here a heterogeneous CPU/GPGPU/FPGA desktop computing system (the “Chimera”), built with commercial-off-the-shelf components. We show that this platform may be a viable alternative solution to many common computationally bound problems found in astronomy, however, not without significant challenges. The most significant bottleneck in pipelines involving real data is most likely to be the interconnect (in this case the PCI Express bus residing on the CPU motherboard). Finally, we speculate on the merits of our Chimera system on the entire landscape of parallel computing, through the analysis of representative problems from UC Berkeley’s “Thirteen Dwarves.”

Highlights

  • Computationally Bound Problems in Astronomical Data AnalysisMany of the great discoveries in astronomy from the last two decades resulted directly from breakthroughs in the processing of data from observatories

  • The Centre for Gravitational Physics, Department of Quantum Science, The Australian National University, Canberra, ACT 0200, Australia

  • We describe here a heterogeneous CPU/GPGPU/FPGA desktop computing system, built with commercial-off-the-shelf components

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Summary

Computationally Bound Problems in Astronomical Data Analysis

Many of the great discoveries in astronomy from the last two decades resulted directly from breakthroughs in the processing of data from observatories. The revelation that the Universe is expanding relied directly upon a newly automated supernova detection pipeline [1], and similar cases apply to the homogeneity of the microwave background [2] and strong evidence for the existence of dark matter and dark energy [3] Most of these discoveries had a significant computational bound and would not have been possible without a breakthrough in data analysis techniques and/or technology. Einstein@HOME distributed computing project, designed to search gravitational wave data for spinning neutron stars, recently discovered three very unusual binary pulsar systems in Arecibo radio telescope data [5] These are far from the only “underanalyzed” datasets from existing observatories, and this situation is expected to only compound as we look forward to an ever increasing deluge of data. International Journal of Reconfigurable Computing the common computational requirements of these systems, it is clear that a revolution in HPC technology is required in order to keep pace with projected needs

Problems with Conventional Cluster-Based HPC Systems
Comparisons between CPUs and Hardware Accelerators
Appropriate Algorithms for a Heterogeneous Computing System
Potential for Other Data Analysis Applications
Findings
Discussion
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