Expanding IceCube GPU computing into the Clouds
暂无分享,去创建一个
The IceCube collaboration relies on GPU compute for many of its needs, including ray tracing simulation and machine learning activities. GPUs are however still a relatively scarce commodity in the scientific resource provider community, so we expanded the available resource pool with GPUs provisioned from the commercial Cloud providers. The provisioned resources were fully integrated into the normal IceCube workload management system through the Open Science Grid (OSG) infrastructure and used CloudBank for budget management. The result was an approximate doubling of GPU wall hours used by IceCube over a period of 2 weeks, adding over 3.1 fp32 EFLOP hours for a price tag of about $58k. This paper describes the setup used and the operational experience.
[1] Brian Bockelman,et al. Principles, technologies, and time: The translational journey of the HTCondor-CE , 2020, J. Comput. Sci..
[2] Jorge Luis Rodriguez,et al. The Open Science Grid , 2005 .
[3] I. Sfiligoi,et al. Demonstrating a Pre-Exascale, Cost-Effective Multi-Cloud Environment for Scientific Computing: Producing a fp32 ExaFLOP hour worth of IceCube simulation data in a single workday , 2020, PEARC.
[4] Ruth C. Carter,et al. Principles , 2003, Law’s Reality.