Computer Science – Hardware Architecture
Scientific paper
2009-10-03
Computer Science
Hardware Architecture
10 pages, 5 figures. For associated code and binaries, see https://simtk.org/home/memtest . Poster version to be presented at
Scientific paper
Graphics processing units (GPUs) are gaining widespread use in computational chemistry and other scientific simulation contexts because of their huge performance advantages relative to conventional CPUs. However, the reliability of GPUs in error-intolerant applications is largely unproven. In particular, a lack of error checking and correcting (ECC) capability in the memory subsystems of graphics cards has been cited as a hindrance to the acceptance of GPUs as high-performance coprocessors, but the impact of this design has not been previously quantified. In this article we present MemtestG80, our software for assessing memory error rates on NVIDIA G80 and GT200-architecture-based graphics cards. Furthermore, we present the results of a large-scale assessment of GPU error rate, conducted by running MemtestG80 on over 20,000 hosts on the Folding@home distributed computing network. Our control experiments on consumer-grade and dedicated-GPGPU hardware in a controlled environment found no errors. However, our survey over cards on Folding@home finds that, in their installed environments, two-thirds of tested GPUs exhibit a detectable, pattern-sensitive rate of memory soft errors. We demonstrate that these errors persist after controlling for overclocking and environmental proxies for temperature, but depend strongly on board architecture.
Haque Imran S.
Pande Vijay S.
No associations
LandOfFree
Hard Data on Soft Errors: A Large-Scale Assessment of Real-World Error Rates in GPGPU does not yet have a rating. At this time, there are no reviews or comments for this scientific paper.
If you have personal experience with Hard Data on Soft Errors: A Large-Scale Assessment of Real-World Error Rates in GPGPU, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Hard Data on Soft Errors: A Large-Scale Assessment of Real-World Error Rates in GPGPU will most certainly appreciate the feedback.
Profile ID: LFWR-SCP-O-432171