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GPU_inspiral | ||||||||
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| GPU_inspiral is a low-latency, high performance many-core implementation of the matched-filter gravitational wave search algorithm, developed by the RMKI Virgo Group. The base is an architecture and vendor independent OpenCL code. The sub algorithms implemented so far are the following: | ||||||||
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Performance | ||||||||
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| Performence test was done on a 2048 sec long data chunk, 500 template of 64 sec long was filtered. The code run on an Nvidia Tesla C2050. To produce the SNR time series it took ~17 sec | ||||||||
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| < < | for gpu_inpiral, this has to be compare with the ~40 minutes necessary for lalapps_inspiral to produce the same result. | |||||||
| > > | for gpu_inpiral, this has to be compare with the ~40 minutes necessary for lalapps_inspiral to produce the same result. | |||||||
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| < < | This results a *speed-up factor of 2 orders of magnitude ! | |||||||
| > > | This results a speed-up factor of 2 orders of magnitude !
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Documentation | ||||||||
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| > > | Complete description and documentation in english available soon ! | |||||||
Future plansInstead of writing up a completely new analysis software we will incorporate the code developed asgpu_inspiral
to be part of the pyCBC projectDevelopers | ||||||||
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Future plansInstead of writing up a completely new analysis software we will incorporate the code developed asgpu_inspiral | ||||||||
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Documentation | ||||||||
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| < < | Ther is some material available on this project: | |||||||
| > > | There is some material available on this project: | |||||||
Future plans | ||||||||
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| > > | Instead of writing up a completely new analysis software we will incorporate the code developed as gpu_inspiral
to be part of the pyCBC project | |||||||
Developers
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GPU_inspiralGPU_inspiral is a low-latency, high performance many-core implementation of the matched-filter gravitational wave search algorithm, developed by the RMKI Virgo Group. The base is an architecture and vendor independent OpenCL code. The sub algorithms implemented so far are the following:
PerformancePerformence test was done on a 2048 sec long data chunk, 500 template of 64 sec long was filtered. The code run on an Nvidia Tesla C2050. To produce the SNR time series it took ~17 sec forgpu_inpiral, this has to be compare with the ~40 minutes necessary for lalapps_inspiral to produce the same result.
This results a *speed-up factor of 2 orders of magnitude !DocumentationTher is some material available on this project:Future plansDevelopers
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