9429

GPU Enhancement of the Trigger to Extend Physics Reach at the LHC

V. Halyo, A. Hunt, P. Jindal, P. LeGresley, P. Lujan
Princeton University, Princeton, NJ, USA
arXiv:1305.4855 [physics.ins-det], (21 May 2013)
@article{2013arXiv1305.4855H,

   author={Halyo}, V. and {Hunt}, A. and {Jindal}, P. and {LeGresley}, P. and {Lujan}, P.},

   title={"{GPU Enhancement of the Trigger to Extend Physics Reach at the LHC}"},

   journal={ArXiv e-prints},

   archivePrefix={"arXiv"},

   eprint={1305.4855},

   primaryClass={"physics.ins-det"},

   keywords={Physics – Instrumentation and Detectors, High Energy Physics – Experiment},

   year={2013},

   month={may},

   adsurl={http://adsabs.harvard.edu/abs/2013arXiv1305.4855H},

   adsnote={Provided by the SAO/NASA Astrophysics Data System}

}

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Significant new challenges are continuously confronting the High Energy Physics (HEP) experiments, in particular the two detectors at the Large Hadron Collider (LHC) at CERN, where nominal conditions deliver proton-proton collisions to the detectors at a rate of 40 MHz. This rate must be significantly reduced to comply with both the performance limitations of the mass storage hardware and the capabilities of the computing resources to process the collected data in a timely fashion for physics analysis. At the same time, the physics signals of interest must be retained with high efficiency. The quest for rare new physics phenomena at the LHC leads us to evaluate a Graphics Processing Unit (GPU) enhancement of the existing High-Level Trigger (HLT), made possible by the current flexibility of the trigger system, which not only provides faster and more efficient event selection, but also includes the possibility of new complex triggers that were not previously feasible. A new tracking algorithm is evaluated on a NVIDIA Tesla K20c GPU, allowing for the first time the reconstruction of long-lived particles at the tracker system in the trigger. Preliminary time performance and efficiency will be presented.
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