论文标题
CMS粒子流重建的机器学习
Machine Learning for Particle Flow Reconstruction at CMS
论文作者
论文摘要
我们提供有关CMS基于机器学习的粒子流算法的实现的详细信息。标准的粒子流量算法基于热量计簇和轨道重建稳定的颗粒,以提供全球事件重建,从而利用多个检测器子系统的组合信息,从而对诸如JETS和缺少横向能量等数量的大量改进。我们研究了使用图神经网络朝着异质计算平台(例如GPU)流向粒子流的可能演变。机器学习的PF模型基于事件的完整曲目和热量计簇的完整列表来重建粒子候选物。为了进行验证,我们直接确定CMS软件框架中的物理性能,当提出的算法与离线重建JET和缺少横向能的连接时。我们还报告了该算法的计算性能,该算法在运行时和内存使用情况下均与输入大小进行线性缩放。
We provide details on the implementation of a machine-learning based particle flow algorithm for CMS. The standard particle flow algorithm reconstructs stable particles based on calorimeter clusters and tracks to provide a global event reconstruction that exploits the combined information of multiple detector subsystems, leading to strong improvements for quantities such as jets and missing transverse energy. We have studied a possible evolution of particle flow towards heterogeneous computing platforms such as GPUs using a graph neural network. The machine-learned PF model reconstructs particle candidates based on the full list of tracks and calorimeter clusters in the event. For validation, we determine the physics performance directly in the CMS software framework when the proposed algorithm is interfaced with the offline reconstruction of jets and missing transverse energy. We also report the computational performance of the algorithm, which scales approximately linearly in runtime and memory usage with the input size.