A configurable calorimeter simulation for AI (COCOA) applications is presented, based on the Geant4 toolkit and interfaced with the Pythia event generator. This open-source project is aimed to support the development of machine learning algorithms in high energy physics that rely on realistic particle shower descriptions, such as reconstruction, fast simulation, and low-level analysis. Specifications such as the granularity and material of its nearly hermetic geometry are user-configurable. The tool is supplemented with simple event processing including topological clustering, jet algorithms, and a nearest-neighbors graph construction. Formatting is also provided to visualise events using the Phoenix event display software.
翻译:根据Geant4工具包并与Pythia事件生成器接口,介绍了AI(COCOA)应用的可配置热量模拟,这一开放源码项目旨在支持开发高能物理的机器学习算法,这种算法依赖于现实的粒子阵列描述,如重建、快速模拟和低水平分析。其近乎密封的几何测量的颗粒度和材料等规格是用户可配置的。该工具还得到了简单事件处理的补充,包括地形群集、喷射算法和近邻图形构造。还提供格式,用于利用凤凰事件显示软件对事件进行可视化。</s>