학술논문

New directions for surrogate models and differentiable programming for High Energy Physics detector simulation
Document Type
Working Paper
Source
Subject
High Energy Physics - Phenomenology
Computer Science - Machine Learning
High Energy Physics - Experiment
Physics - Computational Physics
Physics - Instrumentation and Detectors
Language
Abstract
The computational cost for high energy physics detector simulation in future experimental facilities is going to exceed the current available resources. To overcome this challenge, new ideas on surrogate models using machine learning methods are being explored to replace computationally expensive components. Additionally, differentiable programming has been proposed as a complementary approach, providing controllable and scalable simulation routines. In this document, new and ongoing efforts for surrogate models and differential programming applied to detector simulation are discussed in the context of the 2021 Particle Physics Community Planning Exercise (`Snowmass').
Comment: contribution to Snowmass 2021