Calo-VQ: Vector-Quantized Two-Stage Generative Model in Calorimeter Simulation

Liu, Qibin, Shimmin, Chase, Liu, Xiulong, Shlizerman, Eli, Li, Shu, Hsu, Shih-Chieh

arXiv.org Artificial Intelligence 

We introduce a novel machine learning method developed for the fast simulation of calorimeter detector response, adapting vector-quantized variational autoencoder (VQ-VAE). Our model adopts a two-stage generation strategy: initially compressing geometry-aware calorimeter data into a discrete latent space, followed by the application of a sequence model to learn and generate the latent tokens. Extensive experimentation on the Calo-challenge dataset underscores the efficiency of our approach, showcasing a remarkable improvement in the generation speed compared with conventional method by a factor of 2000. Remarkably, our model achieves the generation of calorimeter showers within milliseconds. Furthermore, comprehensive quantitative evaluations across various metrics are performed to validate physics performance of generation.