Erlangen 2026 – wissenschaftliches Programm
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T: Fachverband Teilchenphysik
T 50: Data, AI, Computing, Electronics V
T 50.1: Vortrag
Mittwoch, 18. März 2026, 16:15–16:30, KH 00.024
NEEDLE - A modern orchestration framework for Neural Simulation Based Inference tools — •Kylian Schmidt1, Ulrich Husemann2, Nicoló Trevisani1, Stephen Jiggins2, Levi Evans2, Judith Katzy2, Stefan Katsarov2, Felix Kahlhöfer3, Nino Kovačić4, Lena Rathmann3, and Niklas Reus3 — 1ETP, KIT, Karlsruhe — 2DESY, Hamburg — 3IAP, KIT, Karlsruhe — 4Department of Physics, U. of Zagreb
Neural Simulation Based Inference (NSBI) is a new machine learning (ML) paradigm for statistical data analysis in high energy physics (HEP). These tools learn the underlying statistical distribution of the data using surrogate neural networks and show clear improvements over classical likelihood estimation methods. However, these methods require the training of a large number of networks in order to achieve this increase in performance while retaining robustness towards biases. It is therefore crucial to address the challenges of orchestrating many neural network trainings, alongside efficient utilization of computational resources.
The NEEDLE project aims to provide a flexible framework for distributed training together with a library of NSBI tools for deployment on High Performance Computing clusters. NEEDLE combines modern ML libraries together with commonly-used HEP data analysis tools and formats. In this talk, we present the design of the NEEDLE framework, how it handles large data streams and our integration with pytorch lightning.
Keywords: Simulation Based Inference; Machine Learning; High Performance Computing; Workflow Management; Neural Networks
