Diese Seite ist nur auf Englisch verfügbar.

Grants for Visiting Postdoc, Advanced Doctoral Students or Master’s Students to AIMS South Africa 2025 Anomaly Detection Algorithms for the ATLAS Trigger Systems

Dr. Claire David

Proposed project:

Anomaly Detection Algorithms for the ATLAS Trigger Systems

Description:

The ATLAS Experiment is one of the detectors of the Large Hadron Collider (LHC), an underground particle accelerator located at CERN, the European Centre for Nuclear and Particle Physics. A recent trendy approach to find New Physics, i.e. processes departing from the current, incomplete theoretical framework, is to search for proton-proton collisions that are not generic (most collisions at the LHC are known physics and define the 'normal', aka the physics we already know). The project would revolve into developing a compact, fast Variational AutoEncoder (VAE) that would extract most information about anomalous events, such as a possible directionality (from the latent space) or multi-dimensional anomaly score. Relevant metrics will be defined to assess the performance. There are available datasets open to the public. Signal samples can be used as a proxy for an initial benchmarking, yet the ultimate goal is to create a model-independent metric where events with high anomaly scores are the one most likely to contain interesting new physics.

The topic demands a short introduction about the physics context, yet it should be doable by a student without any background in particle physics.

Website Dr. Claire David