Published June 5, 2025
| Version v1
Presentation
Open
CMS: Anomaly Detection Triggers
Description
Anomaly detection triggers offer a model-agnostic approach to capturing a wide range of beyond the Standard Model (BSM) signatures, including those from long-lived particles (LLPs). This talk presents an overview of the two machine learning-based anomaly detection triggers deployed in the CMS Level-1 trigger in 2024: AXOL1TL and CICADA. I will discuss their design, implementation, and integration into the CMS trigger. The talk will also outline future directions for enhancing sensitivity to LLPs with such triggers by incorporating Level-1 tracking and precision timing information.
Files
2025_06_05_LLP2025.pdf
Files
(4.4 MB)
| Name | Size | Download all |
|---|---|---|
|
md5:369ef612a1cd6948229f3814a1e3cb08
|
4.4 MB | Preview Download |
Additional details
Funding
- Schmidt Family Foundation
Conference
- Title
- LLP2025: Fifteenth workshop of the Long-Lived Particle Community
- Dates
- 2-6 June 2025