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Applied Physicist for Particle-Flow Reconstruction (EP-CMG-DS-2026-8-GRAP)

Posted January 08, 2026
Full-time Entry Level

Job Overview

In this role, you will contribute to the development of machine learning-based Particle-Flow reconstruction for the CMS experiment, integrating advanced algorithms into the High Level Trigger as part of the Next Generation Trigger project, where timing constraints and real-time performance are critical. You will further extend these approaches to future collider experiments such as FCC-ee, including optimising reconstruction performance, evaluating detector-specific strategies, and applying cutting-edge ML techniques to improve physics precision.

Your responsibilities

  • Develop ML-based PF components using TICL inputs in CMS and validate performance using standard PF and TICL metrics.
  • Ensure robustness, interpretability and debuggability in realistic CMS environments.
  • Explore the applicability of these approaches for future collider detectors, building on the FCC framework and the Key4hep ecosystem.
  • Lead ML-based reconstruction studies for CLD, and extend the approach to other detector concepts such as ALLEGRO, IDEA, and GRAiNITA.
  • Designing suitable data representations for heterogeneous detector inputs.
  • Handling large-scale graphs and distributed training.
  • Benchmarking performance on physics observables and reconstruction metrics.

Your profile

  • Proficiency in developing and training ML models targeting HEP reconstruction, ideally of complex objects like Particle Flow candidates.
  • Deep understanding of High Energy Physics (HEP) Reconstruction Code, showcasing proficiency in comprehending, managing, and authoring reconstruction code tailored for High Energy Physics experiments.
  • Solid knowledge of detector systems and particle-detector interactions, as required for Particle Flow algorithms.
  • A strong foundation in programming is essential, with a focus on python for developing and training ML models and C++ for the development of efficient and optimised algorithms.

Skills

  • Demonstrated proficiency in detector physics, event reconstruction principles and physics analysis in the context of High Energy Physics experiments is essential.
  • Strong experience in advanced ML model creation, large scale and distributed training, and deployment is required, as the role involves developing and incorporating AI-driven techniques into the reconstruction algorithms.
  • Strong programming skills in Python are necessary for scripting, tooling, and integration tasks.
  • Strong programming skills in C++ are required, with a focus on developing efficient algorithms and, eventually, integrating different ML into HEP framework for fast inference; familiarity with CMSSW and FCCSW is a plus.
  • Spoken and written English, with a commitment to learn French.

Eligibility criteria:

  • You are a national of a CERN Member or Associate Member State.
  • You have a professional background in Computer Science, Physics, or related (or a related field) and have either:
    • a Master's degree with 2 to 6 years of post-graduation professional experience;
    • or a PhD with no more than 3 years of post-graduation professional experience.
  • You have never had a CERN fellow or graduate contract before.

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