Tobias Golling

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Mr Guillaume QUÉTANT

Assistant Doctorant – Groupe ATLAS (co-supervisé par Prof. Voloshynovskiy)

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Guillaume is a PhD student in the group of Prof. Tobias Golling at the Particle Physics Department (DPNC), jointly supervised by Prof. Slava Voloshynovskiy at the Computer Vision and Multimedia Laboratory (CVML). He is a member of the RODEM project (Robust Deep Density Models for High-Energy Physics and Solar Physics), and a member and qualified author of the ATLAS Collaboration at CERN.

Guillaume graduated from the Univ. of Geneva, Switzerland, with a BSc in physics in 2017, and an MSc with an Excellence Master Fellowship in theoretical physics in 2020. He started as a PhD student at the Univ. of Geneva in 2020, where he works on machine learning for high energy physics, especially for generative modelling and anomaly detection.

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Recent work

  • Turbo-Sim: A generalised autoencoder framework applied to high-energy physics (NeurIPS 2021poster and arXiv paper)
  • At ATLAS (CERN): Standalone topological clustering of energy deposits in calorimeter cells (slides)
  • GANDALF: Four-momentum transcoding with attention encoder, latent space matching and diffusion decoder (poster)
  • PC-JeDi: Jets generation as particle clouds with a diffusion transformer network (Journal paper and arXiv paper)
  • PC-Droid: Faster and better jets generation with a diffusion transformer network (Journal paper and arXiv paper)
  • TURBO: Mathematical grounds and interpretations of many deep learning training methods (Journal paper and arXiv paper)
  • PIPPIN: Set to set transformation (arXiv paper)
  • GalaDRIEL: Corrections to galaxy simulation (ongoing)

Publications

Complete and up-to-date list of Guillaume's publications:

  • Turbo-Sim: a generalised generative model with a physical latent space
    Guillaume QUÉTANT, Mariia DROZDOVA, Vitaliy KINAKH, Tobias GOLLING, Slava VOLOSHYNOVSKIY
    Proceedings of workshop in the international conference on Neural Information Processing Systems (NeurIPS) (2021) [arXiv]
  • Information-theoretic stochastic contrastive conditional GAN: InfoSCC-GAN
    Vitaliy KINAKH, Mariia DROZDOVA, Guillaume QUÉTANT, Tobias GOLLING, Slava VOLOSHYNOVSKIY
    Proceedings of workshop in the international conference on Neural Information Processing Systems (NeurIPS) (2021) [arXiv]
  • Generation of data on discontinuous manifolds via continuous stochastic non-invertible networks
    Mariia DROZDOVA, Vitaliy KINAKH, Guillaume QUÉTANT, Tobias GOLLING, Slava VOLOSHYNOVSKIY
    Proceedings of workshop in the international conference on Neural Information Processing Systems (NeurIPS) (2021) [arXiv]

Teaching/Tutoring

Information Theory for Data Science and Machine Learning (Univ. of Geneva, 2021–2023)


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