CERN Accelerating science

Talk
Title Automatic Differentiation and Deep Learning
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Author(s) Chintala, Soumith (speaker) (Facebook)
Corporate author(s) CERN. Geneva
Imprint 2018-01-26. - Streaming video.
Series (EP-IT Data science seminars)
Lecture note on 2018-01-26T14:00:00
Subject category EP-IT Data science seminars
Abstract

Statistical learning has been getting more and more interest from the particle-physics community in recent times, with neural networks and gradient-based optimization being a focus.

In this talk we shall discuss three things:

  • automatic differention tools: tools to quickly build DAGs of computation that are fully differentiable. We shall focus on one such tool "PyTorch".
  •  Easy deployment of trained neural networks into large systems with many constraints: for example, deploying a model at the reconstruction phase where the neural network has to be integrated into CERN's bulk data-processing C++-only environment
  • Some recent models in deep learning for segmentation and generation that might be useful for particle physics problems.
Copyright/License © 2018-2024 CERN
Submitted by maurizio.pierini@cern.ch

 


 Record created 2018-01-26, last modified 2022-11-02


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