This is the new indico site. Data from 2019 to 10th September 2024 has been migrated here. Any queries to spcs-computing AT qmul.ac.uk.

GRADnet Machine learning and AI workshop

Europe/London
LT (Arts II)

LT

Arts II

Queen Mary University of London, Mile End Campus
A Bevan (Queen Mary), A Pourtsidou (Queen Mary), Marcella Bona (QMUL), U Blumenschein (Queen Mary)
Description
This is a 2-day workshop that consists of a series of presentations and tutorials, to ensure delegates get the chance to learn about modern methods, and have the opportunity to get some hands on experience. This workshop will be of interests to PhD students keen to learn about, and start using modern data science and AI in the context of physics and astronomy.
  • Wednesday 15 January
    • 10:30
      Break
    • Introduction and Orientation Session

      This session will lay down the housekeeping rules and provide some brief data wrangling issues.

      • 1
        Welcome and housekeeping
        Speaker: Dr A Bevan (Queen Mary)
        Slides
      • 2
        Why is data wrangling important?
        Speaker: Dr Nick Barlow (Alan Turing Institute)
        Slides
      • 3
        Data wrangling exercises
        Speaker: Dr Nick Barlow (Alan Turing Institute)
        Slides
    • 12:30
      Lunch
    • Tutorial
    • 15:00
      Break
    • Plenary
      • 5
        Reinforcement learning
        Speaker: Dr A Pourtsidou (Queen Mary)
        Slides
      • 6
        Sci ML team @ RAL
        Speaker: Dr Jeyan Thiyagalingam (STFC)
        Slides
    • 18:00
      Dinner
  • Thursday 16 January
    • Tutorial
    • 10:30
      Break
    • Plenary
      • 8
        NNPDF - using neural networks to compute parton density functions
        Speaker: Dr Maria Ubiali (DAMPT)
        Slides
      • 9
        ABBA - Automatically Building Better Algorithms.
        Speaker: Dr John Woodward (QMUL)
        Slides
    • 12:30
      Lunch
    • Tutorial
      • 10
        SQL tutorial
        Speaker: Dr A Pourtsidou (Queen Mary)
        Slides
      • 11
        Data in finance
        Speaker: Dr Thomas Babbedge (Gresham Investment Management LLC)
    • 15:00
      Break
    • Plenary
      • 12
        Challenges of Machine Learning in Physics
        Speaker: Dr A Bevan (Queen Mary)
        Slides
      • 13
        Machine Learning applied to neutrino physics
        Speaker: Dr Sophie King (Kings College London)
        Slides