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Space and Planets (artistic image)
Credit: hdwallpaperim.com/

Gianluca Gregori

Professor of Physics

Research theme

  • Lasers and high energy density science
  • Plasma physics

Sub department

  • Atomic and Laser Physics

Research groups

  • Laboratory astroparticle physics
  • Oxford Centre for High Energy Density Science (OxCHEDS)
Gianluca.Gregori@physics.ox.ac.uk
Telephone: 01865 (2)82639
Clarendon Laboratory, room 029.8
  • About
  • Publications

The triclinium of the ‘casa del moralista’ and its inscriptions: Cil iv, 7698 = cle 2054

Sylloge Epigraphica Barcinonensis 18 (2020) 85-105

Authors:

G Bianchini, R Bianco, GL Gregori

Abstract:

The so-called ‘Casa del Moralista’ stands out from other houses in Pompeii on ac-count of its summer triclinium’s parietal decoration; here, we find three metrical inscriptions which are unique in the Campanian city and rare in general. One elegiac couplet is found on each wall. These texts will be evaluated from a literary point of view, but also within their immediate environmental context, to understand whether their arrangement on the three walls of the room is random, or follows a logical order.

Up to two billion times acceleration of scientific simulations with deep neural architecture search

CoRR abs/2001.08055 (2020)

Authors:

MF Kasim, D Watson-Parris, L Deaconu, S Oliver, P Hatfield, DH Froula, G Gregori, M Jarvis, S Khatiwala, J Korenaga, J Topp-Mugglestone, E Viezzer, SM Vinko

Abstract:

Computer simulations are invaluable tools for scientific discovery. However, accurate simulations are often slow to execute, which limits their applicability to extensive parameter exploration, large-scale data analysis, and uncertainty quantification. A promising route to accelerate simulations by building fast emulators with machine learning requires large training datasets, which can be prohibitively expensive to obtain with slow simulations. Here we present a method based on neural architecture search to build accurate emulators even with a limited number of training data. The method successfully accelerates simulations by up to 2 billion times in 10 scientific cases including astrophysics, climate science, biogeochemistry, high energy density physics, fusion energy, and seismology, using the same super-architecture, algorithm, and hyperparameters. Our approach also inherently provides emulator uncertainty estimation, adding further confidence in their use. We anticipate this work will accelerate research involving expensive simulations, allow more extensive parameters exploration, and enable new, previously unfeasible computational discovery.
Details from ArXiV

Axion-like-particle decay in strong electromagnetic backgrounds

Journal of High Energy Physics Springer 2019:12 (2019) 162

Authors:

B King, BM Dillon, K Beyer, Gianluca Gregori
More details from the publisher
Details from ORA
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Le ultime acquisizioni dal teatro di Terracina e l’eccezionale iscrizione del triumviro M. Emilio Lepido

Mélanges de l École française de Rome Antiquité OpenEdition (2019)

Authors:

Nicoletta Cassieri, Gian Luca Gregori, Jean-Baptiste Refalo-Bistagne
More details from the publisher

Inverse problem instabilities in large-scale modelling of matter in extreme conditions

Physics of Plasmas AIP Publishing 26:11 (2019) 112706

Authors:

MF Kasim, TP Galligan, J Topp-Mugglestone, G Gregori, Sam Vinko

Abstract:

Our understanding of physical systems often depends on our ability to match complex computational modeling with the measured experimental outcomes. However, simulations with large parameter spaces suffer from inverse problem instabilities, where similar simulated outputs can map back to very different sets of input parameters. While of fundamental importance, such instabilities are seldom resolved due to the intractably large number of simulations required to comprehensively explore parameter space. Here, we show how Bayesian inference can be used to address inverse problem instabilities in the interpretation of x-ray emission spectroscopy and inelastic x-ray scattering diagnostics. We find that the extraction of information from measurements on the basis of agreement with simulations alone is unreliable and leads to a significant underestimation of uncertainties. We describe how to statistically quantify the effect of unstable inverse models and describe an approach to experimental design that mitigates its impact.
More details from the publisher
Details from ORA
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