PhD (CIFRE) with AXA and INRIA – AI Weather Models for Extreme Events Risk Estimation

AXA

Job title:

PhD (CIFRE) with AXA and INRIA – AI Weather Models for Extreme Events Risk Estimation

Company:

AXA

Job description

Recent advancements in AI weather models have shown promising capabilities in weather prediction from short to medium-term (0 to 10 days lead time), comparable to physic-based state-of-the-art models. Notable examples include FourCastNet, SFNO, GraphCast, GenCast, Pangu-Weather, which have adopted a trend observed in other fields (e.g., language models, vision models, multi-modal models): they leverage large architectures with an extensive pre-training on very large datasets. This type of large models (also called foundation models) facilitates the development of downstream applications.In the context of weather forecasting, these AI models are typically trained on the gold standard global reanalysis dataset ERA-5, developed by the European Centre for Medium-Range Weather Forecasts. ERA-5 is widely used for weather and climate studies due to its high resolution, comprehensive coverage, and accurate representation of atmospheric conditions from 1979 to the present day. AI models, such as FourCastNet or GraphCast, are trained on ERA5 data: they take a snapshot of the atmosphere state at time (t) and they are trained to predict the atmospheric conditions at time (t+1) (typically 6 hours later).This PhD aims to assess and develop the capabilities of AI weather models in simulating extreme events, a promising avenue for risk estimation and risk prevention. However, potential issues may prevent accurate simulations: for instance, model biases towards average weather conditions (e.g., reliance on RMSE metric) and the underrepresentation of extreme events in the ERA5 dataset.The PhD (under a CIFRE scheme) will be hosted by the AI research team at AXA Group Operations in collaboration with the Natural Catastrophe R&D modelling team at AXA and the ARCHES team at INRIA. The primary objective is to develop knowledge and methodologies to better understand climate risks using AI weather models. The PhD student will evaluate and enhance the capabilities of AI weather models to simulate plausible and unobserved extreme events, focusing on identifying or developing datasets and metrics to assess model performances. The PhD student will explore solutions to improve existing models or create new approaches to address the limitations in extreme event simulation. The downscaling of the simulations to a higher resolution than the native ERA-5 resolution will also be addressed during the PhD. A key component of this work will involve estimating climate risks, particularly to determine the optimal set of initial conditions to input AI weather models to get, in fine, an accurate estimation of the risk of extreme weather event across various geographical locations. While this research is open to any major climate risks (tropical cyclones, extra-tropical cyclones, windstorms, hail, floods, heatwaves, etc.), the student may focus on a subset of perils.Expected ContributionsDuring the thesis, the PhD student is expected to produce research articles to be submitted to high-quality peer-reviewed ML workshops, conferences and journals (e.g. ICML, IJCAI, NeurIPS, JMLR…). Algorithmic implementations of the conceived methodology will be made available through libraries. The algorithms and methodologies developed during the PhD will be applied to real-world usecases.Working EnvironmentThe PhD (under a CIFRE scheme) will be jointly hosted by the AI research team at AXA Group Operations in collaboration with the Natural Catastrophe R&D modelling team at AXA and the ARCHES team at INRIA.The PhD student will also benefit from interactions with other researchers from AXA AI Research ecosystem, in particular the AXA-Sorbonne University Joint Research Lab (TRAIL), EPFL campus in Lausanne (Switzerland) and the Stanford University campus in Palo Alto (US).QualificationsRequired:· MSc. in computer science, AI, data science, applied mathematics, statistics or equivalent.· Good experience in programming in python and deep learning libraries (e.g. pytorch…)· Very good knowledge in deep learning, machine learning and statistical modelling.· Advanced level in English (technical discussions, presentations and paper writing are expected)Preferred:· Education, research, experience, projects in climate sciences, extreme events, risk estimation.· Previous research experience: research projects, internships, publications…

Expected salary

Location

Paris

Job date

Sat, 08 Mar 2025 23:11:32 GMT

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