The Laboratoire de Réactivité et Chimie des Solides is looking for an AI engineer for the PEPR Battery OpenStorm Project (France2030).
The LCRS; located in Amiens, France, is looking for an AI engineer to help in the development of tools based on Machine/Deep Learning approaches for correlative characterizations for li-ion battery. This would be an 18 months-long post, starting between January and March 2024 and be in aid of the PEPR Battery OpenStorm Project (France2030).
The ideal candidate will have a profile in data science, algorithm AI, and software architecture, with skills in codePython, AI DeepLearning, data management, DashPlotly, and advanced multimodal characterizations.
Details on the project and the application process can be found here.
À lire aussi
Nikos Paragios – Seeing the Invisible – Doing the Impossible: Reinventing Healthcare with Generative AI-powered diagnosis, treatment and beyond
Nikos ParagiosDecember 04, 2024Vulpian Amphitheater, 12 rue de l’École de Médecine (75006 Paris) Nikos Paragios (52) is distinguished professor of Mathematics (on partial leave) at Ecole CentraleSupelec, the school of engineering ofthe University of Paris-Saclay and...
Deeply Learning from Neutrino Interactions with the KM3NeT neutrino telescope
2022 PhD/ DIAI Projects @AstronomyParticle physics and graph neural networks Santiago PENA MARTINEZ Project Summary A new generation of neutrino experiments is in the horizon looking to explore many of the open questions on neutrino properties and searching for...
Alon Halevy – Well-being, AI, and You: Developing AI-based Technology for Well-being
Alon HalevyDecember 04, 2024Vulpian Amphitheater, 12 rue de l’École de Médecine (75006 Paris) Alon Halevy is a Distinguished Engineer in Google Cloud. From 2019 until November 2023, he was a director at Meta’s Reality Labs Research, where he worked on Personal Digital...
Shen Liang – Knowledge-guided Data Science
Shen LiangMay 18, 4 PM online (zoom) linkedinAbstract This tutorial presents an overview of knowledge-guided data science, a rising methodology in machine learning which fuses data with domain knowledge. We will present numerous case studies on this methodology...