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Inria, the French national research institute for the digital sciences | Montbonnot Saint Martin, Rhone Alpes | France | 11 days ago
of hybrid modeling frameworks for electromobility, combining physical models, graph-based representations, and data-driven approaches. It aims at integrating large-scale mobility data to improve
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, and climate projections depends critically on the adequate representation of land-atmosphere (L-A) feedbacks. These feedbacks are the result of a highly complex network of processes and variables
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and different approaches can be tested to align the human and agent variants. The PD will experiment with symbolic techniques using Knowledge Graph representations of the world, Large Language Model
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experience EXPERTISE *Expertise in one or more of the following research areas: computational modelling, reasoning and knowledge representation, behaviour change technology, human-centered AI. *Standing out
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, thereby enabling the project's results to be implemented as widely as possible.. 2. Content-enriched digital archival representation. The data extracted from the content analysis will be used to enrich
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, and climate projections depends critically on the adequate representation of land-atmosphere (L-A) feedbacks. These feedbacks are the result of a highly complex network of processes and variables
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2026 (there is some flexibility) The Jozwik lab studies visuo-semantic cognition combining cognitive science, neuroscience, and computational modelling. The lab’s research has focused on probing specific
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—but are challenging to analyze. The project aims to move beyond black-box prediction by learning low-dimensional latent representations that capture these underlying physical processes. Examples
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interdisciplinary environment spanning explainable AI, causality, knowledge representation, and neural networks. Research (90%) research in probabilistic machine learning and neuro-symbolic AI (e.g. neural nets
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of transferring the knowledge acquired by a model trained on a source domain (for example, high-resolution images from the Bessans site) to a target domain (for example, webcam images or other mountain sites