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integrate the use of Large Language Models (LLMs), LLM agent, Agentic AI models and automated reasoning approaches for the interpretation of complex data, the analysis of experimental protocols, and the
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chimique et des procédés de premier plan en France et dans le monde (18 chercheurs CNRS, 82 enseignants-chercheurs, 43 agents techniques et administratifs ainsi que 180 agents non permanents : chercheurs
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) department at Telecom Paris. Reinforcement learning (RL) has emerged as a useful paradigm for training agents to perform complex tasks. Model-based RL (MBRL), in particular, promises greater sample efficiency
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-assembly, in the fields of renewable materials, health and energy - establishing strong links with the socio-economy world. The work of the recruited agent will be carried out in team 1 of the LCPO Team 1
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agents, which are effective but pose significant environmental concerns due to their high global warming potential and their classification as PFAS, now subject to strict regulations. In this context
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training an autonomous agent to ‘learn’ a control strategy. This formalism is similar to that of optimal control, with the difference that the agent does not have an explicit model of the dynamics
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areas of the brain. Treatment is based on rapid delivery of the thrombolytic agent (t-PA), but the delivery of the drug is limited by the obstruction of the vessels. In this project, the post-doctoral
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at the Integrative Neuroscience and Cognition Center (INCC). The position is available to work with Dr. Louise Kirsch. The postdoc will also have access to the UMR's BabyLab. The agent will be present at the host
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Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description The agent will be required to conduct experiments
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the postdoctoral researcher will be a part: Carole Adam, Senior Lecturer at the UGA. The objective of the project for UGA is to design and implement an agent-based simulator to evaluate coordinated response