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French National Research Institute for Agriculture, Food, and the Environment (INRAE) | Palaiseau, le de France | France | about 1 month ago
behavior (API-Neuro team), protein metabolism and digestibility (APReM team), and food system modelling (PROSPECT team). PNCA has technical platforms dedicated to biochemistry, histochemistry
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environmental physics affects larval actions Develop robust APIs for community access Required Qualifications Essential: Strong background in finite element methods and numerical simulation Proficiency in Python
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Post-Doc who wants to contribute to the allow successful delivery of APIs or key intermediates, by the use of novel technologies such as continuous flow mechanochemistry by reactive twin screw extrusion
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-level APIs to access various data sources, sensors, together with procedural data flow constructs to create and maintain complex data curation scripts (e.g., using Python). In smart robotic agriculture
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capabilities, AI and data processing, as well as software to implement radio-astronomy workflows, including resource management and a workflow deployment API - Contribute to the implementation of modular
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offers C, Fortran, and Python API. PDI offers a reference system similar to Python or C++'s shared_ptr with locking to ensure coherent access by coupled modules. It provides a global namespace (the data
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ecosystem. Expected Deliverables: Development and testing of new assessment modules for LLMs and AI Agents and/or extension of existing ones. Contributions to interfaces or APIs that operationalise
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. Supervisor: Prof. Vincent CASTEL (Google Scholar page ) Keywords: Cavity magnonics; Nitrogen-vacancy (NV) centers; Hybrid quantum systems Where to apply Website https://imtatlantique.fillout.com/mscapf2026
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Inria, the French national research institute for the digital sciences | Villeneuve la Garenne, le de France | France | 2 months ago
of an OpenAI Gymnasium–compatible environment layer (a “Gym-Agro” or ”Gym-PBM abstraction). This layer will expose a standardized API (reset, step, observe, reward, done) to RL agents, manage simulation calls