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learning and control systems Fluent in English (written and spoken) Practical experience with (multi-agent) path planning strategies Basic knowledge of ROS2 (Robot Operating System) and simulation techniques
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but with a computer agent that behaves as a partner. The contrast between the control and test conditions informs us on the strategies that are developed in a social context, compared to those simply
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, the successful candidate will use radionuclide-based molecular imaging and radionuclide therapy for the detection of carnitine metabolism. You will lead the biological evaluation for this agent using a range of
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external control. Autonomous agents that can perceive, reason, plan, act, and learn, together with self-configuring, self-healing, and self-optimising behaviours, provide the foundational principles
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. Applicants should have an interest in manufacturing systems, operations research, and simulation modelling. Candidates with prior experience in areas such as discrete-event simulation, agent-based modelling
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regulatory obligations. Hydraulic simulators are physically detailed but computationally slow and calibration-intensive, limiting large-scale scenario exploration and optimisation. Purely data-driven
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scenarios. Your research will map multilevel governance structures and you will co‑create mitigation strategies through participatory workshops. You will model farmers’ adaptation behaviour using agent‑based
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, abandonment, comments, peer interaction) Formalization of algorithms for orchestrating educational AI agents : Train RL and LLM agents and study multi-objective optimization (mastery, well-being stability) Work
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of Distributed Mixture-of-Experts (MoE) and Small Language Models (SLMs) to create autonomous, intent-driven networks. This isn't just about connectivity; it’s about building a collaborative, agentic ecosystem
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social prestige - asking how varying participants’ social attributes and attitudes towards each other shape their linguistic preferences, their imitation strategies, and their transmission and diffusion