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) neighborhoods, districts, towns and cities. Let’s investigate how to create and maintain such services and their relevant knowledge over time focusing on air quality and its dynamics at the different levels of a
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date: August 2026 at latest The students will be enrolled in the structured PhD programme at the LMU Ph.D. Medical Research - Faculty of Medicine - LMU Munich This position is part of 19 PhD Fellowships
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for maritime simulator training. The research will investigate how LLM-driven agents can perceive and interpret dynamic maritime environments, collaborate with human trainees during simulator sessions, provide
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project aims to develop human-centered interactive AI agents for maritime simulator training. The research will investigate how LLM-driven agents can perceive and interpret dynamic maritime environments
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such interdependencies explicit while remaining compatible with established workflows. The aim is to propose a structured representation of vessel designs that (1) integrates with current design practices and tools, (2
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on justice, decolonization, sustainability, and the evolving roles of Indigenous and state-led diplomacy. Additional dynamics—such as de-globalization and the green transition—further shape the political
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. Please turn on JavaScript in your browser and try again. UiO/Anders Lien 31st March 2026 Languages English English English Join a dynamic research team as a PhD Fellow, exploring men’s health and family
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the timeframe ability to work independently and in a team, be innovative and creative ability to work structured and handle a heavy workload having a good command of both oral and written English via Unsplash
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, and reinforcement learning for adaptive decision-making. A key aim is to connect wireless phenomena to learning robustness by combining physical-layer signal structure and signal-processing insights
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, and reinforcement learning for adaptive decision-making. A key aim is to connect wireless phenomena to learning robustness by combining physical-layer signal structure and signal-processing insights