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an essential process for life. When a cell is at a diseased state, the interaction landscape can drastically change. We develop chemical tools to investigate these interactions to understand health and
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system-wide manner. Your job Molecules in our body constantly make interactions. This is an essential process for life. When a cell is at a diseased state, the interaction landscape can drastically change
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to design these agents and AI techniques to analyze text entries (and text entries obtained from the audio) obtained from human-agent and human-human interactions to construct the domain models and
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of the Leiden Academic Centre for Drug research (LACDR). State of the art equipment for the project is available (cell/bacterial culture, molecular biology lab, automated synthesizers, synthesis facilities, plate
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. The postdoc will actively explore how reinforcement learning techniques can be applied across a range of complex operational domains, such as energy systems, health care, and scheduling and planning. A strong
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droplet impact performance in the laboratory. - Implement droplet size dependent and impact velocity dependent cumulative damage models in a digital twin based on meteorological data for site
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funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Do you want to develop key knowledge for an efficient energy transition through AI in
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remains poorly understood how such systems learn and what signatures learning leaves in their physical structure and energy landscape. This project aims to build the theoretical foundations of physical
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approaches treat NP design as static property prediction. This project takes a fundamentally different approach: using generative models to propose novel NP formulations and coupling them with explainability
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into energy-rich carbon-based products is a promising strategy to replace fossil-derived chemicals and advance a sustainable carbon economy. Among available catalysts, copper uniquely enables the reduction