37 algorithm-development-"Multiple"-"Prof"-"UNIS" positions at Chalmers University of Technology
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on understanding the feasibility of climate action and developing approaches for anticipating transitions. The group has a rich international network and a strong funding track record, including with an ERC Starting
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pharmaceutical materials. In this postdoctoral project, chemically modified cellulose fibers and pharmaceutical formulations are the focus. The aim is to adapt and develop methods in solid-state DNP-NMR
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of artificial intelligence, cloud systems, and next-generation communication infrastructures. In this position, you will develop agentic AI solutions that can autonomously configure and deploy 6G and edge-cloud
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University of Technology , where you will develop explainable AI models for personalized treatment planning in sports medicine and orthopaedics. You will work in a highly interdisciplinary environment
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staff position within a Research Infrastructure? No Offer Description Would you like to contribute to the development of sustainable Zinc ion batteries for stationary energy storage applications? Are you
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materials for synthesizing different types of hydrogen storage molecules. Using advanced quantum mechanical calculations, you will develop multi-scale models to study reaction kinetics and improve catalyst
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Are you passionate about artificial intelligence and its potential to transform healthcare? Join us as a postdoctoral researcher at Chalmers University of Technology , where you will develop
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In the Hybrid Quantum Systems Laboratory, we develop quantum technologies for sensing and tests of fundamental physics. If you have a passion for highly collaborative, experimental research this is
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this position, you will develop agentic AI solutions that can autonomously configure and deploy 6G and edge-cloud functions, using digital twins and advanced validation techniques. You will work closely with
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systems against network-based threats. The research will explore network attack surfaces in distributed AI, assess their impact on system reliability and trustworthiness, and develop cross-layer defenses