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the Danish Confederation of Professional Associations. The allowance will be agreed upon with the relevant union. The period of employment is 3 years. The start date will be January 2, 2026, or a mutually
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study programme. List of publications and maximum 2 examples of relevant publications (in case you have any publications). References may be included, you're welcome to use the form for reference letter
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Job Description Are you passionate about designing ultra-low-power electronics for neural and wearable systems? Do you want to develop custom CMOS circuits that serve as the foundation
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Job Description Are you passionate about neuromorphic computing and hardware design? Do you want to contribute to the next generation of brain-inspired computing systems for healthcare applications
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average achieved Other professional activities A curious mind-set with a strong interest in peptide chemistry and chemical biology Language skills Place of employment The place of employment is at
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. Experience in modeling biological processes. Experience in use of process simulation tools such as Matlab, Aquasim, Superpro Designer or similar. Expertise within fermentation technology and/or gas
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the absolute forefront of observing and modeling two of Greenland’s largest glaciers -- Jakobshavn Isbræ and the Northeast Greenland Ice stream (NEGIS). You will use GNSS data on ice surface and bedrock
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employment is 3 years. You can read more about career paths at DTU here . Further information Further information may be obtained from Associate Professor Martin Hansen (marthan@dtu.dk). You can read more
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period of employment is 3 years. Starting date is 1 September 2025 (or according to mutual agreement). The position is a full-time position. You can read more about career paths at DTU here . Further
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electricity price signals, demand-response mechanisms, and time-of-use optimization. AI-Driven Optimization using Reinforcement Learning: Apply RL algorithms to develop and train agents that optimize power