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, technologies and systems. The ERAM group within TSL have great experience in SSbD, especially in combining different methods such as modeling mass flows analysis (MFA), Life cycle analysis (LCA) and semi
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technologies with clinical practice, developing solutions that enable accurate and real-time diagnosis and therapies. Project background Polyethylene wear is a major factor affecting the long-term performance
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Researcher (R1) Country Switzerland Application Deadline 25 Jan 2026 - 22:59 (UTC) Type of Contract Temporary Job Status Part-time Is the job funded through the EU Research Framework Programme? Not funded by a
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/ ), is currently looking for dynamic and independent graduate students (Master's degree) who are interested in carrying out their PhD work in bioethics. The PhD position is part of the MORALMAP project
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of Graz (6 months): Lignin functionalization and development of samples for electrical conductivity – Anton Paar (4 months): Analysis techniques for the characterization of electrically conductive surfaces
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that enable accurate and real-time diagnosis and therapies. Project background Polyethylene wear is a major factor affecting the long-term performance of hip implants, as it can lead to particle-induced
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team from various backgrounds with a large knowledge base. We conduct research on Li-Ion batteries ranging from material development, structural analysis with x-ray techniques, to digital modeling and
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-series analysis, but candidates with a degree in sports and a strong computational leaning are welcome as well. We offer Your job with impact: Become part of ETH Zurich, which not only supports your
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of Basel, Swiss TPH combines research, education and services at local, national and international level. Around 1000 staff and students from 96 nations work at Swiss TPH focusing on climate change
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, aligning AI systems with complex human values, and building self-improving agents capable of autonomous learning. Our work combines cutting-edge experimentation – spanning RL, meta-learning, and robust