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collaborative research environment Strong ties to both academia and industry Access to advanced experimental and computational facilities Data from natural slopes on the West Coast of Sweden You will also have
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. The center is partner-driven and currently includes 16 partners representing industry, academia, and government agencies. Our mission is to promote and integrate the life cycle perspective into all decision
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Technology (WACQT). WACQT is a 12-year, billion-SEK initiative started in 2018 with the purpose of advancing Swedish academia and industry to the forefront of quantum technology, and to build a Swedish quantum
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University of Technology as principals. About us Our division, Data Science and AI (DSAI) at CSE conducts research in cooperation with partners in academia, industry, public, and cultural sectors; and has
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polymers and on the development of spinning processes for manufacturing conducting polymer fibers used in wearable electronics. A summary of the research field can be found in a recent review . Project
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. MC2 houses a cleanroom for micro- and nanofabrication with the latest equipments. Our work is often done in close collaboration with Swedish and international partners within academia, industry and
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? If so, this postdoctoral position is your opportunity to make an impact while working in a collaborative research group focused on cutting-edge battery materials and manufacturing. Project description
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the polymer matrix while preserving the quality of the fibres. Information about the division and the department The position is based in the Division of Materials and Manufacture at the Department
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scientific questions and applied problems together with industry. This position is within the Competence Centre for Catalysis (KCK). Who we are looking for We seek candidates with the following qualifications
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within the Data Science & AI division (DSAI). With 30+ nationalities and strong industry/academic ties, we offer a dynamic, collaborative ecosystem. The AI and Machine Learning in the Natural Sciences