128 machine-learning-"https:" "https:" "https:" "https:" "https:" "https:" "University of Waterloo" research jobs in Finland
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project, titled "Linguistic distance, language learning, and educational attainment," aims to investigate the effect of linguistic distance on educational performance and understand what makes students
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research in a supportive and stimulating environment Access to state-of-the-art resources and excellent support for further learning and professional development The University of Helsinki offers
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of solar energy systems, applying machine learning methods, and data analysis. A background can be in materials engineering, physics, electrical engineering, computer science, or another suitable field. In
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year, paid sick leave, and paid parental leave. Application Materials Required: Further Info: https://neutronstars.fi/ P.O. Box 64 FI-00014 University of Helsinki Finland
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well as to learn a variety of scientific skills and technologies while making connections within and beyond the institute. WHAT WE OFFER Research training in diverse research areas with exceptional potential
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our website to learn more. How to apply? Submit your application by using our electronic application form no later than 6 February 2026 by 24:00 (midnight) Finnish time (UTC+2). Please note that you
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). Programming skills with Matlab, C/C++ or Python. Research experience in machine learning and artificial intelligence and/or inverse problem applied to imaging applications. Salary The position is fixed-term
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research environment, with continuous support for learning, training, and professional development. You will receive encouraging supervision in collaboration with Associate Professor Anni Tuppura and
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volumes of audiovisual data is essential. The appointee must have solid skills in programming and working with libraries for training and using machine learning models. Previous experience in managing large
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microelectronic hardware. Preclinical in-vitro and in-vivo testing of devices and methods will allow real world validation of this unusual Brain-Computer Interface. More information: (7) BRAINET: Overview