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the selection process, consideration will be given to the applicant’s research plan, previous academic performance, international orientation, research merits, the duration and progress of any previous funding
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) Positions PhD Positions Country Finland Application Deadline 20 Oct 2025 - 23:59 (Europe/Berlin) Type of Contract Temporary Job Status Full-time Is the job funded through the EU Research Framework Programme
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University of Eastern Finland Position ID: 3582-PHD [#26562] Position Title: Position Type: Other Position Location: Joensuu, North Karelia 80101, Finland [map ] Subject Areas: Operator theory
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. The Atomic Scale Physics group at the Department of Applied Physics is looking now for a Doctoral Researcher (PhD student) to pursue a degree in the field of 2D nanodevices and condensed matter
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stability theory, modeling & identification, optimal control, certifiably safe & robust control, and learning for dynamics & control. The main task of the PhD student will be to develop sound data-driven
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a comprehensive multi-perspectives analysis approach, essential to track the impacts of the characteristics in different scales of the investigated processes on their overall techno-economic
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undertake an independent project on Asian nail salons in Helsinki that will lead to a PhD dissertation. The doctoral researcher will participate in the collection and analysis of the empirical materials
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learning tools to recommend reaction conditions for the synthesis of novel TRPA1 inhibitors. The project “A machine learning approach to computer assisted drug design” is led by Docent Juri Timonen
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. Currently, research activities focus on applying research methods from experimental psychology and cognitive science to augment human intelligence with AI. Your experience and ambitions eligible for PhD study
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Grant, focusing on the development of novel deep learning tools to recommend reaction conditions for the synthesis of novel TRPA1 inhibitors. The project “A machine learning approach to computer assisted