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related field. Strong knowledge of machine learning. Strong publication record in a relevant field. Excellent analytical and problem-solving skills. Interest in collaborative research with both academia and
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of Management Studies at Aalto University School of Business (http://management.aalto.fi ). The department comprises several highly competitive research groups in organization and management theory, strategy
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of the in-person activities at NARS. They will also be expected to teach and organize workshops and seminars. Key tasks include: Undertaking independent research according to the research plan
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. The postdoctoral researchers will primarily focus on their own research and be a part of the activities at NARS. They will also be expected to teach (5 %) and organize workshops and seminars. The preferred start
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, professional development opportunities, and a first-class research and teaching environment with strong support for international collaboration. Learn more about staff benefits on our website . HOW TO APPLY
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? Please make sure that your ORCID-profile (https://orcid.org ) works: your publications are listed and public (Set visibility: Everyone). You cannot apply to this job without an ORCID profile
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and Finland. How to apply? Please make sure that your ORCID-profile (https://orcid.org ) works: your publications are listed and public (Set visibility: Everyone). You cannot apply to this job without
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visit the Life in Finland section on our website to learn more. How to apply Submit your application by using our electronic application form no later than 30 April 2026 by 24:00 (midnight) Finnish time
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environment affiliated with the European Laboratory for Learning and Intelligent Systems (ELLIS) Institute Finland. The selected candidate will contribute to the development and implementation of precision
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inequalities and Sobolev-type spaces (with Hytönen and/or Korte), 3. Conformal deformations of metric measure spaces and/or general regularity and convergence for graph-based machine learning using stochastic