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The Faculty of Humanities at the University of Helsinki invites applications for the position of POSTDOCTORAL RESEARCHER IN CULTURAL MEMORY STUDIES AT THE CENTRE OF EXCELLENCE IN NATIONALISM
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CULTURAL MEMORY STUDIES AT THE CENTRE OF EXCELLENCE IN NATIONALISM RESEARCH IN THE HUMANITIES (NARS) The fixed-term appointment is for 36 months, starting in September 2026. This position is based in the CoE
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development, progression, and disease heterogeneity. The group's current projects use network science and artificial intelligence to develop tools that (i) integrate multi-modal data, (ii) model gene regulation
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to develop tools that (i) integrate multi-modal data, (ii) model gene regulation at increased genomic and cellular resolution, (iii) refine the analysis of genome-wide regulatory networks. The group applies
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with particular emphasis on prostate cancer , and it is part of the Prostate Cancer Research Centre (PCRC) . The Faculty of Medicine and Health Technology (MET) is committed to high quality research and
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to tolerance, movement, and interaction. By integrating multi-taxa field data, trait-based ecology, experiments, and advanced statistical analyses, TRACE aims to uncover how ecological processes propagate across
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of investigating ecosystem-based approaches to tackling broad environmental challenges is also an advantage. This position will be part of the Diversity in Society and Life (DIVSOL ) multi Faculty action led by
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particular emphasis on trait dimensions related to tolerance, movement, and interaction. By integrating multi-taxa field data, trait-based ecology, experiments, and advanced statistical analyses, TRACE aims
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Researcher/Project Researcher to join our Data-Driven Drug Design, ( 4D, webpage ) group. Our core research operates around the world-class supercomputing resources of CSC (webpage) , in particular
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for biomedical data, including but not limited to: o causal inference and clinical prediction, o representation learning for multi-modal biological data, o uncertainty quantification, robustness, and