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, Denmark [map ] Subject Areas: Astrophysics / Theoretical Astrophysics Cosmology/Particle Astrophysics Condensed Matter Physics / Computational Physics , Condensed Matter Theory Planetary Sciences
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, hysteresis, oscillatory behaviour and support dependencies. Compare cluster behaviour across different characterization techniques (TEM, STM, TPD). Integrate findings to map the relationship between cluster
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include desktop data collection, organization of data (documents, interviews, meetings), analysis and coding of data, mapping of academic literature, organization of meetings etc. Your workplace will be
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publications in the field’s internationally recognized journals and citations in the Social Science Citation Index and/or Google Scholar. A teaching portfolio documenting teaching qualifications and pedagogical
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with various professional backgrounds. Your Primary Areas of Responsibility in this role will be to oversee all aspects of project start up for projects, including stakeholder mapping and analysis, due
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our understanding and mapping of fish distributions, especially for under-studied coastal areas and less frequently observed species. A key challenge is the limited and fragmented nature of existing
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Location: Odense, 5230, Denmark [map ] Subject Areas: Pure math, with relations to quantum theory or with emphasis on Quantum algorithms, Quantum software and Quantum computing. Appl Deadline: 2025/12/01 11
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Location: Odense, 5230, Denmark [map ] Subject Areas: Pure math with relations to quantum theory or with emphasis on Quantum algorithms, Quantum software and Quantum computing. Appl Deadline: 2025/12/01 11
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Electrophysiological signal processing of, e.g., EEG, ECG, EMG, etc. Health data science, incl. modern machine, and deep learning methods, Cloud-based platforms like MS Azure or Google Colab Health data standards, like
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. Using adipose tissue biopsies from individuals across a spectrum of metabolic disease severity, the project will leverage single-cell and spatial transcriptomics to map cellular heterogeneity and tissue