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Field
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modelling. Experience in analysing ecological monitoring data (e.g. telemetry, diet and population datasets). Advanced programming skills (R, Python, or equivalent) and reproducible analytical workflows (e.g
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good oral and written proficiency in English. Knowledge and experience about various front-end and data conversion circuit architectures. Experience with theoretical and practical aspects of discrete and
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required to have: Documented experience in experimental research, for example work conducted in laboratory, testbed, or industrial environments Experience with industrial robots, collaborative robots
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to collaborative experiments in the context of software engineering research. writing collaborative research papers & grant proposals Qualifications Requirements A doctoral degree or an equivalent foreign degree
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work will be carried out embedded in a collaborative research team, requiring sharing of expertise, open discussion of results and facilitating experiments of other team members. Active participation
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modelling. Experience in analysing ecological monitoring data (e.g. telemetry, diet and population datasets). Advanced programming skills (R, Python, or equivalent) and reproducible analytical workflows (e.g
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: Experience in research on lifestyle habits, including digital methods such as AI or tools for measuring, for example, dietary intake or physical activity; experience in data processing, including qualitative
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of independence in the design and implementation of research. Good ability to collaborate within a research group. Significant practical experience of laboratory work using techniques that are relevant
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state-of-the-art experimental models with patient-oriented translational research and strong collaborations across KI, Swedish healthcare, and leading international research environments. We offer a
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visualization experience developing or maintaining shared research computing infrastructure experience in collaborative projects involving both experimental and computational researchers prior postdoctoral