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About us: The post will be based in the Headache Group under the supervision of Dr Philip R Holland, a preclinical research group with expertise in primary headache disorders, electrophysiology
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related to staff position within a Research Infrastructure? No Offer Description About us: The post will be based in the Headache Group under the supervision of Dr Philip R Holland, a preclinical research
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experience in handling and analysing large-scale datasets (neuroimaging, genomics, or both). Proficiency in programming and computational analysis (e.g., Python, R). Expertise in neuroimaging (MRI, MEG, EEG
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programming and computational analysis (e.g., Python, R). Expertise in neuroimaging (MRI, MEG, EEG) and/or genomics; strength in one area with willingness to develop in the other. Ability to contribute to data
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methodologies across MATLAB, Python, and/or R. Highly motivated and enthusiastic researcher with a strong and documented interdisciplinary interest in mental health Strong evidence of potential to build
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demonstrated ability to apply and combine methodologies across MATLAB, Python, and/or R. Highly motivated and enthusiastic researcher with a strong and documented interdisciplinary interest in mental health
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administering standardised or experimental assessments. Competence in data analysis and databased management, including techniques relevant to longitudinal studies (e.g. mixed models, SEM, in R, Stata, MPlus
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assessments. Competence in data analysis and databased management, including techniques relevant to longitudinal studies (e.g. mixed models, SEM, in R, Stata, MPlus, or other suitable programme) Proven ability
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Experience in statistical or scientific programming (ideally R and/or Python) Experience in analyzing large and/or complex datasets Interest in quantifying uncertainties for computer models and/or climate
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to analyse datasets Experience in statistical or scientific programming (ideally R and/or Python) Experience in analyzing large and/or complex datasets Interest in quantifying uncertainties for computer models