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with possibility for funding up to three years. About the project/work tasks: Conduct comprehensive systematic reviews and meta-analyses on vaccine safety, efficacy, and immunogenicity in line with
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certified translation of the diploma and transcript of grades to English or a Scandinavian language, if the original is not in any of these languages. It is also required that the applicant enclose a review
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Norway, need to also attach a certified translation of the diploma and transcript of grades to English or a Scandinavian language, if the original is not in any of these languages. It is also required
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must provide a certified translation of the diploma and transcript of grades to English or a Scandinavian language, if the original documents are not in any of these languages. It is also required
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educational qualifications are from countries other than Norway must provide a certified translation of the diploma and transcript of grades to English or a Scandinavian language, if the original documents
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practical experience in data science applied to medical or population genomics or other omic demonstrate experience in analyzing large omic data be proficient in one programming language be able to work
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applied to medical or population genomics or other omic demonstrate experience in analyzing large omic data be proficient in one programming language be able to work independently and in a structured manner
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and written proficiency in another official language spoken in the project region will be considered positive, see documentation requirements The applicant’s personal suitability for the position is a
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project “ComDisp: Community-Centered Modeling of Housing-Related Health Disparities.” ComDisp develops a grassroots modeling framework to predict health disparities under different climate change scenarios
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/work tasks: The position is part of the Belmont Forum project “ComDisp: Community-Centered Modeling of Housing-Related Health Disparities.” ComDisp develops a grassroots modeling framework to predict