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spanning development economics and econometrics. We provide three examples below of projects the fellow may work on. 1. “Meta-analysis and evidence aggregation” (Breza and Viviano) Description: The goal
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international members with 12 faculty and over 500 students in the B.S. and M.S. programs. Our interests span both research and practice, including artificial intelligence, big data, bioinformatics and
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-reads) for microbial ecology studies and finally, you have capacity for handling large amounts of data and their suitable storage and dissemination according to FAIR principles. Position 2: Postdoc in
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Domaine Mathématiques, information scientifique, logiciel Contrat CDI Intitulé de l'offre Power Systems Modelling Specialist H/F Statut du poste Cadre Description de l'offre Within the Institute
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Computer Science. The B.S. programs include specializations leading to certifications in multiple domains, including Big Data and Analytics, Cyber & Software Security, Game Programming, and Mobile Systems. In
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are diverse; with exciting ongoing grant-funded and pre- funded projects that include big-data, population health studies, mental health aspects of head and neck cancer outcomes, human papillomavirus (HPV), HPV
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generating, mobilising, and harvesting “big data” to create a dynamic and agnostic collection of information and deliver a new class of research that will enable a better understanding of the clinical
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Fellow to undertake systematic reviews, request and obtain data from global collaborators, conduct meta-analyses, and design and implement quantitative analyses of data sets on the occurrence by age of
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written reports, and makes preliminary interpretations of the data. Assists with assembly, annotation, meta-genomic analysis, and genotyping using high-throughput sequencing platforms including 454
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in previous research. We propose to answer a meta question before building such models: "Can we analyze large-scale unlabelled datasets and quantify its relation to the pre-trained models