349 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:" positions at Nature Careers in United States
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, raises concerns, and shares information with team. Able to draw insights from different sets of data and quickly understand why issues are happening. Solves problems quickly by identifying the root causes
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. To apply Interested candidates should submit a curriculum vitae and names and contact information for three references directly via the online application. For more information, contact: Chris Morton
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of planning and managing projects, designing and testing deliverables, and managing data. In this role, you will be working with the predominantly utilized childhood cancer survivorship guideline in North
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collaboratively to: Design panels of relevant immunological markers for immune phenotyping, biological perturbations, and health or disease states. Generate gold standard data to validate novel sequencing-based
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principles of brain function. For more information about the Flavell Lab, please visit: Steven – Flavell Lab About the Role We are seeking a motivated and creative researcher to participate in computational
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candidates should submit an application package containing 1) CV, 2) contact information for three research references, and 3) a brief summary discussing your research interest or fit with the lab research
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data integration and coordinates other efforts related to infrastructure with minimal supervision. The Northcott Lab within the Center of Excellence in Neuro-Oncology Sciences (CENOS) is seeking a highly
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rigorous research methodology. Contribute to building institutional genomic research infrastructure, including biorepositories, data analytics platforms, and advanced sequencing technologies. Clinical and
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brain tumors through application of innovative technologies and/or data science. Key areas of interest include development of human stem cell and organoid models to study mechanisms of tumorigenesis
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Haiman and Fei Chen on analyzing risk factors, genetic (e.g. GWAS, whole-genome and whole-exome sequence, copy number variants, LoY, CHIP) and other omics data (e.g. metabolomics, proteomics, methylation