80 data-"https:" "https:" "https:" "https:" "AALTO UNIVERSITY" Postdoctoral positions at Duke University in United States
Sort by
Refine Your Search
-
shoreline project and in analyzing data, to assess nursery habitat provisioning, augmented secondary production of valuable fishes and crustaceans, water quality improvements, shoreline protection, and carbon
-
applications in environmental health and ecology as well as working with motivating datasets to become familiar with the data structure, challenges and competing methods. This position requires a Phd degree in
-
Immunology, Data Science and/or related fields. MD/PhD with molecular biology research experience. Must have experience with analyzing omics data. Familiarity or direct experience with analysis of 10x Genomics
-
age, color, disability, gender, gender expression, gender identity, genetic information, national origin, race, religion, (including pregnancy and pregnancy related conditions), sexual orientation
-
committed to providing employment opportunity without regard to an individual's age, color, disability, gender, gender expression, gender identity, genetic information, national origin, race, religion, sex
-
contact information of three professional references. Duke University is an Affirmative Action/Equal Opportunity Employer committed to providing employment opportunity without regard to an individual's age
-
. Postdoctoral Position in Neurophysiology - Yang Lab, Duke University School of Medicine Overview: Join the cutting-edge Yang Lab at Duke University for a transformative postdoctoral experience (https
-
related field prior to the start date. Responsibilities for both positions will include collaborating on the development of research protocols, data collection and analysis, budget and supply management
-
clustering calibration and measurement pipeline ahead of the Roman launch in late 2026, while taking advantage of early LSST data and existing Dark Energy Survey data for science analyses. This position has
-
Performed Research Development (70%) - Designing robust, rigorous, and reproducible experiments - Carefully documenting labwork and results using electronic lab notebooks - Executing experimental designs Data