45 data-science-phd Postdoctoral positions at The University of Arizona in United States
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formats. Excellent written and verbal communication. Minimum Qualifications PhD in biomedical science, molecular biology or vascular biology, biochemistry, physiology or related field is required. Preferred
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institutional needs evolve. Minimum Qualifications A Doctoral degree in Aerospace or Mechanical Engineering or other related field of study. Must have PhD conferred upon hire. Federal regulations require
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, NEON airborne remote sensing, comprehensive water balance measurements, soil respiration data, and tower-based remote sensing including multiple thermal imagers and solar-induced fluorescence (SIF
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Associates. The ideal candidates will possess a doctoral degree (PhD or MD) and have a strong background in molecular biology and physiology. There are three major projects in the lab: 1) studying the role
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is available in the laboratory of Dr. Terry O Matsunaga, Pharm.D, PhD in the Department of Neurosurgery and Biomedical Engineering at the University of Arizona (Tucson, AZ). The successful candidate
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, supervising/mentoring graduate and undergraduate students). Minimum Qualifications Must have completed all the requirements for a PhD. in Astronomy, Physics, Astrophysics, or related science at the time of hire
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manuscripts, and present data in research conferences. Contribute to grant applications. Knowledge, Skills, and Abilities: Strong background knowledge in molecular and cellular biology techniques (qPCR, Western
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of in vitro cell models and in vivo animal models (viral/fungal) Knowledge of general pathophysiology and molecular biology Proficiency in data analysis Strong problem-solving and experimental design
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programming tools. Ability to travel to conduct field work. Minimum Qualifications PhD in required science field with sufficient technical research experience with demonstrated scientific accomplishments
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career scientist with background in organic geochemistry, statistics, and Bayesian modeling to pursue analyses of paleoclimate biomarker data. The ideal candidate should be proficient with both laboratory