118 phd-mathematical-modelling-population-modelling Postdoctoral positions at Rutgers University
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understanding the molecular basis of retinoid metabolism and signaling. Experience in animal models of lung injury, lung cell isolation, lung organoid cultures, immunofluorescent staining of tissues and cells
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-focused laboratory independently. Among the key duties of the position are the following: Designs, discusses, and performs diverse experimental models and techniques related to the study of innate cells
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Date 05/21/2025 Posting Close Date 09/24/2025 Qualifications Minimum Education and Experience This position requires a PhD in civil engineering, transportation engineering, or related engineering fields
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on characterizing non-coding regulatory elements in humans and understanding how these elements change across different conditions. The project will involve developing new modeling approaches for coupling functional
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research worldwide and reduce the burden of cancer in our catchment area. By engaging with and empowering our exceptionally diverse populations, and addressing their questions and fears, we will engender
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through mentored scholarship and independent research opportunities. In addition to research activities, the post doc will coordinate activities for Annals of LGBT Public & Population Health, partake in
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Number: 259444 Minimum Education and Experience: Potential candidates should have a MD or a PhD in Biochemistry, Molecular Biology or a related field and with at least three years relevant research
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analysis, animal models of airway and brain disorders, single-cell RNA-seq, multiplex cytokine assays, and immunofluorescence imaging. Assist in the establishment of performance standards, the selection
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. An individual is needed who can conduct research on questions related to how organisms respond to hypoxic stress and nervous system function using the model organism C. elegans. The individual will report
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engineering tools, including process modeling, process control, machine learning, and artificial intelligence, to support ongoing proposal efforts in advanced pharmaceutical manufacturing. The successful