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experience with analysis of large health databases, such as claims or electronic health record data. Required Application Materials: Curriculum vitae Cover letter describing relevant experiences, interests
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would include: Co-developing a hybrid machine learning/process-based model of anaerobic digestion processes Performing techno-economic and lifecycle analysis of microgrids build around novel biogas-fueled
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model APIs, cloud computing environments, and R for additional statistical analysis. For decision support prototype development and evaluation, web-based user interface design, human-computer interaction
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paradigms in primates or humans – Theoretical neuroscience, machine learning, or AI • Proficiency in Python, MATLAB, or equivalent data‑analysis frameworks. • A passion for big‑picture questions, open science
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, Outpatient, Carrier, TAF). Develop reproducible code and workflows for data cleaning, linkage, and analysis within Stanford’s secure computing environment. Collaborate with multidisciplinary teams
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Fellowship in Cancer Screening, Health Policy, and Decision Analysis Applications are invited for a postdoctoral fellow position in cancer research to join Dr. Summer Han’s research group in the Stanford
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processes: The design and implementation of randomized controlled trials, the analysis of administrative data, the analysis of video and audio data, qualitative studies of implementation through interviews
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. Required Qualifications: PhD or MD/PhD in a field(s) relevant to functional neuroimaging and neuroimaging data analysis. High-level experience with functional magnetic resonance imaging, spanning resting
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model. Key responsibilities include: Performing animal surgeries, including intracranial tumor implantation Acquisition and analysis of MRI/MRS data Conducting histological validation and tissue analysis
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MDBs/IFIs Strong publication record Experience working in participatory processes Experience in decision analysis and support processes Teaching experience Experience in geospatial modeling and GIS