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high-dimensional, dynamic, networked system, applying techniques from machine learning, causal inference, statistics, and algorithms. No prior biomedical training is required—just strong quantitative
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computational approaches to uncover novel biomarkers and therapeutic strategies for CNS disorders. Key Responsibilities: Develop and implement algorithms for multimodal image fusion, combining data from MRI, PET
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algorithms, NLP models, and LLMs to analyze complex data. Designs and implements novel data science methodologies for predictive modeling, causal inference, and probabilistic analysis in clinical and
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available single-cell sequencing data generated from patient samples and mouse models, we will enhance and apply machine-learning based algorithms to deconvolute bulk tumor RNA-seq samples to distinct immune
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interdisciplinary teams to apply developed algorithms to real-world datasets and generate valuable biological insights. Perform integrative analyses of multidimensional datasets within the context of basic immunology
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. The most recent methodological research of the group includes algorithms for cell type deconvolution, high-resolution purification, and integration of single cell multi-omics data. This postdoctoral fellow
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of disease is highly desirable WORK SCHEDULE: This position may occasionally be required to work weekends. Apply Now Job Info Job Identification4437 Job CategoryResearch Posting Date08/07/2025, 01:38 PM Job
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Work Schedule Summary: Department: 01337 - Molecular Medicine Program Location: Campus Pay Rate Range: 62232 to 75564 Close Date: 9/6/2025 Open Until Filled: To apply, visit https://utah.peopleadmin.com