21 image-processing-and-machine-learning Postdoctoral research jobs at The University of Arizona
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Sign In Create Profile Postdoctoral Research Associate-Computer and Information Research Tucson, AZ, United States | req23101 Apply Now Share Save Job Posted on: 6/11/2025 Back to Search
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Sign In Create Profile Postdoctoral Research Associate (Electrical and Computer Engineering) Tucson, AZ, United States | req22588 Apply Now Share Save Job Posted: 5/2/2025 Back to Search
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Sign In Create Profile Postdoctoral Research Associate (Electrical and Computer Engineering) Tucson, AZ, United States | req22541 Apply Now Share Save Job Posted: 5/2/2025 Back to Search
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work will focus on problems in controls, machine learning, image reconstruction, wavefront sensing, and instrument development and test. As time permits, you will be encouraged to conduct your own
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., transcriptomics, proteomics, metabolomics) and artificial intelligence/machine learning (AI/ML) applications in biomedical research will be considered a strong advantage. Outstanding UA benefits include health
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here . Duties & Responsibilities Organize existing data from measurement campaigns in 2024 at the LEO; these data include water vapor and CO2 flux measurements using LiCOR, thermal infrared images
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here . Duties & Responsibilities Organize existing data from measurement campaigns in 2024 at the LEO; these data include water vapor and CO2 flux measurements using LiCOR, thermal infrared images
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units across the University. Utilize molecular biology, biochemical techniques and high-resolution imaging, perform in vitro functional analyses including patch-clamp and calcium measurements. Perform
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Highlights This position, funded by the Gordon and Betty Moore Foundation, is focusing on developing and utilizing the attosecond electron imaging facility for imaging the electron motion in the real time. The
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imbalances. A fundamental understanding of classical Machine Learning Techniques for longitudinal data analysis. An understanding of probability theory and basic frequentist statistical approaches