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., ATC Assistant Professor Director | PRIME lab Office: (734) 647-1615 | alepley@umich.edu Jacob Haus, PhD Associate Professor Director | Human Bioenergetics lab Office: (734) 647-2790 | jmhaus@umich.edu
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and Machine Learning tools and algorithms to solve hydrology and water resources problems. Familiarity with high-performance computing (HPC), cloud platforms, or GPU clusters. Demonstrated ability
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Qualifications* PhD in Computer Science or Engineering, Biomedical Engineering, Neuroscience, Bioinformatics, or other relevant field. Experience with machine learning and statistical analyses. Proficiency with
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, Master of Science in Nursing, PhD Program and its newest program, the Doctor of Nursing Practice. INTERESTED CANDIDATES Please submit electronically a letter of interest explaining how your personal and
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, as well as apply to this posting. Job Summary The Journal of Computer-Mediated Communication (JCMC) is a fully open-access scholarly journal that focuses on technology-focused social science
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in the position and outline skills and experience that directly relate to this position. Job Summary The candidate will lead projects in building machine learning models to screen potential drugs
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conduct of experimental procedures Required Qualifications* PhD Exceptional written and verbal communication skills and ability to interact with and build professional relationships with all individuals
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Bioinformatics, as well as the Departments of Biostatistics & Biomedical Engineering, University of Michigan is seeking a postdoctoral fellow for bioinformatics problems involving quantum machine learning and
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Engineering (ECE) Division, is searching for a Lecturer I to teach EECS 452 during the Fall 2025 semester. EECS 452, Digital Signal Processing Design Laboratory (4 credits) is a senior/graduate design course
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health records (EHR), waveforms from bedside monitors, radiology images and wearable sensors. This position offers a unique opportunity to work closely with clinicians on applications of machine learning