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, electrical engineering, experimental physics, or a related field Strong programming and signal processing skills, with experience in Python and/or MATLAB Demonstrated ability to work independently and
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. The FY25 minimum is $76,383. The Water & Energy Efficiency for the Environment Lab (WE3Lab) seeks 1-2 Postdoctoral Scholars with a vision for the coordinated operation of water systems and electricity grids
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protein engineering techniques. In parallel, we are also looking for postdocs interested in developing high-throughput screens for single-domain antibodies, called nanobodies, that perturb intracellular
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such as biomedical informatics, computer science, electrical engineering, mental health services research/health policy, and/or biostatistics. Applications should be both independent thinkers and willing
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. Analyze data. Prepare presentations and reports. Attend laboratory meetings and present research progress. Required Qualifications: • PhD in Mechanical Engineering, Electrical Engineering, Bioengineering
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Engineering Postdoc Appointment Term: This position is for a one-year fixed term, with possible extension for a second year subject to funding availability. Appointment Start Date: September 1, 2024 Group
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presentations). Evidence of their contributions to their current research communities. Track record of mentoring more junior scholars. Required Qualifications: PhD in computer science, electrical engineering
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is $76,383. The Water & Energy Efficiency for the Environment Lab (WE3Lab) seeks an entrepreneurial Postdoctoral Scholar with a vision for the coordinated operation of water and electricity grids
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: Candidate must have a strong quantitative background, with a PhD in computational biology, bioinformatics, biomedical data science, biomedical engineering, computer science, electrical engineering, statistics
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in Neuroscience, Biomedical Engineering, Computational Biology, or a related field. Strong background in signal processing, including neuroimaging and/or electrophysiology (EEG, MEG) data analysis