53 phd-in-software-engineering-positions-in-sweeden Postdoctoral positions at Texas A&M University
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information here ! PURPOSE We are seeking a highly motivated researcher with a strong background and interest in machine learning and artificial intelligence. The position focuses on the development and
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be commensurate based on the selected candidate's education and experience. Special Note: This position is funded from grant and/or contract funding, which is renewed through provisions of the grantor
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Texas A&M University, Veterinary Integrative Biosciences Position ID: 2609 -POSTDOC [#26753] Position Title: Position Type: Postdoctoral Position Location: College Station, Texas 77843
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Intelligence (AI) approaches to quality control of coastal water level observations in a robust and time efficient way. The position is for one year, and it is renewable for an additional 9 months based
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. The Postdoctoral Research Associate will work primarily with Professor Qian Yuan and Professor Benchun Duan to develop and employ algorithms to link mantle convective processes with earthquake ruptures. The position
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, for the analysis of these samples on the stable light-isotope-ratio mass spectrometer (IRMS), and for the modeling of the data. The position also requires preparation of manuscripts based on experimental results
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upon availability of these funds in the future. Qualifications Appropriate Ph.D. in Chemistry This position requires export-control authorization prior to commencing employment. A well-qualfied
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Glimpse of the Job This position will involve research to discover the thiamin and quinalphos catabolic pathways. This will include genome sequencing, gene function assignments using bioinformatics and the
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communication and enforcement of rules and regulations for all staff members and student workers supervised. Other Requirements or Other Factors: Minimum full time (12 month) position in a large university
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modeling. The ideal candidate will be responsible for developing and applying probabilistic models to advance time-series analysis. Key areas of focus for this position include: 1)Probability Theory and