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expertise in wireless communications, communication theory, information theory, applied probability, and optimization • Excellent written and verbal communication skills Preferred Qualifications • Prior
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). Maintenance of transgenic mouse colony and embryonic fetal analysis 3). Train students and post-docs in hematopoietic research techniques 4). Prepare figures. Make charts, tables, and graphs from numeric and
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; transcript; condensed transcript; written list of classes in economics, mathematics, statistics or computer science (including course name, date taken, school, and main textbook(s) used in the course); courses
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change theory and practice, implementation science, and associated measurement and analytic techniques. The candidate is expected to help bridge these domains using validated statistical tools. Applicants
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Classification Title: RESEARCH ASSISTANT/ASSOCIATE/FULL SCIENTIST Classification Minimum Requirements: Ph.D. in Mechanical, Aerospace, or Electrical Engineering or Mathematics, or a closely related
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of engineering technical procedures, principles, theories and concepts in the field. General knowledge of other related disciplines. Demonstrates leadership in one or more areas of team, task or project lead
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, Pennsylvania 19004, United States of America [map ] Subject Areas: Mathematics Industrial Engineering Economics Management Science & Engineering Computer Science and Electrical Engineering (more...) Operations
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record of scientific productivity is preferable. The successful applicant must have a Ph.D.in Computer Science, Data Science, Statistics, Mathematics, Physics, Engineering or related field at the start of
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, technology, engineering and mathematics, and increasingly life science talent. UT-ORII is leveraging UT and ORNL’s best capabilities and resources to accelerate collaborative discovery, innovation, and
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to produce resilient and high-performing models. · PhD in Computer Science, Machine Learning, Mathematics, Physics, Statistics, or a related field Strong track record of applying ML in academic or industry