70 parallel-programming-"Multiple"-"Simons-Foundation" research jobs at Yale University
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; should have some training or background in program evaluation and public health; and should be outstandingly organized and an excellent communicator. Other potential work includes collaboration on a
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/. Position Overview: We are looking for a highly motivated and qualified postgraduate trainee to join the project team. This individual should have experience in python programming including experience with
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. In accordance with this policy and as delineated by federal and Connecticut law, Yale does not discriminate in admissions, educational programs, or employment against any individual on account of
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Connecticut law, Yale does not discriminate in admissions, educational programs, or employment against any individual on account of that individual’s sex, sexual orientation, gender identity or expression, race
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research the scientist will: • Develop breakthrough and novel approaches in their interest area and evaluate them through real world applications. • Design of programs addressing significant AI/ML challenges
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autonomy coupled with supportive mentorship to develop and deliver novel and meaningful research in their area of interest. Through post-doctoral research the scientist will: • Design of programs addressing
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. In accordance with this policy and as delineated by federal and Connecticut law, Yale does not discriminate in admissions, educational programs, or employment against any individual on account of
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. In accordance with this policy and as delineated by federal and Connecticut law, Yale does not discriminate in admissions, educational programs, or employment against any individual on account of
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on operational need, shift schedules and patterns may be altered. Computer Program Literacy. Preferred Education, Experience and Skills: Bachelor's degree in a related field. High level knowledge of animals
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where it would be cost-effective to screen and (iii) incorporating multi-omics data to better identify at-risk individuals beyond lifestyle and environmental approaches alone. Our research program has