357 parallel-computing-numerical-methods positions at Harvard University in United States
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Details Title Postdoctoral Fellowship in Power and AI Systems School Harvard John A. Paulson School of Engineering and Applied Sciences Department/Area Computer Science/ Electrical Engineering
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research associates to develop and apply theoretical and computational approaches to study complex cell biological systems. The emphasis will be on combining statistical inferences and biophysical modeling
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improve their financial outcomes. The projects would be developed and completed in collaboration with CBA. Primary methods would include analysis of large-sample behavioral data, surveys, and lab and field
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of, and interest in, current global democracy, development, and governance issues Excellent research, writing, editing, and communication skills Proficiency in statistical and quantitative methods is a plus
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the absence of the Sr. Director, serves as secondary contact for disability related student crises and urgent matters, updating the Associate Dean for Degree Programs, Program Director’s, and others as needed
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with bioinformatic pipelines and approaches for working with methylation data, or a willingness/ability to learn these methods. The appointment is for one year with possibility of renewal based
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January 11, for awards is February 1, and for the internship program is February 15. Undergraduate Students Graduate Students and Advanced Undergraduates Post-doctoral Fellows Early-Career Scholars (from
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will involve investigating the physiological and functional variation of plants using spectroscopy and will include greenhouse work, field work, plant phenotyping, computational analyses of hyperspectral
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advanced research in our fields of study, and advocate for the humanities. Candidates should have a distinguished record of scholarly achievement, as well as significant experience in program management and
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postdoctoral researcher with a strong background in neuroscience. The ideal candidate will have extensive training in their Ph.D. program and be capable of independently conducting research in the field