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credited to the Yang Visiting Scholars Program in World Christianity at Harvard Divinity School. Eligibility Positions are open to early career and senior scholars with doctorates in the fields of religion
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to participate in the Harvard and Boston scientific community. Harvard University postdocs are offered competitive salaries and comprehensive benefits packages. Basic Qualifications We invite applications from
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to manage virtual meetings and frequent travel to the project sites in Texas is required; (3) design intervention materials, training content, and data collection instruments; and lead the implementation
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to the breadth of resources and facilities available to members of Harvard University. For more information about the Kempner Institute Research Fellows program, please visit our website at www.harvard.edu/kempner
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examine applications of insights from behavioral economics to the design of financial products and services aimed at helping customers take action to reduce carbon emissions and make decisions that improve
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While at UNC-Chapel Hill, 2022 AOB Postdoc Alexandria Bredar, PhD conducted research with a focus on contributing to a carbon-neutral, recyclable energy infrastructure, working to answer
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the Commonwealth Bank of Australia (CBA) to examine applications of insights from behavioral economics to the design of financial products and services aimed at helping customers take action to reduce carbon
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the Commonwealth Bank of Australia (CBA) to examine applications of insights from behavioral economics to the design of financial products and services aimed at helping customers take action to reduce carbon
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Description General Statement of Duties: The Director for External Education is responsible for managing Harvard School of Dental Medicine (HSDM)’s portfolio of non-degree external education program offerings
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and Machine Learning, with a focus on studying geometric structures in data and models and how to leverage such structure for the design of efficient machine learning algorithms with provable guarantees