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… College and Baptist Memorial Health Care have announced a comprehensive partnership to provide COVID-19 prevention, monitoring, testing, … proper use of PPE. Baptist will also advise the college on best practices for cleaning public areas and assist the …
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… EDGE Alden Knipe ’16 Published on: April 06, 2016 Hometown: Richmond, VA Major: Economics and Business Entering … the tax burden. However, each company has to earn its place in the program. “All of the recipients have to meet … lesson that I’ve learned in my short time with EDGE was best said by Kirby Salton, the owner of a small business …
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… my husband, Larry, and I are grateful for the very warm welcome that we’ve received. Memphis is already beginning to feel like home. What have you taken away from your … very strong agreement about what makes Rhodes a special place. Everyone that I’ve talked to has emphasized the …
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… Published on: April 09, 2020 One of the things we historians are always going on about is how the intentional … a student of African American History, I can think of a few places in the past we could travel to in order to get some … , and it is that intimacy—knowing that we have each other’s best interests in mind—that also helps us create the spaces …
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… Equal Opportunity in Education Published on: November 26, 2019 Dr. Aixa Marchand, assistant professor of … a paper that charts how wealth shapes educational outcomes from childhood to early adulthood: The article is published in the November …
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… Nasong’o Receives Fulbright U.S. Scholar Award for 2025-2026 to Teach in South Africa Published on: June 10, 2025 Dr. … Research and Scholarly Excellence, the CODESRIA Diaspora Visiting Fellowship, and the Carnegie African Diaspora …
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… Sam Hilley and SolSmart: Helping Cities Become Solar Friendly Sam Hilley '17 Published on: October 26, 2016 This past summer, senior Sam Hilley worked as an …
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… reviews, and assessment at Rhodes, has been admitted into the 2023-2024 Senior Leadership Academy (SLA) of the … coaching; and webinars, regional gatherings, campus visits, and other activities to understand the full range of … provosts, and a supportive cohort of peers about how best to advance institutional excellence and support student …
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… Rhodes Makes The Princeton Review’s List of Best Value Colleges for 2022, Ranks in … “Memphis opens up many opportunities for our students at places such as FedEx, St. Jude Children’s Research Hospital, …
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… March 28, 2022 Rhodes College faculty continuously explore topics in their areas of expertise and produce publishable … of the Department of Physics has published “In Vivo Comparison of Backscatter Techniques for Ultrasonic Bone … Cinema and African Audiences in Colonial Kenya, 1926–1963. Prof. Scott Newstok of the Department of English …