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… Distinguished Alumni Awards to Be Presented During Homecoming/Reunion Weekend William J. … ’69 and Dr. Wilfreda Lindsey ’11 Published on: September 26, 2023 Rhodes College’s 2023 alumni awards will be … on Saturday, Sept. 30. To view the full schedule of events, visit here . …
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… Guests at the Sigma Iota Rho induction dinner on Oct. 26. Published on: December 08, 2017 Anna Laymon '11 To celebrate 100 Years of Women at Rhodes College, the … careers during a professional development event that took place on November 16. Sheerin Mehdian ’12 graduated from law …
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… Rhodes Named a Best College and Recognized for Campus Beauty by The Princeton Review Published on: August 14, 2025 Rhodes College … category of The Princeton Review’s The Best 391 Colleges: 2026 Edition . Rhodes also is one of the schools in the South …
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… as he learned about leadership—an exploration that led to profound changes in his own leadership style. At age 32, … hard, setting the pace. It was the simple approach, and the best example I knew of leading by example.” His experiences … on how to lead by values, how to create a positive work place, and how to improve processes rather than just …
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… spots in U.S. News & World Report’s recently released 2026 Best Colleges rankings, to No. 55 for National Liberal Arts Colleges. The annual …
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… be as familiar with is Brian Foshee P’16, the longtime director of physical plant who spent the better part of four … get rid of the stained glass,’ it would be a very different place.” While Rhodes already boasted a picturesque aesthetic … National Pan-Hellenic Council Plaza [profiled on page 26], just outside the Bryan Campus Life Center, was unveiled …
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… Caroline Calogero ’24 Wins Fulbright U.S. Student Award to Teach in South Korea Published on: December 16, 2024 … latest recipient of a Fulbright U.S. Student Award for the 2024-2025 academic year. She will serve as an … Kappa Delta sorority, and Mortar Board. In the Memphis community, she taught at the Connect Language Center and …
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… long project, students and community members have come together to promote empowerment through awareness and … detail with his description of the operations that take place on the farm So one of the things that we do on the … things that people can do to support projects like ours is buy food from us, you know, not just from us, but from any …
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… Rhodes Abroad: Catching Up With Victoria Norris '18 Victoria Norris (Class of 2018) Published … more from Victoria, and visit our archive of stories from places ranging from Ecuador to Italy, at Rhodes Abroad . Why … with European students, and that has honestly been the best part of my experience so far. It has been the best …
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… Nelson to Present One-time Class on 2024 Election Results Published … a one-time class offered by the college’s Meeman Center for Lifelong Learning. The session, titled “What Happened on … a book on the election. The 2024 elections will be the latest in that series. At Rhodes, Nelson teaches courses on …