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… Fulbright U.S. Student Awards: Michael McCanless '17 to Teach in Europe Michael McCanless '17 Published on: April 26, 2017 Michael McCanless, an urban studies major from … the people and cultures that make it such an awesome place! In the future, I intend to use this opportunity as …
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… his life and celebrating a longtime fundraising goal. His story was recently featured on NBC's Today show. While … work is important to me because St. Jude is an amazing place that saved my life and continues to save the lives of … to hit the full marathon’s finish line. He will run with 26 names of friends he has met in treatment on his arms, one …
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… COMMUNITY-DRIVEN: Lynx Pantry Provides Food and Other Essentials to Students Needing a Little Extra Help Published on: … “Helping to keep the pantry running means there is a place on campus where all students can easily access a …
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… September 04, 2024 Rhodes College welcomes 16 new faculty to its distinguished roster for the 2024-2025, bringing … us to strengthen our academic program and provide the very best learning experience for our students. Our new … and perspectives will all help make Rhodes a better place.” Read the bios of the 2024 New Faculty Cohort . …
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… Published on: July 28, 2016 Rhodes alumni recently took the stage at the Democratic and Republican National … Christopher Cox, executive director of the NRA Institute for Legislative Action, spoke at the RNC on July 19. View … Kentucky’s secretary of state, spoke at the DNC on July 26. View here . Cox graduated from Rhodes in 1992 with a …
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… Prof. Hughes Discusses the History of Country and Soul Music on Podcast Dr. Charles Hughes Published on: October 26, 2016 Dr. Charles Hughes of the Department of History …
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… liberal arts education at Rhodes College inspires students to cultivate their interests and make an impact on Memphis. … trusting each other and collaborating on their work. At a place like Rhodes, courses like this are about empowering … push forward with their ideas.” Music major Zach Everett ’26 grew up singing church and gospel music, and in high …
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… Students, faculty/staff, alumni, and friends gathered Aug. 26 for the unveiling of “Dr. Bill Troutt Parkway,” which was … community and Memphis runs deep,” says Dr. Russell Wigginton, vice president for external programs at Rhodes. His … and to higher education.” [video:https://youtu.be/WgD6-CfC_gs] …
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… for Outstanding Teaching and Research Published on: April 26, 2019 Dr. Amy Risley and Dr. Michael LaRosa were … for Outstanding Teaching. LaRosa, associate professor of history, received the Clarence Day Award for Outstanding … and events, and has held numerous positions as a visiting faculty member or affiliated scholar at prestigious …
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… The Tournées Festival Published on: January 01, 2016 January 26-February 10, 2016 Blount Auditorium, Buckman Hall Free … endure the torture. Others declare that sketching people, places, and events from the past was crucial to their …