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… Margaret Wakefield ’26 Accepted Into Academy Designed to Foster Next Generation … Margaret Wakefield ’26 has been accepted into the Academy for Civic Education and Democracy held at George Washington … engage with key stakeholders from various sectors, and complete an internship. As an ACED participant, Wakefield is …
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… No One-Sided Coins Professor Luther Ivory Published on: February 23, 2016 … keynote speaker at the second annual Life and Search dinner for first-year students, which kicks off the spring …
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… Rhodes Theatre Guild’s Productions Among Those Announced for Local Theater Awards Rhodes Theatre Guild's Production … Corbin ’27 , Alice by Heart Set Design- Jasmine Jeffries ’26 , Alice by Heart Lighting Design- Melissa Andrews , Alice by Heart Sound Design- Hilde Medovich ’26 , Alice by Heart Costume Design- Lucia Hall ’26 , Mystery …
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… Take First and Second Place in Undergraduate Research Competition (l-r) Lilia Fernatt, Connor Bronze, and Kathleen … chemistry majors Connor Bronze ’25 and Kathleen Modder ’26 were awarded top prizes in the undergraduate research … of chemistry at Rhodes, initiated and coordinated Phillips’ visit to Memphis, TN, and Oxford, MS. “I was excited to …
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… network that brings together educators, administrators, and community organizations working to better serve second-language learning communities. The Coffee Chat, which rotates among local … Four Cartonera Fellows—Dania Verbena ’27, Yesica Trejo ’26, Alex Moreno-Espinosa ’27, and Ivana Blanquel ’29—also …
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… Internships (l-r) Sudiksha Polasa ’25 and Julia Schuetze ’26 Published on: July 28, 2025 Each year, 70 percent of Rhodes students complete at least one internship. This summer, Rhodes … within the field and had more than 950 applications for its 2025 program. "This incredible group brings fresh …
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… College , in Danville, Kentucky. “Milton has been a transformational teacher, scholar, and leader at Rhodes. I look forward to seeing the impact he makes on Centre and on … Marjorie Hass says. He first joined the Rhodes campus community in 2003 as an assistant professor of religious …
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… On and Off the Field, Scholar-Athlete Nur Hamada ’26 Takes Pride in Representing Her Faith Published on: … like her, all of the above. The Lakeland, TN, native first visited Rhodes during her high school lacrosse career to … days. Right away, she imagined herself in the Rhodes community. “Being at a small, liberal arts college offers …
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… and graveyards to uncover new information, as well as visiting with his remaining relatives there. Walter never … in the US Navy Reserve, retiring as a Captain, after 26 years of service. Notwithstanding all his many … of Black Mountain, NC; Dr. Andrew “Mac” Dale of Winston-Salem, NC; Frank (Gloria) Dale of Columbia, TN; former …
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… From Memphis to Prague, Business Major Addison Leonard '26 Honing Marketing Skills Through Internships Published on: … Leonard ’26 fell in love with Rhodes’ campus during her visit tour, but hearing about the opportunities offered by … an interest in marketing, the Dallas, TX, native recently completed an internship with the American Lebanese Syrian …