Search
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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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… Courtney Pace, Ph.D. Published on: July 08, 2022 The Search for Values in the Light of Western History and Religion … and learning in pursuit of authentic, challenging, and complex truths. Established in 1945, “Search” is a … In addition to the Rhodes faculty, the program draws visiting and adjunct professors. The Rev. Courtney Pace, …
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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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… 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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… 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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… on: June 05, 2025 Recently, members of the Rhodes College community came together to form a team to participate in the third annual Memphis … ’25, Lydia Han ’25, Scarlett Nguyen ’24, Bhavesh Kotta ’26, Michelle Xue ’27, Yihan Li ’25, Hai Nguyen ’25, Jana …
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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 …
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… Village, Madison, MS. Peggy lived a life marked by her commitment to her Savior Jesus Christ and by service to Him … 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 …
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… Published on: April 04, 2025 Rhodes students Jennifer Bui ’26, Hugh Ferguson ’27, Layla Lammers ’27, Trinity Liaw ’25, … on me and my development, including my critical thinking, communication, and leadership skills, and to talk to the … by physics professor Dr. Brent Hoffmeister. “I had never visited Washington, D.C., so to be able to directly speak …
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… Laurel Phillips ’26 Explores Memphis through the Lens of its Libraries … and nostalgic children’s books may be the first things to come to mind when one pictures a public library. However, … record of the Memphis public library system. Phillips visited many of the branches in person and got to know …