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… TN. Jet Thompson was born in Little Rock, AR in 1921 to Tannen and Ruth Hollenberg. Her family moved to Memphis … ability of a whip-smart, capable woman to move into the workplace before this was the norm among her contemporaries. She … Episcopal Church, of which both were lifelong members. Jet bestowed loving attention on all her family who are grateful …
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… Rhodes’ Camp Codette Encourages Girls Not to Be Afraid of Computer Science 2018 campers working … Published on: August 07, 2018 In 2017, women made up only 26 percent of the computing workforce, according to the … can be hard, but let’s look at how to use it, and let’s place you into a more supportive environment, such as Camp …
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… Global Pursuits: Rhodes Seniors Compete for 2024-2025 Fulbright U.S. Student Awards Published on: October 26, 2023 The Fulbright Program is the flagship international …
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… Produce) and Brenda Williams (Healthy Foods Coordinator - Communities Unlimited) Your browser does not … Back in the day when Hobart Ames a Julia Colony Ames began buying up their twenty seven thousand acres of land that … 1968 when I was ten, So I've kinda always been drawn to the place and its history that's entangled with my family's …
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… Rhodes Awarded $25K Grant from Teagle Foundation and NEH to Transform Search Curriculum Published on: July 31, 2023 … will provide opportunities for designing off-campus, place-based, experiential-learning excursions; revising and … brings leading contemporary writers to Memphis. Authors who visited in recent years include Dave Eggers, Jesmyn Ward, …
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… Judge Amy Coney Barrett ’94 is Nominated to the United States Supreme Court Judge Amy Coney Barrett … in the Rose Garden at the White House, Saturday, Sept. 26, 2020, in Washington. (AP Photo/Alex Brandon) Published … the significance of this moment gives members of the Rhodes community a particular responsibility to rise to the great …
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… The Makerspace: A Community of Learners, Teachers, and Doers Luke Fairbanks … on: March 12, 2018 For senior Luke Fairbanks from Baton Rouge, LA, coming to college meant getting to explore … rest of the members spend much of their time in an ideal place for designers and builders: the Makerspace. The …
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… Emma Selner Presents Science Research on Capitol Hill Emna Selner (Class of 2018) Published on: May 01, … their research in the form of poster presentations and to communicate the importance of funding for science research. The event was held April 25-26 in Washington, DC. “At Posters on the Hill, I met with …
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… reserved for group meetings, teams of students huddled together, heads down, diligently working on laptops. For … latest student-driven entrepreneurial initiative to take place at Rhodes, where a growing team of community startup … mixing app, a mobile meetup and streaming app for bands best described as SoundCloud mixed with Tinder, a reflective …