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… A Celebration: Bass to Hold Listening Party For Memphis-Made Debut Album … Memphis Listening Lab, located at 1350 Concourse Ave, Suite 269. Bass will discuss the songs, the recording process, and … and (despite the title) with all the physical and artistic places that he’s been along the way. Themes of home and …
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… Teaching. “The recipients of this award are integral to ensuring our students are equipped with critical thinking … ceremony, as well educational and celebratory events, and visits with members of the Administration. Update August 26, 2016: Rhodes has learned that another graduate, Lauren …
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… 2016 NCAA Golf Champions! Published on: May 16, 2016 The top-ranked Rhodes College women's golf team capped off a … and won by 15 strokes over Texas-Tyler's second-place total of 919. George Fox University (307-315-298) and … at 294 in the third round while also playing the third-best round of all time at 298 in the second round. Cohen …
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… Alumni in the Arts: Alexandra Carter Published on: October 26, 2017 Alexandra Carter is an artist working primarily in … my path and put art first before all else. "I wasn’t the best all-around student in that sense. I did as little math …
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… Milestone: Paul Barret, Jr. Library at Rhodes College Turns 20 … Construction began March 2003. The new library replaced the historic Burrow Library, which was adapted into … and student services. In 2005, as construction was nearing completion, members of the Rhodes Class of 2005 formed a …
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… 27, Rhodes College President Marjorie Hass sent an email to the campus community announcing changes to the Fall 2020 … checks, and limits on the numbers of people in public places. As I stand in new kinds of lines and peer at my … fall semester. Classes for all students will begin August 26th and continue through the start of Thanksgiving break on …
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… Kirkwood Vangeli to Premiere New Fluxus Skateboard Co. Video April 28 Kirkwood Vangeli ’17 Published on: April 26, 2017 When it came time for Kirkwood Vangeli ’17 to … downtown Memphis church being restored for use as a community space. “The Clayborn Temple space fits into our …
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… From NYC to Tokyo: Muhammad Waraich Shares His Experiences Working … Studies, the New Jersey native has gained experience in places as close to home as New York City and as far away as … on subjects like career development. In his free time, he visited historic sites across the country and explored the …
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… Jeff Cleanthes Named Rhodes College Athletics Director Jeff Cleanthes Published on: February 09, 2016 Jeff … winning the Southern Athletic Association (SAA) conference; competing in the NCAA tournament; and placing players on the … at Rhodes in December 2015 after leading the program for 26 years. …
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… Rhodes Is Among Money’s List of Best Colleges in America 2022 Published on: June 09, 2022 … has landed on Money’s Best Colleges in America 2022. Editors of the magazine spent months evaluating data on … experiences.” To learn more about the Rhodes experience, visit here . …