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… the Master of Architecture (M.Arch) program at Washington University in St. Louis, graduating in 2008. After … In 2013, I returned to Memphis, joined LRK Architects, and completed professional licensure exams in fall of 2014. I’m … something) that you’re genuinely interested in. Try your best not to forget what led you to initially care about it. …
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… Augseption, is one of the speakers for the 2019 TEDxMemphis to be held Feb. 2 at the Crosstown Concourse Theatre. … one in Memphis help to spark meaningful conversations and community connections. This year’s Memphis theme is “Ideas … making it all possible.” To learn more about TEDxMemphis, visit here . …
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… The Pack Looking to Another Big Year Published on: August 09, 2016 In 2011, … wanted to rally Rhodents together to encourage their peers competing in various sports founded The Pack. Acting as … benefit from the Pack, as they push them to put forth their best efforts. To increase event attendance, the Pack works …
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… Shaliz Barzani ’21 Awarded Distinguished Fellowship to Work for Global Crop Diversity Trust Published on: May … assisted in planning conferences and events, developing communications materials, and even accompanying deposits to … chapter of the UNA-USA global organization. In 2019, she visited Washington, DC, to speak with legislators about UN …
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… College bow tie Published on: May 24, 2017 It is so hard to say goodbye. Songs have been written about it. Tears are … you look, you see a greatly enhanced Rhodes. As we began compiling information for this tribute issue, we developed a … for students in partnership with some of the city’s best-known businesses—FedEx, St. Jude, the Memphis Zoo. It …
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… Among 14 of the Most Beautiful College Campuses, According to Expedia Published on: October 13, 2017 Rhodes College has … School spirit: How loud and proud is the student body? Community outreach: How engaged is the school with the wider … to the local community." Read more . “Rhodes is a special place for all the reasons the article mentions, plus many …
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… also included the George Lapides Sportsmanship Award given to the senior athletes who best exemplify the highest level of sportsmanship. …
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… Dr. Herbert Hill ’67 Working on Breathalyzer to Test Drivers Under the Influence of Marijuana Published … June 27, 2016 Dr. Herbert Hill ’67, a professor at Washington State University who was a chemistry major at Rhodes, … chemical signatures based on the movement of a substance’s component ions. Since the legalization of marijuana in some …
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… intertwine are especially evident in the arts. Memphis is a place where artists can thrive, and Rhodes students are connected in meaningful ways to arts organizations all over the city. …
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… Rhodes Staffer Angela Fletcher Shares Remarkable Story About Her Bloodhound and Their Rescue Work Angela … who decided to adopt her. Since that time, Fletcher has become a rescue K-9 officer, and she and Maddy have responded … Circle’s Pet Hero Award. A majority of their work takes place on the weekends, and during the week Fletcher serves …