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… Rhodes first-year student Ethan Ferguson shared his passion for Memphis, technology, and education on the TEDxMemphis stage this spring semester. Speaking to the theme “Ideas for the Next Century,” Ferguson … in the classrooms of Shelby County Schools and with Memphis companies is helping create a more informed digital society. …
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… Rhodes Students Awarded Third Place for Research Presented at Louisiana State University … Undergraduate Research Conference. Held April 19 in Baton Rouge, LA, the conference highlighted student …
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… on: January 14, 2016 Hackathons, in which teams brainstorm and develop tech innovations in marathon sessions, are … who like to solve hard problems. They also attract the best companies who want to hire those smart students.” For updates, visit the RhodesHacks Facebook page . …
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… address, Hass remarked, “Rhodes is a truly extraordinary place—a place that changes the lives of our students and … future of the college. “As we move forward, we will need to focus on becoming even better at what we do and how we do … and to give her—the new President—our support and best wishes.” [video:https://youtu.be/8-sYR9um4AI] Rhodes …
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… 2019-2020 Fulbright U.S. Student Awards: Allison Young ’19 to Teach in Malaysia Published on: March 26, 2019 Allison Young, a senior biology major at Rhodes, … and coaches a Boys and Girls Club soccer team. After completing her Fulbright year and returning to the U.S., …
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… Lynx to the Past Transcript - Episode 3: Buckman FADE IN KENAN … new plant. While the company was rebuilding, they needed a place to work. President Rhodes offered laboratory space at … does a widow with a trust fund fortune and no interest in buying anything for herself do? Well, if you are Mertie …
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… of Theatre, the School of Music, the Department of Art History, and the School of Visual Arts—at Pennsylvania State … creativity, but thinking out of the box is what we do best. How did your time as an art/art history major prepare … from and who you are. To see more of Swindle's photography, visit https://aarc.arts.psu.edu and search "Swindle." …
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… in Memphis and beyond. Memphis, known widely as the birthplace of BBQ, the blues, and rock 'n 'roll, also enjoys a … sites. The Memphis Chamber of Commerce describes our hometown to investors as "a healthcare city," a designation … its goals. Facilitators like Kelly and Andrea Jacobo, visiting instructor of urban studies, also help activate …
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… Studies Fellow Elizabeth Mueller ’23 Reveals Memphis History Through Tombstone Symbolism Published on: August 02, … the South and listed on the National Register of Historic Places, Elmwood Cemetery is Memphis’ oldest cemetery where … grounds, majestic ornamental trees, and seasonal gardens, visitors enjoy ongoing events and programs, such as outdoor …
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… depending on how one reads the faces in the crowd to determine if they are happy, sad, in love with the … not so much. Despite the overwhelming amount of visual information available, Dr. Jason Haberman ’s research shows … just to have an excuse to hang out. Even as members have come and gone, our team continues to form a stronger bond …