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… ’13 Uses the “Fundamental Curiosity” Instilled at Rhodes to Craft Community-Based Poetry Published on: January 03, 2019 J. … me, though, is that the journey has merit, even if the place you land at the end isn’t what you expected.” “Like …
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… Ancestry and Health: Dr. Altovise T. Ewing ’05 Makes Impact With Genetic Counseling … is one of the largest direct-to-consumer genetic testing companies. Currently, she is a senior science leader for … with family members about family health history is the best way to learn if there are conditions/diseases that run …
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… Writing Published on: April 25, 2016 Essays, lab reports, compositions, journals, research papers, short stories—these are the types of writing assignments high … is wrong with asking for help. It’s such a supportive place. What makes writing so powerful is that our own …
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… and for the city of Memphis. As part of the larger MLK50 commemorations happening throughout Memphis, Rhodes planned several events to mark the life and legacy of Dr. King. In addition, the … this year to confer the degree, and a brief ceremony took place prior to Lawson’s talk. Rev. Lawson is regarded as a …
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… Julia Conway ’20 and Bailey Cook ’20: Helping to Preserve College’s Special Art Collection Julia Conway … Hanson made a valuable donation to the college when she bestowed her sister Floy Hanson’s personal collection of … gave each piece a tag with its name and measurements and placed it back in the storage room, which we organized into …
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… . Since graduation, she has been working for The Boston Consulting Group, and currently serves as their North … I wanted to go to a school that had a genuine sense of community and a commitment to service. I had done a lot of … or reach out to a recruiter directly. Figure out what the best/preferred approach is and go that route. If you've …
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… Rhodes Mock Trial: Second to None Published on: August 01, 2019 Rhodes College Mock … Yale University. A total of 48 teams—two from Rhodes—competed April 4-7 in Philadelphia, PA. “This season marked … the national finals, AMTA awards All-American honors to the best attorneys and witnesses. All of the members of the …
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… a passion for making the world a more just and equitable place. During his undergraduate career at Rhodes, Sherrell … an outstanding student-athlete and loved the opportunity to explore the interdisciplinary Urban Studies major. Today, … away in Virginia, far from his hometown. “Woodberry was the complete opposite of Ron Clark. It’s a very traditional …
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… Memphis Minded Published on: January 12, 2016 Growing Together for 90 Years When Rhodes College moved from … states and 32 countries – are contributing to the Memphis community in immeasurable ways by fully engaging with the … explains. "I try to look beyond the surface to discover the best in people, regardless of their circumstances." Tyler …
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… 2019-2020 Fulbright U.S. Student Awards: Dylan Craddock ’19 to Teach in Peru Published on: April 23, 2019 Dylan … friends and really immerse myself in whatever town I’m placed,” says Craddock. As a Rhodes Buckman Fellowship … “For the Fulbright, I chose Peru because it is the perfect combination of many of my academic interests— indigenous …