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… held April 7-10 in Chicago, IL. The conference brought together scholars, researchers, and decision makers to exchange information and address the latest scholarship in political … empirical projects that range from examining lower court compliance in the American context to evaluating opinion …
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… Amelia Earhart Fellowship. She is one of 35 women globally to receive the $10,000 award. At Cornell, Hofheins works … of the Society of Physics Students (SPS). She also completed a minor in mathematics and authored proposals that … vibrant city,” said Hofheins. “Attending Rhodes remains the best decision I’ve made—the liberal arts foundation taught …
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… Econ Professor Marshall Gramm Profiled As One of the Best In the World at Handicapping Horse Races Published on: … the world at betting on horses. Recently, he finished ninth place in the National Horseplayers Championship. The Feb.16 article goes on to talk about how Gramm teaches a racetrack wagering course …
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… Foundation , is aimed at providing leadership experiences to a diverse cohort of humanities faculty members, thereby … topics relevant to higher education administration, campus visits to participating institutions, and monthly virtual … gatherings for networking and sharing experiences and best practices. In addition, there will be periodic …
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… Lauren Avant Sumski ’14 Turns Passion for the Game Into a Career Lauren Avant Sumski (Class of 2014) Published … footsteps, she wants to encourage her players to be their best by imparting a set of fundamental values that will last … I am today. This is just home, and there is simply no place like it.” A native Memphian and graduate of Lausanne …
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… Rhodes Makes Money’s Best Colleges In America 2024 Published on: June 18, 2024 … is one of the “Best Colleges in America 2024,” according to Money, and has received four out of five stars based on the company’s unique star system. Colleges were scored in three …
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… that will help finance my education and maximize chances for grad school and the job market? The answer for many … Associate Program (RSAP), which allows motivated students to get real-world career experience and mentoring working … Ford, Supervisor of the Year. Here’s what the award committee had to say about the honorees, based on …
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… Take Alternative Spring Break Trip Focused on Responses to Injustice (l-r) Amri McCauley ’19, Younjoo Lee ’22, … Willoughby ’22, and Younjoo Lee ’22 spent March 3-7 visiting Southern sites with historical or current … it was a meaningful way to meet new people and see new places. Plus, I knew Chaplain Beatrix would help us get the …
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… Rhodes′ Phi Beta Kappa Chapter to Induct New Members Published on: April 04, 2019 Phi Beta … Margaret Grace Collier (Art History) Michael Wesley Combs (Political Science) Carson Alexander Cox (Political … be announced at the college’s Awards Convocation on April 26. All new members of Phi Beta Kappa will be inducted May …
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... ... ... ... ... 649.000000 <= n, number of documents containing term
... ... ... ... ... 766.000000 <= N, total number of documents with field
... ... ... ... 0.909275 <= tf, computed as freq / (freq + k1 * (1 - b + b * dl / avgdl)) from:
... ... ... ... ... 49.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 3864.000000 <= dl, length of field (approximate)
... ... ... ... ... 757.801600 <= avgdl, average length of field
... 1.214792 <= sum(float(boost_document)=1.0,product(const(21.0),0.1/(3.16E-11*float(ms(const(1775563200000),date(ds_created)=2016-07-05T20:10:50Z))+0.05)))
… trips. Many of us think of the summer months as a chance to slow the pace and take a break from the rigors of work … Three-week courses with specialized topics, Maymesters take place abroad and throughout the United States. In 2016, … and sociology, says the course allows students to get the best of both worlds in academic and physical experience. “We …