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V. Vita,

N. In-minot and . Dakota, She received a B.A. in French and Mathematics with a Concentration in Statistics from Saint Olaf College in Northfield, Minnesota in 2005 and a M.S. in Applied Statistics from Purdue University in 2007. She has been a graduate student in the Statistics Department at Purdue University since, 1982.