Manny Mastodon 2101 East Coliseum Boulevard 260-481-0689 Fort Wayne, in 46805 [email protected]

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Manny Mastodon 2101 East Coliseum Boulevard 260-481-0689 Fort Wayne, in 46805 Mannymastodon@Students.Ipfw.Edu Manny Mastodon 2101 East Coliseum Boulevard 260-481-0689 Fort Wayne, IN 46805 [email protected] Summary of Qualifications − 2 years of experience conducting quantitative research using econometric forecasting − Developed business expansion models, potential revenue outcomes, and likely business partnership proposals − Research interests include financial econometrics, risk analysis, and empirical asset pricing − Technical skills include SPSS, SASS, OxMetrics, HTML, and Microsoft Excel and Access Education Bachelor of Arts in Economics Indiana University, Fort Wayne, IN May 20xx Relevant Coursework − Statistics Series − Accounting Series − Urban Economics − Econometrics − Technical Writing − Field Research Related Skills and Experience Econometric Research − Researched business growth models using SPSS and SASS statistical software − Analyzed data in MS Access and MS Excel and created forecasting models using OxMetrics software − Wrote technical reports and memos including interpreting, summarizing, and communicating analysis results Statistical Skills − Ran diagnostics on several web-based business databases and analyzed weekly results − Evaluated results of weekly sales and recommended strategies to increase revenue − Assessed the results of 12 web-based business databases and made software implementation improvement recommendations Business Experience − Analyzed using balance sheet transactions and currency exchange to attain higher returns on investments − Created budgets for marketing, capital investment, and related expenses − Familiar with statistics, business, and insurance technology Work History Actuarial Assistant Lincoln Financial Group, Fort Wayne, IN May 20xx-Present Web-Database Assistant Do It Best Corp, Fort Wayne, IN June 20xx-May20xx .
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