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Data Analyst #R22182
Groupon | Chicago, Illinois
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Job Description

Groupon, Inc. is seeking a Data Analyst in Chicago, IL w/ the following responsibilities: design customized data solutions, as a foundation of a global platform which horizontally provides multiple lines of business at Groupon, such as Local, Goods, Travel, & Getaway services.

How you'll spend your day:

  • You will support Groupon’s global fraud and payment team in the engineering and operations department by identifying and analyzing key metrics, evaluating fraud prevention opportunities, and developing plans of action to minimize fraud loss across multiple types of chargeback and refund.
  • Collect and analyze big financial and e-commerce data by building up multiple ETL pipelines that generate critical fraud matrixes and payment indexes.
  • Monitor and evaluate fraud prevention, payment gateway, and credit card service.
  • Build statistical models to assess the costs and benefits of major Groupon strategic and operation goals for fraud and payment perspective.

We’re excited about you if you have the following requirements:

  • Master’s degree in Business Analytics, Project Management, Data Science, or related field plus 2 years related experience, or Bachelor’s degree in Business Analytics, Project Management, Data Science, or related field plus 4 years related experience.
  • Any level of experience with developing SQL algorithms (in MySQL, SQLite, Teradata, and Hive) used in the ETL process to import data into the data warehouse.
  • Any level of experience with building statistical models including ARIMA, Linear, Logistic, Bayesian, and Polynomial Regressions to forecast sales seasonality and business investment ROI.

Keyword: R22182

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