Ying Ji
manager of statistical analysis at sungard@ SunGard - now part of FIS
Rochester, New York, United States
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Ying Ji is an experienced professional with 18.4 years of work experience in Credit Risk Management. Based in the United States, Ying Ji has a strong academic background in Statistics, Finance, Mathematics, Big Data Analysis, and Mining. With extensive knowledge in SAS, SQL, and Microsoft Office, Ying Ji is skilled in teamwork and communication. Ying Ji has worked at SunGard - now part of FIS in Pennsylvania as a Manager of Statistical Analysis in both the Other and Research & Analytics departments. SunGard - now part of FIS, founded in 1968, is a leading IT services and consulting company with a wide range of products and services targeting various industries.
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Emails and Phone Numbers

@sungard.com
@fisglobal.com
+1 877776****
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About

~10 years working experience in Credit Risk Management ~Strong academic background in Statistics, Finance, Mathematics, Big Data Analysis and Mining ~ Extensive experiences in SAS, SQL, and Microsoft Office (especially in Excel) ~ Excellent teamwork and communication skills

Work Experience

680 E. Swedesford Rd, Wayne, PA, 19087, US

IT Services and IT Consulting

4713
Phone
+1 8777763706

Ying Ji's Professional Milestones

  • Manager Of Statistical Analysis (2005-06-01~): Developed critical statistical models to assist in data-driven decision making for decision-making and decision-making.
  • manager of statistical analysis at sungard: Developed and implemented comprehensive statistical strategies to enhance analysis accuracy and drive informed decision-making.