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Model Risk – Quantitative Analytics Manager
Location
Ohio
Posted
1 day ago
Salary
$116K - $216K / year
Seniority
Senior
Job Description
Model Risk – Quantitative Analytics Manager
KeyBank
• Leading the validation of predictive and machine-learning models for specific business needs using statistics, advanced mathematical techniques, and/or computer science. • Create and leverage models, inferential statistics and prescriptive analysis to proactively solve business problems answering the questions “What will happen and what should we do about it?” • Recommend solutions based on understanding of the context, connections, and conclusions. • Reviews deliverables; proactively coaches others on approach and work product • Lead and evangelize on best practices of capturing and retaining data • Make continuous improvements to data procedures, including data efficiency
Job Requirements
- Master’s degree (or tis equivalent) in statistics, mathematics, economics, financial engineering, data sciences, predictive modeling, or other quantitative disciplines and at least 5 years of relevant experience;
- Bachelor’s degree (or its equivalent) in statistics, mathematics, economics, financial engineering, data sciences, predictive modeling, or other quantitative disciplines and at least 6 years of relevant experience
- Advanced Microsoft Office Suite
- SQL/NoSQL
- Advanced Python/R/SAS: Databases
- Understanding of best practices for capturing / retaining data
- Demonstrated ability to engage and partner at mid to senior leadership levels.
Benefits
- Incentive compensation which may include production, commission, and/or discretionary incentives
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