Quantitative Analytics Tech Lead - Economic Modeling

Headquarters 4, United States

Freddie Mac

We are supporting America's homeowners and renters while serving as a stabilizing force in the U.S. housing finance system.

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At Freddie Mac, our mission of Making Home Possible is what motivates us, and it’s at the core of everything we do. Since our charter in 1970, we have made home possible for more than 90 million families across the country. Join an organization where your work contributes to a greater purpose.

Position Overview:

Freddie Mac’s Single-Family Division is currently seeking a Quantitative Analytics Technical Lead to be responsible for the development and execution of statistical models and applications in support of business and risk decisions as a member of the Default Costing Model Team. Apply now and learn why there’s #MoreAtFreddieMac!

Our Impact:

Our team is responsible for the development and analytic support of the Default Costing model (Forecast of Credit Risk and Severity), supports the single-Family business for risk decisions. We apply econometric, machine learning and statistical modeling to understand business problems and produce credit risk forecast for the mortgage portfolio.

Your Impact:

  • Developing analytical methods and models that assess the credit risk of new and existing financial and mortgage products.

  • Providing innovative, detailed and practical solutions to an extensive range of fast paced and complicated problems.

  • Developing and validating loss forecasting models, conducting research on improvements to the existing models, and applying industry standard methodologies and techniques to meet various business needs.

  • Coordinating the testing through the model implementation, conducting back tests to monitor the model performance, and performing economic tests and stress tests to validate the model forecast results.

  • Providing modeling and analytical support to a line of business or product area, functioning as day-to-day technical specialist.

  • Preparing documentation for the technical analytics and rationale through the model development to comply with model oversight and support model review for approval.

  • Working under limited direction, independently determining and developing approach to solutions.

Qualifications:

  • PhD in Statistics, Math, Economics, Computer Science or a related quantitative field with at least 3 years of related post-graduate work experience; or Master degree with at least 5 years of related experience

  • At least three years of experience in model development including logistic regression

  • Strong programming skills in SAS, SQL and Unix.

  • Experience with programming language such as Python, R, VBA, Java or C++

  • Experience working with large data sets and relational database

  • Experience working with mortgage or consumer credit risk models, prepayment models and severity models

  • Experience with competing-risk hazard models, transition models, loss forecasting and stress testing

  • Experience in data science, machine learning and related technologies

Keys to Success in this Role:

  • Outstanding quantitative, empirical analysis, and research skills

  • Solid understanding of econometric models, tools and techniques

  • Strong programming skills

Current Freddie Mac employees please apply through the internal career site.

We consider all applicants for all positions without regard to gender, race, color, religion, national origin, age, marital status, veteran status, sexual orientation, gender identity/expression, physical and mental disability, pregnancy, ethnicity, genetic information or any other protected categories under applicable federal, state or local laws. We will ensure that individuals are provided reasonable accommodation to participate in the job application or interview process, to perform essential job functions, and to receive other benefits and privileges of employment. Please contact us to request accommodation.

A safe and secure environment is critical to Freddie Mac’s business. This includes employee commitment to our acceptable use policy, applying a vigilance-first approach to work, supporting regulatory mandates, and using best practices to protect Freddie Mac from potential threats and risk. Employees exercise this responsibility by executing against policies and procedures and adhering to privacy & security obligations as required via training programs.

CA Applicants:  Qualified applications with arrest or conviction records will be considered for employment in accordance with the Los Angeles County Fair Chance Ordinance for Employers and the California Fair Chance Act.

Notice to External Search Firms: Freddie Mac partners with BountyJobs for contingency search business through outside firms. Resumes received outside the BountyJobs system will be considered unsolicited and Freddie Mac will not be obligated to pay a placement fee. If interested in learning more, please visit www.BountyJobs.com and register with our referral code: MAC.

Time-type:Full time

FLSA Status:Exempt

Freddie Mac offers a comprehensive total rewards package to include competitive compensation and market-leading benefit programs. Information on these benefit programs is available on our Careers site.

This position has an annualized market-based salary range of $143,000 - $215,000 and is eligible to participate in the annual incentive program. The final salary offered will generally fall within this range and is dependent on various factors including but not limited to the responsibilities of the position, experience, skill set, internal pay equity and other relevant qualifications of the applicant.
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Tags: Computer Science Credit risk Economics Java Machine Learning Mathematics ML models PhD Privacy Python R RDBMS Research SAS Security SQL Statistical modeling Statistics Testing

Perks/benefits: Career development Competitive pay Equity / stock options

Region: North America
Country: United States

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