Fannie Mae Corp

Data Science Manager

Washington, DC, US

Onsite
Full-time
$152k–$205k/year
3 days ago
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Summary

At Fannie Mae, the inspiring work we do helps make a home a possibility for millions of homeowners and renters. Every day offers compelling opportunities to impact the future of the housing industry while being part of a collaborative team thriving in an energizing environment. Here, you will grow your career and help create access to affordable housing finance. Job Description As a valued leader on the team, you will manage a team who produce insights, new product or change recommendations, process improvement or automation, and predictive modeling for parts of projects, programs, or products. You will develop the team's skills in data mining and data analysis methods, large data processing techniques, and computational programing capabilities, as well as problem-solving and communication skills. In this role, you will manage the coordination with the data engineering and data management teams, and external or created data sources to apply data mining techniques in preparation for analysis or use of enterprise data assets. THE IMPACT YOU WILL MAKE The Data Science Manager role will offer you the flexibility to make each day your own, while working alongside people who care so that you can deliver on the following responsibilities: * Use advanced mathematical, analytical, or econometric tools to create algorithms and analyses that will be used to support the Multifamily CECL and DFAST/forecasting processes within the Finance organization. * Research and evaluate model results and perform credit-related analyses for both expected and stress scenarios including CECL/DFAST. * Coordinate team activities with product and/or business owners, data engineers, and platform teams to understand business needs and current capabilities, data availability, and alternative uses to drive success of parts of projects, programs, or products. * Ensure application of statistical modeling capabilities from disciplines, such as computer science, computational science and methods, statistics, econometrics, data optimization, and data visualization. * Build predictive analytic capabilities within the team to enhance the delivery of business applications, and support the integration of data and statistical models or algorithms. * Apply innovative industry practices in research and testing to product development, deployment, and maintenance. * Oversee the design and build of new modeling applications to support risk measurement, financial valuation, decision making, and business performance for parts of products or initiatives. * Ensure the team communicates complex ideas and solutions effectively to business partners through data visualizations, technical documentation, and non-technical presentation materials. Minimum Required Experiences * 6 years Desired Experiences * Bachelor degree or equivalent * A Masters degree or equivalent in Data Science, Applied Economics, Statistics, or other similar graduate studies * Familiarity with advanced techniques including machine learning and natural language processing (NLP) * Prior quantitative and finance training, including forecasting/stress testing (DFAST) knowledge. * Ability to direct and evaluate the more technical aspects of data analysis and research, while also managing team in a timely manner to focus on the broader context and key impacts of the analysis * Ability to build and maintain strong business relationships with partners * Strong written and verbal communication skills * Relationship management including managing and engaging stakeholders, partners, customers, and building relationship networks * Strong analytical and problem-solving skills to conduct and manage analysis to address complex business problems * Programming including coding, debugging, and using relevant languages such as Python, R, SQL, or similar * Experience in the process of analyzing data to identify trends or relationships to generate business insights and inform conclusions about the data * Expertise in visualizing data to identify, summarize and explain observed data patterns Tools * R programming * Tableau * Python * SQL * DBeaver SQL client software * BitBucket Qualifications Education: Bachelor's Level Degree (Required) The future is what you make it to be. Discover compelling opportunities at Fanniemae.com/careers. For most roles, employees are encouraged to work onsite on a regular basis at their designated office location. In-office work cadence is determined by your manager. Proximity within a reasonable commute to your designated office location is preferred unless the job is noted as open to remote. Fannie Mae is an equal opportunity employer and considers qualified applicants for employment without regard to race, color, religion, sex, national origin, disability, age, sexual orientation, gender identity/gender expression, marital or parental status, or any other protected factor. Fannie Mae is committed to providing reasonable accommodations to qualified individuals with disabilities who are employees or applicants for employment, unless to do so would cause undue hardship to the company. If you need assistance using our online system and/or you need a reasonable accommodation related to the hiring/application process, please complete this form. The hiring range for this role is set forth below. Final salaries will generally vary within that range based on factors that include but are not limited to, skill set, depth of experience, certifications, and other relevant qualifications. This position is eligible to participate in a Fannie Mae incentive program (subject to the terms of the program). As part of our comprehensive benefits package, Fannie Mae offers a broad range of Health, Life, Voluntary Lifestyle, and other benefits and perks that enhance an employee's physical, mental, emotional, and financial well-being. See more here. Requisition compensation: 152000 to 205000

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