Home Loans Loss Forecasting Analytics, Senior Data Scientist

SoFi SoFi · Fintech · Frisco, TX · Risk Management

Senior Data Scientist role focused on building quantitative and machine learning models for loss forecasting, CECL, and portfolio performance monitoring within SoFi's Home Lending risk analytics team. The role involves analyzing borrower behavior, supporting collections and loss mitigation strategies, and creating dashboards and reports for executive leadership. Requires strong Python, SQL, and experience with credit risk analytics.

What you'd actually do

  1. Developing quantitative and machine learning models to forecast losses across mortgage and home equity portfolios, including first lien, jumbo, HELOC, and closed-end second-lien products.
  2. Building and maintaining CECL, loss forecasting, and portfolio performance models with a focus on delinquency roll rates, default probability, cure behavior, loss severity, recovery timing, prepayment behavior, and charge-off outcomes.
  3. Defining and maintaining portfolio performance KPIs across credit, profitability, and risk, including delinquency rates, roll rates, cure rates, loss rates, severity, prepayment speeds, early payment defaults, repurchase risk, defect rates, and recovery performance.
  4. Performing cohort, vintage, and segmentation analysis by credit score, LTV/CLTV, DTI, lien position, documentation type, occupancy, channel, state/metro, property type, investor, and product type.
  5. Analyzing borrower behavior and identifying key risk drivers across stages of credit performance, including current status, early delinquency, late-stage delinquency, default, liquidation, foreclosure, recovery, and redefault.

Skills

Required

  • 5+ years of experience in data science, statistical modeling, credit risk analytics, loss forecasting, portfolio analytics, or a related quantitative role.
  • Master’s or PhD in Statistics, Mathematics, Economics, Engineering, Computer Science, Operations Research, Finance, or another quantitative field; equivalent practical experience will also be considered.
  • Strong proficiency in Python and SQL, with experience building repeatable analytical pipelines, model monitoring routines, and automated reporting.
  • Experience with data visualization and dashboarding tools such as Tableau, Looker, Power BI, or

What the JD emphasized

  • credit risk analytics
  • loss forecasting
  • portfolio analytics

Other signals

  • quantitative and machine learning models
  • loss forecasting
  • portfolio performance monitoring
  • CECL
  • delinquency roll rates
  • default probability
  • loss severity
  • recovery timing
  • prepayment behavior
  • charge-off outcomes
  • borrower behavior
  • risk drivers
  • collections analytics
  • loss mitigation
  • default strategy analytics
  • resolution pathways
  • model performance monitoring
  • back-testing
  • forecast-to-actual tracking
  • population stability
  • segmentation diagnostics
  • drift monitoring
  • recalibration
  • audit-ready documentation