Job Description Summary
The Manager, Risk Adjustment Data Science serves as a strategic and technical leader responsible for advancing the organization’s Burden of Illness and risk adjustment capabilities across Medicare Advantage, MSSP, and Commercial ACO populations.
This role combines advanced analytics, machine learning, and AI-driven solutions to improve risk capture, coding accuracy, and overall financial performance in value-based contracts. The Manager will lead the design and deployment of scalable data products, predictive models, and AI-enabled workflows that directly impact RAF performance and total cost of care.
This position partners closely with executive leadership, clinical teams, and risk adjustment operations to translate complex data into actionable strategies. The role requires deep expertise in healthcare data, strong technical leadership, and experience building production-grade data pipelines and ML/AI solutions.
How will you make an impact & Requirements
Risk Adjustment & BOI Strategy Leadership
- Lead analytics strategy for risk adjustment and BOI performance across MA, MSSP, and Commercial ACO populations
- Own RAF performance tracking, suspecting, recapture, and coding optimization initiatives
- Translate risk adjustment insights into actionable strategies that drive revenue integrity and value-based performance
- Partner with clinical and operational leadership to align analytics with prospective and retrospective RA programs
- Serve as a subject matter expert in CMS-HCC models, BOI frameworks, and payer-specific risk methodologies
Data Science, AI & Advanced Analytics
- Design, develop, and deploy machine learning models for risk stratification, suspect identification, and RAF optimization
- Build and scale AI-driven solutions to support medical coding, chart review, and clinical documentation workflows
- Develop evaluation frameworks and monitoring systems to ensure accuracy, performance, and reliability of ML/AI models
- Apply statistical modeling and predictive analytics to identify high-impact intervention opportunities
- Explore and implement generative AI / NLP use cases for clinical text and coding optimization
Data Engineering & Scalable Architecture
- Architect and maintain end-to-end data pipelines and ETL processes supporting risk adjustment analytics and reporting
- Develop scalable data models using dbt within Snowflake and/or Databricks environments
- Build production-ready datasets integrating claims, EHR, RAF outputs, and attribution data
- Partner with data engineering to optimize data infrastructure, governance, and performance
Reporting, Data Products & Visualization
- Lead development of enterprise dashboards and data products tracking:
- RAF performance and trend analysis
- Suspecting and recapture opportunity
- Coding accuracy and provider performance
- BOI progression across workflows (suspect → visit → claim)
- Deliver tools that support both executive decision-making and operational workflows
- Automate reporting to support scalable and real-time performance monitoring
Leadership & Cross-Functional Impact
- Act as a technical lead and mentor for analysts and data scientists
- Partner with FP&A on RAF forecasting, revenue modeling, and contract performance
- Collaborate with vendors and internal teams on coding, chart review, and AI initiatives
- Drive best practices in data science, analytics, and risk adjustment methodology
- Influence enterprise data strategy and analytics roadmap
Education and Experience
- Bachelor’s degree in Data Science, Statistics, Mathematics, Economics, Healthcare Analytics, or related field required
- Master’s degree (MS, MPH, MBA, or related) preferred
- 8–10+ years of experience in healthcare analytics, with deep focus on risk adjustment and value-based care
- Demonstrated experience in:
- Medicare Advantage risk adjustment (CMS-HCC)
- BOI / RAF performance analytics
- Machine learning or predictive modeling in healthcare
- Building production data pipelines and analytics workflows
- Experience working with claims, EHR, and CMS data (MMR, MAO-004, etc.) strongly preferred
- Required Technical Skills
· Advanced SQL (expert-level)
· Python (machine learning, data processing, automation)
· Snowflake + dbt (data modeling and transformation)
· Databricks or similar distributed compute platforms
· Tableau (or equivalent BI tools)
· Experience with ML frameworks (scikit-learn, etc.)
· Familiarity with AI/NLP applications in healthcare data
· Strong understanding of risk adjustment data flows (RAPS/EDPS)