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We are seeking a highly skilled Data Scientist with strong Healthcare Revenue Cycle Management (RCM) expertise to join our Data Science and Engineering Team. The primary responsibility for this role is to build high-quality, client facing RCM dashboards using Power BI that provide executives and operations teams with actionable insights. The Ideal candidate understands the full RCM ecosystem, charges, payments, write-offs, denials, AR gaining, coding workflows, payor reimbursement behavior and has advanced analytics skills to translate raw data into meaningful metrics. They should also have experience with Databricks, distributed data processing, predictive modeling, and agile documentation tolls like Confluence and Jira. This role is highly collaborative and client-facing supporting data discovery, dashboard development, and interpreting insights that drive RCM performance improvement.
Job Responsibility:
Power BI Dashboard Development (Primary Responsibility) Build end-to-end RCM dashboards in Power BI for new and existing clients
Transform raw encounter, claims, payment, AR, and denial data into intuitive visualizations
Develop KPI frameworks and executive-level dashboards (e.g., collections, denials, AR performance, coding trends)
Optimize data models for performance, accuracy, and refresh reliability
Ensure all dashboards adhere to internal design standards, naming conventions, and SOPs
RCM Analytics & Insight Generation Analyze healthcare RCM datasets to uncover trends, bottlenecks, and improvement opportunities
Work directly with RCM and client teams to understand workflows and convert business rules into measurable KPIs
Provide data-driven recommendations to improve reimbursement, throughput, and operational efficiency
Data Engineering & Databricks Collaboration Use Databricks for data discovery, transformation, and validation
Troubleshoot data quality issues and partner with engineers to ensure accurate pipeline execution
Validate that received client data aligns with expected volume, structure, and completeness
Predictive Modeling & Advanced Analytics (Secondary Responsibility) Develop predictive models such as denial prediction, payment probability, and cashflow forecasting
Support innovation in analytics across the department
Project Management, Documentation & Collaboration Use Jira to manage spring tasks, dashboard documentation, metric definitions, and process notes in Confluence
Support onboarding calls, requirements intake, and client data mapping sessions
Requirements:
Bachelor’s or Master’s degree in data science, Statistics, Health Informatics, Computer Science, or related field
3-5+ years of hands-on experience in healthcare RCM analytics (claims, billing, AR, payments, denials)
2+ years of building Power BI dashboards with strong DAX and modeling skills
Strong SQL skills and familiarity with large-scale healthcare datasets
Experience working with Databricks
Proven ability to translate business and RCM requirements into dashboards and KPIs
Experience using Confluence and Jira in an agile environment
Excellent communication skills with the ability to present insights to clients
Strong understanding of HIPAA regulations and healthcare data security
Nice to have:
Experience with Azure (ADLS, AKV, ADF)
Experience automating data ingestion (API, SFTP, RPA)
Familiarity with Tableau (not required, but helpful)
Prior consulting or client-facing analytics experience
Background supporting medical groups, billing companies, or RCM vendors
What we offer:
Remote opportunities
Growth advancement opportunities
Flexible work environment (Work-life Balance)
Collaborative and friendly company culture
The opportunity to build analytics dashboards that clients rely on to run their business
Fast-paced environment with significant impact
Growth in predictive analytics, automation, and large-scale data engineering
Collaborative team culture within Data Science & Engineering