AI Data Engineer – Denial Prediction

AI Data Engineer – Denial Prediction

Description:

Job Title: Senior AI Engineer – Denial Prediction (RCM AI Platform)

Role Overview:

We are hiring a Senior AI Engineer to build and scale an AI-powered Denial Prediction

platform that proactively identifies, prevents, and explains claim denials across the RCM

lifecycle. This role focuses on combining AI-assisted software development (Copilot, LLMs)

with predictive modeling and healthcare data engineering to drive measurable reductions in

denial rates.

You will architect systems that move beyond rule-based logic into intelligent, learning-driven

workflows that integrate deeply with claims, coding, and payer behavior.

Key Responsibilities

• Design and develop AI-driven denial prediction systems using structured (837/835, EHR) and

unstructured healthcare data.

• Leverage AI-assisted development tools (GitHub Copilot, LLM APIs) to accelerate feature

development and model deployment.

• Build predictive models to identify denial risk pre-submission (eligibility issues, coding errors,

payer-specific edits, documentation gaps).

• Develop explainable AI outputs that clearly indicate why a claim is likely to be denied and

recommend corrective actions.

• Architect real-time and batch data pipelines for claims ingestion, feature engineering, and

model scoring.

• Integrate denial prediction engines into RCM workflows (coding, billing, claim scrubbing,

edits).

• Continuously improve model performance using denial feedback loops (835 remits, appeal

outcomes).

• Ensure HIPAA compliance, auditability, and traceability of AI-driven decisions.

• Establish validation frameworks for AI-generated code and model outputs.

• Collaborate closely with RCM SMEs to encode payer rules, denial patterns, and workflow

nuances into models.

Required Qualifications

• 5–10 years in software engineering, with strong backend and data engineering experience.

• Hands-on experience using AI-assisted coding tools (GitHub Copilot, ChatGPT, etc.) in

production environments.

• Experience building or deploying machine learning models (classification, anomaly detection,

or risk scoring).

• Strong proficiency in Python (preferred), with experience in ML libraries (scikit-learn,

TensorFlow, PyTorch, or similar).

• Experience working with healthcare data formats (X12 837/835, HL7, FHIR).

• Solid understanding of RCM processes especially claims submission and denial management.

• Ability to produce models (APIs, pipelines, monitoring, retraining workflows).

Preferred Qualifications

• Experience building denial prediction, claim scrubbing, or revenue integrity solutions.

• Familiarity with payer rules engines and clearinghouse workflows.

• Experience with explainable AI techniques (feature importance, SHAP, rule extraction).

• Exposure to LLM-based reasoning for documentation validation or coding assistance.

• Experience integrating with EHRs (Epic, Cerner) or billing systems.

• Understanding of HCC coding, medical necessity rules, and prior authorization impact on

denials.

Key Traits for Success

• Strong problem framing: can translate denial patterns into model-ready features.

• Balances speed (AI-assisted development) with precision (healthcare compliance).

• Obsessed with measurable outcomes (denial reduction %, AR improvement).

• High ownership in building production-grade, reliable AI systems.

• Thinks in feedback loops and continuous model improvement.

What Success Looks Like

• Reduction in denial rates pre-submission.

• Improved clean claim rate and first-pass acceptance.

• Actionable insights for coders and billers embedded in workflows.

• Scalable AI system that adapts to payer-specific behavior over time.

Why Join PAIX

• Build a category-defining AI product in denial prevention—not just analytics.

• Direct impact on hospital revenue and financial performance.

• Opportunity to shape AI-first RCM architecture from the ground up.

• Work closely with GTM and product to translate innovation into enterprise adoption

Apply Now

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