Design and build scalable ML/AI infrastructure, including feature stores, model serving, data streaming, evaluation frameworks, and observability systems.
Build and maintain data pipelines for structured and unstructured data (claims, EHR, transactions, logs).
Ensure data quality, lineage, and reliability across the platform.
Ensure compliance and security for data handling, including adherence to healthcare and financial data standards.
Empower teams to access data and turn into actionable insights with agentic analytics.
Prototype and productionize ML models for anomaly detection and predictive modeling.
Build and deploy models across use cases like revenue cycle management and clinical reasoning.
Establish and own best practices across MLOps and LLMOps, including model lifecycle management and CI/CD for ML systems.
Develop systems for LLM orchestration and agent frameworks.
Partner closely with forward-deployed Product, Data Science, and GTM teams to translate ambiguous problems into production-ready AI systems.
Own end-to-end delivery, from experimentation to deployment and iteration.
Contribute to defining Nitra’s agentic AI product strategy.
Establish best practices for model evaluation, monitoring, and safety.
Requirements
4+ years of experience in machine learning and data engineering.
Strong background in ML frameworks for reinforcement learning.
Hands-on experience with multi-agent systems, evaluation, and observability.
Proven experience deploying ML systems into production at scale (think: $billions in volume).
Hands-on experience with MLOps practices, including:
Model versioning, monitoring, and retraining pipelines.
Experiment tracking and reproducibility.
Experience with LLMOps tooling and workflows, including: