We’re building the future of healthcare automation — starting with the post-acute, value-based care space , where both medication overload and revenue cycle complexity are driving unnecessary costs and poor outcomes. Founded by Dev Roy (2x exited founder), our stealth startup is building multi-agent LLM systems that operate with transparency, accuracy, and traceability — tackling two of the hardest problems in the healthcare stack : medication optimization and revenue cycle management (RCM) .
We use LangGraph and a tightly structured MCP (Model-Context-Protocol) architecture — where agents don’t just generate text, but operate over stateful contexts , issue tool calls , and follow explicit protocol-guided reasoning loops . The agents we build don’t guess — they explain, document, and prove.
Responsibilities
- Architect and implement multi-agent systems using LangGraph, leveraging an MCP-inspired structure : agents with memory, contextual tool use, and protocol-defined responsibilities
- Build workflows that replicate expert-level medical coding and medication review processes
- Design tool interfaces (e.g. vector DB, ICD-10 knowledge graph, FHIR endpoints) and integrate them into agents’ decision-making loops
- Orchestrate LLM calls with clear traceability, structured state, and logging for regulatory-grade auditability
- Own experiments and iterate rapidly to improve reasoning, accuracy, and output alignment
- Collaborate closely with the founder on roadmap, architecture, and product direction
Qualifications
1+ years of experience in AI / ML, NLP, or backend system designStrong Python engineering fundamentals and practical experience with LangGraph , LangChain , or similar agent frameworksComfortable building MCP-style architectures — where agents reason with structured inputs, manage context, and follow execution protocolsExperience with LLM APIs (OpenAI, Anthropic, Claude), prompt engineering, and managing token / latency trade-offsFamiliarity with vector search engines (Pinecone, Chroma, Weaviate) and RAG-based retrieval systemsBonus : background in clinical NLP , medical coding standards (ICD-10, CPT), or exposure to FHIR / HL7Startup mindset : autonomous, fast-moving, curious, and deeply pragmaticIf you want to build human-grade AI agents that actually matter — not chatbots, but reasoning systems that impact clinical decisions and billing integrity — we’d love to talk.