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Senior ML-LLM Engineer

Proven Recruiting
INTERN Remote ยท US Dallas, TX, US Posted: 2026-05-11 Until: 2026-06-10
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Job Description
Senior ML / LLM Engineer - Remote - Must reside near Dallas or Nashville Are you looking for a high-impact AI role where you can build and own machine learning systems from the ground up? Join a growing healthcare organization as they expand their Clinical Intelligence and Workflow Automation capabilities. This is a unique opportunity to step in as an internal AI expert, partnering directly with leadership to design and deploy cutting-edge LLM and agentic AI solutions that improve patient outcomes and operational efficiency. Who you are: 5+ years of experience in ML/LLM engineering, including production-grade systems. Experience building ML or agentic AI systems from scratch. Strong experience with Docker, Kubernetes, and ML deployment pipelines. Hands-on experience with AI development tools such as Cursor and Copilot. Proven ability to lead technically and mentor others. Experience with vector databases (Pinecone, Milvus, etc.) and LLM frameworks. Healthcare or clinical data experience is a plus. What you'll do: Design and implement AI agents and LLM-powered systems using modern frameworks. Architect scalable, low-latency inference systems for production environments. Integrate AI solutions into existing platforms using C#/.NET. Collaborate with product, engineering, and clinical stakeholders. Provide technical leadership and mentor team members on AI best practices. Why work here: Hybrid schedule (1 day onsite, Monthly; Nashville preferred, Dallas/Plano secondary, remote considered). Opportunity to own and build AI capabilities from the ground up. High visibility with senior leadership and direct impact on business outcomes. Collaborative, growing team environment with strong technical investment. Work on meaningful solutions that directly impact patient care and clinical efficiency.