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AI Knowledge Systems Specialist
Location
United States
Posted
5 days ago
Salary
$65 - $80 / hour
Seniority
Mid Level
No structured requirement data.
Job Description
AI Knowledge Systems Specialist
TEKsystems
Role Description We are seeking an Applied AI Engineer (LLM / RAG) for our healthcare research organization. This role is responsible for building AI-powered knowledge systems by structuring unstructured data and enabling accurate retrieval through LLMs. - Build LLM-based knowledge systems - Structure documents/data for retrieval - Implement RAG workflows - Create prompts and output templates - Work with stakeholders to refine outputs - Own work end-to-end Qualifications - Hands-on LLM build experience (OpenAI, Claude, etc.) - RAG or knowledge retrieval experience - Prompt engineering - Prior working experience in a related role within a Healthcare or regulated environment - Experience structuring documents/data - Ability to work independently Requirements - Python or SQL (Nice to Have) - Enterprise AI tools (Perplexity, etc.) Benefits - Medical, dental & vision - 401(k)/Roth - Insurance (Basic/Supplemental Life & AD&D) - Short and long-term disability - Health and Dependent Care Spending Accounts (HAS & DCFSA) - Transportation benefits - Employee Assistance Program - Time off/Leave (PTO, Vacation, or Sick Leave) Company Description This is a Contract position based out of Seattle, WA. The pay range for this position is $65.00 - $80.00/hr. This position is anticipated to close on Jul 10, 2026.
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