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Bringing our heart to every moment of your health.
Manager, AI Engineer
Location
Rhode Island
Posted
14 days ago
Salary
$83.4K - $203.9K / year
Seniority
Senior
Job Description
Manager, AI Engineer
CVS Health
• Design, build, and maintain integrations between the Anthropic Claude platform and enterprise systems • Develop and manage MCP server configurations • Build and optimize prompt pipelines, agentic workflows, and automations • Troubleshoot complex technical issues across the AI stack • Write clean, well-documented code • Test and iterate on AI workflows
Job Requirements
- 5+ years of experience in software engineering or a related technical discipline
- 2+ years of experience using Python and/or JavaScript
- 1-2 years of experience with Model Context Protocol (MCP)
- 1-3 years’ experience with agentic AI patterns, prompt engineering, and working with large language models in production
- 1-3 years’ experience with the Anthropic Claude platform
Benefits
- medical, dental, and vision coverage
- paid time off
- retirement savings options
- wellness programs
- other resources, based on eligibility
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