Where technology meets empathy – pioneering the future of human-robot interaction.
AI Infrastructure Specialist
Location
California
Posted
99 days ago
Salary
0
Seniority
Senior
Job Description
AI Infrastructure Specialist
Andromeda
• If you have firsthand experience working in AI infrastructure but don't see a role currently posted that you are qualified for, feel free to submit your resume here. • If there is a future opportunity that we think aligns with your background, we will reach out.
Job Requirements
- firsthand experience working in AI infrastructure
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