Sigma Computing

AI apps and analytics platform

StaffAI/MLEngineer

$240–270k San Francisco, California, United States; New York, New York, United States
The Brief

“Staff AI/ML Engineer at Sigma Computing. Skills: AI/ML, Production systems, Foundation models. Identify high-impact AI/ML opportunities. Prototype AI systems”

Industry & Context.

AI apps and analytics platform
Problems you'll solve

Analyze data; Build data apps; Build data workflows

What They're Looking For.

Must Have

Bachelor’s degree in Computer Science, Engineering, Mathematics, or a related field, 10+ years of experience building and deploying production-grade AI/ML systems, Deep knowledge of machine learning, deep learning, and applied AI, Experience across the full ML lifecycle: data curation, training, deployment, monitoring, Track record of building things that ship

Nice to Have

Built agents that can plan, reason, and use tools, Know your way around cloud infrastructure (AWS, GCP, Azure), Worked in a fast-moving startup or high-growth environment, Experience adapting or training foundation models (language or multimodal) for novel domains

What You'll Do.

Identify high-impact AI/ML opportunities

Productionize AI systems

Develop AI/ML infrastructure

Scale AI/ML infrastructure

Tackle novel UX problems

How You'll Work.

Team & Collaboration

Partner with product, design, and engineering teams

Free ATS check

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