Staff Data Engineer - Data & ML Platform
Hinge Health
San Francisco, California$197,600 - $296,400 est.Full-timePosted 5 days ago
About the Role As a Staff Data Engineer, you will be a technical leader on the Data & ML Platform team, owning the architecture and reliability of the data infrastructure that powers real-time member experiences, analytics, and AI across Hinge Health. Where a Senior Data Engineer owns individual pipelines and systems, you own the patterns, standards, and architectural decisions that shape how the entire platform works. You will design systems that move data from dozens of upstream services — ac…
The average job posting receives 250 applications.
Stand out by tailoring your resume to this specific role. Our AI resume builder highlights the skills and experience that matter most to this employer.
More mechanical engineering roles in San Francisco
Explore related listings
Frequently asked questions
Who is hiring for Staff Data Engineer - Data & ML Platform at Hinge Health?+
Hinge Health is actively hiring for this Staff Data Engineer - Data & ML Platform role. Click "Apply Now" to submit your application directly on Hinge Health's careers page — Careeronaut doesn't charge employers or candidates for referrals.
When was this Staff Data Engineer - Data & ML Platform role posted?+
This listing was first posted on 2026-05-22. We pull the latest copy from the source feed daily, and any role that's taken down gets removed from Careeronaut within seven days so you don't waste time on stale listings.
How should I apply to this Staff Data Engineer - Data & ML Platform role?+
Start by tailoring your resume to the posting — most applicants send generic CVs and the first filter recruiters use is keyword relevance. Careeronaut's AI does this automatically: paste the job description, get a matched resume in under a minute, and download as PDF or DOCX.
Where can I find more Mechanical Engineering jobs in San Francisco?+
Browse all open mechanical engineering roles in San Francisco on the listing pages linked below. You can filter by salary, remote-friendly, and posting date.