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Google
Staff Infrastructure Engineer
🌎 Remote — US (CST)Full-timeDevOps & SRE$217K – $247K /yr
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Job description
Google is hiring a Staff Infrastructure Engineer to join our fully remote team in the United States. As a Staff Infrastructure Engineer, you'll keep our infrastructure reliable, scalable, and secure. This is a full-time, work-from-home role open to candidates across the US (Remote — US (CST)).
About the role
You'll keep our infrastructure reliable, scalable, and secure, partnering with a friendly, distributed team across US time zones. We care about outcomes over hours and give you the autonomy, tools, and support to do your best work from home.
What you'll do:
• Automate deployments and reduce operational toil
• Improve observability, alerting, and reliability
• Build and maintain CI/CD pipelines and infrastructure as code
• Monitor systems and respond to incidents
• Partner with engineering on scalability and security
What we offer:
• Competitive salary and meaningful equity
• Flexible working hours across US time zones
• Home office and wellness stipends
• Generous paid time off and company holidays
• 401(k) retirement plan with company match
How we work
We're remote-first and async-friendly. Expect clear documentation, regular feedback, supportive teammates, and real opportunities to grow your career.
Google is proud to be an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for everyone.
Requirements
Minimum qualifications:
• 7+ years of experience, including leading teams or projects
• Hands-on with Kubernetes, Terraform, or similar
• On-call and incident response experience
• Strong troubleshooting skills
• Experience with AWS, GCP, or Azure
Nice to have:
• Experience in a fast-paced, high-growth environment
• A growth mindset and eagerness to keep learning