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MOXFIVE

MOXFIVE combines expert services and a powerful platform to support the full IR process from forensics to resilience.

Senior Platform Engineer

Platform EngineerPlatform EngineerFull TimeRemoteSeniorTeam 11-50Since 2019H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

6 days ago

Salary

$180K - $220K / year

Seniority

Senior

Bachelor Degree5 yrs expEnglishCloudKubernetes

Job Description

Senior Platform Engineer

MOXFIVE

• Own and improve the platform foundation that helps a high-velocity engineering team ship safely across cloud infrastructure, Kubernetes, IaC, secrets, networking, access controls, CI/CD, observability, and production guardrails. • Build internal tooling for an AI-enabled engineering workflow, including automation, repo and CI feedback loops, agent-ready development environments, and safeguards that let engineers move quickly without weakening production discipline. • Strengthen operational readiness through better logging, metrics, tracing, alerting, runbooks, and incident follow-up. • Harden production access with least-privilege IAM, secure secret management, auditability, and controlled break-glass paths. • Set pragmatic platform standards that help a small team move quickly today while avoiding infrastructure, reliability, and security debt tomorrow.

Job Requirements

  • 5+ years of experience in platform engineering, DevOps, SRE, infrastructure engineering, or backend-adjacent cloud operations.
  • A track record of owning production systems where reliability, security, and developer velocity all matter.
  • Hands-on experience with cloud infrastructure, Kubernetes, infrastructure-as-code, CI/CD, secrets management, access controls, and observability.
  • Experience building internal developer tooling, platform automation, or AI-assisted development workflows.
  • Comfort designing safe release processes with deployment gates, smoke tests, rollback paths, and clear ownership.
  • Practical experience supporting relational databases and production data changes.
  • A security-minded approach to infrastructure, including least privilege, auditability, secret handling, and controlled production access.
  • Clear written communication for runbooks, deployment notes, incident follow-ups, and engineering decisions.

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