DevOps Engineer / GCP SRE Engineer (with Data Engineering Exposure)

KBC Technologies UK LTD
Bristol
2 months ago
Applications closed

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GCP SRE Engineer (with Data Engineering Exposure)

Location: Bristol (Hybrid)

Employer:Global Technology Consultancy

Role Summary

We are looking for an experienced GCP Site Reliability Engineer (SRE) with strong cloud engineering and DevOps expertise. In this role, you will design, build, and maintain reliable, scalable, and secure infrastructure on Google Cloud, while also supporting data engineering teams with critical GCP data products.

Key Responsibilities

  • Deliver GCP cloud engineering services across Data, Database, and Storage platforms.
  • Curate, provision, and build GCP infrastructure and product resources using Terraform (IaC).
  • Implement automation, policies, and guardrails to ensure platform readiness and compliance.
  • Design and maintain CI/CD pipelines using Jenkins, GitHub, and Harness.
  • Manage and operate Kubernetes clusters (GKE / OpenShift) for container orchestration.
  • Ensure platform reliability through monitoring, alerting, and incident response.
  • Collaborate with data teams to optimise workloads across BigQuery, Dataflow, Pub/Sub, and related services.
  • Provide incident support and conduct detailed root cause analysis

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