DevOps Engineer (Founding Team)
Fabrion · San Francisco, CA · 8 mo ago
On-siteEngineeringFull-time
Responsibilities
- Build and maintain scalable cloud infrastructure across AWS/GCP/Azure with a focus on secure, tenant-isolated deployments
- Own and evolve CI/CD systems (e.g. GitHub Actions, ArgoCD) with progressive rollout, testing, and rollback flows
- Establish observability tooling across services, agents, and pipelines (OpenTelemetry, Prometheus, Grafana, Sentry)
- Implement policy-as-code (OPA, Rego) for deployment safety, RBAC, audit logging, and approval workflows
- Define and enforce SLAs, uptime targets (99.99%+), incident response, and remediation workflows
- Secure infrastructure: IAM, VPC, encryption, key management, image scanning, secrets rotation
- Automate deployments, infrastructure provisioning (Terraform, Helm), and environment replication
Requirements
Core Experience:
- 4–10+ years in DevOps, platform engineering, or SRE in production-grade systems
- Strong experience with Docker, Kubernetes (EKS/GKE), Terraform or Pulumi
- Hands-on experience deploying and monitoring distributed cloud-native systems
- Familiar with GitOps practices, CI/CD design, progressive delivery, and secure SDLCC
- Clear understanding of how to implement monitoring, alerting, and failure simulation in dynamic environments
Engineering Mindset:
- Obsessed with reliability, latency, uptime, and repeatability
- Security-aware and compliance-conscious
- Proactive — you don’t wait for alerts to fix things
- Comfortable collaborating with backend, AI, and data teams
Bonus
Agent-Native / ML Ops Capabilities:
- Experience running LLM orchestration frameworks (e.g. LangChain, LangGraph, Dust, ReAct agents)
- Building retrieval-augmented generation (RAG) pipelines — and deploying them safely and repeatably
- Familiarity with vector DBs (Weaviate, Qdrant, Pinecone) and embedding pipelines
- Monitoring and governing long-running or multi-agent chains
- Auditability and replay systems for agent decision-making
- Serving fine-tuned or open-source LLMs with model versioning and GPU scaling (e.g. vLLM, TGI)
- Interest in auto-remediation using agents (e.g. observability + alert → insight → response via LLM)
Why This Role Matters
This is a rare opportunity to design the nervous system of the platform — every agent, every data fabric component, every pipeline flows through what you build. This is a rare opportunity to design that system early, the right way, and future-proof it for scale, compliance, and trust.