The role:
What you'll own:
Who you are:
8+ years operating production systems at scale; owns SLOs, error budgets, incident command.
Strong Go or Python — you automate reliability, you don't toil at it. Everything you build is code: runbooks execute, remediation is automatic, toil trends to zero.
Deep on event-driven and real-time systems reliability — NATS-class buses, WebSocket fleets, streaming pipelines — and the failure physics underneath: state, race conditions, locking, ordering, back-pressure, cascading load. You've debugged these in production.
Strong monitoring and uptime mindset — metrics, logs, traces wired to alerting that catches it before the customer does; you know the difference between a noisy alert and a real signal.
Good networking understanding — protocols and how they work (TCP/UDP, TLS, WebSocket, DNS, load balancing); RTP/SIP a strong plus for our media paths.
GCP at scale; multi-cloud literacy a plus. Multi-tenancy isolation experience a strong plus.
Capacity modeling and load testing partnership with QA — find the knee of the curve before customers do.
Chaos engineering — failure injection as routine practice; prove graceful degradation, don't assume it.
Deploy-safety partnership with DevOps — canary analysis, automatic rollback triggers, error-budget-driven release gates.
AI-aware reliability — monitoring model latency, drift, and cost as production signals, not just CPU and memory.
Incident communication craft — clear, fast, blameless; execs and customers get truth at the right altitude.
A master debugger of production — reads the trace, the metric, the flame graph, and sees it; narrows an incident to the service, the deploy, the event.
8+ years operating production systems at scale; owns SLOs, error budgets, incident command.
Strong Go or Python — you automate reliability, you don't toil at it. Everything you build is code: runbooks execute, remediation is automatic, toil trends to zero.
Deep on event-driven and real-time systems reliability — NATS-class buses, WebSocket fleets, streaming pipelines — and the failure physics underneath: state, race conditions, locking, ordering, back-pressure, cascading load. You've debugged these in production.
Strong monitoring and uptime mindset — metrics, logs, traces wired to alerting that catches it before the customer does; you know the difference between a noisy alert and a real signal.
Good networking understanding — protocols and how they work (TCP/UDP, TLS, WebSocket, DNS, load balancing); RTP/SIP a strong plus for our media paths.
GCP at scale; multi-cloud literacy a plus. Multi-tenancy isolation experience a strong plus.
Capacity modeling and load testing partnership with QA — find the knee of the curve before customers do.
Chaos engineering — failure injection as routine practice; prove graceful degradation, don't assume it.
Deploy-safety partnership with DevOps — canary analysis, automatic rollback triggers, error-budget-driven release gates.
AI-aware reliability — monitoring model latency, drift, and cost as production signals, not just CPU and memory.
Incident communication craft — clear, fast, blameless; execs and customers get truth at the right altitude.
A master debugger of production — reads the trace, the metric, the flame graph, and sees it; narrows an incident to the service, the deploy, the event.
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