Senior SRE

Accelerant

About The Position

We're building the financial data platform at Accelerant — the premium, claims, and paid data products that underpin financial processing, reserving analysis, and the monthly close — and it needs to stay fast, resilient, and observable as we scale. You'll drive the reliability and observability strategy across the platform and the enterprise systems it depends on: Velocity, MuleSoft, D365, Snowflake, Fabric, and the streaming and integration layers that move data through it. You are a key decider about what gets measured, how we define reliability, and where engineering needs to invest to keep production healthy. We need someone who can prove a repeatable, define-to-alert observability pipeline, harden it, and scale it into systems that have never had real SLOs — and build modern, AI-assisted operational tooling that lets a small team punch far above its weight.

Requirements

  • Proven experience designing, operating, and scaling reliable production systems.
  • Deep hands-on expertise with modern observability tooling — Datadog, Prometheus/Grafana, and OpenTelemetry — including both push and pull ingestion patterns.
  • Strong background defining SLIs, SLOs, and error budgets — and translating them into business-level KPIs, not just infrastructure metrics.
  • Experience operating data platforms (Snowflake, Fabric) and enterprise integration layers (MuleSoft) alongside enterprise SaaS such as D365 (F&O and/or Power Apps).
  • Hands-on incident management experience with tools like Incident.io and ServiceNow, and a track record of running effective on-call and postmortem practices.
  • Hands-on experience building with LLMs and AI coding assistants — Cursor in particular. Bonus if you've built and deployed agents.
  • Ability to define reliability strategy, reliability targets, and operational metrics — and defend them to engineering leadership and the business.
  • Strong communication skills — you can explain a root cause to a junior engineer and a reliability risk to a product lead.
  • Demonstrated bias for action and ability to operate autonomously in ambiguous, fast-changing environments.

Nice To Haves

  • Experience in insurance, fintech, or other regulated financial services industries.
  • Familiarity with insurance and finance concepts (premium, claims, settlement, reserving, monthly close) or willingness to learn them deeply.
  • Experience with streaming and event pipelines (Red Panda / Kafka) and data lineage, retention, and auditability requirements.
  • Strong working knowledge of chaos engineering, performance and load testing, and capacity planning.
  • Experience deploying AI agents on an internal AI platform or fabric (governance, eval harnesses, prompt/version management).

Responsibilities

  • Drive the reliability and observability initiative
  • Own the reliability roadmap end to end. Prove a repeatable define → emit → ingest → dashboard → alert metric pipeline, set SLOs and error budgets, prioritize the work, and drive execution. You'll partner with engineering on what we monitor, how, and when — indexing on user impact over low-level infrastructure.
  • Harden the foundational platform
  • Take the financial data platform from functional to enterprise-grade, with a focus on availability, performance, and recoverability. Strengthen deployment paths, straight-through processing, and failover so the monthly close runs faster and cleaner as legacy hops are retired.
  • Expand observability breadth and depth
  • Extend instrumentation across the six target systems — Velocity, Red Panda, MuleSoft, Snowflake, Fabric, and AWS (with D365 ledger to follow) — proving both push (OpenTelemetry) and pull (agent) ingestion. Cover service health (latency, error rates, throughput) and business KPIs (match rate, reconciliation completeness, settlement correctness and latency).
  • Implement a scalable incident and review process
  • Build the on-call, alerting, and blameless postmortem process that keeps reliability high as systems and the team grow. Route alerts Datadog → Incident.io with ServiceNow as the system of record, and set severity standards, escalation norms, and follow-up tracking that actually closes the loop.
  • Scale automation, auditability, and reduce toil
  • Build the tooling that automates routine operations, self-heals common failures, and surfaces signal over noise. Establish data lineage and retention, and validate reliability at scale — 5,000+ transactions before go-live — through auto-remediation, capacity planning, and actionable dashboards.
  • Build specialized SRE agents using Cursor AI
  • Design and ship AI agents for incident triage, log analysis, and root-cause investigation (to name a few). Use Cursor as your build environment. Treat the agents as products solving specific problems.
  • Host SRE agents on the AI fabric
  • Partner with the AI platform team to deploy your agents on the org's AI fabric. Make them discoverable, governed, and reusable across functions.
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