About Accelerant
Accelerant is a data-driven risk exchange connecting underwriters of specialty insurance risk with risk capital providers. Accelerant was founded in 2018 by a group of longtime insurance industry executives and technology experts who shared a vision of rebuilding the way risk is exchanged – so that it works better, for everyone. The Accelerant risk exchange does business across more than 20 different countries and 250 specialty products, and we are proud that our insurers have been awarded an AM Best A- (Excellent) rating. For more information, please visit www.accelerant.ai.
The Role
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.
This Is a High-Autonomy, High-Impact Role for Someone Who:
• Sees a recurring alert or a fragile deploy path and cannot leave it alone. Excels at shipping the right fix and the right automation, not the perfect one.
• Has run real production systems at scale — not just written runbooks for them.
• Has built with Datadog, OpenTelemetry, incident tooling, and AI coding assistants long enough to have strong opinions about what fits our needs.
• Can prototype an operational agent in Cursor and iterate as they go.
• Operates with autonomy, and can carry a technical discussion on system architecture, failure modes, and tradeoffs.
• Is genuinely curious about applying emerging AI to reliability and operations.
What You'll Do
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.
What You'll Bring
Must-Haves
• 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).
Skills Required
- Proven experience designing, operating, and scaling reliable production systems.
- Deep hands-on expertise with Datadog, Prometheus/Grafana, and OpenTelemetry (push and pull ingestion).
- Strong background defining SLIs, SLOs, and error budgets and translating them into business-level KPIs.
- Experience operating data platforms (Snowflake, Fabric) and enterprise integration layers (MuleSoft) alongside D365 (F&O and/or Power Apps).
- Hands-on incident management with tools like Incident.io and ServiceNow, and running on-call and postmortem practices.
- Hands-on experience building with LLMs and AI coding assistants, Cursor in particular.
- Ability to define reliability strategy, targets, and operational metrics and present them to engineering leadership and business stakeholders.
- Strong communication skills; explain technical root causes to engineers and reliability risks to product leads.
- Demonstrated bias for action and ability to operate autonomously in ambiguous, fast-changing environments.
- Experience building and deploying AI agents (bonus: deploying on internal AI platforms/fabrics).
- Experience in insurance, fintech, or regulated financial services.
- Familiarity with streaming/event pipelines (Redpanda/Kafka), data lineage, retention, and auditability requirements.
- Experience with chaos engineering, performance/load testing, and capacity planning.
What We Do
Accelerant is unlike other insurance program carriers. We are fueled by insurance technology and supported by our unique insurance platform. We work exclusively with MGAs and Program Administrators. We’re transparent, responsive and collaborative. We’ve walked in your shoes and understand your challenges. And we’re organized and committed to your success, because we’re successful when you are too. Our technology fueled, data driven partnerships with specialty underwriters and risk capital partners propel new levels of profitability by: · Providing the entire value chain access to data and analytics to better understand risk and benefit from these insights · Offering long-term capacity commitments · Prioritizing velocity and collaboration while eliminating bureaucracy · Offering support to streamline operational and regulatory complexity We’ve built a network of some of the best MGA and Program Administrators on the planet. We call them Members because it underscores our deep commitment to their, and your, success. And we are always looking for other top-class Members.








