As a Senior Infrastructure Engineer at Greenlite, you'll own the foundation that lets us deploy secure, compliant AI systems at major financial institutions fighting financial crime at massive scale. Our infrastructure is built on a modern container-native architecture, leveraging Docker and Kubernetes orchestrated through platform automation tools like ryvn.ai to deliver consistent, auditable deployments across diverse customer environments.
You'll work directly with our biggest customers—institutions serving over a billion people—architecting, automating, and hardening our on-premises and cloud environments to meet the strictest regulatory and performance requirements, including SOC 2 compliance. Your infrastructure work is informed by real customer needs and ships to everyone, so you need to build enterprise-grade systems, work effectively with engineering and customer teams, understand financial services compliance, and adapt quickly.
This is a core infrastructure role on our Engineering team. You're an exceptional infrastructure engineer who understands that financial institutions need hyperscale reliability when deploying AI for compliance workflows. You'll lead reliability and scalability initiatives, architect secure infrastructure, and mentor others as we scale. You're not just building infrastructure—you're engineering enterprise-grade systems based on what our most sophisticated customers actually need for regulatory compliance and performance.
Please Note: We work in-person Monday through Friday in our SF office.What you'll doMonth 1:Master our Kubernetes-based AI infrastructure platform and container orchestration workflows
Get hands-on with our ryvn.ai platform automation tooling, Datadog observability stack, and deployment pipelines
Shadow experienced engineers on customer on-premises and private cloud rollouts
Lead your first incident response and begin modeling system growth patterns
Own end-to-end infrastructure architecture for major bank and fintech deployments
Build and implement enterprise-grade CI/CD frameworks with embedded security, SOC 2 compliance gates, and progressive delivery mechanisms
Partner with customer engineering teams on complex cloud and on-premises deployments
Become the go-to expert for regulated AI infrastructure at scale
Own and evolve our Kubernetes infrastructure, including cluster management, service mesh configuration, and container security policies
Design and implement progressive delivery pipelines with canary deployments, automated rollbacks, and deployment health validation
Build and maintain observability infrastructure in Datadog, including dashboards, monitors, SLOs, and distributed tracing
Drive incident response for high-severity outages and proactively model capacity needs for low-latency AI inference
Architect and automate secure infrastructure using Infrastructure-as-Code for VPCs, IAM policies, Kubernetes manifests, and private cloud deployments
Maintain and improve infrastructure controls supporting our SOC 2 compliance posture
Lead customer engagements for enterprise rollouts and mentor mid-level engineers on infrastructure best practices
8+ years in infrastructure engineering or DevOps at high-growth or hyperscale companies
Experience with Docker and Kubernetes, including production cluster management, Helm, and service mesh technologies
Proven track record of architecting and operating AWS (preferred), GCP, or Azure at enterprise scale
Experience with observability platforms, preferably Datadog (metrics, logs, APM, distributed tracing)
Strong background in Infrastructure-as-Code (Terraform, Helm, Kustomize) and safe deployment practices (progressive delivery, canary deployments, GitOps, automated rollbacks)
"Battle scars" from leading outages, capacity events, and large-scale incident reviews
Strong programming skills in Python; familiarity with TypeScript a plus
Experience mentoring engineers and leading technical initiatives
Experience with platform engineering tools like ryvn.ai, or similar
Direct involvement in SOC 2 or other compliance audit preparation or remediation
Direct experience with private-cloud or on-premises deployments for regulated customers
Previous experience at startups scaling infrastructure from early stage to enterprise
Background in fintech or building systems for highly regulated industries
Experience with AI/ML infrastructure and model deployment at scale
You're a senior infrastructure engineer who thrives at the intersection of technical leadership and customer impact. You see infrastructure as a product for your engineering peers and understand the value of platform automation in enabling developer velocity while maintaining security and compliance guardrails.
You understand that effective infrastructure engineering means building systems that enable rapid development while maintaining the highest standards of security, compliance, and reliability. You're comfortable balancing technical excellence with mentoring others and leading customer engagements, and you want your infrastructure contributions to have direct, measurable impact on how financial institutions adopt AI to fight crime.
Compensation & Benefits$168k - $213k + equity
Comprehensive healthcare, 401k matching, commuter benefits
15 days PTO + holidays, unlimited sick days
Flexible leave options
Working late? We've got you covered with DoorDash and an Uber home
Join us in building AI that protects the global financial system from financial crimes that fund terrorism, human trafficking, and other serious threats.
Top Skills
Greenlite AI San Francisco, California, USA Office
San Francisco, California, United States, 94110
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