Lila Sciences is building Scientific Superintelligence™ to solve humankind's greatest challenges. The Staff DevOps Engineer will drive the design, implementation, and optimization of infrastructure and delivery platforms, collaborating with software engineers, lab scientists, and ML engineers to build scalable, automated systems for fast, reliable software delivery.
Responsibilities:
- Build Kubernetes-based systems supporting scientific services, ML pipelines, and platform workloads; including production hardening, RBAC, network policies, and Pod Security Standards
- CI/CD pipelines with GitHub Actions/GitLab CI implementing best practices: build attestations, SBOM generation, dependency scanning, and container image hardening
- Infrastructure-as-code with Terraform and Helm; policy-as-code guardrails (OPA/Kyverno/Checkov) with drift detection
- AWS cloud infrastructure: EKS clusters, IAM least privilege, VPC/PrivateLink networking, KMS/Secrets Manager, ECR, S3, and centralized logging/monitoring
- Platform tooling to streamline deployment, observability, and developer workflows, enabling self-service with secure defaults
- Reliability engineering: SLOs/SLIs, incident response, capacity planning, and performance optimization throughout the stack
- Software supply chain practices: artifact signing, registry governance and vulnerability management
- QA and testing infrastructure: static analysis and code quality gate enforcement in CI pipelines, automated end-to-end and browser-based regression test suites, ephemeral test environments for PR-based validation, and pre-merge quality checks
- Automation and tooling in Python or Go to improve infrastructure operations and integrate telemetry with observability platforms
Requirements:
- Expertise in DevOps, SRE, Systems Engineering, or Platform Engineering in large scale cloud environments
- Expertise in deploying to cloud environments (AWS, GCP, etc) using infrastructure-as-code (Terraform, Helm) and containerization
- Deep experience with CI/CD systems (GitHub Actions, GitLab CI, or Jenkins) and GitOps practices
- Strong proficiency in Python/scripting languages for automation and tooling
- Strong understanding of Kubernetes operations: deployments, networking, storage, observability, and troubleshooting
- SRE practices: observability platforms, chaos engineering, incident management
- Securing ML/AI pipelines (model registries, training clusters, inference gateways)
- Experience in regulated/audit-heavy environments (SOC 2, ISO 27001)
- Supply chain security maturity: SBOMs, image signing, SLSA concepts
- Administering static analysis platforms (custom quality profiles, security hotspot triage) and scaling browser-based test suites across parallel CI environments
- Prior startup/high-growth experience balancing velocity with reliability