TL;DR
Senior DevOps Engineer (AI): Building and maintaining scalable infrastructure and CI/CD pipelines for generative AI applications with an accent on MLOps, Kubernetes orchestration, and cloud-native automation. Focus on operationalizing machine learning models, ensuring high availability, and optimizing infrastructure performance for production-grade AI systems.
Location: Must be based in the United States
Compensation: $140,000–$220,000
Company
A global analytics software leader powering decision-making for businesses in over 100 countries.
What you will do
- Design, build, and maintain scalable infrastructure and data pipelines using Terraform and Kubernetes.
- Operationalize machine learning models by building automated training, validation, and deployment pipelines.
- Collaborate with SRE teams to ensure high availability, security, and observability of ML infrastructure.
- Automate infrastructure provisioning using AWS cloud-native services and IaC best practices.
- Manage EKS/ECS environments while optimizing performance and cloud costs.
- Support experimentation and transition of AI prototypes into robust production systems.
Requirements
- 7+ years of experience in DataOps or MLOps with a minimum of 2 years in ML model operationalization.
- Must be authorized to work in the United States as the role is restricted to US-based candidates.
- Proficiency in AWS services (EC2, S3, IAM, EKS, ECS).
- Strong scripting skills in Python and experience with IaC tools like Terraform.
- Experience with GitOps practices and CI/CD tools such as GitHub Actions or Argo Workflows.
- Solid understanding of cloud security, identity access management, and monitoring tools like Prometheus or Datadog.
Nice to have
- Experience with data governance, lineage, and metadata management.
- Familiarity with OpenTelemetry for advanced observability.
Culture & Benefits
- Inclusive team environment focused on diversity and equal employment opportunities.
- Professional development and learning opportunities within a leading big data analytics organization.
- Competitive compensation and benefits programs tailored for long-term career growth.
- Emphasis on work-life balance and social engagement through employee resource groups.
