Senior MLOps Engineer
The Role
As a Senior MLOps Engineer, you will own the infrastructure and ML platform that powers ClimateAi’s forecasting and risk products. You will design, build, and operate the cloud systems, data management infrastructure, and model lifecycle tooling that allow our Data Science and ML Engineering teams to develop, compare, register, and ship models with confidence.
This is a high-leverage role at the intersection of infrastructure, ML platform, and security. You will partner closely with Data Science to unblock initiatives like SYO2 and Risk Outlooks model improvements by giving them a real model management platform; with Data Engineering to harden our data lakehouse and pipelines; and with our security lead to provide a strong second engineer on cloud security — building skill duplication across critical systems.
What You’ll Do
- Stand up and operate the ML model framework that provides ML engineers and data scientists experiment tracking, model registry, and lineage
- Own and evolve our Infrastructure as Code so environments are reproducible, auditable, and easy for engineers to extend
- Build CI/CD and deployment patterns for ML pipelines and models, including reproducible training, automated validation, and safe rollouts to production
- Improve data management systems alongside Data Engineering with storage tiering, lifecycle and retention, cost-performance tradeoffs, and observability across our cloud environments
- Author clear architectural documentation, runbooks, and design proposals to communicate tradeoffs to engineering and non-technical stakeholders
What We’re Looking For
- 3–5 years of experience in Machine Learning, Backend Software Engineering, Data Engineering, or MLOps roles supporting data-intensive systems in production
- Production experience with ML lifecycle management platforms such as MLFlow, Weights & Biases, Neptune.ai, Comet.ml or similar
- Experience with IaC using Terraform, Pulumi, OpenTofu, Encore, Crossplane or similar
- Deep experience with building systems-of-systems in AWS, GCP, or Azure, that span across multiple services or multiple cloud providers
- Strong communication and ownership. You scope your work, monitor what you ship, and drive problems to permanent resolution
- Able to collaborate closely with Data Scientists, Engineers, and Product, to design and support end-to-end ML workflows
Bonus Points
- Experience with training, inference, deploying, and scaling modern ML models to production
- Experience with configuring models with datasets up to the petabyte-scale
Leveling
This role is posted at our Senior Engineer (P3) level. You will be a self-directed engineer who independently designs, implements, and optimizes complex infrastructure and ML platform components, drives data and model quality, supports cross-functional teams, and provides technical mentorship within the team.
Culture
At ClimateAi we are driven by a united passion to tackle climate change. We believe in a culture of trust and transparency, where feedback is considered an opportunity for us to contribute to each other's personal and professional growth. We recognize the value of diversity and are an equal-opportunity employer. We hire people who are collaborative, adaptable, communicate well, and love to learn. Expect to give and receive constructive feedback, as we are constantly seeking to push the innovation frontier while simultaneously growing as individuals and as a team.