Our mission is to solve the most important and fundamental challenges in AI and Robotics to enable future generations of intelligent machines that will help us all live better lives.
Who we are looking for:
We are seeking a Machine Learning Operations (ML-OPs) Manager who is both technically adept and an effective leader. In this role, you will lead a small team of engineers while also being hands-on in designing, building, and maintaining infrastructure that supports the entire lifecycle of Machine Learning (ML) projects. If you have a passion for building scalable ML infrastructure, mentoring engineers, and collaborating with world-class researchers, this is the role for you!
What You Will Do
Technical Leadership & Strategy: Drive the design, development, and maintenance of company-wide MLOps platforms and tools, leveraging Kubernetes infrastructure for ML and data processing applications.Team Management & Mentorship: Manage and mentor a small team of engineers, providing technical guidance, setting priorities, and fostering a collaborative team cultureScalability & Performance: Enable self-service access to ML-compute resources across on-prem and cloud environments, ensuring workload scalability, fault tolerance, and efficient job schedulingMonitoring & Observability: Enhance system observability through integrations with tools and services such as FluentD, Prometheus, Grafana, and DataDog to improve reliability and debuggingExperiment & Model Lifecycle Management: Integrate ML applications with experiment tracking and model management services such as Weights and BiasesBest Practices & Collaboration: Champion engineering best practices, drive improvements in CI/CD, infrastructure automation, and reproducibility. Work closely with ML Engineers, Data Engineers, DevOps teams, and researchers to accelerate research and deployment.,
What You Will Bring
BS or MS in Computer Science, Engineering, or equivalent5+ years of experience in an ML-Ops, DevOps, ML Engineering, or software engineering role2+ years of experience managing or mentoring engineers (can be formal management or technical leadership)Strong, hands-on experience with Kubernetes for ML applicationsExperience developing ML-Ops platforms (covering data/artifact management, reproducibility, fault tolerance, experiment tracking, and model serving)Proficiency in Python, Docker, and environment management tools (pip, poetry, uv, or similar)Familiarity with CI/CD tools (GitHub Actions, ArgoCD) and Infrastructure as Code (Terraform),
Skills We Value
Experience with job scheduling mechanisms like KueueHands-on experience with workflow orchestration tools (Airflow, Metaflow, Argo Workflows)Experience managing cloud infrastructure (GCP, AWS) and hybrid-cloud environmentsKnowledge of scalable AI/ML platforms like Ray or PyTorch LightningExperience with logging & monitoring tools (FluentD, Prometheus, Grafana, DataDog or similarĀ Exposure to ML model serving frameworks (TorchServe, ONNX Runtime, or similar)Previous experience collaborating with research teams in academic or industrial settingsWe provide equal employment opportunities to all employees and applicants for employment and prohibit discrimination and harassment of any type without regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, state or local laws.