BMW Group | Germany | 80xxx München | Permanent position | Full time | Published since: 17.03.2026 on stepstone.de
Senior MLOps Engineer - Autonomous Driving Platform (f/m/x)
With our BMW, MINI, Rolls-Royce and BMW Motorcycle brands, we are one of the world's leading premium manufacturers of automobiles and motorcycles, as well as suppliers of premium financial and mobility services. We are looking for you as Senior MLOps Engineer - Autonomous Driving Platform (f/m/x)
* After clicking the Read more button, the original advert will open on our partner's website, where you can see the details of this vacancy and contact information. If you need a translation of this text, after returning to our website it will be prepared and you can read it by clicking the Show full translation button.
Your tasks • Your profile • What we offer
We are a cross-functional team driving the development and operation of a scalable MLOps platform for autonomous driving. Together, we enable innovative AI solutions by providing robust, cloud-native infrastructure for the entire machine learning lifecycle. What awaits you? You design, build, and manage Kubernetes clusters on AWS EKS with high security and scalability standards for autonomous driving AI/ML workloads. In addition, you provision and orchestrate large-scale GPU clusters for distributed AI/ML training and experimentation. Here, you implement and automate CI/CD pipelines for AI/ML workflows optimized for autonomous driving model lifecycle. Additionally, you develop and maintain infrastructure components search as experiment tracking, model registry, and artifact storage tailored to autonomous driving data. You monitor and optimize platform reliability, performance, and cost. Additionally, you implement resource scheduling, quota management, and cost control strategies within the MLOps environment. You collaborate closely with data scientists, AI/ML engineers, and cloud architects to ensure robust infrastructure for the entire AI/MLcycle.
What should you bring along? University degree in Computer Science, Data Science, AI, Mathematics, Physics or comparable qualifications. At least five years of professional experience in MLOps, DevOps, or Cloud Engineering with a focus on machine learning platforms. Profound expertise in Kubernetes, AWS EKS, and related cloud services. Comprehensive knowledge of distributed training infrastructure and large-scale GPU orchestration. Advanced skills in Infrastructure as Code, especially Terraform and Helm. Strong proficiency in Python development, scripting and automation, with hands-on experience in CI/CD pipelines as well as monitoring and observability tools (e.g. ArgoCD, GitHub Actions, Prometheus, Grafana, OpenSearch/Kibana, CloudWatch). Very good written and spoken English skills; knowledge of German is an advantage. Would you like to shape the future of autonomous driving by building scalable MLOps platforms for innovative AI solutions? Apply now! Find out more about Artificial Intelligence at the BMW Group here. Note: Please apply exclusively online via our career portal. Applications via other channels (esp. e-mail) cannot be considered.
What do we offer? Challenging projects with which we are shaping the mobility of tomorrow together. Wide range of personal and professional development opportunities. Attractive, fair and performance-related costs. High level of job security. Annual special payments search as vacation pay, Christmas bonus, and profit sharing. Flexible working hours including 6 weeks annual leave and overtime compensation. Discounted BMW & MINI conditions. Many other benefits at bmw.jobs/benefits Start date: from now on Type of employment: limited / unlimited Working hours: [[classificationTime]] Position reference: 181741
Location
![]() | BMW Group | |
| 80809 München | ||
| Germany |
The text of this ad was translated from German into English using an automatic translation system and may contain semantic and lexical errors. Therefore, it should be used for introductory purposes only. For more detailed information, see the original text of the ad at the link below.
For more information read the original ad