Senior ML Ops Engineer (m/f/d) at Agile Robots SE
81369 München, , Germany -
Full Time


Start Date

Immediate

Expiry Date

26 Nov, 25

Salary

0.0

Posted On

26 Aug, 25

Experience

0 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Good communication skills

Industry

Information Technology/IT

Description

WHAT WE OFFER

  • A dynamic, highly qualified, and diverse team in which your contributions are reflected directly in our products and used by our international customer base
  • Flat hierarchies and short decision-making processes
  • Exciting and varying tasks for our product portfolio
  • Excellent working environment, modern office space, and flexible working hours with the option of mobile working

ABOUT US

Agile Robots SE is an international high-tech company based in Munich, Germany with a production site in Kaufbeuren and more than 2300 employees worldwide. Our mission is to bridge the gap between artificial intelligence and robotics by developing systems that combine state-of-the-art force-moment-sensing and world-leading image-processing technology. This unique combination of technologies allows us to provide user-friendly and affordable robotic solutions that enable intelligent precision assembly.
This is made possible by our employees, who bring out the best in each and every day with creativity and enthusiasm. Become part of this team and shape the future of robotics with us!
We are proud of our diversity and welcome your application regardless of gender and sexual identity, nationality, ethnicity, religion, age, or disability.

Responsibilities

ABOUT THE ROLE

As a Senior MLOps Engineer, you will take ownership of designing, building, and maintaining the infrastructure that powers our Generative AI framework. You will architect scalable, secure ML environments across development, testing, and production, while automating the entire ML lifecycle—from data ingestion and model training to deployment and monitoring. In this role, you will lead the design of CI/CD pipelines for ML workflows, ensuring reliability, reproducibility, and seamless integration of new models. You will implement advanced monitoring and observability systems to track performance, detect data drift, and maintain infrastructure health. Your expertise will also drive the development of robust tooling for model development, training, serving, and lifecycle management, enabling our teams to bring cutting-edge AI solutions into production at scale.

YOUR RESPONSIBILITIES

  • Design, build, and maintain scalable and secure ML infrastructure across development, testing, and production environments
  • Automate andoptimizethe ML lifecycle
  • Architect and manage the continuous integration and deployment pipelines and release processes using tools such as Kubeflow,MLflow, SageMaker, or custom Kubernetes solutions
  • Implement monitoring systems for data drift, model performance, and infrastructure health
  • Develop Tooling: Build and enhance ML engineering tooling for Model Development, Model Workbench, Model Training, Model Monitoring, and Model serving
  • Work closely with data scientists and ML engineers to ensure reproducibility, scalability, and production-readiness of models
  • Design and maintain pipelines for feature extraction, transformation, and storage using tools like Feature Store or custom solutions
  • Ensure data quality, consistency, and lineage throughout the ML pipeline
  • Ensure responsible use of data, model explainability, and auditability in line with organizational and legal standards
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