MLOps Engineer
Copenhagen
Scalepoint
Insurance companies can automate the digital customer journey, optimise processes and get a fast deployment with lower total costs.Aiming for new heights
At Scalepoint, we support insurers in their digital journey to automate and provide a much better customer experience. Our solutions are unique, and our claims management solution was recently appointed the world’s best! Now, we're looking for an experienced MLOps Engineer to play a central role in operationalizing machine learning models and scaling our AI solutions.
If you’re passionate about taking machine learning models from concept to production in a fast-paced, dynamic environment, and you want to help digitalize the insurance industry, this is the perfect opportunity for you! As an MLOps Engineer, you’ll have the primary responsibility of designing, building, and maintaining the ML environment, shaping it from the ground up. You’ll also work closely with our data scientist, data team, and product managers, and will help ensure that our ML models deliver high business value and exceptional quality. This role is ideal for someone who thrives working independently and can communicate effectively across teams.
What to dive into
At Scalepoint, there’s always room to develop and explore new ideas. We believe high ambitions drive success and value curiosity, teamwork, and technical excellence. Together with the team, you will be involved with:
- Building and Managing ML/data Pipelines: Design, build, and maintain end-to-end machine learning pipelines that support data ingestion, feature engineering, model training, and deployment in production.
- Model Deployment & Automation: Work closely with data scientists to deploy machine learning models in production, utilizing CI/CD processes and automating workflows to streamline deployment and updates.
- Monitoring & Optimization: Implement monitoring solutions to track model performance, manage model drift, and maintain accuracy and reliability over time. Ensure models run optimally by fine-tuning infrastructure and resources.
- Collaboration with Cross-functional Teams: Partner with data scientists, software engineers, and DevOps to align ML models with business needs and optimize system performance.
What makes you a good fit?
We imagine that you are a problem-solver with a solid background in machine learning, DevOps, or software engineering and some years of relevant experience. Here’s what we’re looking for:
- Proficiency in Python for developing and managing machine learning workflows.
- DevOps Experience: Strong experience with Docker and Kubernetes for containerization and orchestration, especially as our infrastructure runs on a Kubernetes cluster.
- Pipeline and Workflow Orchestration: Familiarity with tools like Dagster for pipeline management and dbt for data transformations.
- CI/CD Expertise: Experience with CI/CD tools such as GitHub Actions for automated deployments and integration workflows.
- Monitoring & Logging: Familiarity with tools like Prometheus, Grafana, or ELK Stack to monitor and log ML model performance in production.
- Communication Skills: Excellent communication skills to coordinate across a distributed team and work with both technical and business stakeholders.
- Independence & Initiative: Ability to work independently, especially in building and taking ownership of the ML environment, with a readiness to collaborate as the team grows.
- Adaptability & Curiosity: Willingness to stay updated with emerging MLOps practices and new technologies in the field.
Would you like to join the journey?
Before you answer this question, let us emphasize that you will not be alone. We will succeed together! You can expect a warm welcome from your colleagues who will help you learn more about your role and the Scalepoint culture.
Are you ready to join our journey? Submit your application now. We will review the applications and conduct interviews continuously.
If you have any questions about the position, please feel free to contact our Head of Business Intelligence, Morten Vang-Pedersen by phone at +45 27 90 80 47, LinkedIn DM or email mvp@scalepoint.com.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: Business Intelligence CI/CD CX Dagster Data pipelines dbt DevOps Docker ELK Engineering Feature engineering GitHub Grafana Kubernetes Machine Learning ML models MLOps Model deployment Model training MVP Pipelines Python
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