MLOps Engineer

puritas group European Union
Remote
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AI Summary

We are seeking a hands-on MLOps Engineer to own the infrastructure, automation, and reliability of our machine-learning lifecycle. This role requires strong experience with MLOps tooling and solid Python skills. The ideal candidate will thrive in high-impact environments where models must move to production with speed, safety, and repeatability.

Key Highlights
Build and maintain end-to-end ML pipelines
Develop CI/CD workflows for ML and data pipelines
Manage cloud-native ML infrastructure
Key Responsibilities
Build and maintain end-to-end ML pipelines for training, deployment, and monitoring
Develop CI/CD workflows for ML and data pipelines
Implement model observability (drift, performance, alerting)
Productionise models in collaboration with data science teams
Manage cloud-native ML infrastructure (AWS/GCP/Azure)
Technical Skills Required
MLOps tooling Python Kubernetes Docker CI/CD Cloud engineering Infrastructure-as-code
Benefits & Perks
Fully remote
Open to candidates based anywhere in Europe

Job Description


Our client is scaling their AI/ML platform and needs a hands‑on MLOps Engineer to own the infrastructure, automation, and reliability of their machine‑learning lifecycle. This is a role for someone who thrives in high‑impact environments where models must move to production with speed, safety, and repeatability.


You’ll work with data scientists and platform engineers to build and maintain the tooling, pipelines, and cloud infrastructure that power production ML systems.


Fully remote, open to candidates based anywhere in Europe.


Key Responsibilities

  • Build and maintain end‑to‑end ML pipelines for training, deployment, and monitoring
  • Develop CI/CD workflows for ML and data pipelines
  • Implement model observability (drift, performance, alerting)
  • Productionise models in collaboration with data science teams
  • Manage cloud‑native ML infrastructure (AWS/GCP/Azure)
  • Drive best practices in reproducibility, governance, and automation


Required Experience

  • Strong experience with MLOps tooling (MLflow, Kubeflow, SageMaker, Vertex AI)
  • Solid Python skills and familiarity with ML frameworks
  • Kubernetes + Docker proficiency
  • CI/CD experience (GitHub Actions, GitLab CI, Argo, Jenkins)
  • Cloud engineering background
  • Infrastructure‑as‑code (Terraform preferred)


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