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AI Lead DevOps Engineer
Salary:
165
 - 
190
 Net B2B + VAT / Hour
38
 - 
43
 EUR B2B Contract / Hour
European Union
Apply Now!All Job Openings

AI Lead DevOps Engineer

Salary:
25575
 - 
29450
 Net B2B + VAT / Month
5800
 - 
6700
 EUR B2B Contract / Month
165
 - 
190
 Net B2B + VAT / Hour
38
 - 
43
 EUR B2B Contract / Hour
25575
 - 
29450
 Brutto UoP / Month
Location:
European Union
Apply Now!See all Job openings

Job Description

We are looking for an AI Lead DevOps Engineer to spearhead the MLOps strategy for our high-impact AI accounts. With 8–10 years of experience, you will provide the technical leadership necessary to design robust, compliant, and highly automated AI platforms. You aren't just managing pipelines; you are architect the entire lifecycle governance—ensuring reproducibility, audibility, and security at an enterprise scale.

Key Responsibilities:
  • Strategic Leadership: Provide technical direction for the DevOps squad, defining the CI/CD and MLOps roadmap for the account.
  • Model Governance & Evaluation: Implement automated model evaluation pipelines to track accuracy, precision, and recall metrics in production.
  • Enterprise Security: Lead the DevSecOps strategy, ensuring all AI deployments comply with enterprise security standards and global data regulations.
  • Platform Enablement: Architect self-service platforms that allow ML engineers to deploy models with minimal friction while maintaining strict governance guardrails.
  • Auditability & Reproducibility: Ensure that every ML experiment is fully auditable through sophisticated pipeline and dataset versioning strategies.
  • Mentorship: Mentor senior and junior engineers, driving best practices in automation, IaC, and cloud-native architecture.

Requirements

  • 8–10 years of experience in DevOps/Cloud Engineering, with at least 3 years in a technical leadership or architect-level role.
  •  Deep understanding of the end-to-end ML lifecycle (training, validation, deployment, and retraining loops).
  • Mastery across Azure DevOps, GitHub Actions, and Jenkins.
  • Expert-level Terraform or CloudFormation skills, including modular architecture and cross-account cloud deployments.
  • Significant experience implementing SAST/DAST tools and managing complex IAM/Access Control frameworks in a cloud environment.
  • Ability to design custom observability frameworks that track model drift, pipeline failures, and infrastructure ROI.
  • Advanced knowledge of configuration management tools like Ansible or Puppet for complex multi-cloud environments.
  • Solid understanding of database scaling and security for MySQL, PostgreSQL, and MongoDB.
  • Understanding of how DevOps practices support responsible AI (e.g., bias tracking and audit logs).
  • Exceptional ability to collaborate with Architects and Data Scientists to translate high-level AI needs into operational reality.
  • Native or C1-level English, with the ability to present technical strategies to senior stakeholders.

Benefits

  • Fully remote work model
  • Professional training programs – including Udemy and other development plans
  • Work with a team that’s recognized for its excellence. We’ve been featured in the Deloitte Technology Fast 50 & FT 1000 rankings. We’ve also received the Great Place To Work® certification for five years in a row

Ready to apply?
Check out our recruitment process*

* Please Note: different job opportunities may have a slightly different version of this process.