MLOps Engineer

hays-gcj-v4-pd-online
London
3 days ago
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MLOps Engineer – Azure ML, GithubUp to £550pd (Inside IR35)London/Hybrid 6 months

My client is looking for an MLOps Engineer to build and maintain scalable, automated AI systems on Azure. You’ll develop CI/CD pipelines for AI/ML, manage model deployment and monitoring, and work closely with data scientists and engineers to ensure secure, reliable, andpliant AI operations across environments.Key Requirements:

Proven experience in MLOps with strong focus on Azure Proficient in Azure Machine Learning, Cognitive Services, Speech Services, Azure OpenAI Hands‑on with Azure DevOps, Azure CLI, and CI/CD for AI Strong Python and Azure SDK experience Solid knowledge of Docker, Kubernetes/AKS Experience with Azure Monitor, App Insights, and building dashboards Understanding of IAM in Azure (Managed Identity, RBAC) AI/ML lifecycle and environment promotion experience Strong problem‑solving andmunication skills

Nice to have:Some experience with GitHub Actions or other CI/CD toolsExperience with Flask or similar frameworksFamiliarity with MLflowExposure to Generative AI / LLMs

If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV, or call us now.

If this job isn't quite right for you, but you are looking for a new position, please contact us for a confidential discussion about your career.

#4771794 - Lauren Duke

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