MLOps Engineer

Revoco Ltd
London
3 weeks ago
Create job alert

Contract | 6-12 months+ | Outside IR35
Programme Start: Q1 2026

A major UK financial services organisation has secured funding for a multi-year AI transformation starting in Q1 2026. We're hiring an MLOps Engineer to ensure models are deployed safely, reliably and with full governance.

What you'll be doing

Build CI/CD pipelines for ML and data workloads

Implement monitoring, observability and automation for ML platforms

Manage model versioning, lineage and auditability

Support engineering and ML teams in deploying responsible AI models

What you'll need

Azure DevOps or GitHub Actions experience

Docker, Kubernetes/AKS

MLflow or similar model life cycle tooling

Experience in ML governance and regulated environments

FS/pensions background preferred

If you're an experienced MLOps Engineer feel free to apply or send your C.V to (see below)

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