Senior MLOps Engineer, Data Engineering | FinOps, Data Transformation | Contract £700-800 per day - Outside IR35 | Hybrid – London | 9-months Contract

Owen Thomas | Pending B Corp
London
2 days ago
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Senior MLOps Engineer, Data Engineering | FinOps, Data Transformation | Contract £700-800 per day - Outside IR35 | Hybrid – London | 9-months Contract


Company:


Our client is one with international reach and a highly regarded reputation that specialises in FinTech software for some of the largest banks in the world.


They are in the middle of a major digital transformation — reimagining its core data infrastructure to power smarter decisions, faster operations, and better customer outcomes.


Our client is transforming its data infrastructure — and a key part of that is bringing machine learning into production the right way.


Job opportunity details for Senior MLOps Engineer, Data Engineering | FinOps, Data Transformation | Contract £700-800 per day - Outside IR35 | Hybrid – London | 9-months Contract


We’re looking for aSenior MLOps Engineerto build out robust pipelines that make model deployment repeatable, scalable, and observable.


You’ll bring:

  • MLflow, Kubeflow, or SageMaker experience
  • CI/CD for ML (GitHub Actions, Argo, Airflow)
  • Containerisation (Docker/Kubernetes), ideally on AWS
  • Monitoring, versioning, and reproducibility of ML models
  • Experience working with data scientists to productionise models


What We Value for the Senior MLOps Engineer, Data Engineering | FinOps, Data Transformation | Contract £700-800 per day - Outside IR35 | Hybrid – London | 9-months Contract

  • Experience working with high-scale data environments
  • Deep comfort with relational + NoSQL databases
  • Ability to write production-grade code in Python, SQL, or similar
  • Prior FinTech, SaaS, or consulting experience preferred


Logistics for the Senior MLOps Engineer, Data Engineering | FinOps, Data Transformation | Contract £700-800 per day - Outside IR35 | Hybrid – London | 9-months Contract:

  • Contract: Outside IR35
  • Location: Hybrid (2 days/week in London ideally)
  • Start: ASAP (flexible for the right candidate)



If interested in the Senior MLOps Engineer, Data Engineering | FinOps, Data Transformation | Contract £700-800 per day - Outside IR35 | Hybrid – London | 9-months Contract, please apply here and WE will reach out if it's a good match for the client.

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