MLOps Engineer...

Harrington Starr
London
4 months ago
Applications closed

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MLOps Engineer

MLOps Engineer - Image - Remote - Outside IR35

MLOps Engineer

MLOps Engineer

MLOps Engineer - Image - Remote - Outside IR35

MLOps Engineer

Senior MLOps Engineer | Established Bank in London | £90,000-£ 95,000 base + Bonus | Hybrid

We are looking for an experienced MLOps Engineer in London to join an established Banking client who have multiple offices around the UK. They have allocated a ton of investment to propel their AI & Cloud transformation and this role will be the first of its kind with the view to build a team around this hire.

You will act work closely with their Data Engineering, Data Science, Cloud and DevOps teams in order to help build and scale their ML and data platforms across Azure.

This role will require 2 days a week in the office.

What will you be doing?

  • Deploy and manage ML models across dev to production at scale
  • Build and maintain cloud-based data science environments
  • Automate pipelines and services (ETL, storage, databases)
  • Collaborate with data scientists and engineers
  • Explore new tools to boost ML performance and reliability

    What are we looking for?

  • Solid MLOps or ML Engineering experience
  • Strong Python & SQL skills
  • Hands-on with AWS, Azure, Terraform
  • Great communication & problem-solving skills
  • Bonus: Familiarity with finance or data viz tools (Power BI/Tableau, Excel)

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