Contract Machine Learning Engineer (GCP) 6-Months £600

Method-Resourcing
London
2 days ago
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Contract Machine Learning Engineer (LLM & GC)

6-Month Contract | Outside IR35 | £600 per day

We are seeking an experienced Machine Learning Engineer to support the design and build, production ready ML models on Google Cloud Platform (GCP). This is a hands-on delivery role, focused on turning models into scalable, reliable, production systems that solve real business problems.

The contract will run for at least 6-months, will be Outside IR35 at £600 per day, and we are looking to start the project at the beginning of March. This role suits a delivery-focused ML Engineer who enjoys taking models from concept through to production, rather than staying purely in research or experimentation.

Key Responsibilities

  • Design, build, and productionise machine learning models using GCP-native services
  • Translate business problems into deployable ML solutions
  • Develop and maintain end-to-end ML pipelines (training, testing, deployment, monitoring)
  • Work with data scientists and engineers to operationalise models at scale
  • Implement best practices for model performance, versioning, and lifecycle management
  • Ensure solutions are secure, scalable, and cost-efficient within GCP

Required Experience

  • Strong hands-on experience building and deploying ML models on Google Cloud Platform
  • Experience w...

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