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Posted 15 July, 2026
Global

Senior ML Ops Engineer

London, United Kingdom Full Time

Accepting applications until:

14 August 2026

Job Description

Your New Role

Senior MLOps Engineer

Global:IQ is the team building our new intelligence platform, turning first-party and partner data into smarter, data-led media plans across Global's audio and Outdoor inventory.

As a Senior MLOps Engineer at Global, you'll build the operational infrastructure that brings AI and ML models into production. You'll own the platforms, pipelines and processes that let our Data Science teams deploy, monitor, retrain and govern models reliably at scale-from the ground up.

Key Responsibilities

  • ML Infrastructure & Deployment (40%): Build automated pipelines for model training, validation and deployment, plus model registries, feature stores and inference services, with self-serve tooling for Data Science teams.
    Model Monitoring & Operations (30%): Implement monitoring, alerting and automated recovery for ML workloads-covering latency, data quality and drift-and own rollback, rollout and incident response.
    MLOps Governance & Best Practice (20%): Establish controls for model lineage, reproducibility and audit trails, and introduce ML-specific CI/CD, testing and release automation.
    Collaboration & Enablement (10%): Partner with Data Science, Data Engineering and Product, and mentor junior engineers to raise operational standards.

What you will love about this role:

  • Think Big: This is a true AI-driven product-ML isn't a feature, it's the product, and your infrastructure directly enables business value.
  • Own It: You're not maintaining legacy systems-you're establishing the MLOps patterns and standards that will scale for years.
  • Keep it Simple: You'll build pragmatic, reusable patterns that keep ML systems reliable and maintainable without over-engineering.
  • Better Together: Global:IQ is a tight collaboration between technical and commercial teams.

What Success Looks Like

In your first few months, you'll have:

  • Defined a clear operating model between MLOps and the teams developing models.
  • Delivered an end-to-end MLOps path for at least one production use case, from model handoff through deployment, monitoring and rollback.
  • Established baseline standards for model versioning, environment management and deployment.
  • Implemented monitoring and alerting across operational health, data quality and model performance.

What You'll Need

  • MLOps experience: You've operationalised ML models in production, owning deployment, monitoring and lifecycle management.
  • Strong programming: Production-quality, testable Python.
  • Cloud expertise: Deep AWS knowledge (SageMaker, Lambda, ECS/EKS, Step Functions); Snowflake a plus.
  • MLOps tooling: Experiment tracking and registries, workflow orchestration, model serving and feature stores.
  • CI/CD & IaC: ML-specific CI/CD, Terraform, Docker and test automation.
  • Cross-disciplinary communication: You translate between Data Science and Engineering and explain trade-offs to any audience.