Senior ML Ops Engineer in London

Senior ML Ops Engineer in London

London Full-Time 60000 - 80000 £ / year (est.) No working from home possible
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At a Glance

  • Tasks: Build and optimise ML systems for a leading media and entertainment group.
  • Company: Global, a top media and entertainment company reaching millions weekly.
  • Benefits: Competitive salary, inclusive culture, and opportunities for growth.
  • Other info: Collaborative environment with a focus on innovation and learning.
  • Why this job: Join a dynamic team and shape the future of AI in media.
  • Qualifications: Experience in MLOps, strong programming skills, and cloud expertise.

The predicted salary is between 60000 - 80000 £ per year.

We are Global. We’re proud to be one of the world’s leading media and entertainment groups. Whether it be on-air, via global player or through our outdoor advertising, we entertain and reach over 50 million individuals across the UK every week. Across our entire business, we’re committed to making more moments that matter for our audiences, customers and for each other.

This role is part of our Global:IQ team, the group developing our new intelligence platform. Global:IQ brings together a suite of 1st party and partner data, tools and capabilities to turn data into audience understanding and optimised, data-led media plans. Using a combination of data science, machine learning & AI techniques, it supports smarter targeting across Global’s audio and out-of-home inventory, optimises advertising creatives and automates the tracking of outcomes for advertisers through the acquisition funnel—from building awareness and consideration to driving action.

As a Senior MLOps Engineer you will play a critical role in building the operational infrastructure that brings AI and ML models into production at Global:IQ. You will own the platforms, pipelines and processes that enable Data Science and Applied ML teams to deploy, monitor, retrain and govern models reliably at scale across our ad-targeting, creative optimisation and advertising measurement capabilities.

This position demands a hands-on engineer with deep expertise in operationalising machine learning systems, a strong understanding of cloud infrastructure, ML lifecycle management, and production monitoring. You will work closely with Data Scientists, Data Engineers and Product teams to create robust, scalable and maintainable MLOps workflows—starting from the ground up.

The role reports to the Lead Engineer (MLOps & AI) and is a unique opportunity to establish MLOps best practices in a truly innovative AI/ML & data-driven product environment.

3 best things about the job:

  • Build from Zero: You're not maintaining legacy systems—you're establishing the MLOps patterns, tooling and standards that will scale with the team for years to come.
  • AI at the Core: This is a true AI/Data-driven product. ML isn't a nice-to-have feature - it's the product. Your infrastructure directly enables business value.
  • Truly Cross-functional: the Global:IQ team is a tight collaboration between technical and commercial areas.

Measures of success:

  • Defined a clear operating model between Data Engineering/MLOps and teams responsible for model development.
  • Onboarded key 1st and 3rd party datasets following existing ingestion patterns/standards.
  • Delivered an initial end-to-end MLOps path for at least one production ML use case, from model handoff through deployment, monitoring and rollback.
  • Established baseline operational standards including model versioning, environment management, deployment patterns and handover processes between Data Science and Engineering.
  • Implemented monitoring and alerting for production ML workloads, covering operational health, data quality and model performance signals.
  • Defined a clear operating model and interfaces between teams developing models and teams operating them in production.
  • Built collaborative relationships with Data Science, Data Engineering and Product stakeholders, demonstrating pragmatic judgement and delivery pace.

Key Responsibilities of the Role:

  • ML Infrastructure & Deployment (40%): Design, build and maintain automated pipelines for model training, validation, packaging and deployment across development, staging and production environments.
  • Model Monitoring & Operations (30%): Implement comprehensive monitoring for ML workloads including prediction latency, throughput, error rates, input data quality and feature drift.
  • MLOps Governance & Best Practice (20%): Establish governance controls for model lineage, approval workflows, reproducibility and audit trails.
  • Collaboration & Enablement (10%): Partner closely with Data Scientists and ML Engineers to understand requirements and translate experimental work into production-ready systems.

What you will need:

The ideal candidate will be pragmatic, hands-on, and passionate about making ML systems reliable, scalable and maintainable in production.

Essential Skills & Experience:

  • Strong programming skills (Python preferred) with a focus on production-quality, testable and maintainable code.
  • Hands-on MLOps experience: You have operationalised ML models in production, owning deployment, monitoring and lifecycle management (not just experimentation).
  • Cloud platform expertise (AWS strongly preferred; Snowflake a plus) with deep understanding of services for compute, orchestration, storage and ML.
  • Experience with MLOps tooling such as experiment tracking and model registries, workflow orchestration, model serving frameworks, and feature stores.
  • Deep understanding of monitoring and observability for ML systems, including operational metrics, data quality checks, drift detection and model performance tracking.
  • CI/CD and Infrastructure as Code: Experience with ML-specific CI/CD patterns, Terraform, containerisation, and testing automation for ML pipelines.
  • Ability to work across disciplines: You can translate between Data Science language and Engineering standards, establishing clear contracts and interfaces.
  • Strong communication skills: You can explain technical decisions, trade-offs and system behaviour to both technical and non-technical audiences.
  • Analytical and data-driven mindset: You use metrics, logs and evidence to diagnose issues and make decisions.

Desirable Skills & Experience:

  • Experience with agentic and AI-accelerated coding tools to increase delivery pace.
  • Understanding of ML model types and performance characteristics.
  • Familiarity with advertising technology, marketing analytics or media measurement use cases.
  • Experience in early-stage or scale-up environments where you've built foundational capabilities that grew with the team.
  • Knowledge of data governance, privacy and compliance requirements in data-driven products.

Personal Attributes:

  • Pragmatic builder: You balance speed with quality, making sensible trade-offs and avoiding over-engineering.
  • Ownership mentality: You take responsibility for systems in production, including being on-call and driving issues to resolution.
  • Collaborative mindset: You work effectively across teams, valuing diverse perspectives and building trust through delivery.
  • Curiosity and learning: You stay current with MLOps trends and aren't afraid to try new tools or approaches when they add value.
  • Domain Passion: You must love the challenge of using data & intelligence to drive ad campaign efficiency and demonstrate the value of the investment in the media.

Everyone is welcome at Global. Just like our media and entertainment platforms are for everyone, so are our workplaces. We know that we can’t possibly serve our diverse audiences without first nurturing and celebrating it in our people and that’s why we work hard to create an inclusive culture for everyone.

Senior ML Ops Engineer in London employer: Global Media Group

At Global, we pride ourselves on fostering a vibrant and inclusive work culture that empowers our employees to thrive. As a Senior MLOps Engineer, you'll have the unique opportunity to shape cutting-edge AI and ML systems in a collaborative environment, while enjoying comprehensive benefits and ample opportunities for professional growth. Our commitment to innovation and employee well-being makes Global an exceptional place to build a meaningful career in the heart of the media and entertainment industry.

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Contact Details:

Global Media Group Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Senior ML Ops Engineer in London

Tip Number 1

Network like a pro! Reach out to people in the industry, attend meetups, and connect with potential colleagues on LinkedIn. You never know who might have the inside scoop on job openings or can put in a good word for you.

Tip Number 2

Show off your skills! Create a portfolio or GitHub repository showcasing your MLOps projects. This gives you a chance to demonstrate your hands-on experience and problem-solving abilities, making you stand out from the crowd.

Tip Number 3

Prepare for interviews by practising common technical questions and scenarios related to MLOps. Think about how you would approach real-world problems and be ready to discuss your thought process and solutions.

Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team at Global.

We think you need these skills to ace Senior ML Ops Engineer in London

Python Programming
MLOps Experience
Cloud Platform Expertise (AWS)
ML Lifecycle Management
Model Monitoring and Observability
CI/CD for ML Pipelines
Infrastructure as Code (Terraform)

Some tips for your application 🫡

Tailor Your CV:Make sure your CV is tailored to the Senior MLOps Engineer role. Highlight your hands-on experience with ML systems, cloud platforms, and any relevant tools you've used. We want to see how your skills align with what we're looking for!

Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Share your passion for MLOps and how you can contribute to our Global:IQ team. Be sure to mention specific projects or experiences that showcase your expertise in operationalising ML models.

Showcase Your Collaboration Skills:Since this role involves working closely with Data Scientists and Engineers, make sure to highlight your collaborative experiences. We love seeing examples of how you've worked across teams to achieve common goals—it's all about teamwork!

Apply Through Our Website:Don't forget to apply through our website! It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you're keen on joining our awesome team at Global!

How to prepare for a job interview at Global Media Group

Know Your MLOps Inside Out

Make sure you brush up on your MLOps knowledge before the interview. Understand the entire ML lifecycle, from model development to deployment and monitoring. Be ready to discuss specific tools you've used, like AWS services or MLflow, and how they fit into your previous projects.

Showcase Your Problem-Solving Skills

Prepare to share examples of challenges you've faced in operationalising ML models. Think about times when you had to troubleshoot issues or improve processes. This will demonstrate your hands-on experience and ability to think critically under pressure.

Communicate Clearly with Non-Techies

Since you'll be working with cross-functional teams, practice explaining complex technical concepts in simple terms. Prepare a few examples where you successfully communicated with non-technical stakeholders, as this will highlight your collaborative mindset.

Be Ready to Discuss Industry Trends

Stay updated on the latest trends in MLOps and AI. Be prepared to discuss how these trends could impact Global's operations. Showing that you're not just knowledgeable but also passionate about the field will set you apart from other candidates.