Posted 01 July, 2026
Senior Machine Learning Engineer
London, United Kingdom
Full Time
Accepting applications until:
31 July 2026
Job Description
Your New Role: Senior Machine Learning Engineer
Global's Data team is looking for a Senior Machine Learning Engineer to build, deploy and scale machine learning solutions-turning data science ideas into robust, production-grade products.
As a Senior Machine Learning Engineer at Global, you'll support use cases across DAX, our digital ad exchange-such as the cross-device audience identity graph and real-time targeting algorithms. You'll join a high-performing, cross-functional DAX squad of data engineers, product specialists and analytics experts, helping build and evolve our cutting-edge ad-serving technology for audio and Outdoor. This is a hybrid role based at our Holborn office in central London.
Key Responsibilities
What You'll Love About This Role
What Success Looks Like
In your first few months, you'll have:
What You'll Need
31 July 2026
Job Description
Your New Role: Senior Machine Learning Engineer
Global's Data team is looking for a Senior Machine Learning Engineer to build, deploy and scale machine learning solutions-turning data science ideas into robust, production-grade products.
As a Senior Machine Learning Engineer at Global, you'll support use cases across DAX, our digital ad exchange-such as the cross-device audience identity graph and real-time targeting algorithms. You'll join a high-performing, cross-functional DAX squad of data engineers, product specialists and analytics experts, helping build and evolve our cutting-edge ad-serving technology for audio and Outdoor. This is a hybrid role based at our Holborn office in central London.
Key Responsibilities
- Model Development & Optimisation: Design, build and optimise ML and deep-learning models-including for ad targeting and attribution-with a focus on scalability, performance and accuracy, and prototype and evaluate new approaches.
- ML Pipelines & Real-Time Inference: Build and maintain robust end-to-end ML pipelines covering training, validation, deployment and monitoring, and develop real-time inference systems with low latency and high throughput.
- Monitoring & Reliability: Implement model monitoring, drift detection, alerting and retraining, and optimise models for reliability and cost efficiency in AWS.
- Collaboration & Enablement: Partner with data engineers to integrate ML workflows into wider platforms (Spark, Databricks), and share best practice and mentor other technical professionals.
What You'll Love About This Role
- Think Big: Build ML and AI solutions that shape products, improve decision-making and unlock growth.
- Own It: Take ideas from concept to production and see the impact of your work in the real world.
- Keep it Simple: Turn complex technical challenges into scalable, practical solutions.
- Better Together: Work with smart, supportive people across data, engineering, analytics and the wider business.
What Success Looks Like
In your first few months, you'll have:
- Built ML products that deliver measurable value, improving Global's capabilities in areas such as ad targeting and attribution.
- Ensured ML models are reliably deployed, monitored and maintained, with automated, reproducible and scalable pipelines.
- Built real-time systems that operate efficiently and reliably under production demand.
- Developed a strong understanding of Global's data ecosystem, tools and operating model, particularly within DAX.
What You'll Need
- Production ML experience: You've delivered ML and deep-learning projects at high data volume commercially, owning deployment, CI/CD, monitoring and lifecycle management.
- Strong Python: Solid Python with PyTorch or similar ML frameworks.
- Model evaluation: You diagnose why models underperform across data, features and architecture, and make reasoned trade-offs.
- Real-time & distributed ML: A strong grasp of production inference patterns, plus Spark and distributed data processing.
- Reproducibility & tooling: Reproducible environments (UV/Docker) and MLflow or equivalent, on AWS with Spark, Databricks and Snowflake.
- Engineering mindset: A focus on reliability, maintainability and continuous improvement.

