Job Description
As ML Engineer you will be responsible for bridging the gap between data science experimentation and production-grade, scalable ML systems.
You will own the engineering excellence required to take validated models from data scientists and deploy them reliably across the organisation's fragmented platform estate. You will work across the full ML Operations lifecycle—designing deployment pipelines, implementing model serving infrastructure, establishing monitoring and governance frameworks, and automating retraining workflows. Your role is critical to standardising practices across platforms and ensuring models can be built, deployed, and maintained consistently regardless of underlying infrastructure differences.
You will collaborate closely with Data Scientists on model productionisation, AI Engineers on platform infrastructure requirements, and Analytics Engineering on data pipeline dependencies and reliability.
Key Roles & Res...