Artificial Intelligence Specialist

MBN Solutions
Swindon
2 months ago
Applications closed

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Job Description

Group AI & Business Intelligence Lead


Location: Swindon

Salary: Up to £75,000 + Benefits


A rapidly expanding, £170m+ international group operating across multiple countries is looking for a Group AI & Business Intelligence Lead. This newly shaped role sits at the heart of the organisation’s digital and analytics strategy and will take ownership of AI, machine learning and business intelligence capabilities across all business units.


Reporting to the Group Finance Director, you will be the go-to expert for AI/ML, data engineering and BI — setting the strategic direction, delivering high-impact projects, and embedding advanced analytics into everyday decision-making.


The Opportunity

This is a rare chance to build and run an enterprise-wide AI & BI function within a growing group environment. You will lead the roadmap, create measurable commercial value and champion adoption of cutting-edge technologies across diverse operational, commercial, and financial teams.

Your success will be measured through improvements in forecasting accuracy, ROI on AI/BI programmes, reduction in manual reporting processes, and enhanced customer service performance.


What You’ll Lead & Deliver

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