Lead Data Scientist

Competition and Markets Authority Careers
London
3 months ago
Applications closed

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Lead Data Scientist


Reference number: 434988

Salary: £61,575 - £69,238

Hours: Full time, part time, flexible working

Contract: Permanent

Location: Belfast, Cardiff, Edinburgh, London, Manchester

If you are an experienced Data Scientist with strong technical skills, then this is an exciting opportunity to play a key role in the delivery of data science projects at the Competition and Markets Authority (CMA).

About the CMA

We help people, businesses, and the UK economy by promoting competitive markets and tackling unfair behaviour. Our work is wide ranging, ambitious and often new and challenging.

The Data, Technology and Insight Unit (DTI Directorate) encompasses Strategic Insight, Analysis & AI and Technology & Digital. The Directorate provides the CMA with specialist skills and capability to keep pace with fast-moving digital markets, rapidly developing business models and the growing use of data and algorithms.

We ensure everyone in the CMA has access to the tools they require to effectively do their jobs and are leading our digital transformation programme to increase the organisations efficiency, effectiveness and capabilities including using AI. The Directorate is key to ensuring that the CMA can better access and analyse data (including large-scale or novel data with advanced tools & techniques) and understand firms' increasingly sophisticated use of AI and other emerging...

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