Senior Data Analyst

Greater London Authority
London
3 days ago
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Communities & Skills

Collaborative, open, inclusive and fair - we work with and through partners to ensure Londoners can shape healthy, empowered and productive lives. Communities and Skills is led by Executive Director, Tunde Olayinka and is comprised of the following units: Civil Society & Sport, Communities & Social Policy, Group Public Health Unit, Skills & Employment and Health, Children & Young Londoners.


About the team

The Skills & Employment Unit is responsible for overseeing adult skills delivery in London following delegation of the Adult Skills Fund from the DfE to the Greater London Authority in 2019 and the introduction of Skills Bootcamps in 2022.

The Skills & Employment Units Funding Policy & Systems Team is responsible for data collection and processing related to Londons adult education and skills programmes and produces a range of data products to support delivery of the Mayors priorities in this area.


About the role


Sitting in the wider Funding Policy & Systems Team, the role will lead and support a small team of data analysts to deliver software and data systems to manage our adult skills programmes.


Working mainly in PostgreSQL and P...

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