Business Intelligence Impact Lead

CHM-1
London
3 months ago
Applications closed

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Position: Business Intelligence Impact Lead
Hours: 
Full-time (35 hours a week)
Contract: Permanent
Location: Office-based in London N4, with flexibility to work remotely
Salary: Starting from £44,339 per annum plus excellent benefits *
Salary Band and Job Family: Band 3, Profession/Technical
*you’ll start at the entry point salary of £44,339 per annum, increasing to £47,110 after 6 months service and satisfactory performance and to £49,881 after a further 6 months.

About the Employer

This charity makes sure people living with MS are at the centre of everything they do. And it’s this commitment that unites them across the UK.

Their strategy is based on what people affected by MS have told the charity is important to them. It gives them a clear and determined focus. 

Their work is based on the hopes and aspirations of the MS community. Together they campaign at all levels, fund ground-breaking research and provide award winning support and information. 

This charity's people are their greatest asset and the key to their success. They offer a vibrant, progressive working environment where you'll be able to make a difference.

About this job

This year, this charity has embarked on a bold, strategic initiative to enhance their data capabilities.

Th...

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