Performance and Data Analyst SEND

Adecco
London
1 month ago
Applications closed

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Performance and Data Analyst (SEND)

Rate: £24.48 per hour (PAYE) / £32.62 per hour (Umbrella)Contract: 3 months+ (with strong potential to extend)Location: EalingDepartment: Strategy, Performance & IntelligenceDirectorate: Strategy & ChangeHours: Full-time - 35 hours per week

Are you passionate about improving outcomes for children and young people with Special Educational Needs and Disabilities (SEND)? Do you have proven experience working with SEND datasets, statutory submissions, and education performance information? If you thrive on using data to drive better services, this role offers a fantastic opportunity to make a real impact.

We are seeking an experienced Performance and Data Analyst with strong SEND expertise to join our Strategy, Performance & Intelligence team. You will play a vital role in delivering statutory SEND returns, supporting nearly 100 schools with data accuracy, and producing meaningful insights that shape strategic decisions across the council.

About the Role

As a key analytical specialist within the SEND function, you will be responsible for ensuring the accuracy, completeness and compliance of statutory SEND returns-including the SEN2-and for supporting the service in understa...

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