Business Intelligence Developer

Understanding Recruitment NFP
London
5 months ago
Applications closed

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Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

Overview

Business Intelligence Developer (12-Month FTC) – Insight-Led Charity Work. Understanding Recruitment is proud to partner with a UK charity to recruit a Business Intelligence Developer on a 12-month fixed-term contract. This is a purpose-driven role during a period of transformation, focused on delivering meaningful performance reporting and data-driven insights.

Responsibilities
  • Lead the development and delivery of performance reporting across internal teams and the wider sector using Power BI and Microsoft tools.
  • Collaborate across departments to shape how the organisation makes decisions with data and help improve operational processes and national insight.
Key Skills & Qualifications
  • Strong experience using Power BI and Microsoft SQL to develop and deliver insight.
  • Confident with internal stakeholders to translate needs into data solutions.
  • Skilled in data visualization, reporting, and performance frameworks.
  • Comfortable working independently and guiding non-technical users.
Details
  • Salary: £45,000 per annum
  • Location: Remote, with 1–2 days per month in a London office
  • Start Date: ASAP
  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Information Technology
  • Industry: Non-profit Organizations

If you’re passionate about making data meaningful and want to work where your work has real impact, this could be the perfect next step.


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