Hybrid Power BI Data Analyst - Family Care Insights

Guardian Jobs
Bristol
1 week ago
Create job alert

A non-profit organization seeks a Data Analyst to enhance their data capabilities for supporting children and families. This hybrid role requires expertise in Power BI to develop dashboards and reports that inform decision-making. Candidates should have strong analytical skills, experience with data quality assurance, and effective communication abilities. The organization offers 33 days holiday, enhanced sick pay, and a supportive work environment. Apply now to help grow their data capabilities.
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