Power BI Analytics Lead - Dashboards & Data Modeling

myGwork - LGBTQ+ Business Community
London
1 day ago
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A forward-thinking company in the UK is seeking an experienced BI/Analytics professional to design and maintain Power BI dashboards. The ideal candidate will have 4-7 years of relevant experience with expertise in DAX and SQL, engaging with business teams to deliver actionable insights. The company promotes an inclusive culture, valuing diversity and offering flexible work options. Join us to contribute to a collaborative environment where everyone can thrive and grow.
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