Azure BI Analyst - Kimball DW & Data Modeling (Remote)

Freshminds Interim
Darlington
1 day ago
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A boutique analytics consultancy is seeking a Business Analyst to aid in the data journey of a large organisation. This role involves collaboration with cross-functional teams to create business intelligence solutions using Microsoft Azure and Fabric. Candidates should have 3-5 years of experience in business analysis, with expertise in data warehousing methods like Kimball and proficiency in SQL. The position is primarily remote with occasional meetings in London, and offers a daily rate between £180 and £200, depending on experience.
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