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▷ Only 24h Left! Business Intelligence Lead...

The Bridge (IT Recruitment) Limited
Harrogate
1 day ago
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Job Description

Business Intelligence Lead

Currently looking for a skilled and proactive Business Intelligence Lead to take ownership of a business wide data transformation. You will engage with a stakeholders across the organisation to understand the current landscape before creating and delivering a strategy that migrates current legacy systems to a new data warehouse-driven approach. Ultimately, making data a ...

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