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Data Engineer - Azure, Power Bi

Hays
London
3 days ago
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Data Engineer - Azure, ADF, Power BI, Data Pipelines, Fabric Up to £550 per day (Inside IR35 - Umbrella)
London / Hybrid (Must be UK Based, 1-2 days per week onsite may be required)

I am currently working with a leading consultancy who are looking for a Data Engineer with strong Azure, ADF, Power BI, Data Pipelines and ideally Fabric experience, to work closely with a high profile end customer.
Proven experience as Data Engineer within a large Enterprise Scale organisation
Demonstrable experience using Azure related tooling such as Azure Data Factory (ADF), Power BI
Excellent understanding and command of Data Pipelines
Flexible approach towards hybrid working when required

Exposure to Microsoft Fabric
Experience in large Data Migration projects (ETL)
Immediate availability
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