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Data Engineer/Databricks

London
7 months ago
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Data Engineer/Databricks expert needed by global client, this will be a long term contract role for the right person. My client has major Data Projects planned for 20025/26 and need an experienced Data Engineer with at ;least 5 years hands on experience with DataBricks within Azure. You must be a a strong team player and also be able to work well on your own. There will be occasional needs for you to be in the office in London

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