Global Head of Data Engineering - £250k tc (Basé à London)

Jobleads
Greater London, England
10 months ago
Applications closed

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Job Description

ThisPrivate Marketscompany has just experienced a significant influx of investment. As a result, they are looking for someone to lead their data engineering team and elevate their data platform to the next level.

You will accomplish this by establishing a new, but not entirely greenfieldDatabricksenvironment. It is crucial that your resume demonstrates a strong history of expertise inDatabricks.

The firm aims to develop a platform that not only reflects their current success but also plays a key role in future projects.

You should be a leader—someone who can effectively communicate with C-level executives and present clear strategies aroundDatabricks proposals.

Does this sound like you? If so, please get in touch.

The salary is up to£250,000 total compensation, though it is negotiable for the right candidate.


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