Databricks Data Engineer

Manchester
1 month ago
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Databricks Data Engineer - Manchester

Are you an experienced Data Engineer with a passion for building scalable data solutions? We're looking for a Databricks expert to join a leading organisation in Manchester and play a key role in transforming their data landscape.

What's on Offer?

Bonus: 12% annual bonus
Location: Manchester (on-site/hybrid)
Start Date: ASAP

What You'll Bring

5+ years of hands-on experience with Databricks
Strong background in Data Engineering
Insurance domain experience (essential)
Data Management expertise (preferred)
Ability to hit the ground running and deliver high-quality solutions

Additional Info

No visa sponsorship available
Interview process:3 stages Please send me a copy of your CV if you are interested

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