Data Engineer – Azure Databricks – Financial Services

Datatech Analytics
Hove
5 months ago
Applications closed

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Overview

Senior Data Engineer Azure Databricks - Financial Services Hybrid (UK)

Hybrid working (3 days in office, 2 WFH) - Office options: London, Hove, Harrogate, Sheffield, Newcastle

Salary 75 -95K Depending on experience (3 years Min)

We're working with a well established, forward thinking investment and financial services firm that's making significant investments in its data landscape. An independent British chartered financial advice and wealth management business, it has earned a strong reputation for outstanding service, with a track record of steady growth and success. They're building a whole new data function from the ground up, and this role puts you right at the heart of it.

As a Senior Data Engineer, you'll help to shape a scalable platform that underpins long term growth. Expect to get hands on with SQL, Azure Databricks, ETL processes, and data pipelines. There are no legacy data issues to contend with, just an open runway to have fun and build! This isn't just about code. Success here is about communication, collaboration, and helping to build a culture where data drives decisions.

If you have demonstrable experience with Databricks and enjoy sharing that knowledge, keep reading and apply.


Responsibilities

  • Help shape a scalable data platform to underpin long-term growth for a financial services firm.
  • Work hands-on with SQL, Azure Databricks, ETL processes, and data pipelines.
  • Collaborate cross-functionally to build a data-driven culture and drive decisions with data.
  • Contribute to building a new data function from the ground up and participate in shaping best practices and standards.

What’s in it for you?

  • Chance to shape a modern data engineering function from the ground up, working alongside a cutting edge tech consultancy.
  • Make an impact whilst learning.
  • Very competitive salary.
  • Hybrid working (3 days in office, 2 WFH) - Office options: London, Hove, Harrogate, Sheffield, Newcastle.

What are you waiting for?

…Apply now


Unfortunately no sponsorship is available for this role


How to apply

If you'd like to hear more (or know someone who would), drop me a line:



#DataEngineering #DataJobs #DatatechAnalytics #HybridWorking #SQL #Azure #Databricks


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