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Quantitative Data Engineer - £550k tc

Saragossa
City of London
2 weeks ago
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Do you come from either a Comp Sci or mathematical/algorithmic background, but feel like you haven't fully utilised that in your current data engineer role?


If so, this is probably for you.


This unique and culture drive hedge fund are looking for quantitative data engineers to join their world class data engineering team that sits right next to the best algorithmic traders in the world.


Some of the problems and data sets you'll work with will be incredibly complex, which is why the team is known for being wolrd class and heavily engineering focussed.


You'll also be given the opportunity to use quantitative techniques to dig deep into these data sets, and contribute to this research platform by building ETLs and coding your way towards a solution.


So, who do you need to be?


You're either:

  • A Data Engineer within the Hedge Fund/ Trading space
  • Coming from an outstanding educational background, and work with complex data sets


If this is you - get in touch.


Tech stack is open, and no up-to-date CV required.

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