Data Engineer - Trading Systems - Quant Fund

JR United Kingdom
London
11 months ago
Applications closed

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Data Engineer - Trading Systems - Quant Fund, london

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Client:

Vertus Partners

Location:

london, United Kingdom

Job Category:

Other

-

EU work permit required:

Yes

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Job Views:

2

Posted:

02.05.2025

Expiry Date:

16.06.2025

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Job Description:

A leading Quant Fund are looking to build out their Systematic Trading platform, with a focus on the data platform used by Quants and Researchers for their data modelling.

You'll be specifically building out their Front Office Data framework, with a focus on building a high performance framework that can be used to support Systematic Trading.

Within this role, you'll be:

  • Taking requirements directly from Quants and Traders.
  • Utilising modern technologies to build a platform for modelling.
  • Building out Data Pipelines utilising Python and cloud-based tooling.
  • Optimizing the performance of the data lake.
  • Designing the underlying data infrastructure of the Trading environment.

They are looking for those who:

  • Have worked in a Quantitative Trading environment previously
  • Have a track record of working closely with Quant and Traders to deliver platforms
  • Have experience working with cloud infrastructure.

If interested, please apply through this advert.

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