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Quantitative Developer, Core Data- Global Prime Brokerage & Financing Platform

Oxford Knight
London
1 day ago
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Purpose of role

Exciting opportunity at one of the world's fastest growing financial services firms. They offer prime brokerage, clearing and financing across traditional and digital assets, and are now looking to hire a QD to help out with the non-risk work in quant/ds, i.e. entity master, pricing-service and position-service. This will allow the current team to have more time to spend on improvements to the platforms, rather than maintenance/onboardings.

Primary Accountabilities / Responsibilities

  • Improve the core functionality of the systems to ensure they are performant and accurate
  • Integrate new reference data source
  • Setup ETLs for ingesting and process data


Knowledge, Skills & Abilities

  • Ability to write production-grade (robust and maintainable) Python code
  • Strong problem-solving skills and attention to detail.
  • Excellent communication skills and ability to work collaboratively in a team environment.


Education & Experience

  • BS degree (or above) in Computer Science, Mathematics, or related fields
  • At least 5+ years of experience in quantitative software development at top-tier firm
  • Worked with data pipelines
  • Ideally worked with some streaming technology
  • Built large-scale systems



Whilst we carefully review all applications, to all jobs, due to the high volume of applications we receive it is not possible to respond to those who have not been successful.

Contact
If this sounds like you, or you'd like more information, please get in touch:

George Hutchinson-Binks

(+44)
linkedin.com/in/george-hutchinson-binks-a62a69252

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