C++ Senior Software Developer - London- Prop Trading Firm

Oxford Knight
London
1 year ago
Applications closed

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Summary

Join a sophisticated technology team in the London office of a prop trading house that places software development at the centre of business strategy. This team have the responsibility of a trading group and a core infra team.

This role is for a senior engineer who is able to take on problems at all levels of the software stack, including low-level code to drive network hardware, super reliable high-performance trading infrastructure and time-saving internal tools. You will be taking ownerships of projects and writing production code from day one.

Working collaboratively alongside the traders, this is very much a hands-on role with a real impact on improving people's daily work. The development team enjoys great flexibility when planning roadmaps and deciding which features to implement.

Requirements

  • BS in Computer Science or Computer Engineering (or equivalent experience)
  • Expert-level experience programming in C / C++11/17/20/23 and Python
  • Previous finance experience, or other significant hands-on development
  • Linux guru
  • Ability to juggle a lot of priorities and continuously deliver
  • Interest in finance / machine learning / big data and/or robotics are pluses


NB: Please do not apply if you are a fresh graduate.

Benefits

  • Vibrant, flexible and inspiring work environment with excellent rewards
  • They're willing to be flexible with WFH
  • Free food / gym onsite



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