Quantitative Developer (HFT - New Desk - Not Tower) (London)

Fionics
City of London
5 months ago
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Quantitative Developer (New HFT Desk)

Location: London

Company Overview: Tier 1 HFT (not Tower) running a high upside pod model for new desks.

Job Summary: Join a 1-4 person team as the Quant Dev to get new HFT strategies off the ground and frankly do whatever is necessary to make the team successful. You will wear multiple hats. It will not be perfect. You will learn a TON, and there's a lot of financial upside for you.

Responsibilities:

  • Get new HFT team live and profitable
  • You're THE Quant Dev - do whatever needs to get done to be successful

Qualifications:

  • Proven experience in quantitative/developer role or internships
  • Strong programming skills - Python, and ideally C++
  • Understand how to hack your way through multi-faceted problems quickly
  • Courageous in the face of challenges, and ready for constant innovation

What We Offer:

  • Mentorship from industry veterans with billions in Pnl under their belt
  • High upside opportunity - if your team succeeds, you will earn significantly more than a typical tier 1 Quant Dev role
  • Opportunity to build HFT team from scratch
  • Collaborative culture

Get in touch if you're looking for a challenge!


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