Junior Quantitative Developer/Researcher - Up to £120k Base + Huge Bonus

Hunter Bond
London
1 month ago
Applications closed

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Overview

Junior Quantitative Developer/Researcher - Up to £120k Base + Huge Bonus

Direct message the job poster from Hunter Bond

My leading FinTech client are looking for a Junior Quant Developer with strong front office experience to join their existing team of passionate technologists to help drive forward the development of a variety of their front office platforms!

You will get the opportunity to join a team of like minded technologists and work on some of the most performant, scalable and reliable technology that the trading space has to offer!

Long term you will also get the opportunity to work directly on the development of various risk and trading strategies, facilitating the move into Quant Research long term.

Responsibilities / Qualifications
  • Strong experience in a similar role (Quant Development/SWE)
  • Strong experience working with Python
  • Front Office trading experience ideal - however open to non finance applicants
  • Strong educational background - STEM degree from a top institution
How to apply

Interviews taking place ASAP. Please don't hesitate to reach out direct.

Role details
  • Seniority level: Associate
  • Employment type: Contract
  • Job function: Finance, Information Technology, and Engineering
  • Industries: Investment Management, Investment Banking, and Financial Services


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