Junior Quantitative Trader

AAA Global
London
1 day ago
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Quantitative Trader – Equities & ETFs



Location: London / Dubai / New York / Hong Kong

A global proprietary trading firm is expanding its Equities and ETF trading platform across multiple regions. The firm operates an established international business with offices in London, Dubai, New York, and Hong Kong.


This opportunity sits within a growing equities and ETF trading team, focused on mathematically driven trading strategies.



Responsibilities

  • Develop and refine quantitative trading strategies in Equities and ETFs
  • Apply mathematical and statistical methods to real-time trading problems
  • Collaborate with traders and researchers to improve models and execution
  • Contribute to idea generation and strategy optimisation



Requirements

  • Bachelor’s or Master’s degree in Mathematics, Statistics, Physics, or a related quantitative discipline
  • Strong analytical and problem-solving skills
  • Demonstrated strength in mathematical thinking
  • 0–2 years of experience (exceptional fresh graduates considered)
  • Prior experience in equities or ETF trading within a proprietary trading firm is preferred



The team operates in a highly collaborative environment and values individuals who enjoy structured problem-solving and strategic challenges.

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