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Quantitative Researcher – Equity Strategies (Mid to High Frequency)

Eka Finance
London
1 week ago
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This is a hands-on, research-driven role suited to someone who’s both technically strong and intellectually curious, with a passion for solving intricate problems in dynamic market environments.

About You

  • You have at least two years of experience in a quantitative research or trading role
  • Your background includes an advanced degree (Master’s or PhD) in a quantitative field like mathematics, physics, computer science, or statistics
  • You write clean, efficient Python code and have practical experience with data science and machine learning libraries
  • You approach problems with precision, patience, and a strong analytical mindset

Bonus Points For

  • Familiarity with high-frequency or market-making strategies
  • Experience working with vast, noisy datasets and extracting meaningful insights
  • Knowledge of C++ or other performant, low-level programming languages

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