Quantitative Analyst

Stanford Black Limited
City of London
1 day ago
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E-Trading Quantitative Researcher - eRates


Overview

This team explores advanced quantitative approaches to electronic trading, with a focus on market-making and algorithmic strategy enhancement. Its goal is to leverage data-driven insights and sophisticated modelling to improve trading performance and uncover opportunities in complex markets.


Core Activities

  • Strategy Exploration: Develop and refine market-making and trading strategies, balancing pricing, liquidity, and execution in dynamic environments.
  • Algorithm Development: Improve existing models and implement innovative quantitative techniques to enhance efficiency, risk management, and overall performance.
  • Research & Signal Discovery: Analyse historical and real-time market data to identify patterns, new trading opportunities, and potential alpha signals.
  • Quantitative Analysis: Apply statistical methods, machine learning, and time-series analysis to generate actionable insights and support data-driven decision-making.
  • Collaboration: Work closely with other researchers, technologists, and trading professionals to translate findings into practical tools and strategies.
  • Innovation & Continuous Improvement: Explore novel approaches, methodologies, and technologies to maintain a competitive edge in quantitative trading.


Typical Background & Skills

  • Experience: Prior exposure to quantitative research or electronic trading, ideally including market microstructure and trading strategies.
  • Technical Proficiency: Strong coding skills in Python or Java; familiarity with KDB+ (Q) is advantageous. Experience with large-scale market data and statistical modelling is key.
  • Quantitative Expertise: Knowledge of statistical methods, machine learning, model calibration, optimisation, and risk management techniques.
  • Education: Advanced degrees (Master’s or PhD) in Mathematics, Statistics, Physics, Computer Science, Engineering, or related quantitative disciplines.
  • Collaboration & Communication: Ability to work effectively in a team, conveying complex insights clearly, and contributing to a research-driven environment.

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