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Quantitative Trader/Researcher Graduate Programme 2026

Tower Research Capital
London
4 weeks ago
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Overview

Quantitative Trader/Researcher Graduate Programme 2026 at Tower Research Capital. Six-month graduate programme for aspiring Quantitative Traders/Researchers graduating in 2026.

Responsibilities
  • Designing, implementing, and deploying high or mid-frequency trading algorithms
  • Working with a dedicated mentor to research and enhance existing trading strategies
  • Exploring trading ideas by analyzing market data
  • Creating tools to analyze data for patterns
  • Contributing to libraries of analytical computations to support market data analysis and trading
Qualifications
  • A Master’s and/or PhD in mathematics, statistics, physics, electrical engineering, computer science, data science, financial engineering, or related fields
  • A strong background in Python, C++
  • Strong problem-solving abilities
  • A passion for new technologies and ideas
  • The ability to manage multiple tasks in a fast-paced environment
  • Strong communication skills
Benefits

Tower’s headquarters are in NYC with a global presence. Benefits include generous paid time off, savings plans and other financial wellness tools, hybrid working opportunities, free meals, wellness reimbursements, company-sponsored sports teams and fitness events, volunteer opportunities, social events, and continuous learning opportunities.

Equal Opportunity

Tower Research Capital is an equal opportunity employer.


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