Quantitative Trader

AAA Global
London
1 month ago
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Analyst - Quant Fund Management at AAA Global
Overview

We are seeking an experienced Quantitative Trader to join a fast-growing, high-performing trading team based in London. This role is ideal for someone with a strong background in systematic trading and a passion for applying advanced mathematics, programming, and research in live markets.


You'll be part of a collaborative and driven team that builds and executes systematic trading strategies across global markets. The ideal candidate is entrepreneurial, detail-oriented, and thrives in a fast-paced environment.


Responsibilities


  • Conduct quantitative research to refine current strategies and develop innovative trading approaches.
  • Optimize research workflows and automation systems to speed up strategy implementation.
  • Automate and streamline trading operations to enhance scalability and efficiency.
  • Oversee daily trading activity across the EMEA and US markets to ensure smooth execution.
  • Support US market coverage as part of a shared trading shift rotation with the team


Requirements


  • 3+ years of experience in a proprietary trading or investment firm.
  • Bonus: Experience with dual-listed securities, ADRs/GDRs, US ETFs or US equities.
  • Strong programming skills in Python and VBA.
  • Experience in small, agile teams with strong collaboration skills.


Location: London, United Kingdom


Experience Required: 3+ Years


Seniority level

Mid-Senior level


Employment type

Full-time


Job function

Other


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