Quantitative Developer – Systematic Hedge fund - £400k

Paragon Alpha - Hedge Fund Talent Business
London
1 month ago
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Overview

Quantitative Developer – Systematic Hedge Fund – £400k

Paragon Alpha are partnered with a top performing Quant Hedge Fund currently managing around $30b in AUM. They are looking to hire a Quant Developer to build mid-frequency trading infrastructure and a signal generation framework, working directly with senior PMs and researchers on complex projects.

Responsibilities
  • Contribute to the continuous buildout of the systematic trading environment.
  • Design and implement a signal generation framework used by senior PMs and researchers.
  • Interface directly with senior PMs and researchers on high-impact, complex projects.
Stack

Python, AWS, Ray, Airflow

Employment details
  • Employment type: Full-time
  • Seniority level: Mid-Senior level
Job function and industries
  • Job function: Finance, Analyst, and Engineering
  • Industries: Financial Services, Banking, and Investment Banking
Location

London, England, United Kingdom

Notes

The role operates on a flexible hybrid model and offers market-leading salaries for the right profile. This description reflects the job posting as originally presented.


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