Quantitative Developer - Hybrid Working - £70,000 - £275,000 Base (+ Bonus)

Hunter Bond
Greater London
2 months ago
Applications closed

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Quantitative Developer

Quantitative developer

Quantitative Developer

Quantitative Developer

Quantitative Developer

Quantitative Developer

Job Description

Job title: Quantitative Developer (C++ or Python)

Client: Elite Algorithmic Market Making Firm (HFT)

Salary: £70,000 - £275,000 Base (+ Bonus)

Location: London (Hybrid)


The role:

My client are seeking a talented Quantitative Developer to help build their next generation performance trading platform. The existing team consists of some of the brightest minds hailing from a range of backgrounds (Big tech, Start-ups etc), all striving to build the next generation of performance technology.


As a Quantitative Developer, you will work across a range of projects, within which you will get end to input on design and development as well as a real say in the direction that the team moves. This is an extremely tech focused organisation who are looking for the next wave of tech driven, entrepreneurial personalities to help expand the team.


Responsibilities:

  • Develop and Maintain Research Platforms, building Python-based tools and libraries for backtesting strategies, analyzing data, and simulating trading logic to support quant researchers.
  • Implement Quantitative Models and Signals, translating trading ideas or academic models into production-ready Python code, ensuring reproducibility, performance, and alignment with real-world trading constraints.
  • Automate Data Pipelines, designing an...

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