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Quantitative Researcher

Bowden Brown
City of London
2 weeks ago
Applications closed

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Job Description

Quantitative Researcher - London


We're working with a quantitative hedge fund that is looking to hire quantitative researchers in their growing London office.


You would be an early member of the group, working under the direction of the team lead who has recently joined the firm. He has impressive credentials, and this is a fantastic opportunity to be doing impactful work in a collaborative environment. The team is going to be doing innovative signal research and looking at ensuring optimal execution, with a particular focus on short term/HFT horizons.


The team is looking for quant researchers that can show they have made contributions at other leading hedge funds and trading companies. Experience in HFT would be an advantage, but they will consider people that have been working on longer term systematic strategies too.


This is a great time to be getting onboard with this business, the London office is still pretty small, so the chance to make real impact is high, and the opportunity for career progression as the team expands is clear.


The Role

Quantitative Researchers will:

  • Design, test, and refine proprietary trading models and predictive algorithms
  • Leverage large, complex datasets to create and improve predictive models
  • Develop and apply advanced...

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