Desk Quantitative Analyst

Anson Mccade
City of London
4 days ago
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Desk Quantitative Analyst
£66,000 - 75,000 GBP
Onsite WORKING
Location: Central London, Greater London - United Kingdom Type: Permanent

We are partnered with a market leading, world renown investment firm looking to hire talent as a desk quant analyst. This is a global company which create and develop their own systems to produce high returns for their clients. They have extensive knowledge in trading operations with collaboration deeply embedded in their global culture, with technology, research, and operations teams working seamlessly across continents . As a firm who emphasises high quality returns for their clients, they lead the way in technological and data led decisions through quantitative strategies among financial markets around the world.

Key responsibilities as a Desk Quant Analyst

  • Handling and improving the codebase of strategies within our clients trading network.
  • Handle large data sets used in the production and research environments.
  • Conduct monitoring tasks on trading activities.
  • Work in collaboration with quant researchers and traders to manage the changing needs of the trading desks.

Qualifications needed for a Desk Quant Analyst

  • Bachelors degree in engineering, computer science or another technical related subject.
  • progra...

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