Quantitative Analyst

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

Quantitative Analyst

We are partnered with a market-leading, globally renowned investment firm seeking to hire a Desk Quant Analyst. The firm designs and builds its own proprietary systems to deliver strong, consistent returns for its clients. With deep expertise in trading operations, collaboration is embedded into its global culture, enabling technology, research, and operations teams to work seamlessly across regions. Driven by a commitment to high-quality performance, the firm leads the industry in technology- and data-driven quantitative strategies across global financial markets.

Key responsibilities as a Quantitative 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 Quantitative Analyst

  • Bachelors degree in engineering, computer science or another technical related subject.
  • programming proficiency with at least o...

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