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Quantitative Researcher- Leading Global Options Market Maker

Oxford Knight
London
2 days ago
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Reporting to: Global Head of Systematic Trading

About the role

Working closely with senior traders and quants on a daily basis, you'll be involved in:

  • Performing data analysis, research and creating various tools and dashboards to help traders make informed trading decisions.
  • Taking ownerships of existing trading signals and dashboards, making refinements through coding and SQL queries.
  • Managing independent analysis projects where you will be responsible for data ingestion, model formation and output presentation.


Requirements

  • Masters in Quantitative Economics/Mathematical Finance/Statistics or another quantitative discipline.
  • At least 2 years of experience working in trading firms or hedge funds in a quantitative capacity
  • Working knowledge of time series analysis, machine learning and other empirical methods
  • Understanding of options theory desired but not essential
  • Proven experience in working with large financial data sets
  • Excellent Python skills


What it's like to work there

Welcoming, inclusive and collaborative. Working fast and smart in a supportive and dress-down environment allows colleagues to be themselves and achieve great things. Upholding the principles of a flat structure offers unrivalled engagement with senior leadership and career development opportunities. A comprehensive benefits package is on offer, including:

  • Flexible leave and hybrid working policies
  • Private health and dental insurance
  • Generous pension scheme
  • Free access to the company gym
  • Employee wellbeing guidance and support
  • Opportunity to become involved in the rewarding work of the firm's charity foundation


About the Company

A leading options market maker with a global trading footprint, it has been at the forefront of options market making since 1999; from the open outcry trading pits to screen trading and automated algorithmic execution strategies that are driving the future of the industry.

From offices in London, Dublin, Amsterdam, Singapore, Sydney, Brisbane and Chengdu, they offer the best-in-class liquidity solutions across Equities, Fixed Income, Commodities and FX derivatives markets and the firm prides itself on its entrepreneurial, collaborative and philanthropic culture.

Whilst we carefully review all applications, to all jobs, due to the high volume of applications we receive it is not possible to respond to those who have not been successful.

Contact
If this sounds like you, or you'd like more information, please get in touch:

George Hutchinson-Binks

(+44)
linkedin.com/in/george-hutchinson-binks-a62a69252

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