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Senior Quantitative Researcher - Options Market Making

Maven Securities Ltd
London
1 week ago
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Role Overview

As a Senior Quantitative Researcher, you will lead projects that have a direct impact on our trading performance. You will work collaboratively with other researchers and traders from various scientific fields and prestigious academic institutions, to develop innovative real-time trading models and solutions for low latency trading systems for exchange-traded options. You will share your knowledge and expertise with other researchers to tackle various challenging projects including but not limited to option pricing and volatility models, algorithm design and alpha research.


Responsibilities & Qualifications

  • Academic degree in applied mathematics, computer science, statistics engineering or physics. PhD or any other track record in conducting independent research.
  • Minimum 3+ years of experience in the financial industry, particularly electronic options trading.
  • Ability to research advanced algorithms, develop predictive models and verify complex hypotheses using large datasets.
  • Proactive interest in improving existing trading strategies and identifying new opportunities.
  • A collaborative bridge between developers, and traders who aligns technical work with commercial impact and the broader strategic vision, and a real team player with other quants in the team.
    The Options Market Making team at Maven Securities operates under a strict direct sourcing model. We are committed to managing all recruitment activities internally to ensure a consistent and transparent candidate experience. As such, we do not accept unsolicited CVs or introductions from recruitment agencies. If you're interested in this opportunity, please apply directly.
    Rare opportunity to take a high level of responsibility at a fast-growing global trading firm
  • Opportunity to be highly involved in the decisions that shape our trading.
  • Flexible research environment to iterate on your ideas quickly and see the impact of your work in production.
  • Leadership opportunities as the team grow.
  • Great engineering environment where technology, creativity and innovation is key to our success.
  • An environment where you're empowered and supported to achieve your ambitions.
  • Friendly, informal and highly rewarding culture.
  • The upside of a start-up without the associated risks.

What We Can Offer You

  • Competitive compensation.
  • Annual discretionary bonus.
  • Fully catered breakfast and lunch.
  • 25 days' annual leave.
  • Informal dress code.
  • Private healthcare and life assurance.
  • Group Pension plan.


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