Quantitative Researcher (Systematic Strategies)

Thurn Partners
Sheffield
3 days ago
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Company Insight:


This hedge fund is part of the top 1% of global systematic stat arb units, with assets under management exceeding $25 billion. The firm’s research and trading infrastructure is exceptional, which has been key to their continued success. Building on a strong track record, the firm is now in an exciting phase of growth. To build on this momentum, a new team is being formed to drive mission-critical alpha generation within their research function.


This role is pivotal in establishing this new research team, where you will have ownership over projects that span the entire research lifecycle. You will work closely with senior leadership, reporting directly to the global head of quantitative development. As part of a lean, high-performance team, you will manage stakeholders, set team direction, plan projects, and provide hands-on contributions to solving complex technical and quantitative challenges. The firm is seeking an individual who enjoys tackling these challenges while taking part in shaping the future of the firm’s growth and innovation.


Your Role:


  • Take ownership of cross-asset quantitative research, collaborating with trading teams across the firm.
  • Lead the development and management of mission-critical alpha generation strategies, driving innovation and growth.
  • Build and refine systematic strategies across various asset classes, ensuring full visibility into trading and research functions.
  • Manage end-to-end strategy lifecycles, from idea generation to backtesting, implementation, and portfolio construction.
  • Partner with senior leadership to shape and define team strategy, providing direction and oversight for the research roadmap.
  • Solve complex quantitative and technical problems in a fast-paced and evolving environment.
  • Drive the continuous improvement of the research infrastructure and tools, ensuring seamless integration with trading systems.


Experience Required / About You:


  • Experience in systematic quantitative research, ideally with a background in quantitative investment strategies (QIS) within a bank.
  • Comfortable working across multiple asset classes with a focus on alpha generation and quantitative research.
  • Strong background in research lifecycle management, including idea generation, backtesting, and implementation.
  • Experience with portfolio construction and strategy development.
  • Proficiency in relevant quantitative tools, techniques, and Python.
  • Mid-level experience within quantitative research or a similar role in a high-performance research or trading team.


Further Context:


  • The firm offers a unique opportunity for career growth, with a focus on hands-on work and high visibility within the firm.
  • Competitive salary and benefits package tailored to attract top-tier talent.
  • A dynamic and growth-oriented environment, with a flat structure offering significant room for professional development.


Pre-Application:


  • Please do not apply if you're looking for a contract or remote work.
  • You must be eligible to live and work in the UK, without requiring sponsorship.
  • Please ensure you meet the required experience section prior to applying.
  • Allow 1-5 working days for a response to any job enquiry.
  • Your application is subject to our privacy policy, found here:https://www.thurnpartners.com/privacy-policy

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