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Quantitative Equity Researcher

SEI
City of London
4 weeks ago
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Quantitative Equity Researcher, Quantitative Investment Management, London

Quantitative Investment Management (QiM) team manages over 50 equity strategies across a variety of geographies, investment styles and risk profiles. The team is experiencing strong asset and account growth, requiring further investment into people, data and tools.


What you will do

  • Research (40%): Undertake research, validation, back‑testing and production of return and risk factors; document and communicate findings; keep current with relevant literature.
  • Infrastructure (40%): Maintain and actively contribute to the enhancement and design of the research and production infrastructure.
  • Communication (20%): Assist in creating and maintaining sales and service materials.

What we need from you

  • Minimum 3 years of experience in quantitative analysis.
  • Proficiency in Python.
  • Strong communication skills: able to argue a point concisely and deal with conflicting views.
  • Hands‑on attitude: willing to get involved with various projects across the group.

What we would like from you

  • Strong academic record with high mathematical, statistical and computing content.
  • Experience with equity factor models.
  • Ability to explain results and model features to non‑technical audiences.
  • Someone who embodies our SEI values of courage, integrity, collaboration, inclusion, connection and fun.

Benefits

We offer a wide range of benefits including comprehensive care for your physical and mental well‑being, a strong pension plan, tuition reimbursement, a hybrid working environment and a work‑life balance that enables you to relax, recharge and be there for the people you care about.


Equal Opportunity Employer

SEI is an Equal Opportunity Employer and so much more. After over 50 years, SEI remains a leading global provider of investment management, investment processing and investment operations solutions.


AI Acceptable Use in the Application and Interview Process

SEI acknowledges the growing integration of artificial intelligence (AI) tools into individuals’ personal and professional lives. If you intend to incorporate the use of any AI tools at any stage of the application and/or interview process, please review and adhere to our AI use guidelines.


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