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Quantitative Research - London - 2026 ReEntry Program

J.P. Morgan
City of London
5 days ago
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At JPMorgan Chase, we recognize that rewarding careers do not always follow a conventional path. We value the diversity, fresh perspective and wealth of experience that returning professionals can bring.

The ReEntry program offers experienced professionals who are currently on an extended career break of at least two years the support and resources needed to relaunch their careers. The program spans over 30 locations worldwide.

The ReEntry Program is a 15-week fellowship program, beginning April 22, 2025 and ending July 31, 2025, with the prospect of an offer for permanent employment with JPMorgan Chase at the end of the program. Permanent placements will be based on both business needs and candidate skill set.

Please refer to the ReEntry Overview page for further information regarding the Program.

Quantitative Research

Quantitative Research (QR) is an expert quantitative modelling group in J.P. Morgan, as well as a leader in financial engineering, data analytics, statistical modelling and portfolio management. As a global team, QR partners with traders, marketers and risk managers across all products and regions, contributes to sales and client interaction, product innovation, valuation and risk management, inventory and portfolio optimization, electronic trading and market making, and appropriate financial risk controls.

Who We Look For:
  • You have deep understanding of advanced mathematics used in financial modelling including probability theory, stochastic calculus, partial differential equations, numerical analysis, optimization, statistics and modern machine learning methods.
  • You are proficient in code design and programming skills, with primary focus on Python and C++.
  • You demonstrate strong quantitative and problem‑solving skills as well as research skills.
  • You have strong interpersonal skills including excellent verbal and written communication and ability to work in a multi‑location set‑up.
  • You quickly grasp business concepts outside immediate area of expertise and adapt to rapidly changing business needs.
  • You think strategically and creatively when faced with problems and opportunities. You always look for new ways of doing things.

Eligibility to work in the UK is required.

We will consider candidates who have been involved in entrepreneurial, non‑for‑profit, part‑time or consultancy efforts while on their career break.


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