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Quantitative Research – Prime Finance – VP

J.P. Morgan
City of London
1 week ago
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Overview

The Prime Finance Quantitative Research (QR) team in London develops and maintains advanced mathematical models, innovative methodologies, and robust infrastructure to support and grow the Prime Financial Services business. Our mission is to optimize decision-making, automate processes, and manage risk.


Prime Financial Services provides financing and securities lending to institutional investors, optimizes the bank’s inventory and balance sheet, and delivers strategic solutions to clients. The QR team partners closely with trading, technology, and risk teams to deliver impactful tools and analytics.


The team specializes in building models that leverage Machine Learning, Statistics, and Operations Research to solve complex business challenges. As a VP in QR Prime Finance, you will collaborate with senior stakeholders to design and implement those models and help drive business revenue, enhance risk management, and automate workflows. Typical projects include predicting changes in borrow rates or forecasting market demand, unraveling patterns and causality in the data, and optimizing pricing and inventory allocation to maximize our revenue and profits.


As Vice President in the team you will be involved in regular collaboration with the trading desk. In addition to strong technical expertise, excellent communication skills are essential for effectively engaging with stakeholders and translating complex quantitative concepts into actionable business solutions.


Experience in PrimeFinanceis preferred but not required. We provide on-job training, and through the diversity of the businesses it supports and the variety of functions that it is responsible for, the Quantitative Research group provides unique growth opportunities for you to develop your abilities and your career.



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