Investment Data Analyst - Hedge Fund - £65-100k base + bonus

Mondrian Alpha
London
11 months ago
Applications closed

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Job Description

A multi-billion dollar AUM hedge fund are looking to hire an investment data analyst in London.


Supporting the firm’s flagship European investment strategy, the hire will directly support the London investment desk (that you face off to) in identifying, sourcing and analysing investment data. The hire will take ownership for managing a selection of vendors, with a front-to-back coverage of the data management process + responsibility to improve the efficiency of the data activity.


There is a core project management component to the role, typically managing data engineers / technologists on delivery of varied initiatives, extending to building data quality processes / optimising the onboarding of data and data delivery which the hire would be more involved with hands-on (implementing new data quality frameworks, creating processes and policies to improve data resources and capabilities etc.).


Candidates should have 2-7yrs of experience in data management, more specifically verifying data quality + onboarding new data sets ideally. Candidates should work for a hedge fund, IB, data vendor or software consultancy. A sound understanding of financial markets / derivatives is expected, as are advanced tech skills.


The role has a £65-100k base salary range as there is flexibility around the experience level we hire at – either way, t...

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