Senior Investment Data Analyst - Highly Prestigious Hedge Fund - London

Mondrian Alpha
London
1 day ago
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My client, a market-leading, multi-billion dollar AUM hedge fund, are looking to hire an experienced Data Specialist to join their London office.


The successful individual will join a highly regarded Data team responsible for the origination, governance and lifecycle management of the firm’s diverse data estate. This person will act as a subject-matter expert across vendor data, working directly with the trading desk, investment quants and technology teams to transform complex, raw data into actionable insight that drives alpha generation.


The role centres on deeply understanding and curating raw datasets from a broad range of external vendors, interrogating data endpoints using Python and SQL, and translating opaque, vendor-delivered content into robust, scalable solutions for front office users.


The ideal candidate will have circa 10 - 15 years’ experience within a buy-side or data vendor environment, with demonstrable asset class knowledge – ideally across macro and/or multi-asset strategies.


My client are committed to offering highly competitive base salaries alongside market-leading bonuses. In addition, employees benefit from exceptional private healthcare, comprehensive wellness support including on-site gym facilities, and nutritionist-designed breakfast and lunch provided daily.


Apply now following the link below or send your resume directly to .

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