Senior Market Data Analyst

Neudata
London
1 month ago
Applications closed

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Job Description

Senior Market Data Analyst, Full Time, London.


Neudata is hiring a Senior Market Data Analyst – a new leadership role at the forefront of our growing focus on traditional data. This is an exciting opportunity for someone who wants to shape a key area of our business, build something from the ground up, and work directly with some of the world’s leading institutional investors.

To apply, please email your CV and cover letter to . Your cover letter should clearly explain why you believe you're a strong fit for this specific role. Applications without a cover letter will not be considered.


Company

Neudata’s mission is to make life easier for people who work with data. We provide independent, objective advice to asset managers, hedge funds, and corporations to help them make smarter decisions about which datasets to use – and which to avoid. That means saving them time and money in the process.

Our expertise is in alternative data – from social sentiment feeds to credit card transactions to ESG signals – but we’re now expanding into the world of traditional and market data, and this role is central to that growth.

We’re headquartered in London with offices in New York and Shanghai, and run a leading global conference business alongside our core research and advis...

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