Senior Market Data Analyst - Vendor & Cost Optimisation

Mason Blake
London
5 days ago
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Join a prestigious investment management house as a Senior Market Data Analyst! In this pivotal role, you'll manage vendor relationships, optimize costs, ensure compliance with regulatory standards, and maintain the integrity of the company's data environment. This is a fantastic opportunity to leverage your expertise in a dynamic team at a top-tier firm. If you're passionate about market data and eager to make a significant impact, this role is perfect for you. Apply now and take the next step in your career with an esteemed industry leader!
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