Associate Data Analyst - Finance Data, Hybrid (Glasgow)

Fitch Group, Inc., Fitch Ratings, Inc., Fitch Solutions Group
Glasgow
1 month ago
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A leading financial services firm is seeking an Associate Data Analyst in Glasgow to help build and maintain a central database. The role emphasizes collaboration with various teams to improve data management. The ideal candidate has a degree related to data science or finance and is proficient in SQL and Python. Join this dynamic team where you'll have opportunities for professional growth and make a significant impact on data operations in the financial markets.
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