Funds Tech Data Analytics Manager - Client-Facing, Hybrid

Grant Thornton
Belfast
1 month ago
Applications closed

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A leading consulting firm in Northern Ireland is seeking a Data Analyst specializing in Funds Technology. This role requires collaboration with clients and stakeholders to leverage data and optimize systems. Candidates should possess a degree in a quantitative field and have 2-5 years of relevant experience, particularly in financial services. Key skills include SQL, data analysis, and proficiency with tools like Power BI and Tableau. This is a full-time hybrid position with opportunities for growth.
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