Senior Business & Data Analyst - Payments Migration

J.P. MORGAN
Bournemouth
3 weeks ago
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A prominent banking and investment organization in Bournemouth is seeking a Business and Data Analyst Senior Associate. The role involves managing stakeholder communications, leading project management efforts, and utilizing data analysis for migration strategies. Candidates should possess exceptional skills in stakeholder management, project delivery, and time management with experience in tools like Alteryx and Tableau. This position offers a chance to make a meaningful impact within a strategic program at the forefront of banking innovation.
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