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Data Governance Lead Analyst

Citigroup Inc.
Belfast
1 month ago
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Overview

Discover your future at Citi

Working at Citi is more than a job. A career with us means joining a team of more than 230,000 dedicated people from around the globe. At Citi, you’ll have the opportunity to grow your career, give back to your community and make a real impact.

Job Overview

Engineer the future of global finance. At Citi, our Tech team helps redefine finance on a global scale. Every day, $5 trillion crosses our network across 180+ countries. We deploy advanced AI, shape global markets, and build systems that matter. Join a team where your work influences economies, drives innovation, and your growth is supported by mentorship, continuous learning and flexible, potential hybrid work opportunities. Help solve real-world challenges that touch millions and build the future of finance with Citi Tech.

The Data Governance Lead Analyst contributes to the directional strategy and assists in creating and modifying the Enterprise Data Governance Strategy, Data Risk and Control Framework, and Data Risk Taxonomy. The role may focus on identification, measurement and reporting, data policy adoption and compliance, data controls framework performance and issue management, and regulatory/audit response and action tracking.

This role requires someone who is dynamic, flexible, can respond to changing needs, handle ambiguity and complexity, and deliver on multiple responsibilities. Developed communication and diplomacy skills are required to guide, influence and convince others.


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