Risk Data Governance- BCBS239

City of London
11 months ago
Applications closed

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I am working with a leading global investment bank on a Data Governance Lead for its EMEA Data Office.

The EMEA Data Office is committed to upholding the highest standards of data management, encompassing data quality, architecture, artificial intelligence, data sovereignty, and various other aspects of data governance. This commitment aims to empower decision-making processes and ensure compliance with both regional and global regulations.

As a Data Governance Lead, you will report directly to the EMEA Regional Data Officer and work closely with the Risk Management Group Data Office. Your primary responsibility will be to enhance and lead the Risk Data Aggregation and Risk Reporting governance capability across EMEA, with the potential for global expansion. Your contributions will have a direct impact on the decision-making process and data risk management capability worldwide, ensuring the bank maintains its position at the forefront of risk data management.

This role offers a unique opportunity for professional growth, allowing you to develop the position and provide leadership across a broader set of Data Governance objectives over time. The ideal candidate will have a good track record of driving a BCBS 239 programme in a global banking environment. Additionally, you should possess a good understanding of data risk assessment in a risk data aggregation and reporting context, along with effective control design and testing capabilities.

If you are interested and meet the above criteria, please apply or send your CV to (url removed)

In our company values we aim for equity at all stages of the recruitment process, please let us know if we can do anything to make the process more accessible to you

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