Data Analytics Governance Manager

CV-Library
London
12 months ago
Applications closed

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Data Analytics Governance Manager Banking London

We have a new and exclusive opportunity for a Data Analytics Governance Manager to join this thriving bank as they grow their EMEA Data office. As the Data Analytics Governance Manager, you will have a key role in the Data Analytics Team, within the Data Office, creating and establishing an Analytics Governance Framework which is new to the business. You will also have a lead role in ensuring Key Dara Outputs (KDOs are within the regulatory standards and best data practice

Role details

Title- Analytics Governance Manager
Employer: investment bank
Location: London City and home working hybrid 2 or 3 days
Permanent role, salary £80,000- £105,000 dependent upon experience
Focus of role: BCBS239, KDOs, framework
Requirements: experience of setting up an analytics governance framework, KDO Key data outputs

Day to day Accountabilities & Responsibilities

provide leadership and guidance for creating and establishing an Analytics Governance Framework across the EMEA Analytics Community
ensure that Key Data Outputs (KDOs) (including all of our important metrics, reports, dashboards and models) comply with legal requirements, regulatory standards and best practices.
to educate and convince stakeholders at all levels on the essential nature of this role.
To champion and be the expert on analytics governance standards with the ability to articulate "what good looks like" in establishing capability.
Provide training, mentoring and coaching of others in establishing and adhering to the Analytics Governance principles set out by the Framework.

This is a rare role, as there are not many banks who are still in the initial exciting phases of creating something new. So, you will have a genuinely interesting role with a real opportunity to make your impact, within the security and career developing banking environment.

Knowledge, Skills, Experience and Qualifications

Experience establishing analytics capability, and in particular establishing Analytics Governance or End User Computer (EUC)) Governance, for other organisations.
Experience establishing governance frameworks supporting BCBS239 principles. Experience of European Central Bank (ECB) onboarding would be a plus.
Experience of working in the financial services industry and knowledge of data related regulatory.

For more information, and the chance to be considered, please do send a CV through

Many thanks

To find out more about Huxley, please visit

Huxley, a trading division of SThree Partnership LLP is acting as an Employment Business in relation to this vacancy | Registered office | 8 Bishopsgate, London, EC2N 4BQ, United Kingdom | Partnership Number | OC(phone number removed) England and Wales

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