Data Analytics Governance Analyst Banking

City of London
8 months ago
Applications closed

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This is a new and exclusive opportunity for a Data Analytics Governance Analyst to join my thriving banking client as they expand their award-winning data analytics team.

You will bring your passion for data and governance and focus on key data BCBS239 standards Key Data Outputs (KDOs), End User Computing (EUC)) Reporting Governance, and Collibra to truly own the data assessment, and own the data catalogue

Role details

Job title- Data Analytics Governance Analyst
Permanent salary £70-85,000
Industry- Investment Banking
Location- London city and home working hybrid 2 /3 days a week working hybrid
Experience essential- key data BCBS239 standards, Key Data Outputs (KDOs), End User Computing (EUC)) Reporting Governance, and Collibra

We do also have a data governance manager role live within the same team, so please do send through your CV if this if of interest as well

As the Data Analytics Governance Analyst, you will have a key voice to ensure that Key Data Outputs (KDOs) (including all of our important metrics, reports, dashboards and models) can be catalogued and comply with legal requirements, regulatory standards and best practices.

This is a very technically hands on role to control the assessments and the catalogues, which will include Collibra, Alteryx, Power Query, Power Automate, Power BI, Power Apps and Tableau

This is a really interesting role within a thriving, award-winning team so will bring superb career opportunities

Knowledge, Skills, Experience and Qualifications

Experience related to Analytics Governance or EUC Reporting Governance, for other organisations.
Experience working with governance frameworks supporting BCBS239 principles. Experience of European Central Bank (ECB) onboarding would be a plus.
Experience in using and configuring cataloguing tools, such as Collibra.

So, if you like a challenge and want to continuously grow and develop in a role where you will be supported along the way by a dynamic and diverse team, apply today!!

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

.

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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