Party Data Governance Analyst Bank

City of London
3 months ago
Applications closed

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Party Data Governance Analyst Banking London

New opportunity

Job title: Party Data Governance Analyst
Employer: Investment Banking
Location: London hybrid working 50/50
Permanent salary £50,000- £75,000
Focus of the role: Support the implementation of the data governance strategy and policy
Technical stack: Power BI, Tableau and SharePoint, Collibra, Informatica, SQL, Python, R and Data Engineering
Requirements: understanding of party data & other domain data sets such as Human Resources, ESG/Sustainability, General Affairs & Public Relations.

This is a new and exclusive opportunity for a Party Data Governance Analyst to join this thriving investment Bank as they are expanding their data team due to growth and investment for 2026

The Party Data Governance Analyst is a very important role as part of the Division's Data Governance and BCBS239 Programme. The ideal candidate must have knowledge of party/customer-related data management, including the implementation and support of related data policies, standards, procedures & processes. The analyst will also have the opportunity to work on other domain data sets such as Human Resources, ESG/Sustainability, General Affairs & Public Relations.

Position Description - Accountabilities and Responsibilities

Support the implementation of the data governance strategy and policy
Drive the data definition, lineage and governance aspects 'end to end' for each Use Case assigned

I will be shortlisting for this role next week

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

Many thanks

Party and data and governance and (HR or ESG or sustainability) and collibra

Party and data and governance and ("HR" or "ESG" or sustainability) and sql

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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