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Data Quality Lead

QBE Management Services (UK) Limited
Street
5 days ago
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Primary Details

Time Type: Full time Worker Type: Employee

Data Quality Lead

Permanent

London / Hybrid

At QBE, our purpose is to enable a more resilient future.

We are an international insurer and reinsurer with a local presence in 27 countries.

The opportunity

QBE EO has embarked on a journey of growth in Data and Analytics through the implementation of Collibra for Data Governance and Ataccama for Data Quality. These applications are helping us implement and automate key Data Management activities, ensuring data is catalogued, Data Lineage is captured consistently, Data Quality is measured, DQ Issues are investigated, and Master & Reference Data is managed.

We're looking for an experienced Data Quality Lead to join our Data Quality team within the Data Centre of Excellence function in our London office.

Your New Role

In this role, you'll take ownership of the Finance Adjustments Governance process, enhancing it in alignment with other finance and Data Quality processes. You'll also contribute towards developing and embedding Data Management capabilities, ensuring high standards of Data Quality.  

Main Responsibilities:

Adjustment Specific:

  • Lead the governance of Adjustments, developing an appropriate framework and structure to effective control and manage the process.

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