Client Data Governance and Integrity Lead

360-Recruitment
Northampton
2 days ago
Create job alert

We have been asked to recruit a Client Data Governance & Integrity Lead for a company based in Northamptonshire.
*This is will start off as a hybrid role and after 6 months, you'll be able to work remotely.
This is a newly created position to support the business with ongoing projects and acquisitions.
As the Client Data Governance & Integrity Lead, you’ll be responsible for maintaining the accuracy, completeness, and consistency of client master data across the firm’s (practice management, accounts/production tools, bookkeeping platforms, billing/WIP, Excel reporting, document management, and compliance systems).
What they need is someone who has experience of doing a similar role in a firm of Accountants.
You will also need to have proficiency with SQL, Excel, and data manipulation tools (e.g., Power Query, Python, R, ETL tools).
Below is a small overview of what you’ll be doing…
* Own and maintain the Client Master Record as the single source of truth, ensuring accurate legal, tax, and contact data and consistent naming across systems.
* Govern client onboarding and job setup, ensuring records are complete, validated, and approved before work begins.
* Maintain consistent client hierarchies, engagement structures, service codes, ownership, workflows, and billing methods.
* Prevent and resolve duplicate or inconsistent client and job records across systems.
* Run regular data integrity checks and e...

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