Data Quality Officer

Prescot
3 weeks ago
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Job Title: Data Quality Officer
Location: Hybrid (Prescot office once a week)
Contract Type: Permanent
Working Pattern: Full Time

Are you passionate about data quality and governance, and keen to make an impact in the Public Sector? Our client has an exciting opportunity for a Data Quality Officer to join their dynamic Business Intelligence & Strategic Insight Team which could be right for you!

The Client
Our client is dedicated to delivering high-quality business intelligence solutions that drive operational and executive decision-making. They are committed to empowering their people to create a fairer society and prioritise customer needs.

Key Responsibilities
As a Data Quality Officer, you will:

Champion Data Quality: Lead the delivery of the Data Quality strategy, ensuring accurate and reliable information to support decision-making.
Collaborate: Work closely with Data Owners and Stewards across the organization to enhance data consistency and quality.
Develop Resources: Maintain and develop Data Dictionaries and Glossaries for key data entities.
Support Governance: Assist the Data Governance Forum by preparing papers and recording actions.
Measure Success: Monitor data accuracy, reconcile BI reports, and ensure consistency in performance information.
Regulatory Compliance: Coordinate and submit non-financial regulatory returns as required.
Communicate Insight: Present clear insights through papers and presentations, driving change within the Business Intelligence function.

Key Relationships
You will engage with colleagues across various teams and occasionally liaise with external groups to provide insightful information that meets requirements.

What We're Looking For
To be successful in this role, you should have:

Education: A degree in a relevant field (essential).
Experience: Demonstrable experience in a Data Quality role, including hands-on data profiling and cleansing initiatives (essential).
Skills:- Proficient in SQL and high competency in MS Excel and PowerPoint (essential).

  • Excellent communication and interpersonal skills (essential).
  • Ability to deliver actionable insights from raw data (essential).
  • Knowledge of BI software packages like PowerBI or Tableau (desirable).

    Adecco is a disability-confident employer. It is important to us that we run an inclusive and accessible recruitment process to support candidates of all backgrounds and all abilities to apply. Adecco is committed to building a supportive environment for you to explore the next steps in your career. If you require reasonable adjustments at any stage, please let us know and we will be happy to support you

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