Master Data Analyst

Mentmore
Reading
8 months ago
Applications closed

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Master Data Analyst

Master Data Analyst

Master Data Analyst

Master Data Analyst

Master Data Analyst

Master Data Analyst - 18 mths FTC

Job Description

Master Data Analyst

Location:Reading | Hybrid (2 days in-office)

Salary:£45,000–£55,000 per annum (DOE)

Type:Full-time


We are seeking a skilledMaster Data Analystto join our Data team and support the delivery of critical data initiatives. Reporting to the Master Data Manager, this role will be responsible for driving data governance practices and ensuring the accuracy, consistency, and reliability of key business data. Using the Profisee MDM platform, you will play a vital role in establishing and maintaining a single, trusted source of truth across the organisation.


Responsibilities:

  • Owning and maintaininggolden master recordsacross critical data assets—your records are the source of truth.
  • Building and evolving adata modelthat aligns with the business's core processes and drives consistency.
  • Developingmatching logicandsurvivorship rulesto ensure data stays pristine.
  • Designing and managingdata entity relationships, including workflow and event processing.
  • Defining and executingbusiness rules, managing data governance workflows, and owning MDM data mapping and ingestion.
  • Running

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