Master Data Analyst

Northampton
4 days ago
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15 Month FTC

Based in Northampton or Worksop

Role Purpose:

We are seeking a detail-oriented and analytical Master Data Analyst to join our team. The primary responsibility of this role is to ensure the accuracy, consistency, and integrity of our organization's master data. The Master Data Analyst will be responsible for creating and maintaining master data records to support business operations and decision-making processes. The ideal candidate will have a strong understanding of master data management principles, excellent analytical skills, and the ability to collaborate effectively with cross-functional teams.

What you'll be doing:

Collaborate with business stakeholders to understand master data requirements and define data standards and rules for data creation, maintenance, and governance.
Ensure data governance policies and procedures are followed.
Create and maintain master data records across multiple ERP systems.
Perform data cleansing, enrichment, and standardisation activities to ensure the accuracy and completeness of master data records.
Support data migration and integration projects by validating and reconciling master data between different systems and platforms.
Provide training and support to end-users on master data management processes, tools, and best practices.
Collaborate with cross-functional teams to identify opportunities for process improvement and optimization related to master data management.
Participate in cross-functional projects and initiatives as a subject matter expert on master data management and data quality.
What we're looking for:

Experience in data management, data analytics or related roles, with a focus on master data management.
Understanding of master data management principles, concepts, and best practices.
Proficiency in data analysis tools and techniques, including SQL, Excel, and data visualization tools (e.g, Power BI).
What you'll get in return:

Competitive salary and job-related benefits
25 days holidays
Pension up to 8% matched
Company share save scheme
Greencore Qualifications
Exclusive Greencore employee discount platform
Access to a full Wellbeing Centre platform
Throughout your time at Greencore, you will be supported with on the job training and development opportunities to further your career

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