National Data & Analytics - Data Analyst

Aldi Stores
Atherstone
1 month ago
Applications closed

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Were looking for proactive, solution-focused analysts to join a multidisciplinary reporting team within the National Data and Analytics (NDA) department. In this role, you will help design, develop, and deliver high-quality national reporting solutions across one or more business areas, working alongside fellow developers, Business Partners, and Engineers to create products that empower decision-making and drive strategic outcomes.

Youll report directly to the NDA Reporting Team Leader and play a key role in the full delivery lifecycle from understanding gathered requirements, development, testing, and documentation to final release. Successful delivery goes beyond the reporting product itself; it includes technical documentation, user acceptance testing materials, and training resources.
This role is perfect for a technically skilled individual who thrives in a collaborative environment, enjoys problem-solving, and is eager to develop their skills while making a national impact.

Your New Role
  • Design, develop, and maintain high-quality national reporting solutions across multiple platforms.
  • Translate business requirements into effective technical solutions that meet user needs.
  • Collaborate with NDA Business Partners to clarify requireme...

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