Data Analyst

Elizabeth Michael Associates LTD
Hinckley
1 month ago
Applications closed

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Data Analyst

Data Analyst


27,000 - £30,000


Monday – Friday 9am – 5pm


LE10, Leicester


Looking for someone to start as soon as possible


ROLE

This role is a blend of data management with account support, ensuring internal systems are accurate and up-to-date while proactively managing member relationships.


The successful candidate will support operational efficiency, enhance customer satisfaction and help drive commercial success through data integrity, reporting and client engagement.


RESPONSIBILITIES

  • Ensure data accuracy, consistency and integrity across CRM, spreadsheets and reporting tools
  • Cross referencing excel documents and identifying data trends
  • Run regular data quality checks and resolve discrepancies.
  • Produce reports and regular insights to inform business decisions
  • Act as a primary contact for members on data related queries and routine account matters
  • Build strong relationships with assigned members
  • Coordinate rebates, promotions, and product information with suppliers
  • Resolve account issues quickly, escalating where necessary to senior management
  • Identify process improvement opportunities within data and account workflows

PERSON SPECIFICATION

  • Proficiency in Microsoft Office (Word, Outlook, Excel)
  • Intermediate Excel Skills – Able to create formulas etc
  • Excellent organisational and multitasking abilities
  • Strong communication skills both verbal and written


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