Data Analyst / Online Data Administrator - Manchester

Circle Recruitment
Manchester
3 days ago
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Data Analyst / Online Data Administrator - Manchester

An e-commerce company in North Manchester requires a Data Analyst / Online Data Administrator with excellent Excel experience.

You must be able to fix data in Excel, delete tables, and clean up data in Excel. You must know how to use formulas, pivot tables, and automation (Macros / VBA), while data interrogation knowledge would be a bonus.

This role is ideal for someone who thrives on data management and enjoys working with spreadsheets, while also supporting website administration and content management tasks.

Skills required:

  • Essential: Advanced Excel skills (formulas, pivot tables, data analysis).
  • Desirable: Experience with website CMS (e.g., WordPress), basic HTML knowledge.
  • Strong attention to detail and ability to manage multiple priorities.

Duties include:

  • Maintain and update product pricing across multiple platforms and channels.
  • Build and manage complex Excel spreadsheets for pricing analysis, margin tracking, and promotional planning.
  • Maintain and update product pricing across multiple platforms and channels.
  • Monitor competitor pricing and market trends to support dynamic pricing strategies.
  • Ensure data accuracy and consistency across product catalogs and pricing files.
  • Automate data processes w...

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