Data Analyst

Pertemps Redditch Commercial
Redditch
2 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst


Job Title: Data Analyst
Location: Redditch (Must drive due to location)
Permanent Full Time
Salary: £25,500 Per Annum


Were recruiting on behalf of a well-established organisation for a detail-driven Data Analyst. This position is central to ensuring accurate asset records, supporting stock recovery across multiple drop points, and delivering valuable insights to both office-based and field teams.

What youll do:

  • Maintain and update asset and drop point data within internal systems
  • Produce regular KPI and performance reports
  • Support investigations into stock discrepancies or asset misuse
  • Provide information and analysis to assist field teams and retailers
  • Help ensure stock balances are accurate and up to date
  • Support continuous improvement by identifying inefficiencies or inaccuracies in asset data
  • Prepare tailored reports and information packs for internal colleagues.



What were looking for:

  • Strong attention to detail and confident working with data
  • Good analytical and problem-solving skills
  • Excellent communication and organisational ability
  • Experience in logistics or supply chain environment is beneficial
  • Confident using Office 365, especially Excel


This is a great opportunity for someone who enjoys data accuracy, process improvement, and ...

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