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Supply Chain Data Analyst

Lorien
Watford
1 week ago
Applications closed

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Location: WatfordContract: ASAP start until 29th January 2026 (initially)Rate: Up to £23.03 per hour (PAYE)Office Requirement: Minimum 2-3 days per week onsite

Lorien's retail client is seeking a talented Supply Chain Data Analyst to join their dynamic team and make a real impact on their operations. This role is perfect for someone who thrives on data-driven insights and enjoys automating reporting processes to support logistics and distribution goals.

Key Responsibilities

  • Collaborating with data engineers to establish efficient data pipelines and replace manual data sources
  • Rebuilding reports using automated connections to centralized data sources
  • Ensuring data integrity, accuracy, and consistency across all reports
  • Providing on-demand analysis and insights to support the logistics operation
  • Building and maintaining automated dashboards and reports
  • Leveraging historical data and statistical analysis to deliver forecasts and proactive solutions

What We're Looking For

  • Strong analytical skills and attention to detail, with a focus on delivering results
  • Demonstrable ability to interpret data and provide clear, meaningful insights to business partners
  • Proficiency in SQL, Python, Excel, and data visualization tools like

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