Data Analyst – Warehouse Operation (Mandarin Preferred)

winit uk
Tamworth
1 week ago
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Data Analyst – Warehouse Operation (Mandarin Preferred)

Location: Tamworth / Leicester

Department: Operations

Reports to: Operations Manager / General Manager

Role Overview

We are seeking a Data Analyst to support our warehouse operations through data-driven insights. This role will focus on analysing operational performance, identifying efficiency improvement opportunities, and supporting management decision-making across labour productivity, operational processes, and cost control. The successful candidate will work closely with warehouse supervisors, operations managers, and HR, transforming operational data into actionable insights to improve efficiency and reduce operational costs.

Key Responsibilities

Operational Data Analysis

  • Analyse warehouse operational data including productivity, throughput, order processing time, and labour efficiency
  • Monitor key operational KPIs such as effective output rate, picking efficiency, inbound/outbound performance
  • Identify operational bottlenecks and improvement opportunities

Workforce Performance Analysis

  • Analyse labour productivity, training performance, and employee efficiency
  • Support monitoring of new employee performance, training effectiveness, and retention
  • Track workforce metrics such as tenure distribution, turnover rate, and multi-skill employee coverage

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