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Data Analyst

Lloyd Recruitment
Crawley
1 day ago
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Job Title: Data Analyst
Location:
Crawley - Hybrid
Employment Type:
Fulltime, Permanent
Salary: £45k-£50k DOE

Data Analyst Role Overview

Lloyd Recruitment Services is working with a well-established organisation to recruit a Data Analyst. The role is suitable for someone with an analytical mindset, strong data analysis skills, and the ability to turn information into actionable insights.

The Data Analyst will work across multiple teams, providing support for reporting, data analysis, and business intelligence initiatives.

Key Responsibilities of the Data Analyst:

  • Develop and maintain reports and dashboards using tools such as Power BI
  • Work with teams across the organisation to understand reporting requirements and deliver relevant insights
  • Gather, clean, and analyse large datasets from multiple sources
  • Support improvements in data quality and consistency
  • Assist in the testing and implementation of analytics tools and reporting applications
  • Perform data extraction, transformation, and loading (ETL) activities as required
  • Provide guidance and support to colleagues on data-related queries

Qualifications & Experience

Essential:

  • Prior experience in a reporting or analytics role
  • Strong sk...

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