Data Analyst

KAG Recruitment Consultancy
Birmingham
3 days ago
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K.A.G. Recruitment are delighted to exclusively present an exceptional opportunity for a Data Analyst to join our client, a frontrunner in the Food Manufacturing industry based at their Head Office in Birmingham.

Job Title: Data Analyst
Location: Birmingham (B37)
Salary: £37,000 to £40,000 DOE
Hours: Monday to Thursday 8 30am to 5 00pm, Friday 8 30am to 2 00pm

Role:

You will be responsible for overseeing and maintaining all data collection and reporting within the business translating the data into useful information that can be used by the business and its strategic partners using reports, dashboards and online apps. You will work closely with all members of the team designing and implementing process automation projects, whilst ensuring data quality and integrity identifying errors and cleaning data.

Key Responsibilities:

  • Collaborate with internal and external stakeholders to understand and validate data requirements, ensuring accurate reporting
  • Monitor and audit data quality and reporting whilst maintaining data quality standards
  • Produce visualisations and reports and present findings to both technical and non-technical stakeholders in a clear, actionable manner
  • Create data dashboards, graphs and visualisations
  • Correspond with customers and deliver on AD-HOC data requests and regular reports...

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