Data Analyst

Gillingham
1 week ago
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Data Analyst
Gillingham, Kent
Hybrid working

Data Analyst needed for a leading organisation based in Gillingham, Kent, who are looking to employ an experienced Data Analyst with in-depth knowledge of of Power BI, and strong SQL to interrogate databases and produce insights driven from datasets, to drive business improvement & efficiencies.

  • Salary: £40,000 - £45,000 per annum
  • 25 day's holiday
  • Pension Plan
  • Flexible working hours
  • Hybrid working

    Some of the main duties of the Data Analyst will include:

  • Analyse data to identify trends to uncover patterns and insights that drive business improvement
  • Develop and maintain interactive dashboards and reports to help leadership make live data-driven decisions
  • Leverage your curiosity and problem-solving skills to identify new opportunities for improving profitability and performance
  • Collaborate with the leadership and operations teams to create actionable insights for targeted enhancements
  • Present findings and recommendations to Senior Management, providing clear, actionable advice to support and drive forward business strategies
  • Ensure data accuracy and consistency across various platforms, supporting the company's overall data integrity

    In order to be the successful Data Analyst and have a chance to gain such an exciting opportunity you will ideally need to have the following:

  • Proven experience as a Data Analyst
  • Proven Power BI experience
  • Strong proficiency in data analysis tools such as SQL and Excel
  • Inquisitive and analytical mindset, with a passion for solving complex problems and discovering insights in business data
  • Strong communication skills to explain technical concepts to non-technical stakeholders
  • Detail-oriented, with the ability to manage large datasets and ensure data accuracy
  • Strong organisational and time-management skills, with the ability to balance multiple projects in a fast-paced environment
  • Familiarity with databases and data warehousing concepts
  • Experienced in analysing large, complicated data files

    This really is a fantastic opportunity for a Data Analyst to progress their career. If you are interested please apply as soon as possible as this position will be filled quickly so don't miss out!

    Services advertised by Gold Group are those of an Agency and/or an Employment Business.
    We will contact you within the next 14 days if you are selected for interview. For a copy of our privacy policy please visit our website

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