Data Analyst

Qube Recruitment
Gillingham
8 months ago
Applications closed

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Data Analyst

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Data Analyst

Data Analyst

Our client continues to expand their business, with centres throughout the UK. As part of their expansion there is a new vacancy for a data analyst, with experience of working in a retail, manufacturing or automotive sector, to join the company at offices on Gillingham Business Park.

Skills & Experience:

  • Proven work history as a data analyst, able to demonstrate a strong proficiency in using analysis tools such as SQL, Python, R, Excel etc.

  • Experience of Power BI or similar

  • Familiar with the concepts of databases and data warehousing

  • Experience in analysing large and complicated data files

  • The ability to communicate well, able to explain technical concepts to non-technical stakeholders

  • To be detail orientated, able to ensure data accuracy

  • To be inquisitive with an analytical mindset, able to solve complex problems

    Role & Responsibilities:

  • Able to process map the entire operational journey, able to highlight areas of suggested improvement to stakeholders

  • Present findings to Senior Management

  • Ensure accuracy across various platforms

  • Identify potential gaps in current systems and usage

  • Analyse data, identify trends to uncover patterns and insights that drive business improvement

  • Collaborate with other departments

    Monday to Friday: 100% office based

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