Data Analyst

Swindon
1 day ago
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Data Analyst required by market leading financial services organisation based in the South East. This is a fully remote role with the option to go onsite if you wish.

Our client needs someone who’s naturally analytical and comfortable working with complex information. This role involves interpreting structured data, creating meaningful outputs, and helping colleagues make well-informed decisions based on evidence. If you're someone who enjoys spotting patterns and ensuring accuracy, this might be the right fit.

Main Responsibilities:

  • Working with others to understand and shape solutions using the information available

  • Investigating how data flows through our processes and the implications this has for the wider organisation

  • Supporting improvements to our internal approach to managing and using data

  • Helping identify where the quality of our information could be improved and suggesting practical steps

  • Contributing to the way we manage and structure data for reuse and insight

  • Playing a part in delivering changes, including preparation and testing

    Ideal Background

  • Experience working through projects from idea to implementation, and supporting ongoing improvements

  • Comfortable working with tools like SQL or similar to extract and interpret information

  • Familiar with visual reporting tools (Qlik, Power BI, or others)

  • A good understanding of how well-used data supports better decision making

  • A natural problem-solver who’s confident working with details

  • Precision and a genuine interest in getting things right when it comes to data

  • Any experience in datawarehousing and/or data mapping

    Package

  • £(phone number removed) p/a

  • 7-10% annual bonus

  • 5% contributory pension

  • 25 days annual leave plus bank holidays

  • Full private medical cover

  • Discounted tech offers

  • Discounted gym membership

  • Plus many more

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