Data Analyst

Maxwell Bond
Bristol
9 months ago
Applications closed

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Data Ops Analyst – Up to £40K – Manchester (Hybrid)


3 days in office per week | Growing professional services firm | Data, reporting & insights


I’m working with a well-established professional services company that’s investing heavily in data. They’re now looking for a Data Ops Analyst to join a collaborative, fast-paced team focused on making data useful and accessible across the business.


What you’ll be doing:


  • Handling day-to-day data requests (via JIRA)
  • Creating and maintaining reports and dashboards
  • Analysing large datasets to find trends and insights
  • Working with teams to understand reporting needs
  • Improving data quality and automating recurring reports
  • Documenting your work to support collaboration and consistency


What you’ll need:


  • Solid SQL and Excel skills
  • Experience with Power BI (or similar tools)
  • Some Python knowledge
  • Strong attention to detail and problem-solving skills
  • Comfortable explaining data to non-technical stakeholders


Nice to have:


  • Experience with Azure, Databricks or ETL processes
  • Understanding of data modelling concepts


What’s on offer:


  • Up to £40,000 salary
  • Hybrid working – 3 days a week in the Manchester office
  • 25 days holiday + bank holidays
  • Bonus scheme, enhanced pension, and wellbeing benefits
  • Friendly, down-to-earth culture with a focus on collaboration and learning


Please apply now if you’re interested with interviews being scheduled this week.

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