Data Engineer

Kareera
Hull
6 days ago
Create job alert
Data Analyst
About Us

Kareera is partnered with a fast-growing, private equity-backed business that is a recognised leader in its sector. The organisation is technology-led, highly collaborative, and focused on using data and innovation to drive smarter decision-making and scalable growth.


About the role

We are seeking a commercially minded Data Analyst to turn complex data into clear, actionable insight. You will work closely with Product, Architecture, and external data partners to analyse data held within an Azure SQL data warehouse, support product ideation, and deliver high-quality reporting through Power BI. This role plays a key part in shaping data-driven solutions and ensuring data quality, governance, and usability across the business.


What Skills We Need and Why

  • Strong SQL experience, ideally with Azure SQL, to interrogate data and answer critical business and product questions
  • Proven expertise in Power BI to deliver reliable operational and strategic dashboards
  • Experience with ETL tools and data pipelines (Fivetran preferred) to ensure robust and accurate data flows
  • Solid understanding of data governance, security, and compliance (e.g. ISO, GDPR) to protect data integrity
  • Excellent analytical and communication skills to translate insight into clear recommendations for senior stakeholders

What You Get

  • The opportunity to work with a market-leading, high-growth business
  • A collaborative environment where data directly influences product and business strategy
  • Hybrid working model, with two days per week in the Hull office
  • A role with real visibility and impact across the organisation

If you are a data professional who enjoys solving complex problems and influencing decisions through insight, we’d love to hear from you.


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