Qlik Data Analyst

Affinity Water
Hatfield
3 days ago
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We are looking for a Qlik Data Analyst to join our Data & Analytics team on a 24 month FTC. You will be responsible for transforming complex data into actionable insights that drive informed decision-making, innovation, and continuous improvement. Leveraging your expertise in the Qlik suite, you will design and deliver information, interactive dashboards, and insights from our modern, cloud-based data platform.

What Youll Do

  • Design and deliver interactive dashboards and reports using the Qlik suite.

  • Analyse data from multiple sources and present insights clearly to stakeholders.

  • Collaborate with teams to support data management, governance, and quality initiatives.

  • Perform ad-hoc analysis to inform business decisions and uncover opportunities.

  • Keep up to date with the latest tools and techniques in data analytics.

What Were Looking For

Essential:

  • 5+ years experience developing Qlik Sense or Qlik View dashboards; Qlik certification a plus.

  • Strong SQL skills and ability to work with large, complex datasets.

  • Experience in Qlik administration i...

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