Qlik Data Analytics Team Lead

Affinity Water
Hatfield
2 weeks ago
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At Affinity Water, we are on a journey to become a truly data-driven organisation. Data is central to how we meet our objectives and deliver exceptional outcomes for our customers. We are building a culture of innovation, collaboration, and continuous improvement, enabling breakthrough performance across the business.

The Role
We are looking for a Qlik Data Analytics Team Lead to join our Performance and Insights team on a 24 month FTC. This role combines hands-on analytics delivery with people leadership, empowering a highly skilled team of Qlik Data Analysts to deliver high-quality insights and dashboards that inform business decisions.

As the Qlik Data Analytics Team Lead, you will:

  • Lead, mentor, and develop a team of Qlik Data Analysts, fostering a culture of learning, autonomy, and accountability.

  • Design, build, and maintain interactive dashboards and reports using the Qlik suite, delivering actionable insights across multiple business areas.

  • Oversee Qlik architecture, platform support, and service management, ensuring the smooth running of analytics platforms.

  • Collaborate with stakeholders to understand business needs, identify data sources, and provide data-driven recommendations.

  • Liaise with Technology teams to deliver highly performant and resilient data analytics platforms

What We...

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