Qlik Data Analysts

Campion Pickworth
London
6 days ago
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Our client, a fast-growing global technology platform headquartered in Sweden, are looking to recruit an experienced Qlik Data Analyst within their expanding UK team.

You would be working to deliver a range of bespoke analytics solutions, working alongside a market leading product team. Some of the projects would include Qlik Sense analytics, building dashboards and visualisations, and supporting clients with a range of wider analytics solutions.

Some key responsibilities would include;

Interpreting stakeholder requirements and developing appropriate Qlik Sense solutions.

Development, maintenance, and deployment of Qlik Sense applications, including data modelling and visualisation.

For the role we would like you to have;

  • a minimum of 2 years experience using the Qlik Sense platform and have developed and implemented Qlik Sense applications for a variety of stakeholders.
  • You are driven by having a meaningful impact on projects; you are a team player who takes pride in delivering a service to the best of your abilities.
  • You are highly organised and have the ability to drive projects forward in a methodical and proactive approach.
  • You can build trust and good relationships with both customers and colleagues.


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