Business Intelligence Team Lead

Lorien
Basingstoke
2 days ago
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Data Visualisation and Reporting Manager - BASINGSTOKE - HYBRID

Our client, a leading household name, are recruiting for a Data Visualisation and Reporting Manager to join the team on a hybrid basis.

Experience required:

  • Experience in leading delivery teams and developing high performance within an ITIL framework
  • Experience working in a reporting, MI or BI dashboard team in a fast-paced environment and complex business setting.
  • Skills in developing MI and BI reports and dashboards
  • Extensive experience working directly with multiple senior stakeholders, effectively managing expectations and agreeing work backlog priorities
  • A broad technical skill set with previous hands-on expertise in MI Metadata tools applying best practice, self-service and automation strategies
  • Extensive experience in building and maintaining reliable and scalable MI and Metadata reporting and dashboards, as well as experience working with varied forms of systems/tools such as OBIEE, OACS, Tableau, SSRS or similar
  • A strong track record of performing complex data analyses with large data volumes
  • An expert in reporting and dashboarding
  • Working knowledge of Data Warehousing Design Methodologies, including dimensional modelling concepts.
  • More experienced candidates will hold experience in dimensional modelling and demonstrate proficiency in at least one scripting language
  • Extensive experience of adopting Agile methodologies, engaging and collaborating with stakeholders and suppliers
  • Extensive data and business intelligence experience within a complex enterprise organisation
  • Proven record of partnering closely with 3rd parties and IT leadership avoiding conflicting activities
  • Experience in bringing critical insights and suggestions for continual improvement into process and solution design
  • Working knowledge of Insurance business.
  • More experienced candidates will have hands-on SQL experience and have performed at least one role where SQL skills were an integral part of their responsibilities

Please apply!

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