Business Intelligence Analyst

Oscar Technology
Royal Leamington Spa
1 month ago
Applications closed

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Job Title: Business Intelligence Analyst

Location: Warwick / Leamington Spa

Work Pattern: Hybrid - 3 day a week in office

Skills: Power BI / Tableau / Looker etc….

Salary: up to £45,000

Role

We are looking for a BI Analyst based in the Midlands for a new role going live in the New Year.

We are looking for someone with creative dashboarding skills, attention to detail and something who can take data sets and create insights that positively aid decision making within the business.

We are looking for someone with a deep understanding of transactional data and experience of things like churn analysis and predictive analytics and you must be comfortable presenting analysis findings in a clear and meaningful way to key stakeholders

The company use AWS Quicksight as their BI Tool so you would have to be happy to cross-train to this from PowerBI / Tableau / Looker etc. if you have haven't used it before but they are happy for that to be the case, we don't need previous Quicksight experience.

Responsibilities

  • Delivery of dashboards and insights for clients
  • Recommended growth strategy based on data analysis and insight provision
  • Creation of specific dashboards based on specification, on-going management and improvement of these.
  • Recom...

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