Senior Data Analyst

Oscar Technology
Royal Leamington Spa
1 month ago
Applications closed

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Job Title: Data Analyst (Marketing)

Location: Warwick / Leamington Spa

Work Pattern: Hybrid - 2-3 days a week in office

Skills: Power BI / Tableau / Looker etc….

Salary: £40,000 - £50,000

Role

We have a great new role for a Data Analyst in the Midlands - if you are sports fan then this one is not to be missed!

Our client service a wide range of clients, particularly focussing on audience, membership and follower data and insights. You will be working with global clients to understand key metrics and suggest recommendations and . You will need to use your imagination and knowledge of the product to advise these clients on strategy. This is very much a client facing role, this is not a position where you will be sat behind a keyboard for 8 hours a day, you will be working with a wide range of people and clients and be expected to communicate these findings directly.

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.

This role is exclusively available through Oscar.

Responsibilities

  • Lead the delivery of actionable insight and reporting acros...

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