Senior Data Analyst (Operations)

Data Idols
London
10 months ago
Applications closed

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Senior Data Analyst (Operations)



Salary: Up to £85k



Location: Hybrid London

Data Idols is seeking a Data Analyst to join a fast-growing logistics company to help them drive change and efficiency. We're looking for a proactive, hands-on analyst that can build dashboards that can provides insight on how the business can improve their routing and optimisation strategies.

The Opportunity

  • Build dashboards that outline changes that can help improve the efficiency of the company
  • Hold business reviews with senior stakeholders to provide details on the impacts of the changes
  • Lead the data strategy and influence buisness decisions

What's in it for you?

  • Competitive salary package
  • Hybrid working flexibility with a modern office in Hammersmith
  • Career progression opportunities within a growing logistics business
  • Collaborative, inclusive, and supportive team culture
  • Access to professional development and training programs

Skills and Experience

  • Experience working with SQL
  • Strong experience in building dashboards, preferably with Tableau
  • Strong Stakeholder management

If you would like to be considered for the role and feel you would be an ideal fit with our team then please send your CV to us by clicking on the Apply button below.



Desired Skills and Experience

Operations|Tableau|Stakeholder

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