Data Analyst, Commercial Insights & Dashboards (Hybrid)

Moose Enterprise Pty Ltd
Newquay
1 week ago
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A diverse toy company in the UK seeks a Data Analyst to join their team in Cornwall. The role involves interpreting performance data to drive commercial decisions and working closely with various departments. Key qualifications include strong data visualization skills and experience with Power BI and Excel. This position offers attractive benefits such as flexible working hours, hybrid options, and a supportive environment for professional development.
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