Product Data Analyst - Insights for Growth (Hybrid)

Kaluza
Bristol
1 month ago
Applications closed

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Annuity Product Data Analyst - Hybrid, High-Impact Pricing

A leading energy solutions provider is looking for a Data Analyst to join their team. This role involves transforming data into actionable insights to enhance product performance and support strategic decision-making. Candidates should have analytical skills, knowledge of SQL, and experience with data visualization tools. The company offers a range of benefits, including a pension scheme, bonus opportunities, and flexible holidays, with a hybrid working model promoting work-life balance.
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