Operational Data Analyst - Power BI & S&OP

Stannah Group
Andover
1 month ago
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A family-owned manufacturing and engineering company is seeking an Operational Analyst based in Andover. The successful candidate will analyze operational data to drive improvement in the Manufacturing division. Responsibilities include presenting insights using Power BI, supporting sales operations, and collaborating with teams to enhance processes. A strong background in Excel and experience with operational data are essential. This role offers a market-aligned salary, a profit-share bonus, and significant holiday benefits.
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