Commercial Data Analyst

Pertemps Specialist Division
Evesham
3 days ago
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Commercial Data Analyst 3–6 Month Contract £45,000 – £50,000 per annum (pro rata) Location: Redditch Immediate Start Required We are seeking an experienced Commercial Data Analyst for a 3–6-month contract to support senior leadership with high-impact commercial insight. This is an immediate requirement for someone who can quickly take ownership of data analysis, identify trends, and deliver meaningful recommendations to drive performance. This role will report directly to the Managing Director and will play a key part in analysing sales, productivity, margin, product and marketing data to support strategic decision-making. The Role · Analyse sales, margin, productivity and marketing performance data · Identify trends, risks and commercial opportunities · Create and enhance dashboards and reporting tools · Manipulate and structure large datasets from multiple sources · Present clear, actionable insights to senior leadership · Support forecasting and performance planning · Recommend data-led improvements to profitability and operational efficiency This is not purely a reporting role — we are looking for someone who can interpret data commercially and influence decision-making. What We’re Looking For · Proven experience in a Data Analyst or Commercial Analyst role · Strong Excel skills (including advanced functions, pivot tables, Power Query) · Experience with Power BI, Tableau or similar visualisation tools · Ability to work confidently with large, co...

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