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SCM Data Analyst — ESG & Digital Insights

TMM Recruitment
Aberdeen
1 day ago
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A prominent offshore energy services contractor is seeking a data analyst for a 12-month contract in Aberdeen City. The role involves analyzing procurement and logistics data, transforming complex information into accessible dashboards, and contributing to sustainability reporting and ESG disclosures. Ideal candidates will have strong analytical skills, experience with SAP and PowerBI, and a collaborative spirit. This opportunity supports complex projects in the energy sector and aims to enhance global performance monitoring.
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