Hybrid CMDB & Power BI Data Engineer

Experis - ManpowerGroup
Wokingham
1 month ago
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A leading recruitment agency is seeking an MBD Engineer based in Wokingham. This hybrid role requires expertise in data analysis and Power BI to enhance IT service performance and compliance. Candidates must have experience managing CMDBs and conducting audits to ensure data accuracy. The role includes process improvement responsibilities, requiring a detail-oriented approach. Competitive pay at £250 per day through PAYE umbrella services. This position is essential for effective IT governance and service management.
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