SC-Cleared Data Engineer - Pipelines & DataOps

CBSbutler Holdings Limited trading as CBSbutler
Edinburgh
1 month ago
Applications closed

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A recruitment firm is seeking an experienced Data Engineer to design and maintain data platforms in a hybrid working environment. The role requires strong problem-solving skills and expertise in data pipeline design. You will oversee end-to-end data processing and ensure high-quality datasets for analytics. An active SC Clearance and a degree in STEM are essential. Competitive rate of £500-£600 per day inside IR35.
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