Data Engineer: Build Scalable Pipelines & Analytics

Vintage Cash Cow
Morley
6 days ago
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A dynamic technology firm is seeking a Data Engineer to enhance their data infrastructure and analytics capabilities. You'll play a critical role in designing and maintaining data pipelines, ensuring data quality, and enabling analytics across various departments. Candidates should have strong Snowflake experience, solid SQL skills, and familiarity with digital marketing analytics. This position is full-time and located in Morley, England, offering a collaborative and innovative environment.
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