Data Engineer: ETL & Data Warehousing | Hybrid

Rolls-Royce plc
Bristol
2 weeks ago
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A leading aerospace manufacturer in the UK is seeking an experienced Data Engineer to join their Digital Factory team. This role involves designing, developing, and maintaining ETL/ELT pipelines, while collaborating with analysts and data scientists. We offer a competitive salary, benefits, and a hybrid working model. Ideal candidates will have strong experience with Python, SQL Server, and ETL processes. Join us to help drive data-driven decisions and contribute to innovative solutions.
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