Lead Data Engineer: Team Lead for Cloud Pipelines

Aviva
Norwich
2 weeks ago
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A leading insurance company is seeking a Lead Business Data Engineer to create data solutions that enhance decision-making across their Commercial Lines business. The candidate will manage data pipelines and lead a small team of engineers while working with advanced analytics. A strong background in data modeling, ETL processes, and modern tools such as Snowflake is required. The role offers competitive salary, bonus opportunities, and various employee benefits.
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