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Snowflake Data Engineer

Corriculo
Oxford
1 week ago
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Job Description

Snowflake Data Engineer, ETL, 6 months, Remote, CO7291

A leading software consultancy requires a Snowflake Data Engineer to work on a prestigious client project for 4-6 months, delivering an innovative data platform.

Working remotely, the Snowflake Data Engineer will:

Develop and maintain data pipelines Ensure seamless data integration and architecture Optimise data processing performance Collaborate with development and data teams to support data-driven features and insights

Experience Required:

SQL (both internal databases – my client uses PostgreSQL – and Snowflake) ETL tools – Fivetran preferred but not required Data Lakehouse and reporting – Snowflake

So What’s Next?

If you are an experienced Snowflake-focused Data Engineer and are available for a prompt start; apply now for immediate consideration!

Corriculo Ltd acts as an employment agency and an employment business. #GB

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