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Snowflake & AWS Data Engineer

iO Associates
London
7 months ago
Applications closed

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iO Associates are seeking an experiencedAWS & Snowflake Data Engineerto support an initial3-month projectfor a prestigious client of ours, offering£500-600 per day (Outside IR35).

Key Details:
-Duration:3 months (potential extension)
-Rate:£500 - 600 per day (Outside IR35)
-Location:Remote (must be UK-based) withoccasional travel to London, UK
-Tech Stack:Snowflake, AWS, Apache Airflow, SQL, ETL, Python, DBT, Data Pipelines

The Role:
Join a dynamic team as our client expands theirutilisation of Snowflake for Data Warehousingon AWS. We're needing candidates with strong experience across both platforms as the client scales out their Data Warehousing capabilities.

You'll play a key role in designing, building, and optimising data pipelines, leveragingAWS and Apache Airflowfor automation and scalability.

Could this role be of interest? If so, please get in touch with Alex at iO Associates.

For this role, we can only accept UK-based candidates with existing right to work in the UK.

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