Data Engineer - Snowflake & Matillion

IO Associates
Bristol
3 days ago
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Data Engineer - Matillion

3-month contract - high likelihood of extension

Middle of January start

Outside IR35

Remote - once a month onsite in Bristol

£400 - £440pd

iO Associates are seeking an experienced Data Engineer to work with one of the best analytics companies in the UK. They have nurtured a fantastic culture, with industry-leading experts in the modern data space and are seeking a Data Enginee...



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