Dataiku Consultant

iO Associates
London
11 months ago
Applications closed

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iO Associates are seeking a skilledData EngineeringConsultantwith a Financial Services firm for acontract rolebased inLondon. This is for a 12-month initial engagement, paying up to £600 Inside IR35, requiring2 days per week on site in Central London.

This position requires:

12+ months of hands-on experience with Dataiku, Strong knowledge ofSQLandPython, Familiarity withMachine Learning,SnowflakeorDBTwill be beneficial.

For more information, please contact Alex at iO Associates.

On this occasion, we can only accept applications from candidates who are based in the UK and who have existing right to work in the UK.

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