AI / Data Engineer

Tipperary
10 months ago
Applications closed

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Data Scientist

Head of Data Engineering (AI)

Head of Data Engineering (AI)

It is a 12 month contract

3 days on site per week

The role is based around Tipperary county with the following requirements -

AI experience (Up to date on lates trends and Technologies)
Experience in data analytics
User Interface Creation
Mapping for Alerts Commonality
Task Digitalisation /Automation
An understanding of Manufacturing processes is important (MES data BMRAM Data SAP Data Machine Data etc)
Use of Historian Databases
SAS Modules
Graph Database Technology (NEO4J)
Python Programming
Qlik Sense SAS Programming
Machine Learning (Regression analysis)
If interested please could you apply with your most up to date CV.

Please click to find out more about our Key Information Documents. Please note that the documents provided contain generic information. If we are successful in finding you an assignment, you will receive a Key Information Document which will be specific to the vendor set-up you have chosen and your placement.

To find out more about Computer Futures please visit

Computer Futures, a trading division of SThree Partnership LLP is acting as an Employment Business in relation to this vacancy | Registered office | 8 Bishopsgate, London, EC2N 4BQ, United Kingdom | Partnership Number | OC(phone number removed) England and Wales

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