Machine Learning Engineer

Digital Waffle
Guildford
1 year ago
Applications closed

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Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

We have partnered with a leading professional services organisation to help build their Machine Learning function from scratch.


The organisation is already well-established within its field, however, is now looking to create technology for implementation within live use cases.


A hands-on role, you will be tasked with the initial R&D, Architecture, and Development of the ML product. Working closely with the Data Director & wider engineering time you will be tasked with being the subject matter expert.


Salary:£80,000 - £90,000

Location:On site in Guildford (5 days a week)


Key Skills Required Are:


  • Python with experience in PySpark
  • A thorough understanding of DataBricks
  • ML, Machine Learning, experience.
  • SQL
  • PowerBI and ideally Microsoft Fabric exposure
  • A degree within the Data Science field.


Whilst some remote working is available, they require someone on-site in Guildford 5 days a week for the foreseeable future.


For more information, please apply and we will be in touch.

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