Artificial Intelligence Engineer

JSS Search
London
2 weeks ago
Applications closed

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Job Description

AI Engineer

Up to £50,000

Hybrid – 3 days per week in office (London)


We’ve partnered with an innovative Data Start-up who are looking to hire a passionate AI Engineer. This consultancy provides innovative SAAS and AI solutions to their household name clients and is an excellent opportunity to work with a small, but high-performing team. This role encompasses a blend between AI Engineering and Data Science, and you will be working on developing their new AI solutions. This is an ideal role for someone looking to hit the ground running in the early stages of their career, with this company offering huge opportunity for quick progression.


Role Requirements:


  • 2:1 or above in Mathematics or STEM Degree from a Top UK university
  • Experience with AI and AI Models
  • Exposure to First Party Data
  • Experience working with SQL and Python
  • 6 months – 2 years’ commercial experience within AI Engineering/ Data Engineering and/or Data Science


Interview Process:

  1. SQL Test
  2. Technical interview (1 hour)
  3. In person Team Fit (2 hours)

...

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