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AI/ML Engineer

TechYard Recruitment
Liverpool
1 year ago
Applications closed

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AI & Machine Learning Engineer (Multiple Roles, Remote & On-Site)

Gen AI ML Engineer — Lead End-to-End NLP/GenAI Pipelines

We are currently supporting a number of companies in the data and technology space in scaling the AI Centres of Excellence at all levels of seniority, sourcing talent from developers to CAIO's. Due to growing demand, we are continuing to develop our network of AI and ML Engineers for both permanent and freelance opportunities.


We are looking for people with experience in:

  • Designing, developing, and deploying machine learning models and algorithms.
  • Programming languages like Python, R, or Java.
  • Leading AI initiatives, and strong mentorship skills.


Whether you're looking to kickstart your career or take on a more strategic role, there are plenty of opportunities to grow and make an impact, with our client base ranging from start ups to global enterprises.


Pease apply if this is of interest.

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