AI Engineer

Dennistoun
1 week ago
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AI Engineer

Location: Glasgow (office based)

Salary: Circa 45K – 60K + Benefits

AI Engineer required by fast-growing AI Solutions Company!

This is a varied, challenging role where you’ll be responsible for the design and development of AI models and algorithms

Essential:

  • Educated to degree level in Computer Science, AI or related field

  • Expertise in Pattern Recognition and Neural Networks

  • Experience with Natural Language Processing (NLP)

  • Relevant programming and tools

  • Excellent problem-solving skills

    Tremendous opportunity offering plenty of scope for career progression in a friendly, innovative environment where you’ll be able to bring ideas and make a real difference!

    Apply now for FULL details

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