AI Engineer

Cathcart Technology
Glasgow
10 months ago
Applications closed

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AI Engineer - Glasgow

AI Engineer urgently required by our client based in Glasgow, on a 6-month contract with a very high chance of extension.

The Role:

Their Glasgow development centre is home to circa 15 Engineers (and the team is constantly growing!), working with cutting-edge technologies and continuing to push forward with new products and tech. They're building a new team of ML & AI Engineers. As a result, they're looking for an Engineer with AI & ML - who will be expected to add a lot of value to the project, hit the ground running from day one and mentor junior developers when needed.

You'll be joining a team of engineers in Glasgow to work on a new product that will significantly impact the service this company provides to its customers. This is a fully remote role inside IR35.

The Tech:

The team are working with a range of technologies, as already discussed, so to be successful in this role, you will likely have an interest in some, if not most, of the following:

** Python

** Experience in AI Solution Integration, Data Science or Data Engineering

** Open AI or Gen AI

** Proficiency in TensorFlow or PyTorch

** Knowledge of Elasticsearch or Graph databases like Neo4J

** CI/CD pipelines, Terraform

The Company & Culture:

Having met most of the team, I know they are a great bunch, and I can imagine it being a very inclusive, relaxed and highly skilled environment.

The Rate:

For the right person, we have a day rate of£500 - £650,depending on your experience and what you can add to the project.

On top of that, this role offers the chance for a long-term extension.

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