Senior AI Engineer

MBN Solutions
Glasgow
10 months ago
Applications closed

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Senior AI Engineer – Startup (AI Consultancy) - London (Hybrid) Upto £130k +shares

We’re working with a fast growth AI Consultancy with offices in London, Manchester and Edinburgh. The business is under a year old and currently sitting at 15 people, generating revenue with a range of AI projects spanning across a variety of clients.

The founders have proven experience in building a consultancy from scratch and exiting, having previously built a Data Science consultancy and successfully sold to a ‘big 4’ , they are on course to replicate their success here.

This has fuelled rapid growth in the team and we are looking for AI Engineers of different experience levels to join us in building the business by developing end2end LLM products for our clients.

What we’re looking for:

We’re looking for people that have experience building production ready AI solutions, to design, build and deploy AI solutions in collaboration with our clients. You’ll be applying some of the SOTA research in AI to develop applications. As such we would expect you to have:

Effective communication skills Background in foundational Computer Vision/NLP Strong Software Engineering skills (3 years+) Developed LLM architecture and deployed LLM applications Uptodate with current trends in AI Some experience with applying latest techniques like RAG architecture, GenAI, Parallel training etc

The role is hybrid, with adhoc requirements to be on client premises (London) this could be between 1-5 days a week, so we would need someone that is flexible.

This is a fantastic opportunity to work on a broad range of problems, applying SOTA AI solutions, in a high growth business, set for success and you will be rewarded with:

Base salary of upto £130k Meaningful EMI shares 25 Days holiday Statutory pension contribution Private medical

Please note: you must be eligible to work in the UK or EU to be considered for this position.

Interested?

If you think you fit the bill, get in touch by clicking the ‘apply now’ button or get in touch with me by the following:

Email me at Call me on

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