AI Technical Consultant - Remote

London
9 months ago
Applications closed

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My client is based in the London area are currently looking to recruit for an experienced AI Consultant to join their team. They are one of the leaders within the consulting space and are a well respected Microsoft Partner. They are currently going through a period of growth and are looking for an experienced AI Consultant to join their team. They are backed by a huge Multi National equity firm who are looking to bolster my clients financial position. They are expected to see year on year growth, which will allow them to implement and utilise the most in demand and cutting edge technology on the market right now.

My client is providing access to;

Remote Working,
28 Days Holiday, Plus Bank Holiday
Bonus Scheme,
Private Medical Health
Pension Scheme
And More...For this role, they are looking for a candidate that has experience in…

Extensive experience in implementing solutions around Databricks, Azure Data Factory, Fabric,
Excellent understanding of Microsoft SQL Server,
An understanding of AI, Gen AI or ML Ops through either a Data Related role or personal development,
Strong understanding of the wider Microsoft solution stack available on Microsoft 365 and Azure.
Strong hands-on experience in Data Warehouse and Data Lake technologies preferably around Azure.
Knowledge of Co-Pilot and Open AI. This role is an urgent requirement, there are limited interview slots left, if interested send an up to date CV to Shoaib Khan - (url removed) or call (phone number removed) for a catch up in complete confidence.

Frank Group's Data Teams offer more opportunities across the UK than any other recruiter We're the proud sponsor and supporter of SQLBits, AWS RE:Invent, Power Platform World Tour, the London Power BI User Group, Newcastle Power BI User Group and Newcastle Data Platform and Cloud User Group

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