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AI Engineer

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6 months ago
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Ai Engineer / Data Scientist

AI Data Engineer

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Azure AI Data Engineer

Machine learning and AI Engineer

Senior Machine Learning | AI Engineer

AI Engineer - £60,000 - Remote

My client, a Microsoft partner, is looking for a AI/ ML Engineer to join their rapidly growing Data and AI team. This is a remote position as the client values work life balance and flexibility.

In this role you will utilise the latest AI technologies including Machine Learning, Gen AI and Open AI whilst working on various different projects.

You will collaborate with clients to understand their business needs and provide them with AI based solutions.

Requirements:

-Experience in Data Science, Machine Learning and AI tech

-Azure cloud technology experience

-Strong Python

Benefits:

-Competitive salary

-Remote working

-25 days annual leave and bank holidays

-10% bonus

-And more

Please Note: This is a permanent role for UK residents only. This role does not offer Sponsorship. You must have the right to work in the UK with no restrictions. Some of our roles may be subject to successful background checks including a DBS and Credit Check.

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