AI Developer

Workonblockchain
London
1 month ago
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Machine Learning Engineer

Machine Learning / AI Software Developer

AI Engineer - Machine Learning LLM

AI Engineer - Machine Learning LLM

AI Engineer - Machine Learning LLM

Senior Machine Learning Developer - Stevenage

AI DeveloperSalary: 30,000 - 60,000 GBP per year

At Tenth Revolution Group, we are looking for a ML, AI engineer!


Our tech stack:
AI, API, AWS, Azure, C#, Cloud, Microsoft 365, Power BI, PyTorch, SQL, TensorFlow, Office 365, Machine-Learning

Requirements:
We are seeking a candidate with extensive experience in implementing solutions around the Azure Cloud. You should possess a strong understanding of AI, Generative AI, and ML Ops through a Data Related role and personal development. Additionally, you need to have a solid grasp of the wider Microsoft solution stack available on Microsoft 365 and Azure. Strong hands-on experience in Pytorch, TensorFlow, LLMs, ML, Azure Cognitive Services, C#, SQL, and APIs is essential. Knowledge of Co-Pilot and Open AI is also highly valuable.

Your responsibilities are:
As an AI Developer, you will join our team of leaders in the Education space, working closely with Microsoft. You will be integral to our ongoing growth, leveraging cutting-edge technology to deliver innovative AI solutions. Your role will involve collaborating with various stakeholders to implement and enhance AI-driven applications while ensuring alignment with Microsoft technologies and best practices.

Category:ML, AI Developer / Engineer
Location address:Winchester Street, London, United Kingdom
Salary:30,000 - 60,000 GBP per year

Benefits & perks that we offer:
We offer remote working options, 30 days of holiday plus bank holidays, a bonus scheme, private medical health cover, a pension scheme, and more. If you are interested in joining our team, please send us your updated CV. We appreciate your interest and look forward to connecting with you.

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