Artificial Intelligence Architect

Enterprise Blueprints
Nottingham
2 months ago
Applications closed

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Enterprise Blueprints isa boutique IT architecture consultancy formed by Architects focused on Architecture. Our passion for architecture has driven our growth over 15 years and led to an acquisition byBain & Companyat the beginning of 2023 retaining our culture and collaboration whilst opening even more doors to exciting projects and opportunities in the IT architecture space.


Our Culture is built on our values of contribution and trusted relationships this applies to our team and our clients. We have an inclusive culture which encourages ideas, input, and collaboration; we are keen for you to bring your skills, experience and personality to the team and engagements you are a part of.


We work with architects who want to make an impact. When you join EB, you join an organisation that values your entrepreneurial spirit and contribution to Enterprise Blueprints as well as our clients. You have a chance to do more than delivery. There are opportunities to carve a niche for yourself, add value, use your experience, develop your skills, and define your career trajectory.


We have recently hired a AI Practice Manager and looking to add experienced AI Architects into the practice. The ideal candidate would have the following experience:



  • Experience working as an AI Architect, or similar role that requires an architecture mindset.
  • Strong ML, Deep learning, NLP, LLM experience
  • Strong Data Architecture experience
  • Experience/strong knowledge of Cloud platforms and how AI models can be deployed.
  • Experience liaising on AI projects to senior stakeholders and worked with engineering, data science, and architecture team.



Whether you are actively searching for a new role, or passively keeping an eye on the architecture market, our Talent team is very interested to engage in a conversation so that we can explore if we could be a fit and be able to progress as the time is right.


Ready to be part of something bigger?


Let us have a Conversation.

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