Artificial Intelligence Engineer

MBN Solutions
London
1 month ago
Applications closed

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Software Engineer, Applied Artificial Intelligence (AI)

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Artificial Intelligence Offerings Lead Architect

Job Description

Founding Engineer – Agentic AI infrastructure for mobile – Paris/London £80-100k


Are you an AI Engineer who loves building fast and turning ideas into working products?


Have you taken something from a rough concept to a real system that people actually use?


Do you get energy from tackling hard problems, learning quickly and working in a tight, mission driven team?


If so, this could be the right move.


Who are we?

We’re an early-stage startup from a renowned fellowship, recently raised $4.1 million with a clear mission: help teams ship new mobile app features in a single day. Our platform lets non-technical teams design and deploy features without waiting weeks for engineering cycles. The impact is huge and we’re building at pace.


The team is small, 9 people, Founders plus four Founding Engineers, a Designer, a GTM Lead and a Videographer, we're Engineering led and fully in person. Our core tech builds AI agents that interact with mobile apps the same way browser agents interact with the web, automating workflows and speeding up iteration.


Culture matters to us: values, resilience, motivation and genuine interest in what we’re building.


What you’ll be doing

  • Workin...

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