Artificial Intelligence Engineer

Pagos Consultants
City of London
1 month ago
Applications closed

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Job Description

About the role

We’re looking for a Founding AI Engineer to help build and scale an AI-first product from the ground up. This is a hands-on role for someone who enjoys solving hard problems, shipping quickly, and working across the stack to bring new capabilities into production.

You’ll join a small, highly technical team and play a key role in shaping the product, technical foundations, and engineering culture.

What you’ll do


In this role, you will:

  • Develop production-grade AI systems that deliver reliable, high-quality outputs in real user workflows
  • Design and maintain evaluation infrastructure (benchmarks, automated tests, monitoring) to measure quality and guide iteration
  • Experiment rapidly and ship improvements by combining LLM prompting techniques with practical engineering
  • Work end-to-end from research and prototyping through deployment, iteration, and performance tuning
  • Collaborate closely with product and engineering to translate ambiguous requirements into robust solutions


🛠️ What you bring

As our Founding AI Engineer, you’ve built AI solutions that tackle difficult problems — demonstrated through prior roles, persona...

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