Artificial Intelligence Engineer

Tavus
City of London
1 month ago
Applications closed

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Job Description

AI Engineer – Rapidly Growing AI Company


I'm partnered with a fast-growing AI company that is scaling its engineering team and looking for AI Engineers who want to build next-generation intelligent systems used by major enterprises across the world.

This is an outstanding opportunity for someone who loves solving real product problems with modern AI, enjoys working end-to-end across the stack, and wants to join a team where experimentation, ownership, and impact are truly valued.

What You’ll Be Working On

You’ll help design, build, and deploy AI-driven systems that enable organisations to better understand and activate their data. Expect a blend of:

  • Building and deploying production-grade AI features
  • Working across modern cloud infrastructure, CI/CD, and high-scale systems
  • Implementing agentic workflows, tool-use frameworks, chat interfaces, and evaluation pipelines
  • Collaborating closely with product teams to iterate quickly and deliver meaningful outcomes

What They’re Looking For

We’re speaking to engineers who have:

Essential

  • Strong software engineering fundamentals (SDLC, testing, modern frameworks)
  • Hands-on experience taking code from dev → production in cloud environments...

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