Artificial Intelligence Engineer

HartleyCo
1 year ago
Applications closed

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Artificial Intelligence Offerings Lead Architect

Lead AI Engineer | Microsoft-Backed AI Scale-Up | $100M+ Funding

Salary - £150,000 - £230,000+ & Large Equity Package.


Join the Future of AI Innovation!


This is an exciting opportunity to join an ambitious Microsoft-backed AI scale-up, fresh off the back of a $30M investment as they continue to invest and expand their engineering team.


We're looking for a Lead AI Engineer to take charge of both technical leadership and hands-on development as we continue to push the boundaries of AI.


The Opportunity:


  • Lead and mentor a team of talented engineers, with the freedom to build your own team.
  • Hands-on engineering, focusing on databases, infrastructure tools (Kubernetes, Docker), and CI/CD Pipelines.
  • Be a part of a dynamic team building cutting-edge AI tools and AI agents that are revolutionising the Software Development industry


️ Key Responsibilities:


  • Provide technical leadership and mentorship to other developers.
  • Design, build, and optimise AI-driven systems.
  • Lead initiatives in infrastructure management (Kubernetes, Docker, CI CD).
  • Collaborate with cross-functional teams to deliver scalable AI solutions.


What You’ll Bring:


  • Previous experience building AI tools or AI agents.
  • Previous experience training or tuning models.
  • Proven track record of leading and managing teams of Developers.
  • Strong experience with Golang or Rust and a solid understanding of databases and infrastructure tools.
  • A passion for AI innovation and a forward-thinking approach to problem-solving.


Why Join Us?:


  • Be part of a company backed by Microsoft, with access to industry-leading resources and opportunities.
  • Drive the future of AI while working in a fast-growing, dynamic envir onment.
  • Build your own team and grow your leadership skills.
  • Competitive salary, equity options, and comprehensive benefits package.

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