AI Technology Specialist, Digital Innovation

Beagle Talent
Liverpool
11 months ago
Applications closed

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Beagle are recruiting an AI Technology Specialist to lead a digital innovation project for a global production management consultancy. The role will focus on developing AI-enhanced capabilities for their proprietary analysis platform, focusing on implementing LLM solutions across multiple models.


The ideal candidate will be a Creative Technologist, ML specialist or inquisitive programmer with hands on experience in AI implementation, machine learning, and prototype development. You will serve as the technical lead for a workstream focused on transforming the platforms capabilities with AI, leveraging a rapid, iterative approach, quickly prototyping MVPs and refining solutions through agile experimentation.


This contract offers an exciting opportunity to work with a global strategic production management consultancy, leveraging AI to enhance their SaaS product.


Experience required:

  • Experience with Large Language Models (LLMs) including hands-on work with ChatGPT, Microsoft Copilot, Claude, Gemini, and Mistral
  • Strong machine learning prototype development skills
  • The ability to develop AI prototypes with clear interaction points
  • Expertise in AI-driven data extraction and analysis across multiple file formats.
  • Advanced skills in metadata management and searchable data repositories

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