AI Engineer - Senior to Mid

numi
Birmingham
1 year ago
Applications closed

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numi are proud to be working with an company looking for anAI Engineerto help integrate cutting-edge AI into their Learning Technologies products.


This role is all about turning AI research into real, impactful product features.


What You’ll Be Doing

  • Building & integrating AI models– Design, develop, and deploy AI solutions that make a real difference.
  • Optimising & improving performance– Test, refine, and scale AI models to keep everything running smoothly.
  • Research & innovation– Stay ahead of AI trends, explore new models (LLMs, NLP, etc.), and bring fresh ideas to the table.
  • Collaboration & strategy– Work with developers, product managers, and stakeholders to ensure AI solutions align with business goals.
  • Communication & leadership– Break down complex AI concepts for different audiences and help upskill teams in AI tech.


What They’re Looking For

  • Solid AI/ML experience with a strong grasp ofPython& frameworks likeTensorFlow/PyTorch.
  • Strongback-end engineeringskills (Python or Node.js, bonus points for React/front-end experience).
  • Experiencedeploying AI modelsinto real-world applications.
  • Great problem-solving skills and the ability to think outside the box.
  • Passion for AI, a self-starter mindset, and the drive to stay ahead of industry trends.


Why Join?

  • Flexible working– Work where and how you work best.
  • Career growth– Opportunities to develop fast and expand your skillset.
  • Unlimited holiday– Because work-life balance matters.
  • Great team & culture– Work with passionate, creative people in an innovative environment.


This role is fully remote & we are looking at up to £100,000 for the right AI Engineers - drop me an email at 🚀

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