AI/ML Engineer, Python Developer, NLP, London, COR7193

Beautyk Creative
London
1 month ago
Applications closed

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Are you an experienced Python Engineer with hands-on experience in AI/ML projects and NLP, seeking your next challenge? This could be the perfect opportunity for you!


The Role

As an AI/ML Engineer, you'll play a crucial role in developing and deploying a cutting-edge AI-powered enterprise platform. You'll design and implement innovative solutions, working as an integral member of a specialist AI team.

The role requires prior experience working on AI/ML projects, with strong expertise using Python. Experience developing and deploying machine learning models, familiarity with NLP and LLMs, and experience with AI agents (LangSmith), would all be highly beneficial.

The Company

Our client is an early-stage startup dedicated to advancing AI technology, focusing on building transformative AI-powered platforms. As an AI/ML Engineer, you'll be part of a collaborative, growth-focused environment where creativity and problem-solving are at the heart of innovation.

This is a hybrid remote role, with three days a week working from their London offices.

What You'll Need

To excel in this role, the ideal candidate will have:

  • Proficiency in Python is a must, with full stack experience (React, Next.js) being a plus.
  • Strong experience in AI/ML techniques: data analytics, statistical modelling, machine learning libraries and algorithms.
  • A degree in maths, computing, or a related discipline.
  • Prior experience with NLP and LLMs, with AI agent (LangSmith) experience being advantageous.

Ready to Make Your Move?

If you're ready to advance your career, apply today and join our client's forward-thinking team as an AI/ML Engineer!

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