Machine Learning Engineer (0–3 Years Experience)

IT Graduate Recruitment
London
4 days ago
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Machine Learning Engineer (LLM / AI Systems)

London / Hybrid | 0–3 Years Experience | Competitive Salary

Are you obsessed with AI and large language models?

We’re an early-stage startup building real-world products powered by LLMs — from intelligent copilots to adaptive automation tools — and we’re looking for curious minds to help us shape the future of AI.

What You’ll Be Doing

  • Research, train, and fine-tune large language models (LLMs) for real-world applications.
  • Develop and optimise pipelines for data collection, preprocessing, and model evaluation.
  • Collaborate with product engineers to deploy models into scalable production systems.
  • Experiment with prompt engineering, RAG architectures, and multimodal models.
  • Contribute to internal tools for monitoring, testing, and improving AI performance.
  • Stay on the edge of ML/AI research — we give you time and resources to explore, learn, and publish.

What We’re Looking For

  • 0–3 years of experience in Machine Learning, Data Science, or NLP/LLM.
  • Strong Python skills; exposure to PyTorch / TensorFlow / Hugging Face.
  • (Bonus) understand fundamentals of deep learning, LLMs, and MLOps, vector databases, embeddings, or retrieval-augmented generation (RAG).
  • Loves solving complex problems and thrives in a fast-mov...

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