Machine Learning Engineer at High-growth NLP technology startup

NLP PEOPLE
West Wickham
3 days ago
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Machine Learning Engineer

High-growth NLP technology startup
Job Description

Location

London, UK

Why this role is remarkable
  • Work at the forefront of Natural Language Processing using state-of-the-art architectures beyond BERT.
  • Join a well-funded startup backed by top-tier VCs during a period of rapid technical expansion.
  • Enjoy a flexible hybrid working environment with a collaborative office culture in Central London.
What you will do
  • Design, train, and deploy sophisticated machine learning models for natural language understanding tasks.
  • Optimize and iterate on existing NLP frameworks to improve accuracy, latency, and scalability.
  • Collaborate with cross-functional teams to integrate ML models into production-ready software products.
The ideal candidate
  • Deep technical expertise in NLP, specifically with Transformer-based architectures and BERT-style models.
  • Strong proficiency in Python and deep learning frameworks such as PyTorch or TensorFlow.
  • Proven experience in shipping machine learning models to production in a commercial environment.
Level of experience (years)

Senior (5+ years of experience)


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