Applied Data Scientist - NLP

Greybridge Search & Selection
Glasgow
1 week ago
Applications closed

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Role: Applied Data Scientist

Contract: Outside IR35 - Initial 9 months (Fully Remote)


I am currently immediately looking for a vastly talented Applied Data Scientist to join my client on a fully remote contract.


As an Applied Research Scientist you will be working on NLP applications for risk, fraud, and investigation products. Your job will be to:

  • Experiment with different state-of-the-art as well as traditional NLP approaches to find the best solution for the given problem.
  • Independently determine appropriate data and modelling choices.
  • Effectively communicate with technical and non-technical stakeholders.
  • Follow best practices for ML experimentation and MLOps.


Required Qualifications:

  • PhD in a relevant discipline or Master’s plus a comparable level of experience
  • Experience with traditional ML models and feature engineering.
  • Experience with LLMs.
  • Strong programming skills (e.g., Python) and experience with modern ML frameworks (e.g., PyTorch, TensorFlow, LangChain).
  • Collaborating with other Researchers, Product, Engineering and Business Stakeholders in an agile manner to demonstrate value and iterate with customer feedback.


For immediate consideration, please apply today

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