Data Scientist - NLP

Qurious Associates Limited
City of London
1 month ago
Applications closed

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Data Scientist - £60,000 + Equity – NLP/ Machine Vision/ Python

I am currently working with a fantastic client of mine, currently they are in a great place with a highly experienced founding 4 who have gained significant backing from angel investors and a growing team of technical experts.


Their product tackles legacy technology in the private investment sector by helping to automate the majority of their manual processes using NLP & Machine Vision. This role would be a core part of the team moving forward and with the business poised for rapid growth as the completion of the first version of the product and subsequently their first major project with a large client is under way, currently it is a truly exciting time to join!


Key Skills & Responsibilities

  • Either Master’s degree in machine learning OR Bachelor’s degree in a STEM subject highly preferred
  • Strong understanding of NLP and/or machine vision, ideally with professional experience of implementing these techniques
  • A good understanding in Python data science toolkits (Scikit-learn, TensorFlow, NLTK, Pandas Etc)
  • Design data extraction & processing algorithms from unstructured & semi-structured documents
  • Work with both the engineering & product teams to bring commercial solutions for clients to production

If you think that this position sounds like a good fit for you then I would be very happy to provide more details just get me your CV through or call Charlie on .


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