Data Scientist - NLP

London
£65000 - £70000 per annum + Benefits

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Data Scientist - NLP
Start-Up
London
£75,000 + Bonus + Benefits

THE COMPANY

Harnham are working with a tech start-up who are currently building a new Data Science team. You will work directly with the CTO on a range of interesting problems and techniques, including Natural Language Processing (NLP), recommender systems, semantic search and information retrieval.

The most important aspect of your job will be in finding new and innovative ways to monetise the data they have, and contributing to fresh ideas generated.

THE ROLE

As a Data Scientist you will be:

  • Applying advanced machine learning and NLP techniques to drive business decisions
  • Making sense of complex unstructured data sets
  • Researching and developing new techniques for the team to utilise
  • Helping the business define Data Science strategy and working on new ways to make the most of data

SKILLS AND EXPERTISE

You will have:

  • A deep knowledge of machine learning
  • Extensive experience in NLP (natural language processing) / information retrieval
  • Strong programming/coding abilities in at least one language (Python preferred)
  • A Ph.D. level education in a quantitative subject such as NLP, Information Retrieval or Machine Learning.

SALARY DETAILS

£75,000 + Bonus + Benefits

HOW TO APPLY

To be considered for this exciting opportunity, please submit your details using the Apply button on this page. For more information about similar opportunities please contact Nick Mandella at Harnham.

KEYWORDS

Data Scientist, Data Science, Machine Learning, NLP, Natural Language Processing, Information Retrieval, Python, Elasticsearch.

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London
£65000 - £70000 per annum + Benefits

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