Deep Learning Scientist

London
£85000 - £90000 per annum

Deep Learning Scientist
London (Start-up)
£90,000

OVERVIEW

Harnham are currently working with a deep AI tech company in Central London who are looking to add a Deep Learning Scientist to the team. As a group they use sophisticated machine learning algorithms and Natural Language Processing techniques to solve a wide range of business problems.

The company have achieved notable success so far with their industry leading product, as well as significant funding. They already have a fantastic team in place and are now looking to bolster their deep learning efforts with several key hires in 2020.


THE ROLE

On a daily basis you will be:

  • Researching new machine learning and deep learning algorithms to help solve language and text-based problems
  • Deploying machine learning and deep learning models to production
  • Help the company maintain their cutting-edge status
  • Working closely with the Founders and helping to grow the company


SKILLS AND EXPERTISE

  • A strong experience programming with Python (experience with Tensorflow or Keras is great)
  • Experience working with NLP and deep learning
  • An MSc or Ph.D. in Computer Science, Machine Learning, Artificial Intelligence, Deep Learning etc.
  • Experience in productionising ML models.


HOW TO APPLY

To be considered for this exciting opportunity, please submit your details using the Apply button on this page. Or for more information regarding other roles please contact Nick Mandella at Harnham.

SALARY

This pays up to £90,000 + benefits.

KEYWORDS

Python, Keras, Tensorflow, Deep Learning, Machine Learning, Machine Learning Engineer, Data Science, Data Scientist, Artificial Intelligence, AI, Start-up, Tech.

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VACN303
London
£85000 - £90000 per annum
  1. Permanent
  2. Natural Language Processing

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Harnham blog & news

With over 10 years experience working solely in the Data & Analytics sector our consultants are able to offer detailed insights into the industry.

Visit our Blogs & News portal or check out our recent posts below.

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