Data Scientist - £95k

London
£90000 - £95000 per annum + Bonus

Data Scientist
London
£95,000 + Bonus

THE ROLE:

A well-known financial services institution is looking for a Senior Data Scientist to join their Data Science function in London to help build a new data science practice from the ground-up.

You will help form a team focused on bringing machine learning / advanced analytics best-practice into the business to help the acquire new customers and retain existing ones.

Each Data Scientist will also be required to spend a proportion of their time on R&D related projects to help the business across several key areas.


WHAT YOU NEED:

  • A deep knowledge of both supervised and unsupervised machine learning techniques
  • Strong communication skills
  • An MSc or equivalent in a statistical/quantitative subject
  • Strong skills in Python
  • Experience in using SQL (Hadoop experience is a bonus)
  • A track record in using data science to draw hidden insights from data

THE BENEFITS

You can earn up to £95,000 + bonus + benefits in this position.

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 roles please contact Nick Mandella at Harnham.

KEYWORDS

R, Python, SQL, Hadoop, Data Scientist, Data Science, Machine Learning, Supervised Learning, Unsupervised Learning, Financial Services, Retail Bank, Customer, Data, Analyst, Analysis, London.

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VACNM-36
London
£90000 - £95000 per annum + Bonus
  1. Permanent
  2. Data science

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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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