Data Scientist - Loyalty Analytics

London
£60000 - £65000 per annum + Benefits

Data Scientist
London
£65,000 + Benefits

OVERVIEW

This is an opportunity to join a leading global consultancy who are the industry leaders in customer loyalty analytics.

The role will require you to utilise your wide range of data science skills in order to provide insights to some of the world's biggest brands. You will experiment with new techniques and data sets, and collaborate within a wider team of 40+ Data Science experts.

There is also some work using NLP to help understand social media data.


THE ROLE

As a Data Scientist you will be:

  • Finding new and creative ways to source data and create insights
  • Building advanced statistical models and algorithms to real world data sets
  • Using NLP techniques to understand large volumes of unstructured and messy data
  • Working within a collaborative team of 30+ Data Scientists

SKILLS AND EXPERTISE

To be considered for this position you must have the following:

  • Python or R
  • Working knowledge of large and unstructured data sets
  • An MSc or Ph.D. in a quantitative discipline
  • A strong understanding of machine learning
  • Good knowledge of a database query language (SQL preferred)

BENEFITS

As a Data Scientist you could earn up to £65,000 + benefits.

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 about other Data Scientist positions, please contact Nick Mandella at Harnham.

KEYWORDS

Python, R, Machine Learning, Hadoop, SQL, Modelling, Hive, Data Scientist, Data Science, Big Data, NLP, Natural Language Processing.

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VACNRM20
London
£60000 - £65000 per annum + Benefits
  1. Permanent
  2. Data science

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