Lead Data Scientist

Kantar
London
1 month ago
Applications closed

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Lead Data Scientist

Job Description

We’re the world’s leading data, insights, and consulting company; we shape the brands of tomorrow by better understanding people everywhere.


Kantar’s Profiles division is home to the world’s largest audience network.


With access to 170m+ people in over 100 global markets, we offer unrivalled global reach with local relevancy. Validated by industry leading anti-fraud technology, Kantar’s Profiles Audience Network delivers the most meaningful data with consistency, accuracy, and accountability – all at speed and scale.


Job Details


We’re the world’s leading data, insights, and consulting company; we shape the brands of tomorrow by better understanding people everywhere.


About The Job


As a Lead Data Scientist, you will play a pivotal role in driving excellence for business optimisation! You will harness advanced analytical techniques and machine learning expertise to extract valuable insights from complex datasets. You will embed sophisticated data science techniques inside critical applications (such as pricing, yield etc).


The selected candidate will guide a team of data scientists in collaborating with cross-functional stakeholders, identifying business opportunities, recommending data-driven strategies...

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