Senior Machine Learning Research Engineer (6840) - Cambridge

Cambridge University Press and Assessment
Bury Saint Edmunds
3 days ago
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Job title: Senior Machine Learning Research Engineer

Salary: £64,490 - £86,255

Location: Cambridge - Triangle/Hybrid (2 days per week in the office) 

Contract: Permanent

Hours: Full Time (35 hours per week)

 

Shape the future of AI-powered learning solutions with Cambridge University Press & Assessment, a world-leading academic publisher and assessment organisation, and a proud part of the University of Cambridge.

This is an exciting opportunity for Machine Learning Research Engineers to join our innovative Applied AI team. You'll contribute to developing, deploying, and maintaining cutting-edge AI capabilities that drive the success of Cambridge English's products and services. 

 

About the Role 

As a Senior Machine Learning Research Engineer, you will play a pivotal role in driving innovation and advancing AI-powered...

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