Principal Data Scientist

Cambridge University Press & Assessment
Newton
1 month ago
Applications closed

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Job Title:Principal Data Scientist

Apply below after reading through all the details and supporting information regarding this job opportunity.
Salary:£74,200 - £99,250
Location:Cambridge/Hybrid with 2 day per week at the office
Contract:Permanent
Hours:Full time 35 hours per week
Are you excited by the challenge of applying data science and AI to problems that genuinely matter? xrlawcv At Cambridge Assessment, we are transforming how assessments are designed, delivered and marked worldwide. As a Principal Data Scien...

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