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Data Analytics Manager, Academic (6648) - Cambridge

Cambridge University Press and Assessment
Cambridge
1 day ago
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Job Title: Academic Data Analytics Manager  

Salary: £48,100 - £64,375 

Location: Cambridge, UK (Hybrid – 2-3x days per week in office) 

Contract: Fixed-term (13 months), Full time (35 Hours per week) 

 

We are Cambridge University Press & Assessment, a world-leading academic publisher and assessment organisation and a proud part of the University of Cambridge.  

 

The Data Analytics Manager will lead a small team in delivering business reporting, dashboards, analytical tools, and predictive models to meet evolving business needs. This role will drive the analytics programme across our Academic business, playing a central part in Analytics and Business Intelligence development.  

 

Working closely with colleagues across the Academic Division, you will provide Business Intelligence capabilities that support a data-driven business. You'll combine expertise in data technologies with a passion for delivering timely insights that inform decisions...

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