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Senior Data Analyst

Elsevier Inc.
London
1 week ago
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Overview

As a full-stack data analyst, you will manage the analytics lifecycle from requirements analysis and stakeholder engagement to ETL, analysis and data visualisation. You will provide data and analytics support across various technology improvement initiatives and make a real impact through developing reporting on Elsevier's vast multi-cloud infrastructure estate and operational performance. Engaging with stakeholders across Elsevier Technology, you will translate analytics requirements into compelling dashboards and reports on how we best manage our AWS resources, software assets and other areas of operational performance and compliance. You will build data models for reporting, support the development of data pipelines and streamline data integration for analytics. You will elevate our reporting and analytics capabilities by experimenting with and leveraging AI tools to enhance the data analysis and insights delivery process.


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