Web Data Analyst
London / £60000 - £65000
£60000 - £65000
Role - Web Data Analyst
Salary - £65,000
Location - London
As a Web Data Analyst, you will be responsible for collecting, analysing, and interpreting large sets of web data to provide insights and recommendations that inform digital strategy.
- Collect and analyse web data using tools such as Google Analytics, Adobe Analytics, and other web analytics platforms.
- Develop and maintain dashboards, reports, and visualizations that provide insights into web performance.
- Collaborate with cross-functional teams to identify key business questions and develop hypotheses to test.
- Use statistical techniques and data visualisation to analyse and interpret web data and develop actionable insights.
- Monitor and evaluate web performance metrics and provide recommendations for optimisation.
- Stay up-to-date with industry trends and best practices in web analytics and data visualisation.
- Bachelor's degree in a quantitative field such as Mathematics, Statistics, or Computer Science.
- 5+ years of experience in web analytics or a related field.
- Proficient in web analytics tools such as Google Analytics, Adobe Analytics, or similar platforms.
- Experience with data visualization tools such as Tableau, Power BI, or similar tools.
- Strong SQL skills.
- Excellent communication and collaboration skills.
How to Apply
Please register your interest by sending your CV to Olawale Garuba at Harnham via the Apply link on this page
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