Customer Campaign Data Analyst - B2C

Project People
Reading
3 weeks ago
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Customer Campaign Analyst - B2C - Mobile Telecoms - Reading - 6-Month Contract

We're looking for a junior, data-focused analyst to support customer marketing campaign reporting and analysis within a fast-paced, agile environment.

This role is ideal for someone early in their data career who enjoys working with numbers, dashboards and performance reporting, and wants to build hands-on experience in customer and campaign analytics.

What you'll be doing:

Supporting campaign performance reporting, including regular updates and post-campaign analysis

Updating and maintaining Tableau dashboards used to track campaign results

Running SQL queries to extract and validate campaign data

Helping with test-and-learn activity such as A/B testing and results analysis

Monitoring data quality and flagging any issues with campaign reporting

Supporting customer segmentation and control group setup

Working with marketing and digital teams to review results and share insights

Helping maintain a library of past campaign analysis to inform future activity

What we're looking for:

Experience in data analysis, reporting or marketing analytics

Working knowledge of SQL and Excel

Working knowledge of Tableau or Power BI

An interest in customer behaviour, marketing or campaign performance

A curious, detail-oriented mindset and willingness to learn

This is a 6-month contract offering a great opportunity to develop core data and reporting skills in a real-world campaign environment.

Project People is acting as an Employment Business in relation to this vacancy

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