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Digital Insight Analyst - Contract

Harnham
London
8 months ago
Applications closed

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Digital Insight Analyst - Contract
Marketing Agency
London - Hybrid
£350-£400 per day - Inside IR35

Great contract opportunity with a Marketing Agency who are looking for a Digital Insight to support one of their key clients on a high-impact project focused on marketing channel performance and statistical analysis.

This is a role for someone who loves getting into the data - and knows how to turn complex insights into clear, actionable recommendations for marketing teams.

Role & Responsibilities

  • Statistical analysis of marketing performance across paid, organic, CRM, online and offline channels
  • Building and running A/B tests (on features, audiences, or channels) and translating the results into business recommendations
  • Running regression analysis, forecasting, and presenting insights to non-technical stakeholders
  • Post-campaign analysis and reporting - helping clients understand what worked and what didn't
  • Working closely with GA4 data, Excel data extracts, and slicing/dicing data using Python

Skills & Experience

  • Strong experience with Google Analytics 4 (GA4)
  • Proficient in Python - particularly for data wrangling, statistical testing (T-tests, etc.), and data analysis
  • Comfortable working with Excel as a data source (data manipulation and cleaning)
  • Experience with BI tools - Power BI preferred, but Tableau or Looker are also fine
  • Solid grasp of marketing concepts - understanding how paid, organic, CRM channels work and how to optimise them
  • Proven ability to present data-driven stories to non-technical audiences

Benefits

£350-£400 per day, inside IR35, London, 2-3 days in the office

How to Apply

Register your interest by sending your CV to Lloyd Dunstall via the Apply link on this page

Digital / Insight / Analyst / Statistics / AB Tests / GA4 / Python / Marketing Analytics

Desired Skills and Experience

Role & Responsibilities

Statistical analysis of marketing performance across paid, organic, CRM, online and offline channels
Building and running A/B tests (on features, audiences, or channels) and translating the results into business recommendations
Running regression analysis, forecasting, and presenting insights to non-technical stakeholders
Post-campaign analysis and reporting - helping clients understand what worked and what didn't
Working closely with GA4 data, Excel data extracts, and slicing/dicing data using Python

Skills & Experience

Strong experience with Google Analytics 4 (GA4)
Proficient in Python - particularly for data wrangling, statistical testing (T-tests, etc.), and data analysis
Comfortable working with Excel as a data source (data manipulation and cleaning)
Experience with BI tools - Power BI preferred, but Tableau or Looker are also fine
Solid grasp of marketing concepts - understanding how paid, organic, CRM channels work and how to optimise them
Proven ability to present data-driven stories to non-technical audiences

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