Marketing Data Analyst

Propel
London
1 month ago
Applications closed

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Overview

Direct message the job poster from Propel

Contracts - Associate Director - Heading up the Contract division within Propel

Responsibilities

The role requires someone to analyse marketing data to drive insights, optimise campaigns, and improve marketing effectiveness across the clients marketing initiatives.

Qualifications

  • Experience in marketing analytics or data analysis
  • Strong analytical skills with proficiency in SQL
  • Experience with marketing analytics tools and platforms
  • Understanding of marketing metrics, KPIs, and attribution models
  • Ability to translate data into actionable marketing insights
  • Excellent communication and presentation skills
  • Experience working with Tableau or Looker is a bonus

Seniority level

  • Mid-Senior level

Employment type

  • Contract

Job function

  • Marketing

Industries

  • Marketing Services


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