Data Analyst

Arsenault
Bristol
1 month ago
Create job alert
TECH STACK:

SQL, PowerBI / Tableau, GCP, BigQuery


This is an exciting opportunity to join one of the largest technology brands in the world and work on various analytical projects with a focus on providing insight on their customer journeys.


ABOUT THE COMPANY

This business is a household name in the UK and their products and services are used by millions of people each day. This organisation have recently completed a major migration project bringing all of their 20 brands onto one cloud platform (GCP, BigQuery) and are now looking to scale up their respective analytics teams.


ABOUT THE ROLE

In this role you will join their growing marketing analytics team. You will work on providing in depth analysis and insights with a focus on the journeys that their customers take.


Key things you will be responsible for are:



  • Promote data driven decision making across their brands
  • Work closely with their marketing team to ensure optimal performance

SKILLS & EXPERIENCE

To be considered you MUST have experience in the following:



  • Experience working as a Data Analyst where customer / consumer journeys are the focus
  • Knowledge of Web Analytics
  • High level of experience with the required tech: SQL, BigQuery, GCP

BENEFITS

Excellent bonus and flexible (remote) working


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