Global CRM Data Strategy Journey Planner

City of London
4 months ago
Applications closed

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Global CRM Strategy and Journey Planner

Step into an exciting opportunity with a global travel and tourism company, where you can play a pivotal role in shaping customer experiences. As a Global CRM Strategy and Journey Building Lead, you will be instrumental in enhancing customer engagement, delivering personalised communication strategies, and driving significant revenue growth.

Key Responsibilities

The role combines customer journey planning and email campaign execution with data-driven reporting, lead conversion analysis, and strategic insights from Salesforce data to optimise engagement and revenue.

Essential Skills

Salesforce Marketing Cloud Expertise: SQL and AMPscript
Journey Builder Mastery: Expertise in designing and managing intricate email journeys is crucial. This includes audience segmentation, automation, and ensuring a personalised approach to customer communication.
Data Analysis Proficiency: A solid grasp of data visualisation tools such as Power BI, Tableau, or Excel

Offered:

Up to £70,000 per annum

Flexible remote working

10% annual bonus

BUPA healthcare

Travel discounts

If you think you're the right fit for the role, please apply! No sponsorship provided!

To find out more about Computer Futures please visit

Computer Futures, a trading division of SThree Partnership LLP is acting as an Employment Business in relation to this vacancy | Registered office | 8 Bishopsgate, London, EC2N 4BQ, United Kingdom | Partnership Number | OC(phone number removed) England and Wales

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