Tech, Digital & Data Transformation | Innovate & Lead

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Cardiff
1 month ago
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Introduction

Our tech and digital experts have helped us shift from a traditional financial services organisation to a forward-thinking company passionately striving to deliver the best for our customers. Our focus is on accelerating business outcomes through agile delivery, using tech and data to innovate and build our business for the future.

We have various job openings available, including a Business Change Analyst, Senior Backend Engineer, PMO Analyst, Senior Engineer, and Programme Manager.

Job Openings
  • Business Change Analyst: Support people through change and drive successful transformation across our organisation.
  • Senior Backend Engineer: Leverage extensive skills and experience to join our expanding software development team.
  • PMO Analyst: Drive change and deliver value through effective project governance.
  • Senior Engineer: Develop innovative features and resolve complex problems.
  • Programme Manager: Lead and deliver complex change programmes with a focus on CRM transformation.
Our Vision

We strive to create a diverse and inclusive pipeline for tech leadership positions and address the gender pay gap in technology.

Our leaders emphasize the importance of being bold, curious, and adaptable in achieving success.


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