Technical Product Owner (Data Engineering)

Aristocrat
London
3 days ago
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Job Description

We are seeking a Technical Product Owner (TPO) to support the Data Engineering team that powers data solutions for our Mobile apps. This role connects business collaborators, analytics, and engineering. It ensures the team delivers high-quality, scalable, and efficient data products that enable data-driven decision-making throughout the business.

The ideal candidate will combine technical knowledge of data infrastructure with strong business insight, translating complex business needs into actionable data engineering requirements.

What you'll do

Product Ownership & Prioritization

  • Own the roadmap for data infrastructure and management for 4 of our apps, aligning with business and analytics priorities.
  • Gather and translate business requirements into clear technical stories and acceptance criteria.
  • Prioritize tasks based on impact, feasibility, and business value to ensure efficient use of engineering capacity.
  • Maintain and refine the data product backlog, promoting openness and coordination across teams.

Delivery & Coordination

  • Work closely with 4-5 Data Engineers to lead delivery timelines, sprint planning, and achievement tracking.
  • Partner with Solution Architects and Leads from other teams to ensure design decisions align with scalability and performance goals.
  • Coordinate cross-f...

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