New Zealand Rugby transforms analysis with Amazon Bedrock

New Zealand Rugby (NZR) consolidated fragmented performance data into a unified, cloud-based data platform on AWS. The new platform gives high-performance staff near-real-time access to more than 1,000 data points per player per game and uses natural-language capabilities on Amazon Bedrock to surface insights for coaches and analysts. The solution helps staff identify patterns and blind spots more quickly, supports in-game adjustments, and reduces manual analysis effort.

Organization
New Zealand Rugby
Industry
Other
Location
New Zealand
Published
June 2026

Reported outcomes

150 teams

teams surfacing data fasterTime & speed

−100%insight delay reduction

Strategic outcomes

Better decisions & insightNear-real-time performance insightsScale & capacityUnified data access across 150+ teamsBetter decisions & insightMore informed performance decisionsCost efficiencyReduced repeated data collection

Primary read

Use case focus

Showing 2 of 2

  • 1Real-time analytics
  • 2Data platform modernization
  • Performance data was spread across fragmented systems.
  • Insights could take days to surface, limiting in-the-moment decision-making.
  • Workflows were largely manual and there was no centralized view of player histories.
  • NZR worked with AWS to consolidate multiple niche sports analytics systems into a unified player data platform.
  • AWS Professional Services helped design and build a scalable data foundation.
  • Amazon Redshift was used as a centralized data warehouse to unify performance data, while Amazon SageMaker was used to develop and run machine-learning models that generate insights for coaches and analysts.
  • Amazon Bedrock enabled natural-language analysis across multiple data sources so staff could identify relevant datasets and surface insights without manual analysis.
  • The architecture created an athlete-centric data ecosystem with continuity across club and international environments.
  • More than 150 teams surface data faster using Amazon Bedrock, eliminating delays that previously lasted days.
  • The platform surfaces blind spots and patterns that may otherwise go unnoticed.
  • Faster access to insights has reduced the time spent on analysis.
  • Centralizing player data has improved continuity across teams and reduced repeated data collection.
Architecture

AWS Professional Services collaborated with NZR to build a scalable data foundation. Amazon Redshift serves as the centralized data warehouse, Amazon SageMaker runs machine-learning models, and Amazon Bedrock provides natural-language, agentic AI capabilities on top of centralized performance data.

Implementation partners1
Sources & evidence1
Groundedness: 4/5Type: Customer StoryPublished: Jun 18, 2026Publisher: AWSEvidence: PrimaryConfidence: High

AI-generated summary. Verify important details with the linked sources before relying on this case.

Explore related AI use cases

Was this useful?