Deploy a unified health monitoring system that automatically collects and consolidates AWS Health events from multiple accounts into an interactive, customizable dashboard. Gain comprehensive visibility into service health across your entire AWS environment.
Overview
This Guidance demonstrates how to analyze AWS Health events across multiple AWS accounts using natural language queries and generative business intelligence. Organizations managing thousands of AWS resources can transform operations and security monitoring at scale, transitioning from manual processing to automated analysis. This Guidance enables site reliability engineering (SRE) teams and leadership to gain quick, comprehensive insights into the health of their AWS environment through intuitive queries. This approach streamlines monitoring of service health, planned changes, and other critical AWS notifications, making it easier to maintain optimal performance and respond to potential issues proactively.
Benefits
Centralize health monitoring across your organization
Accelerate incident response with natural language queries
Transform complex health data into actionable insights using Amazon Q's natural language capabilities. Quickly identify impacted resources by asking simple questions like "Show me impacted Lambda resources," enabling faster problem diagnosis and resolution.
Reduce operational overhead through automation
Eliminate manual health event processing with a serverless pipeline that automatically collects, transforms, and visualizes AWS Health data in real time. Enable your technical teams to focus on innovation rather than monitoring.
How it works
These technical details feature an architecture diagram to illustrate how to effectively use this solution. The architecture diagram shows the key components and their interactions, providing an overview of the architecture's structure and functionality step-by-step.
Step 1
Deploy with confidence
Everything you need to launch this Guidance in your account is right here.
Let's make it happen
Ready to deploy? Review the sample code on GitHub for detailed deployment instructions to deploy as-is or customize to fit your needs.