The Problem
Advertisers want to measure campaign effectiveness. Publishers want to protect user privacy. These two goals often conflict.
Traditional approaches either: - Share too much data (privacy risk) - Share too little data (can't measure anything) - Require complex legal agreements
What Clean Rooms Actually Do
AWS Clean Rooms let multiple parties analyze combined data without seeing each other's raw data. Think of it as a secure collaboration space where:
1. Each party uploads their data to their own encrypted tables 2. They agree on specific queries they can run 3. Results are aggregated (no individual user data exposed) 4. Everything is logged and auditable
Real Use Cases
Campaign measurement: An advertiser can see if their Amazon Ads drove purchases, without Amazon sharing individual customer data.
Audience overlap: Two brands can find shared audiences without revealing their customer lists to each other.
Attribution modeling: Combine ad exposure data with conversion data across platforms, maintaining privacy boundaries.
When NOT to Use Clean Rooms
- You need real-time data (clean rooms are batch-oriented)
- Your use case doesn't involve multiple parties
- Simple aggregated reports would suffice
- You're just starting out (start simpler, add clean rooms later)
The Bottom Line
Clean rooms solve a specific problem: secure multi-party data collaboration. They're not a replacement for your data warehouse or analytics platform. They're a bridge between organizations that need to work together while maintaining privacy and control.
If you're dealing with cross-platform measurement, audience collaboration, or privacy-sensitive analytics involving multiple parties, clean rooms are worth exploring.