

Try Beta Of DreamCatcher Project
Overview :
DreamCatcher Lab is an AI-powered sleep monitoring, research, and control system. We participate in international sleep research using innovative and cutting-edge technology. Obtain detailed sleep reports and recommendations through our AI software. Participants will receive rewards to incentivize research contributions.
Target Users :
Suitable for users who want to track their sleep, improve sleep quality, and participate in sleep research.
Features
AI Sleep Monitoring
Sleep Reports and Recommendations
Incentive Programs
Dream Recording and Statistics
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