What is Raindrop?
Raindrop offers a monitoring solution designed specifically for AI applications. It actively identifies when an AI product deviates from expected behavior or encounters issues, promptly delivering alerts via Slack. These notifications link directly to the problematic events, allowing teams to delve into specific conversations or traces.
This capability facilitates a deeper understanding of the root causes behind AI failures. By analyzing patterns in user interactions and explicit feedback signals like thumbs downs or regenerations, developers and product teams can pinpoint specific issues, such as context retention problems, response quality degradation, or task completion failures. The platform supports tracking custom behaviors described in natural language, aiding in the segmentation of app performance and the identification of emerging problems or user frustrations, ultimately enabling faster fixes and informed product improvements.
Features
- Issue Detection: Automatically identifies when the AI misbehaves.
- Slack Notifications: Delivers real-time alerts about detected issues via Slack.
- Signals (Thumbs Up/Down): Logs and analyzes explicit user feedback signals.
- Natural Language Tracking: Allows tracking of any behavior described using natural language.
- Deep Research: Enables in-depth investigation into AI performance and issues (Pro plan).
- Topic Clustering: Groups related issues or feedback topics together automatically (Pro plan).
- Custom Topics/Issues: Define and track specific issues relevant to your application (Pro plan).
- Tracing: Provides detailed traces of AI interactions for debugging (Pro plan).
- Edge‑PII Redaction: Helps maintain user privacy by redacting personally identifiable information (Pro plan).
- Dataset Creation: Facilitates the creation of datasets from logged interactions (Pro plan).
- Semantic Search: Allows searching through interaction data based on meaning (Pro plan).
Use Cases
- Monitoring AI application performance and reliability.
- Identifying and diagnosing AI failures or unexpected behavior.
- Understanding patterns in positive and negative user feedback.
- Tracking specific AI behaviors or feature usage.
- Debugging AI models based on real-world interactions.
- Improving AI product quality and user satisfaction.
- Informing AI product development and engineering priorities.
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Raindrop Uptime Monitor
Average Uptime
100%
Average Response Time
89.33 ms
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