Morpheus has released new API endpoints that enable users to programmatically monitor their AI inference usage and costs.
Key Features:
- Users can fetch real-time usage data through dedicated API endpoints
- AI agents and workflows can check their remaining inference balance automatically
- Supports both staking-based and direct credit purchase balances
- Provides exact token costs per prompt for better budget control
Why It Matters:
This update addresses a critical need for autonomous AI workflows - preventing unexpected spending. By giving agents the ability to monitor their own resource consumption, users can avoid scenarios where automated processes drain their accounts.
The feature is particularly useful for developers building autonomous workflows that need to operate within specific budget constraints.
For more context: Users can now programmatically fetch their usage data directly through an API endpoint. This allows users to give their agents or workflows better context on the remaining inference balance they have available (through staking or direct credit purchases).
Stop letting your AI agents fly blind with your wallet. We just dropped new billing and usage endpoints for the Inference API. Now, your autonomous workflows can programmatically check their own remaining balance and exact token costs per prompt. Lock down your spend and stop
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