@RespanAI: AI observability platforms raised $1B+ to reinvent print debugging for the agent era. Reading traces manually is not a …
Summary
Respan introduces an AI observability platform that automatically catches issues in traces, aiming to replace manual debugging for agent-based workflows.
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Cached at: 05/24/26, 02:15 AM
AI observability platforms raised $1B+ to reinvent print debugging for the agent era.
Reading traces manually is not a scalable production workflow.
We think the stack should catch issues itself.
Meet Respan. https://t.co/Y4YWfUfXYi
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