TraceRoot.AI
TraceRoot.AI provides an open-source self-healing layer for AI agents, offering observability, tracing, and automated debugging to resolve production issues.
At a Glance
- AI Startups
- Enterprise Engineering Teams
- Developer Tooling
- Open Source Communities
AI Tools by TraceRoot.AI
(1)TraceRoot.AI
AI Root Cause Debug Agent
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Latest News
TraceRoot.AI launches on Product Hunt with self-healing features for AI agents.
TraceRoot.AI announces full integration with LangGraph and LangChain.
TraceRoot.AI open-sources its core observability SDK.
TraceRoot.AI joins Y Combinator S25 Batch.
Products & Services
Automated issue resolution using sandboxed agents that generate PRs based on trace logs and GitHub context.
OpenTelemetry-compatible SDKs for capturing LLM calls, tool invocations, and agent actions across Python and JS/TS.
A managed observability platform for teams to visualize and debug agentic workflows with enterprise security.
Market Position
TraceRoot positions itself as an 'open-source self-healing layer' that goes beyond simple observability by actively fixing bugs, distinguishing itself from generic tools like LangSmith or Arize.
Leadership
Founders
Xinwei He
Co-founder and CEO. Previously a Founding Engineer at Kumo.AI. Holds an MS in Computer Science from Stanford University.
Zecheng (Clarence) Zhang
Co-founder and CTO. Previously a Founding Engineer at Kumo.AI and Software Development Engineer at AWS. Core contributor to the CAMEL-AI open-source project. Holds an MS in Computer Science from Stanford University.
Executive Team
Xinwei He
CEO
Founding Engineer @ Kumo.AI, Stanford CS MS.
Zecheng (Clarence) Zhang
CTO
Founding Engineer @ Kumo.AI, AWS SDE, Stanford CS MS.
Founding Story
Founded by former Kumo.AI engineers who experienced the difficulties of debugging non-deterministic AI agents. They built TraceRoot to provide a self-healing layer that can automatically analyze traces and logs to fix production bugs.
Business Model
Revenue Model
Subscription-based SaaS with open-core SDK. Charges based on events, AI runs, and seat count.
Pricing Tiers
50k events, 10 AI runs, 3 days retention, BYOK supported.
500k events, 100 AI runs, 14 days retention, email support.
2M events, 500 AI runs, 30 days retention, Discord/Slack support.
Unlimited events, custom retention, SOC 2 / HIPAA compliance.
Target Markets
- AI Startups
- Enterprise Engineering Teams
- Developer Tooling
- Open Source Communities
- Debugging production AI agents
- Observability for multi-agent workflows
- Automated bug fixing for LLM applications
- Compliance and security monitoring for AI agents
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