MCP Agent Trace Inspector
Step-by-step observability for MCP agent workflows — trace, inspect, and debug multi-step agent executions
MCP Agent Trace Inspector
npm mcp-agent-trace-inspector package
Local-first, MCP-native observability for agent workflows. Every tool call, prompt transformation, latency, and token count is recorded in a local SQLite database — no cloud account, no API key, no traces leaving your machine. Built specifically for MCP rather than bolted onto a generic LLM proxy.
Tool reference | Configuration | Contributing | Troubleshooting | Design principles
Key features
- Tool call tracing: Captures inputs, outputs, latency, and token usage for every step in a workflow.
- Persistent storage: Traces survive session restarts; stored locally in SQLite with no external dependencies.
- HTML dashboard: Generates a self-contained single-file dashboard with an interactive step timeline.
- Token cost estimation: Calculates USD cost per trace using a configurable model pricing table — no API calls required.
- Trace comparison: Diff two traces side by side to measure the impact of prompt or tool changes.
- Low overhead: Adds less than 5ms per step; never becomes the bottleneck.
Why this over LangSmith / AgentOps?
| mcp-agent-trace-inspector | LangSmith / AgentOps | |
|---|---|---|
| Data location | Local SQLite — never leaves your machine | Cloud-hosted; traces sent to external servers |
| Setup | npx one-liner, zero config | Account signup, API key, SDK instrumentation |
| MCP-aware | Native — records tool calls as first-class steps | Generic LLM proxy; MCP structure is opaque |
| Run diffs | Built-in compare_traces diff | Separate paid feature or manual export |
| Cost estimation | Offline tiktoken + configurable pricing table | Requires live API traffic through their proxy |
| Overhead | <5ms per step | Network round-trip per event |
If your traces contain sensitive tool outputs, proprietary prompts, or data that must stay on-device, this is the right tool. If you need cross-team trace sharing or a managed SaaS, use LangSmith.
Disclaimers
mcp-agent-trace-inspector stores tool call inputs and outputs locally in a SQLite database. Traces may contain sensitive information passed to or returned from your tools. Review trace contents before sharing dashboard exports. Traces are not automatically transmitted; optional alert webhooks are available.
Requirements
- Node.js v22.5.0 or newer.
- npm.
Getting started
Add the following config to your MCP client:
{
"mcpServers": {
"trace-inspector": {
"command": "npx",
"args": ["-y", "mcp-agent-trace-inspector@latest"]
}
}
}
To set a custom storage path:
{
"mcpServers": {
"trace-inspector": {
"command": "npx",
"args": [
"-y",
"mcp-agent-trace-inspector@latest",
"--db=~/traces/my-project.db"
]
}
}
}
MCP Client configuration
Amp · Claude Code · Cline · Cursor · VS Code · Windsurf · Zed
Your first prompt
Enter the following in your MCP client to verify everything is working:
Start a trace called "test-run", then list the files in the current directory, then end the trace and show me the summary.
Your client should return a summary showing step count, total tokens, and latency.
Tools
Trace lifecycle (3 tools)
trace_start— begin a new trace; returns atrace_idfor subsequent callstrace_step— record one tool call step (inputs, outputs, optional token count and latency)trace_end— mark a trace as completed
Inspection (4 tools)
list_traces— list stored traces with names, statuses, and timestampsget_trace_summary— token totals, step count, latency, and cost estimate for a tracecompare_traces— diff two traces side by side (step counts, tokens, latency)extract_reasoning_chain— extract only reasoning/thinking steps from a trace
Export (3 tools)
export_dashboard— generate a self-contained single-file HTML dashboard with latency waterfallexport_otel— export one or all traces in OpenTelemetry OTLP JSON span formatexport_compliance_log— export the compliance audit log as JSON or CSV, with optional date range filtering
Operations (3 tools)
configure_alerts— configure alert rules on latency, error rate, or cost; fire to Slack or generic webhooksset_retention_policy— set how many days to keep traces (in-memory; must be called beforeapply_retention)apply_retention— archive traces older than the configured threshold; delete traces past 2x the threshold
Configuration
--db / --db-path
Path to the SQLite database file used to store traces.
Type: string
Default: ~/.mcp/traces.db
--retention-days
Automatically delete traces older than N days. Set to 0 to disable.
Type: number
Default: 0
--pricing-table
Path to a JSON file containing custom model pricing ($/1K tokens). Overrides the built-in table.
Type: string
--no-token-count
Disable tiktoken-based token counting. Traces will omit token usage metrics.
Type: boolean
Default: false
Pass flags via the args property in your JSON config:
{
"mcpServers": {
"trace-inspector": {
"command": "npx",
"args": ["-y", "mcp-agent-trace-inspector@latest", "--retention-days=30"]
}
}
}
Design principles
- Append-only traces: Steps are immutable once recorded. Trust requires integrity.
- Local-first: All core functionality works without a network connection.
- Portable dashboards: HTML exports are always single-file; no server required to view them.
Verification
Before publishing a new version, verify the server with MCP Inspector to confirm all tools are exposed correctly and the protocol handshake succeeds.
Interactive UI (opens browser):
npm run build && npm run inspect
CLI mode (scripted / CI-friendly):
# List all tools
npx @modelcontextprotocol/inspector --cli node dist/index.js --method tools/list
# List resources and prompts
npx @modelcontextprotocol/inspector --cli node dist/index.js --method resources/list
npx @modelcontextprotocol/inspector --cli node dist/index.js --method prompts/list
# Call a tool (example — replace with a relevant read-only tool for this plugin)
npx @modelcontextprotocol/inspector --cli node dist/index.js \
--method tools/call --tool-name list_traces
# Call a tool with arguments
npx @modelcontextprotocol/inspector --cli node dist/index.js \
--method tools/call --tool-name list_traces --tool-arg key=value
Run before publishing to catch regressions in tool registration and runtime startup.
Contributing
See CONTRIBUTING.md for full contribution guidelines.
npm install && npm test
MCP Registry & Marketplace
This plugin is available on:
Search for mcp-agent-trace-inspector.
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