release-readiness-triage-mcp
Aggregates CI failures and outputs GO/NO_GO release verdicts
🚦 release-readiness-triage-mcp
Stop reading CI logs. Start getting verdicts.
MCP server that aggregates test failures, cross-references flakiness history, and outputs a GO / NO_GO / INVESTIGATE release decision — so your AI agent can triage a broken CI run in seconds instead of asking you to read 3000 lines of logs.
🤔 The problem
In any real codebase, CI always has something failing. The hard question isn't "are there failures?" — it's "are these failures real regressions, or just the usual noise?"
Answering that requires correlating three signals at once:
- 🔍 Error signatures — is this the same failure repeated 12 times, or 12 different problems?
- 📊 Flakiness history — is this test known to be unreliable?
- 🔗 Code changes — is the failing test actually related to what changed?
An AI agent can't do this without structured tools. Raw CI logs are thousands of lines. Flakiness databases are external. Code→test mapping requires AST analysis. Without this MCP, the agent just guesses.
🛠️ Tools
aggregate_suite_failures
Groups failures by normalized error signature, deduplicates repeated errors, categorizes as assertion / timeout / network / crash. Pass customInfraPatterns for cloud-specific errors.
cross_reference_flakiness
Scores each failure against your flakiness history: KNOWN FLAKY, MILDLY FLAKY, or NO HISTORY.
correlate_code_changes
Matches changed files against failing tests. Works standalone or with pre-computed affected test lists from ast-impact-mapper-mcp.
generate_release_recommendation
The final step. Outputs GO / NO_GO / INVESTIGATE with confidence score and full breakdown. Supports format: "markdown" for GitHub PR comments and Slack.
🧪 What it looks like in practice
5 failures in CI. What's real, what's noise?
failures:
- Auth Suite > login with expired token → "Expected status 200, got 401"
- API Suite > health check → "connect ECONNREFUSED 127.0.0.1:3000"
- Button Suite > renders button correctly → "Expected null, got <button>Submit</button>"
- Search Suite > debounce timing → "Expected 42, received 43"
- Storage Suite > upload avatar → "GCP quota exceeded for this project"
changedFiles: ["src/components/Button.tsx"]
affectedTests: ["renders button correctly"]
customInfraPatterns: ["GCP quota exceeded"]
format: "markdown"
Output:
## 🔴 Release Recommendation: NO_GO (75% confidence)
> 1 confirmed regression(s) directly correlated with code changes. Do not release.
| Category | Count |
| ------------------- | ----- |
| Total failures | 5 |
| 🔴 Real regressions | 1 |
| 🟡 Known flaky | 2 |
| ⚪ Infra blips | 2 |
| ❓ Unknown | 0 |
### 🔴 Blockers (must fix before release)
**Button Suite > renders button correctly**
- Test is directly affected by code changes in this commit
- `Expected null, got <button>Submit</button>`
### ✅ Safe to ignore
- ~~Auth Suite > login with expired token~~ — Historically flaky: 73% failure rate in history
- ~~API Suite > health check~~ — Error pattern matches infrastructure issues (network)
- ~~Search Suite > debounce timing~~ — Mildly flaky: 22% historical failure rate
- ~~Storage Suite > upload avatar~~ — Error pattern matches infrastructure issues (network)
One tool call. One verdict. Go fix Button.tsx.
⚡ Setup
{
"mcpServers": {
"release-readiness-triage": {
"command": "npx",
"args": ["-y", "release-readiness-triage-mcp"]
}
}
}
🚀 Usage
"Here are the failures from our CI run, our flakiness database, and the files changed in this PR. Is it safe to release?"
The agent calls generate_release_recommendation and returns a verdict with a full breakdown — ready to paste into a PR comment or Slack.
Works standalone, or as a meta-orchestrator on top of:
- flakiness-knowledge-graph-mcp — for flakiness history
- ast-impact-mapper-mcp — for code→test correlation
- playwright-trace-decoder-mcp — for trace-level failure analysis
📦 Links
- npm: npmjs.com/package/release-readiness-triage-mcp
- GitHub: github.com/vola-trebla/release-readiness-triage-mcp
License
MIT
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