- Add intelligent-router.sh hook for automatic agent routing - Add AUTO-TRIGGER-SUMMARY.md documentation - Add FINAL-INTEGRATION-SUMMARY.md documentation - Complete Prometheus integration (6 commands + 4 tools) - Complete Dexto integration (12 commands + 5 tools) - Enhanced Ralph with access to all agents - Fix /clawd command (removed disable-model-invocation) - Update hooks.json to v5 with intelligent routing - 291 total skills now available - All 21 commands with automatic routing 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
5.5 KiB
5.5 KiB
GitHub Issue Auto Debug Script Usage Guide
Overview
prometheus/script/github_issue_debug.py is an automated script for:
- Retrieving detailed information (title, body, comments, etc.) of a specified issue from the GitHub API.
- Automatically uploading the GitHub repository to Prometheus.
- Using Prometheus's AI analysis capabilities to debug the issue.
- Returning analysis results, fix patches, etc.
Prerequisites
1. Start Prometheus Service
Ensure the Prometheus service is running:
# Start using docker-compose
docker-compose up --build
2. Obtain GitHub Personal Access Token
- Visit https://github.com/settings/tokens
- Click "Generate new token (classic)"
- Select the appropriate permission scope:
repo(access private repositories)public_repo(access public repositories)
- Generate and save the token.
Basic Usage
Simple Example
python github_issue_debug.py \
--github-token "your_token_here" \
--repo "owner/repository" \
--issue-number 42
Full Parameter Example
python github_issue_debug.py \
--github-token "ghp_xxxxxxxxxxxxxxxxxxxx" \
--repo "microsoft/vscode" \
--issue-number 123 \
--prometheus-url "http://localhost:9002/v1.2" \
--output-file "debug_result.json" \
--run-build \
--run-test \
--run-reproduction-test \
--run-regression-test \
--push-to-remote \
--image-name "python:3.11-slim" \
--workdir "/app" \
--build-commands "pip install -r requirements.txt" "python setup.py build" \
--test-commands "pytest tests/" \
--candidate-patches 3
Parameter Details
Required Parameters
--github-token: GitHub Personal Access Token--repo: GitHub repository name in the formatowner/repo--issue-number: Issue number to process
Optional Parameters
--prometheus-url: Prometheus service address (default: http://localhost:8000)--output-file: Path to the result output file (if not specified, output to console)
Validation Options
--run-build: Run build validation for the generated patch--run-test: Run test validation for the generated patch--run-reproduction-test: Run reproduction test to verify if the issue can be reproduced--run-regression-test: Run regression test to ensure existing functionality is not broken--push-to-remote: Push the fix to a remote Git branch
Docker Environment Configuration
--dockerfile-content: Specify Dockerfile content directly--image-name: Use a predefined Docker image--workdir: Working directory inside the container (default: /app)--build-commands: List of build commands--test-commands: List of test commands
Other Options
--candidate-patches: Number of candidate patches (default: 6)
Usage Scenarios
Scenario 1: Simple Bug Report Analysis
# Analyze a simple bug report without running any validation
python github_issue_debug.py \
--github-token "your_token" \
--repo "pytorch/pytorch" \
--issue-number 89123
Scenario 2: Python Project with Test Validation
# Perform a complete debug for a Python project, including build and test validation
python github_issue_debug.py \
--github-token "your_token" \
--repo "requests/requests" \
--issue-number 5678 \
--run-build \
--run-test \
--run-reproduction-test \
--run-regression-test \
--image-name "python:3.11-slim" \
--build-commands "pip install -e ." \
--test-commands "pytest tests/test_requests.py"
Scenario 3: Node.js Project with Auto Push
# Process an issue for a Node.js project and automatically push the fix to a remote branch
python github_issue_debug.py \
--github-token "your_token" \
--repo "facebook/react" \
--issue-number 9876 \
--run-build \
--run-test \
--run-reproduction-test \
--run-regression-test \
--push-to-remote \
--image-name "node:18-slim" \
--build-commands "npm ci" "npm run build" \
--test-commands "npm test"
Scenario 4: Custom Docker Environment
# Use a custom Dockerfile for debugging
python github_issue_debug.py \
--github-token "your_token" \
--repo "tensorflow/tensorflow" \
--issue-number 4321 \
--run-build \
--dockerfile-content "FROM tensorflow/tensorflow:latest-gpu
WORKDIR /app
COPY . /app
RUN pip install -r requirements.txt" \
--workdir "/app" \
--build-commands "python setup.py build_ext --inplace" \
--test-commands "python -m pytest tests/unit/"
Output Result Explanation
After execution, the script outputs results in JSON format, including the following fields:
{
"success": true,
"issue_info": {
"repo": "owner/repo",
"number": 123,
"title": "Issue Title",
"url": "https://github.com/owner/repo/issues/123",
"state": "open"
},
"prometheus_result": {
"patch": "Generated code patch",
"passed_reproducing_test": true,
"passed_existing_test": false,
"passed_regression_test": true,
"passed_reproduction_test": true,
"issue_response": "AI-generated issue response"
},
"created_branch_and_pushed": true,
"branch_name": "fix-issue-123"
}
Result Field Description
success: Whether the process was successfulissue_info: Basic information about the GitHub issueprometheus_result.patch: Code fix patch generated by Prometheusprometheus_result.passed_*: Status of various validationsprometheus_result.issue_response: AI-generated issue analysis and response