cube-iml
About
This skill checks and repairs PyCharm/IntelliJ module configuration (.iml files) when Python import resolution fails or folders aren't recognized. It can be triggered via the `/cube-iml` command or when users report IDE configuration issues. The tool validates the XML structure and ensures proper source folder configuration for development workflows.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/cube-imlCopy and paste this command in Claude Code to install this skill
Documentation
Cube IML Skill
Check and repair the PyCharm/IntelliJ module configuration file.
Trigger
Use when:
- User runs
/cube-imlor asks about PyCharm/IntelliJ configuration - User reports "module not configured" or import resolution issues
- User says PyCharm doesn't recognize src or tests folders
Quick Check
Run this Python snippet to check the .iml file:
python -c "
from pathlib import Path
from xml.etree import ElementTree as ET
iml = Path('.idea/cube.iml')
if not iml.exists():
print('MISSING: .idea/cube.iml does not exist')
exit(1)
try:
tree = ET.parse(iml)
root = tree.getroot()
except ET.ParseError as e:
print(f'CORRUPTED: XML parse error: {e}')
exit(1)
# Check required elements
sources = tree.findall('.//sourceFolder')
has_src = any('src' in s.get('url', '') and s.get('isTestSource') == 'false' for s in sources)
has_tests = any('tests' in s.get('url', '') and s.get('isTestSource') == 'true' for s in sources)
has_sdk = tree.find('.//orderEntry[@type=\"jdk\"]') is not None
issues = []
if not has_src:
issues.append('Missing src as source folder')
if not has_tests:
issues.append('Missing tests as test source folder')
if not has_sdk:
issues.append('Missing Python SDK configuration')
if issues:
print('INCOMPLETE:')
for i in issues:
print(f' - {i}')
exit(1)
print('OK: cube.iml is valid and complete')
"
Actions Based on Result
If MISSING or CORRUPTED or INCOMPLETE
Ask the user:
The .idea/cube.iml file is [missing/corrupted/incomplete].
Would you like me to reconstruct it?
- Yes, reconstruct it
- No, I'll fix it manually
If user says yes, run:
python scripts/reconstruct_iml.py
If OK
Report: "PyCharm configuration looks good. If you're still having issues, try:
- File → Invalidate Caches and Restart
- Right-click src folder → Mark Directory as → Sources Root"
Manual Fix
If the script doesn't exist or fails, create the file manually:
<?xml version="1.0" encoding="UTF-8"?>
<module type="PYTHON_MODULE" version="4">
<component name="NewModuleRootManager">
<content url="file://$MODULE_DIR$">
<sourceFolder url="file://$MODULE_DIR$/src" isTestSource="false" />
<sourceFolder url="file://$MODULE_DIR$/tests" isTestSource="true" />
</content>
<orderEntry type="jdk" jdkName="Python 3.14 (cubesolve)" jdkType="Python SDK" />
<orderEntry type="sourceFolder" forTests="false" />
</component>
</module>
Adjust the jdkName to match the user's Python interpreter name.
GitHub Repository
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