| name | fix-mypy |
| description | Automatically fix mypy type checking issues in azure-ai-ml package following Azure SDK Python patterns. Expects GitHub issue URL and optional virtual env path in the request. Format "fix mypy issue <issue-url> [using venv <path>]" |
Fix MyPy Issues Skill
This skill automatically fixes mypy type checking errors in the azure-ai-ml package by analyzing existing code patterns and applying fixes with 100% confidence based on GitHub issues.
Scope: Fix only mandatory/blocking issues — type errors that will cause CI to fail. Leave optional/informational warnings as-is.
Overview
Intelligently fixes mypy issues by:
- Getting the GitHub issue URL from the user
- Reading and analyzing the issue details
- Setting up or using existing virtual environment
- Installing required dependencies
- Running mypy on the specific files/areas mentioned in the issue
- Analyzing the mypy output to identify type errors
- Searching codebase for existing type annotation patterns
- Applying fixes only with 100% confidence
- Re-running mypy to verify fixes
- Providing a summary of what was fixed
Running MyPy
Command:
cd sdk/ml/azure-ai-ml
azpysdk mypy .
Note: azpysdk runs at the package level only. To focus on specific files, run the full check and filter the output by file path.
Reference Documentation
Fixing Strategy
Step 0: Get GitHub Issue Details
Check if user provided in their request:
- GitHub issue URL (look for
https://github.com/Azure/azure-sdk-for-python/issues/... in user's message)
- Virtual environment path (look for phrases like "using venv", "use env", "virtual environment at", or just the venv name)
If GitHub issue URL is missing:
Ask: "Please provide the GitHub issue URL for the mypy type checking problems you want to fix."
If virtual environment is missing:
Ask: "Do you have an existing virtual environment path, or should I create 'env'?"
Once you have the issue URL:
Read the issue to understand which files/modules and specific error codes to fix.
Step 1: CRITICAL - Activate Virtual Environment FIRST
IMMEDIATELY activate the virtual environment before ANY other command:
# Activate the provided virtual environment (e.g., envml, env, venv)
.\<venv-name>\Scripts\Activate.ps1
# If creating new virtual environment (Python 3.10+):
python -m venv env
.\env\Scripts\Activate.ps1
⚠️ IMPORTANT: ALL subsequent commands MUST run within the activated virtual environment. Never run commands outside the venv.
Step 2: Install Dependencies (within activated venv)
# Navigate to azure-ai-ml directory (within activated venv)
cd sdk/ml/azure-ai-ml
# Install dev dependencies from dev_requirements.txt (within activated venv)
pip install -r dev_requirements.txt
# Install the package in editable mode (within activated venv)
pip install -e .
Important: Use Python 3.10 compatible environment for mypy checks.
Step 3: Identify Target Files (within activated venv)
Based on the GitHub issue details, determine which files to check:
Option A - Run mypy on the package and filter output:
# Ensure you're in azure-ai-ml directory (within activated venv)
cd sdk/ml/azure-ai-ml
# Run mypy on the full package, then filter output for files from the issue
azpysdk mypy .
# Review output for errors in the specific files/modules mentioned in the issue
Option B - Check modified files (if no specific target):
git diff --name-only HEAD | Select-String "sdk/ml/azure-ai-ml"
git diff --cached --name-only | Select-String "sdk/ml/azure-ai-ml"
Step 4: Run MyPy (within activated venv)
⚠️ Ensure virtual environment is still activated before running:
# Navigate to azure-ai-ml directory
cd sdk/ml/azure-ai-ml
# Run mypy on the package (within activated venv)
azpysdk mypy .
# Filter output for the specific files/modules from the issue
Step 5: Analyze Type Errors
Parse the mypy output to identify:
- Error type and code (e.g., [arg-type], [return-value], [assignment])
- File path and line number
- Specific error description
- Expected vs actual types
- Cross-reference with the GitHub issue to ensure you're fixing the right problems
Step 6: Search for Existing Type Annotation Patterns
Before fixing, search the codebase for how similar types are annotated:
# Example: Search for similar function signatures
grep -r "def similar_function" sdk/ml/azure-ai-ml/ -A 5
# Search for type imports
grep -r "from typing import" sdk/ml/azure-ai-ml/
Use the existing type annotation patterns to ensure consistency.
Step 7: Apply Fixes (ONLY if 100% confident)
Fix only mandatory/blocking issues. Skip optional or informational warnings that do not cause CI failure.
ALLOWED ACTIONS:
Fix type errors with 100% confidence
Use existing type annotation patterns as reference
Follow Azure SDK Python type checking guidelines
Add missing type hints
Fix incorrect type annotations
Make minimal, targeted changes
FORBIDDEN ACTIONS:
Fix errors without complete confidence
Create new files for solutions
Import non-existent types or modules
Add new dependencies or imports outside typing module
Use # type: ignore without clear justification
Change code logic to avoid type errors
Delete code without clear justification
Step 8: Verify Fixes
Re-run mypy to ensure:
- The type error is resolved
- No new errors were introduced
- The code still functions correctly
Step 9: Summary
Provide a summary:
- GitHub issue being addressed
- Number of type errors fixed
- Number of errors remaining
- Types of fixes applied (e.g., added type hints, fixed return types)
- Any errors that need manual review
Common MyPy Issues and Fixes
Missing Type Hints
Error: Function is missing a type annotation
Fix: Add proper type hints:
from typing import Optional
def function_name(param: str, optional_param: Optional[int] = None) -> None:
"""Brief description."""
pass
Argument Type Mismatch
Error: Argument 1 to "function" has incompatible type "X"; expected "Y"
Fix: Ensure the argument matches the expected type or add proper type conversion:
value: str = str(int_value)
def function(param: Union[str, int]) -> None:
pass
Return Type Mismatch
Error: Incompatible return value type (got "X", expected "Y")
Fix: Ensure the return type matches the annotation:
from typing import Optional
def get_value() -> Optional[str]:
if condition:
return "value"
return None
Type Annotation with Optional
Error: Item "None" of "Optional[X]" has no attribute "Y"
Fix: Add None check before accessing attributes:
from typing import Optional
def process(value: Optional[str]) -> str:
if value is None:
return ""
return value.upper()
Union Types
Error: Argument has incompatible type
Fix: Use Union for multiple acceptable types:
from typing import Union
def function(param: Union[str, int, None]) -> str:
if param is None:
return ""
return str(param)
List/Dict Type Annotations
Error: Need type annotation for variable
Fix: Add specific type annotations for collections:
from typing import List, Dict, Any
items: List[str] = []
config: Dict[str, Any] = {}
Example Workflow
# 0. Get issue details
# User provides: https://github.com/Azure/azure-sdk-for-python/issues/67890
# Issue mentions: mypy errors in azure/ai/ml/entities/job.py
# 1. CRITICAL - Activate virtual environment FIRST
.\<venv-name>\Scripts\Activate.ps1 # Use the venv name provided by user
cd sdk/ml/azure-ai-ml
pip install -r dev_requirements.txt
pip install -e .
# 2. Identify target from issue
$targetFile = "azure/ai/ml/operations/job_operations.py"
# 3. Run mypy on the package and check output for target file
azpysdk mypy .
# Filter output for errors in $targetFile
# 4. Analyze output and identify fixable issues
# Cross-reference with GitHub issue #12345
# 5. Search for existing type annotation patterns
grep -r "from typing import" azure/ai/ml/ | findstr "operations"
# 6. Apply fixes to identified files
# 7. Re-run mypy to verify
azpysdk mypy .
# 8. Report results
Notes
- Always read the existing code to understand type annotation patterns before making changes
- Prefer following existing patterns over adding new complex types
- Use Python 3.10+ compatible type hints (use
Optional[X] instead of X | None)
- If unsure about a fix, mark it for manual review
- Some errors may require architectural changes - don't force fixes
- Test the code after fixing to ensure functionality is preserved
- Avoid using
# type: ignore unless absolutely necessary and document why