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fix-pylint
Automatically fix pylint issues in any Azure SDK for Python package following Azure SDK Python guidelines and existing code patterns.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Automatically fix pylint issues in any Azure SDK for Python package following Azure SDK Python guidelines and existing code patterns.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
| name | fix-pylint |
| description | Automatically fix pylint issues in any Azure SDK for Python package following Azure SDK Python guidelines and existing code patterns. |
This skill automatically fixes pylint warnings in any Azure SDK for Python package by analyzing existing code patterns and applying fixes with 100% confidence.
Intelligently fixes pylint issues by:
Command:
cd <package-path>
azpysdk --isolate pylint .
Note:
azpysdk pylintruns with a pinned version of pylint at the package level only. To focus on specific files, run the full check and filter the output by file path.
Using Latest Pylint:
azpysdk --isolate next-pylint .
Use
azpysdk next-pylintto run with the latest version of pylint. This is useful for catching issues that may be flagged by newer pylint versions.
Check if user provided in their request:
https://github.com/Azure/azure-sdk-for-python/issues/... in user's message)sdk/storage/azure-storage-blob or azure-storage-blob)If both GitHub issue URL and package path are missing: Ask: "Please provide either the GitHub issue URL or the package path (e.g. sdk/storage/azure-storage-blob) for the pylint problems you want to fix."
If a GitHub issue URL is provided: Read the issue to understand which package and files/modules are affected, and the specific warnings to fix.
If only a package path is provided: Run pylint checks directly on the package.
If virtual environment is missing: Ask: "Do you have an existing virtual environment path, or should I create 'env'?"
IMMEDIATELY activate the virtual environment before ANY other command:
# Activate the provided virtual environment (e.g., env, venv)
.\<venv-name>\Scripts\Activate.ps1
# If creating new virtual environment:
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.
# Navigate to the package directory (within activated venv)
cd <package-path>
# 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 .
Based on the GitHub issue details, determine which files to check:
Option A - Run pylint on the package and filter output:
# Ensure you're in the package directory (within activated venv)
cd <package-path>
# Run pylint on the full package, then filter output for files from the issue
azpysdk --isolate pylint .
# Review output for warnings 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 "<package-path>"
git diff --cached --name-only | Select-String "<package-path>"
Important: Do not run black as part of the pylint fix workflow. Running black will reformat the code and may mask or change the pylint warnings you are trying to fix. Only run pylint to identify and fix the specific warnings.
⚠️ Ensure virtual environment is still activated before running:
# Navigate to the package directory
cd <package-path>
# Run pylint on the package (within activated venv)
azpysdk --isolate pylint .
# Filter output for the specific files/modules from the issue
Parse the pylint output to identify:
Before fixing, search the codebase for how similar issues are handled:
# Example: Search for similar function patterns
grep -r "pattern" <package-path>/
Use the existing code patterns to ensure consistency.
ALLOWED ACTIONS: Fix warnings with 100% confidence Use existing file patterns as reference Follow Azure SDK Python guidelines Make minimal, targeted changes
FORBIDDEN ACTIONS: Fix warnings without complete confidence Create new files for solutions Import non-existent modules Add new dependencies or imports Make unnecessary large changes Change code style without clear reason Delete code without clear justification
Re-run pylint to ensure:
Provide a summary:
⚠️ REQUIRED when a GitHub issue URL was provided: You MUST create a pull request after validating fixes. This is not optional.
Create a pull request with a descriptive title and body referencing the issue. Include what was fixed and confirm all pylint checks pass. The PR title should follow the format: "fix(): Resolve pylint errors (#)".
Automate updating the emitter package dependencies in eng/emitter-package.json for the Azure SDK for Python repository, then open a PR. Use this skill when the user wants to update @azure-tools/typespec-python (or any other dependency in emitter-package.json) to the latest version, create a PR for an emitter-package version bump, or manage emitter-package.json updates.
Emit the azure-ai-projects Python SDK from TypeSpec, apply post-emitter fixes, and create a Pull Request. WHEN: "emit SDK from TypeSpec", "generate azure-ai-projects SDK", "update azure-ai-projects from TypeSpec", "emit from TypeSpec", "regenerate azure-ai-projects". DO NOT USE FOR: other Azure SDK packages, manual code edits without TypeSpec. INVOKES: PostEmitter.ps1 script, git commands, gh CLI for PR creation.
Update CHANGELOG.md by comparing public APIs between the current branch and the latest released version on PyPI. WHEN: "update changelog", "generate changelog", "add changelog entry", "what changed in this version". DO NOT USE FOR: other Azure SDK packages. INVOKES: PyPI API, GitHub API (for tags), file operations.
Drafts concise team status updates with progress, plans, and blockers.
Create and test a classify-and-route Azure AI Content Understanding pipeline for packets that contain multiple document types (e.g. invoice + bank statement + loan application in one PDF). Walks per-type schema authoring → outer classifier wiring → batch test → category-aware stdout summary using the typed ContentUnderstandingClient. Use when the user has mixed-document packets.
Iteratively author and test a custom Azure AI Content Understanding analyzer for a folder of **document** files (PDFs, page images) of a single type. Walks layout extraction → schema authoring → validation → batch test → agent review → refine cycle using the typed ContentUnderstandingClient. Document modality only — audio, video, and image analyzers are planned for a later update. Use when the user wants to author a custom analyzer for invoices, contracts, forms, or any other single-type document set.