Make_Notebook
by tatsuki-washimi
機能やテーマについて解説付きのJupyter Notebook (.ipynb) を生成する
Skill Details
Repository Files
1 file in this skill directory
name: make_notebook description: 機能やテーマについて解説付きのJupyter Notebook (.ipynb) を生成する
Create Notebook
This skill generates a Jupyter Notebook to demonstrate a feature or explain a concept.
Instructions
-
Plan the Notebook:
- Title & Introduction: What is this notebook about?
- Setup/Imports: Necessary imports.
- Data Generation/Loading: Create synthetic data or load sample data.
- Processing/Analysis: Demonstrate the core feature.
- Visualization: Plot the results.
-
Create File:
- Use the
write_to_filetool to create the.ipynbfile. (Note: Since writing JSON manually for ipynb is error-prone, ensure you use a valid JSON structure or use a helper script if available. If writing raw JSON, keep it simple.) - Alternately, write a Python script
make_notebook.pyusingnbformatand run it.
- Use the
-
Content Requirements:
- Use Markdown cells to explain why and how.
- Comment the code cells extensively.
- Ensure the code is runnable without external local files (or create them on the fly).
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