Codex Jupyter Notebook
VerifiedCreate and execute Jupyter notebooks for data analysis
$ Add to AGENTS.md About This Skill
# Jupyter Notebook Skill
Create clean, reproducible Jupyter notebooks for two primary modes:
- Experiments and exploratory analysis
- Tutorials and teaching-oriented walkthroughs
Prefer the bundled templates and the helper script for consistent structure and fewer JSON mistakes.
When to use - Create a new `.ipynb` notebook from scratch. - Convert rough notes or scripts into a structured notebook. - Refactor an existing notebook to be more reproducible and skimmable. - Build experiments or tutorials that will be read or re-run by other people.
Decision tree - If the request is exploratory, analytical, or hypothesis-driven, choose `experiment`. - If the request is instructional, step-by-step, or audience-specific, choose `tutorial`. - If editing an existing notebook, treat it as a refactor: preserve intent and improve structure.
Skill path (set once)
```bash export CODEX_HOME="${CODEX_HOME:-$HOME/.codex}" export JUPYTER_NOTEBOOK_CLI="$CODEX_HOME/skills/jupyter-notebook/scripts/new_notebook.py" ```
User-scoped skills install under `$CODEX_HOME/skills` (default: `~/.codex/skills`).
Workflow 1. Lock the intent. Identify the notebook kind: `experiment` or `tutorial`. Capture the objective, audience, and what "done" looks like.
- Scaffold from the template.
- Use the helper script to avoid hand-authoring raw notebook JSON.
```bash uv run --python 3.12 python "$JUPYTER_NOTEBOOK_CLI" \ --kind experiment \ --title "Compare prompt variants" \ --out output/jupyter-notebook/compare-prompt-variants.ipynb ```
```bash uv run --python 3.12 python "$JUPYTER_NOTEBOOK_CLI" \ --kind tutorial \ --title "Intro to embeddings" \ --out output/jupyter-notebook/intro-to-embeddings.ipynb ```
- Fill the notebook with small, runnable steps.
- Keep each code cell focused on one step.
- Add short markdown cells that explain the purpose and expected result.
- Avoid large, noisy outputs when a short summary works.
- Apply the right pattern.
- For experiments, follow `references/experiment-patterns.md`.
- For tutorials, follow `references/tutorial-patterns.md`.
- Edit safely when working with existing notebooks.
- Preserve the notebook structure; avoid reordering cells unless it improves the top-to-bottom story.
- Prefer targeted edits over full rewrites.
- If you must edit raw JSON, review `references/notebook-structure.md` first.
- Validate the result.
- Run the notebook top-to-bottom when the environment allows.
- If execution is not possible, say so explicitly and call out how to validate locally.
- Use the final pass checklist in `references/quality-checklist.md`.
Templates and helper script - Templates live in `assets/experiment-template.ipynb` and `assets/tutorial-template.ipynb`. - The helper script loads a template, updates the title cell, and writes a notebook.
- Script path:
- `$JUPYTER_NOTEBOOK_CLI` (installed default: `$CODEX_HOME/skills/jupyter-notebook/scripts/new_notebook.py`)
Temp and output conventions - Use `tmp/jupyter-notebook/` for intermediate files; delete when done. - Write final artifacts under `output/jupyter-notebook/` when working in this repo. - Use stable, descriptive filenames (for example, `ablation-temperature.ipynb`).
Dependencies (install only when needed) Prefer `uv` for dependency management.
Optional Python packages for local notebook execution:
```bash uv pip install jupyterlab ipykernel ```
The bundled scaffold script uses only the Python standard library and does not require extra dependencies.
Environment No required environment variables.
Reference map - `references/experiment-patterns.md`: experiment structure and heuristics. - `references/tutorial-patterns.md`: tutorial structure and teaching flow. - `references/notebook-structure.md`: notebook JSON shape and safe editing rules. - `references/quality-checklist.md`: final validation checklist.
Use Cases
- Use OpenAI APIs within Jupyter notebooks for interactive AI experimentation
- Build AI-powered data analysis workflows combining OpenAI with pandas and matplotlib
- Create interactive demos and prototypes using OpenAI models in notebook cells
- Iterate on prompt engineering with immediate visual feedback in Jupyter
- Generate and execute code with AI assistance in a notebook environment
Pros & Cons
Pros
- +Interactive notebook environment enables rapid experimentation with AI models
- +Combines AI capabilities with the rich data science ecosystem of Jupyter
- +Visual output makes it easy to evaluate and share AI-generated results
Cons
- -Requires Jupyter environment setup and OpenAI API key
- -Notebook-based workflow may not translate directly to production applications
FAQ
What does Codex Jupyter Notebook do?
What platforms support Codex Jupyter Notebook?
What are the use cases for Codex Jupyter Notebook?
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