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Skill4.3k estrellas del repoactualizado 8d ago

publication-chart-skill

The publication-chart-skill transforms research results into submission-ready scientific figures and tables using the pubfig and pubtab production stack. Use this skill when converting data into publication-quality visualizations, selecting appropriate chart types for results, upgrading draft plots or spreadsheets, or generating paired figure-and-table deliverables for papers. It covers the complete workflow from communication goal definition through chart selection, code generation, asset export, and quality review with targeted revision suggestions.

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git clone --depth 1 https://github.com/Galaxy-Dawn/claude-scholar /tmp/publication-chart-skill && cp -r /tmp/publication-chart-skill/skills/publication-chart-skill ~/.claude/skills/publication-chart-skill
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SKILL.md

# Publication Chart Skill

## Goal

Use this skill to turn research results into **publication-grade figures and tables** with an end-to-end workflow.

Primary production stack:

- **`pubfig`** for figures
- **`pubtab`** for publication tables

This skill covers the full delivery chain:

1. understand the scientific communication goal,
2. choose the right artifact type,
3. map the task to `pubfig`, `pubtab`, or both,
4. generate concrete runnable instructions,
5. export paper-ready assets,
6. run publication QA,
7. propose targeted revisions.

## Use this skill when

Trigger this skill for requests like:

- “make a publication-quality figure”
- “choose the right chart for these results”
- “turn these results into a paper-ready figure”
- “make a benchmark / ablation / calibration / forest / heatmap / scatter / line / bar figure”
- “make a benchmark / appendix / ablation table from Excel”
- “convert this Excel table into publication-ready LaTeX”
- “prepare one summary figure plus one companion table for the results section”
- “review and improve this scientific figure/table”
- “I already have a weak chart / screenshot / draft plot — make it publication-ready”
- “export panels for a paper figure”

## Do not use this skill for

Do **not** use this skill when the task is mainly:

- manuscript prose writing,
- statistical testing without artifact design,
- raw exploratory analysis with no publication deliverable,
- Figma-first layout work before the figure/table content is solid.

For simple composite assembly after the figure content is already strong, use the optional secondary workflow in `references/composite-assembly.md`.

## Primary contract

### Inputs

Expect some combination of:

- the scientific communication goal,
- available data shape,
- venue or style constraints,
- whether the artifact is a figure, table, or mixed deliverable,
- optional existing assets such as code, spreadsheets, `.tex`, screenshots, or draft plots,
- whether the user needs a first draft, a publication-ready artifact, or a review/revision pass.

### Outputs

The minimum useful output is:

- the recommended figure/table form,
- the recommended `pubfig` / `pubtab` route,
- a minimal runnable code snippet or CLI command,
- explicit export filenames and formats,
- a publication QA summary,
- and, when needed, a revision plan.

## Default workflow

### 0. Probe the environment and artifact state

Before generating anything, identify:

- whether `pubfig` or `pubtab` is actually available,
- whether the user already has code / spreadsheets / `.tex` / screenshots,
- whether the deliverable is a fresh build or a revision,
- whether the result needs exact values, fast visual perception, or both.

Prefer the smallest environment check that helps execution. When the bundled helper script is available, use it first:

- `python3 scripts/ensure_publication_tooling.py --require pubfig --json`
- `python3 scripts/ensure_publication_tooling.py --require pubtab --json`

Equivalent manual checks are still acceptable when needed:

- `python -c "import pubfig; print(pubfig.__version__)"`
- `python -c "import pubtab; print(pubtab.__version__)"`
- `pubtab --help`

Report the result clearly as **available** or **missing**.

If a dependency is missing and the task requires runnable execution:

- **auto-install it by default**,
- prefer the user’s active environment instead of guessing a random global interpreter,
- use `python3 scripts/ensure_publication_tooling.py --require ...` as the default bundled route when the script is present,
- let that helper choose `uv` vs `python -m pip` against the active interpreter,
- re-run the availability probe after installation,
- and only then continue with the artifact workflow.

Equivalent concrete commands include:

- `python3 scripts/ensure_publication_tooling.py --require pubfig`
- `python3 scripts/ensure_publication_tooling.py --require pubtab`
- `uv pip install pubfig`
- `uv pip install pubtab`
- `python -m pip install pubfig`
- `python -m pip install pubtab`

If auto-install fails, report the exact failure and then degrade gracefully.

Do not block on a full environment audit.

### 1. Classify the task

Classify the request along these axes:

- **artifact type**: figure / table / mixed deliverable
- **maturity**: exploratory draft / publication-ready generation / revision of an existing artifact
- **structure**: single panel / multi-panel / figure-plus-table package
- **evidence mode**: pattern perception / exact value lookup / both

Do not jump into plotting code before the communication target is clear.

Before plotting research results, lock the evidence contract:
- primary scientific claim,
- unit of analysis,
- primary metric and metric direction,
- whether repeated rows are independent,
- missing cells or incomplete comparison blocks,
- error-bar basis: subject, subject-task, fold, seed, run, or bootstrap sample,
- whether exact values need a companion table,
- whether the current evidence allows a winner/significance claim.

If these are unclear, ask or produce an audit recommendation instead of a polished figure. Do not create a paper-ready plot while the unit of analysis, missing-cell handling, or error-bar basis is unresolved.

### 2. Choose the representation

Choose the representation based on the scientific claim, not novelty or visual flair.

Common families:

- **comparison** — grouped scatter, bar, line comparison, benchmark summary, companion table
- **ablation** — grouped comparison, dumbbell, paired comparison, compact table
- **distribution** — box, violin, raincloud, histogram, density, ECDF, QQ
- **relationship** — scatter, bubble, contour2d, hexbin
- **trend** — line, area
- **evaluation / diagnostic** — calibration, ROC, PR, Bland–Altman, forest plot, volcano
- **composition / hierarchy** — UpSet, stacked ratio, donut, radial hierarchy, circular grouped or stacked bars
- **table** — benchmark table, ablation table, dataset summary, appendix table, error breakdown

Av
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kaggle-minerSubagent

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literature-reviewerSubagent

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paper-minerSubagent

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rebuttal-writerSubagent

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tdd-guideSubagent

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analyze-resultsSlash Command

Run a blocker-first post-experiment workflow: validate evidence, produce strict statistical analysis when possible, and generate a decision-oriented results report only when the analysis bundle is sufficient. Uses results-analysis + results-report as a gated two-stage workflow.

commitSlash Command

Commit changes following Conventional Commits format (local only, no push).