plotting-agent
Step 2 of the PaperOrchestra pipeline (arXiv:2604.05018). Execute the visualization plan from outline.json — render plots and conceptual diagrams from experimental_log.md and idea.md, optionally refine via VLM critique loop, and produce context-aware captions. Runs in parallel with the literature-review-agent. TRIGGER when the orchestrator delegates Step 2 or when the user asks to "generate the figures for my paper" or "render the plots from this experiment log".
适合你,如果正在写学术论文,需要从实验数据自动生成图表
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
~/.claude/skills/(项目级 .claude/skills/)~/.codex/skills/npx oh-my-skill add ar9av/paperorchestra/plotting-agentcurl -fsSL https://oh-my-skill.com/install.sh | bash -s -- ar9av/paperorchestra/plotting-agentnpx oh-my-skill verify ar9av/paperorchestra/plotting-agent怎么用
技能原文 SKILL.md
Plotting Agent (Step 2)
Faithful implementation of the Plotting Agent from PaperOrchestra (Song et al., 2026, arXiv:2604.05018, §4 Step 2 and App. F.1 p.45).
Cost: ~20–30 LLM calls. The paper uses PaperBanana (Zhu et al., 2026) as the default backbone with a closed-loop VLM-critique refinement. This skill expresses that loop in host-agent terms: you (the host agent) generate matplotlib code with your own LLM, render via your Bash/Python tool, optionally critique the rendered PNG with your vision model, redraw, and finally caption.
Inputs
workspace/outline.json— specifically theplotting_planarrayworkspace/inputs/idea.mdandworkspace/inputs/experimental_log.md— the source dataworkspace/inputs/figures/— optional pre-existing figures (PlotOnmode)
Outputs
workspace/figures/<figure_id>.png— one PNG perplotting_planentry (300 DPI, sized to the requested aspect ratio)workspace/figures/captions.json—{figure_id: caption_text}map
Workflow
Per figure (executed independently per figure_id)
- Read the figure spec from
outline.json: ```json { "figure_id": "fig_main_results", "title": "Main Results on Dataset X", "plot_type": "plot", "data_source": "experimental_log.md", "objective": "Visual summary (Grouped Bar Chart) demonstrating ...", "aspect_ratio": "5:4" } ```
- Few-shot retrieval (visual planning): pick the matching pattern from
references/chart-patterns.md(forplot_type=="plot") orreferences/diagram-patterns.md(forplot_type=="diagram").
- Extract data: parse
idea.mdand/orexperimental_log.md(data_sourcefield tells you which) to obtain the numeric values or conceptual entities the figure needs. Forexperimental_log.md, the## 2. Raw Numeric Datasection contains markdown tables.
- Render:
If PAPERBANANA_PATH is set — use the PaperBanana backbone (Zhu et al., 2026). It runs a Retriever → Planner → Stylist → Visualizer → Critic loop and is especially good for plot_type == "diagram". See references/paperbanana-cookbook.md for setup (needs a Gemini API key).
``bash python skills/plotting-agent/scripts/paperbanana_render.py \ --figure-id <figure_id> \ --caption "<objective from figure spec>" \ --content-file workspace/inputs/idea.md \ --task <diagram|plot> \ --aspect-ratio <aspect_ratio> \ --out workspace/figures/<figure_id>.png ``
Otherwise — write a matplotlib script and run it via your Bash tool, or use the bundled helper: ``bash python skills/plotting-agent/scripts/render_matplotlib.py \ --spec spec.json \ --out workspace/figures/<figure_id>.png ` The script must apply the academic style from chart-patterns.md, use the correct pixel size from aspect-ratios.md, save at 300 DPI, and call plt.close() after savefig`.
- VLM critique loop (optional, only if your host has vision):
- Reload the rendered PNG as a multimodal input to your LLM.
- Critique it against the figure's
objectivefrom the outline. Look for: visual artifacts, mislabeled axes, illegible text, color clashes, misleading scaling, missing legend, overlapping labels. - If problems are found, regenerate the matplotlib script with corrections and re-render. Cap at 3 critique iterations per figure.
- This is the closed-loop refinement step the paper inherits from PaperBanana. See
references/plotting-pipeline.mdfor the full loop description. - If your host has no vision input, skip this step entirely. The figure will still render correctly, just without iterative refinement.
- Generate the caption using the verbatim Caption Generation prompt at
references/caption-prompt.md. Inputs to the caption prompt: task_name— the section the figure belongs to (e.g., "Methodology", "Experiments")raw_content— the surrounding section text (or content_bullets from the section_plan if the section isn't drafted yet)description— theobjectivefield from the figure specfigure_desc— a 1-sentence description of what the rendered figure actually shows (from your VLM critique pass, or from the script's plan if no vision)
Write the caption to workspace/figures/captions.json keyed by figure_id. Captions must NOT contain Figure N: or Caption N: prefixes — the LaTeX template handles numbering. Plain text only, no markdown.
Conceptual diagrams
For plot_type == "diagram", prefer PaperBanana when available — its Retriever grounds the Planner in real published paper diagrams. If PAPERBANANA_PATH is unset, follow references/diagram-patterns.md. Patterns include block diagrams, system overviews, flowcharts, and algorithm-as-graph. The bundled helper:
python skills/plotting-agent/scripts/render_diagram.py \
--spec diagram_spec.json \
--out workspace/figures/<figure_id>.png
handles the simple cases (boxes-and-arrows). For complex Fig-1-style overview diagrams, write matplotlib patches code yourself.
Hard rules
- 300 DPI for every figure. Lower DPI gets rejected at the LaTeX compile step on conference templates.
- Aspect ratio is exact. The figure spec's
aspect_ratiois one of 12 enumerated strings. Use the pixel targets inreferences/aspect-ratios.md. - Hide top and right spines for plots. (Diagrams: no spines at all.)
- Muted academic colors only. The palette is in
chart-patterns.md. Never use matplotlib defaults (too saturated for print). - No 3D, no pie charts, no decorative visuals. The paper's evaluators penalize these.
- Every figure MUST have a caption in
captions.json. The Section Writing Agent will fail-stop if a caption is missing for any figure referenced from the outline. - No
Figure N:prefix in captions — LaTeX adds it. - Never describe data you didn't plot. The Plotting Agent must not hallucinate axes, baselines, or trends. Source-of-truth is
experimental_log.mdoridea.md.
Pre-existing figures (PlotOn mode)
If workspace/inputs/figures/ is non-empty, check whether any pre-existing file matches a figure_id in the outline (by filename prefix). If so, copy it into workspace/figures/ as-is and still generate a caption using the caption prompt. Only generate from scratch the figure_ids that have no pre-existing counterpart.
Resources
references/caption-prompt.md— verbatim Caption Generation prompt from App. F.1references/plotting-pipeline.md— the full few-shot → render → critique → caption loopreferences/chart-patterns.md— matplotlib style + chart type recipesreferences/diagram-patterns.md— conceptual diagram recipesreferences/aspect-ratios.md— pixel targets for each of the 12 allowed ratios at 300 DPIreferences/paperbanana-cookbook.md— NEW PaperBanana setup, usage, cost notes, attributionscripts/render_matplotlib.py— render a JSON plot spec → PNG (matplotlib fallback)scripts/render_diagram.py— render a JSON diagram spec → PNG (matplotlib fallback)scripts/paperbanana_render.py— NEW PaperBanana backbone wrapper (readsPAPERBANANA_PATHfrom env)