← 返回
未分类

Display Quantitative Information

Use this skill when the user needs to design, critique, redesign, audit, generate, code, or explain quantitative graphics: charts, dashboards, tables, maps,...
用于设计、评审、重构、审查、生成、编码或解释定量图表(图表、仪表盘、表格、地图等)。
tristanmanchester
未分类 clawhub v1.0.0 1 版本 100000 Key: 无需
★ 0
Stars
📥 189
下载
💾 0
安装
1
版本
#latest

概述

Display Quantitative Information

Use this skill to help an agent create, critique, redesign, audit, or explain quantitative displays that let people reason from evidence. The default standard is truthfulness first, comparison power second, and visual economy third. Minimalism is not the goal; clear quantitative reasoning is.

Activation boundaries

Use this skill for chart choice, data visualization code, dashboard review, statistical/scientific figures, misleading graphics, graph redesign, tables used as evidence, uncertainty displays, small multiples, map-based quantitative displays, or user language such as data-ink, chartjunk, graphical integrity, lie factor, Tufte, visual evidence, publication-ready figure, or dashboard critique.

Do not use it for decorative illustration, infographics with no measured quantities, brand-only design, slide aesthetics without data, or general data wrangling unless a display or visual explanation is part of the task.

Working loop

  1. Name the viewer's task: lookup, comparison, trend, relationship, distribution, part-to-whole, geography, uncertainty, monitoring, explanation, or persuasion.
  2. Inspect the data structure: grain, units, denominators, time order, grouping, spatial structure, missingness, transformations, sample size, and uncertainty.
  3. Choose the display from the task and data, not from a favorite chart type. Use references/display-selection.md when the choice is not obvious.
  4. Audit integrity before aesthetics: baselines, scales, proportionality, encodings, transformations, omitted context, denominators, uncertainty, source, and accessibility. Use references/integrity-audit.md or scripts/audit_visual_display.py for structured specs.
  5. Redesign by improving the intended comparison. Remove distracting marks, but keep labels, notes, reference lines, captions, and structure when they help interpretation.
  6. Deliver the artifact requested: chart, code, SVG, design spec, critique, dashboard review, or short recommendation. Put the highest-impact fix first.

Mode-specific guidance

For a quick critique, answer in plain language: what works, what may mislead, and the most valuable fix. Do not bury an integrity problem under cosmetic advice.

For a redesign, state the proposed display form, encodings, scale choices, labels, annotations, and integrity safeguards. Explain choices in terms of the viewer's comparison or decision.

For chart creation, produce the chart or code when tools permit. Add a short final check covering units, scale, baseline, source/context, uncertainty, and accessibility.

For dashboards, review the workflow first: whether panels answer a coherent decision, share compatible time windows and denominators, and show trends or distributions rather than isolated decorative KPIs.

For scientific figures, prioritize sample size, units, conditions, uncertainty, transformations, calibration, and comparison across panels. Avoid summary-only bars when raw observations or intervals are central.

Non-negotiables

Never trade a misleading chart for a cleaner misleading chart. Preserve or restore units, source, definitions, sample size, denominators, relevant uncertainty, and methodological context whenever they affect interpretation.

Do not mechanically apply slogans. Data-ink discipline is an editing principle, not a license to remove explanation. A legend, gridline, note, or reference band is useful when it reduces ambiguity or supports comparison.

Avoid formulaic critique language. Across multiple outputs, vary the opener, recommendation order, examples, and vocabulary according to the dataset and audience. Use references/language-and-variation.md or scripts/fingerprint_text.py for long/batch deliverables.

Reference map

Read only the files needed for the task.

  • references/principles.md — core Tufte-informed judgment standards.
  • references/display-selection.md — display choices by task and data structure.
  • references/integrity-audit.md — distortion, lie factors, baselines, context, and uncertainty.
  • references/redesign-workflow.md — practical redesign and handoff sequence.
  • references/chart-spec.md — structured chart-spec fields and examples.
  • references/accessibility-and-output.md — contrast, color, labels, alt text, and code/output defaults.
  • references/language-and-variation.md — anti-fingerprint guidance for critiques.
  • references/rubric.md — scoring rubric for reviews.
  • references/examples.md — worked patterns; adapt, do not copy.

Scripts and assets

Scripts are optional but useful when the user supplies data or a structured chart spec. They are non-interactive and print structured output.

  • scripts/suggest_display.py --csv data.csv --goal auto --format markdown inspects a CSV and recommends display families.
  • scripts/audit_visual_display.py --spec chart.json --format markdown audits a JSON chart spec.
  • scripts/lie_factor.py --data-before 18 --data-after 27.5 --visual-before 0.6 --visual-after 5.3 computes visual distortion.
  • scripts/contrast_check.py --foreground '#333333' --background '#ffffff' --format markdown checks text/color contrast.
  • scripts/render_chart_svg.py --csv data.csv --x month --y defect_rate --chart line --group line --output chart.svg creates a simple, honest SVG chart for handoff or review.
  • scripts/fingerprint_text.py --input draft.md --format markdown flags repeated stock visualization language.

Assets:

  • assets/chart-spec-template.json — starting point for structured audits.
  • assets/critique-note-template.md — flexible critique handoff note.
  • assets/chart-handoff-template.md — compact implementation spec.

Completion check

Before finalizing, verify that the response names the analytical task, preserves units/context, justifies the display form, checks for misleading scales or encodings, and gives at least one concrete improvement to comparison, integrity, or accessibility.

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-05-29 21:45 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
查看报告

腾讯云安全 (Sanbu)

安全,无风险
查看报告

🔗 相关推荐

data-analysis

Reddit (read only - no auth)

tristanmanchester
以只读模式通过公共 JSON 接口浏览和搜索 Reddit。当用户要求浏览子版块、按主题搜索帖子、查看评论线程或整理待审阅和手动回复的链接列表时使用。
★ 8 📥 4,047
knowledge-management

Notion API

tristanmanchester
通过JSON优先的CLI管理Notion笔记、页面及数据源,支持搜索、读取/导出、写入/导入、追加及移动操作。适用于操作Notion、整理笔记、移动页面、分类收件箱或读写页面内容。
★ 6 📥 3,897
data-analysis

Self Improvement (done properly)

tristanmanchester
捕获调试、用户纠正、缺失功能和重复工作流摩擦中的持久经验教训,以便后续会话避免同样的错误。
★ 2 📥 4,384