一键导入
dataviz-selector
Choose charts for data stories, including S-curves, knee-bends, inflections, local peaks, and misleading/decorative forms.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Choose charts for data stories, including S-curves, knee-bends, inflections, local peaks, and misleading/decorative forms.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
| name | dataviz-selector |
| description | Choose charts for data stories, including S-curves, knee-bends, inflections, local peaks, and misleading/decorative forms. |
Use this before making a chart when the user has a dataset and a question/hypothesis/story to answer.
Core job: pick the visual form that makes the intended claim easiest to see and hardest to misread.
For non-trivial chart selection, use the workflow and guardrails below; private local references may add nuance, but this public skill is self-contained.
karthik-data-visualization styling before final output.Use this concise structure:
Recommended visual: <chart form>
Why: <claim-comparison fit>
Encoding: X = ..., Y = ..., colour/facet/label = ...
Context layers: <thresholds/events/counterfactuals/knee-bends/local extrema/annotations>
Avoid: <bad alternatives or pitfalls>
If implementing: <short code/design note>
Generate fresh, visualisable data questions from raw datasets; reject stale prompts before charting.
Generate fresh, visualisable analysis questions from a raw tabular dataset. Use when Codex is given a CSV/XLSX/Parquet/database extract and asked what to ask, what to explore, what charts to make, what visualisation workshop prompts to use, or what data stories might be interesting; especially for Karthik-style exploratory analysis where obvious/stale questions should be filtered out before charting.
Orchestrate dataset-to-visual-story work: plan analysis, run it, choose visuals, style, critique, and iterate.
End-to-end analytical data visualization workflow for Karthik. Use when the user points Codex to a dataset and gives a loose exploratory question, possible hypothesis, story idea, or desired audience, and wants Codex to plan the analysis, run the analysis, find the defensible story, choose the best visual representation, make chart outputs in Karthik's design aesthetic, critique the result, and iterate until the visual story is good enough to use.
Choose the right visualization for a dataset plus analytical question, hypothesis, data story, or management problem. Use when recommending, designing, critiquing, or implementing chart choices before plotting; especially for Karthik-style explanatory analytics, Mint-style data stories, time-series shape annotation (knee-bends, inflection points, local maxima/minima, temporary peaks), S-curves/adoption/diffusion patterns, Babbage/management decks, election/sports/payment/geography/risk visuals, or choosing between lines, bars, scatter, maps, distributions, small multiples, scorecards, waterfalls, and tables.
Turn data questions into Karthik-style analysis contracts with definitions, denominators, comparisons, metrics, caveats, and falsifiers.