Turn raw data into decisions with statistical rigor, proper methodology, and awareness of analytical pitfalls.
数据来源:ClawHub。 在 ClawSkills 查看
选择你使用的 Agent
方法一:命令行安装(推荐)
推荐(无需提前安装 clawhub)
npx clawhub@latest --dir ~/.claude/skills install data-analysis-litiao或使用 clawhub CLI(需提前安装)
clawhub --dir ~/.claude/skills install data-analysis-litiao⚠️ 需要 Node.js 18+,没有 Node?请使用下方方法二直接下载 ZIP。 安装 Node.js →
方法二:手动下载安装(无需 Node)
下载 ZIP,解压后将文件夹放到以下路径,重启 Agent 即可:
安装路径
~/.claude/skills/data-analysis-litiao/💡解压后将文件夹放到上方路径,重启 Agent 即可生效
--- name: data-analysis-litiao description: Turn raw data into decisions with statistical rigor, proper methodology, and awareness of analytical pitfalls. ---
User asks about: analyzing data, finding patterns, understanding metrics, testing hypotheses, cohort analysis, A/B testing, churn analysis, statistical significance.
Analysis without a decision is just arithmetic. Always clarify: What would change if this analysis shows X vs Y?
Before touching data:
| Pitfall | What it looks like | How to avoid | |---------|-------------------|--------------| | Simpson's Paradox | Trend reverses when you segment | Always check by key dimensions | | Survivorship bias | Only analyzing current users | Include churned/failed in dataset | | Comparing unequal periods | Feb (28d) vs March (31d) | Normalize to per-day or same-length windows | | p-hacking | Testing until something is "significant" | Pre-register hypotheses or adjust for multiple comparisons | | Correlation in time series | Both went up = "related" | Check if controlling for time removes relationship | | Aggregating percentages | Averaging percentages directly | Re-calculate from underlying totals |
For detailed examples of each pitfall, see pitfalls.md.
| Question type | Approach | Key output | |---------------|----------|------------| | "Is X different from Y?" | Hypothesis test | p-value + effect size + CI | | "What predicts Z?" | Regression/correlation | Coefficients + R² + residual check | | "How do users behave over time?" | Cohort analysis | Retention curves by cohort | | "Are these groups different?" | Segmentation | Profiles + statistical comparison | | "What's unusual?" | Anomaly detection | Flagged points + context |
For technique details and when to use each, see techniques.md.
安装 Data Analysis Litiao 后,可以对 AI 说这些话来触发它
Help me get started with Data Analysis Litiao
Explains what Data Analysis Litiao does, walks through the setup, and runs a quick demo based on your current project
Use Data Analysis Litiao to turn raw data into decisions with statistical rigor, proper methodo...
Invokes Data Analysis Litiao with the right parameters and returns the result directly in the conversation
What can I do with Data Analysis Litiao in my data & analytics workflow?
Lists the top use cases for Data Analysis Litiao, with example commands for each scenario
将技能文件夹放到 ~/.claude/skills/data-analysis-litiao/ 目录(个人级,所有项目可用),或 .claude/skills/data-analysis-litiao/(项目级)。重启 AI 客户端后,用 /data-analysis-litiao 主动调用,或让 AI 根据上下文自动发现并使用。
Data Analysis Litiao 支持 Claude、Cursor、OpenClaw,可与这些 AI 平台无缝集成,扩展其能力。
Data Analysis Litiao 可免费安装使用。请查阅仓库了解许可证信息。
Turn raw data into decisions with statistical rigor, proper methodology, and awareness of analytical pitfalls.
Data Analysis Litiao 属于「Data & Analytics」分类,该分类的技能帮助 AI 智能体在此领域执行专业任务。
Automate my data & analytics tasks using Data Analysis Litiao
Identifies repetitive steps in your workflow and sets up Data Analysis Litiao to handle them automatically