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data-storytelling

作者 JackHua6 · GitHub ↗ · v1.0.0 · MIT-0
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在 OpenClaw 中安装
/install data-storytelling
功能描述
Transform data into compelling narratives using visualization, context, and persuasive structure. Use when presenting analytics to stakeholders, creating dat...
使用说明 (SKILL.md)

Data Storytelling

Transform raw data into compelling narratives that drive decisions and inspire action.

When to Use This Skill

  • Presenting analytics to executives
  • Creating quarterly business reviews
  • Building investor presentations
  • Writing data-driven reports
  • Communicating insights to non-technical audiences
  • Making recommendations based on data

Core Concepts

1. Story Structure

Setup → Conflict → Resolution

Setup: Context and baseline
Conflict: The problem or opportunity
Resolution: Insights and recommendations

2. Narrative Arc

1. Hook: Grab attention with surprising insight
2. Context: Establish the baseline
3. Rising Action: Build through data points
4. Climax: The key insight
5. Resolution: Recommendations
6. Call to Action: Next steps

3. Three Pillars

Pillar Purpose Components
Data Evidence Numbers, trends, comparisons
Narrative Meaning Context, causation, implications
Visuals Clarity Charts, diagrams, highlights

Story Frameworks

Framework 1: The Problem-Solution Story

# Customer Churn Analysis

## The Hook

"We're losing $2.4M annually to preventable churn."

## The Context

- Current churn rate: 8.5% (industry average: 5%)
- Average customer lifetime value: $4,800
- 500 customers churned last quarter

## The Problem

Analysis of churned customers reveals a pattern:

- 73% churned within first 90 days
- Common factor: \x3C 3 support interactions
- Low feature adoption in first month

## The Insight

[Show engagement curve visualization]
Customers who don't engage in the first 14 days
are 4x more likely to churn.

## The Solution

1. Implement 14-day onboarding sequence
2. Proactive outreach at day 7
3. Feature adoption tracking

## Expected Impact

- Reduce early churn by 40%
- Save $960K annually
- Payback period: 3 months

## Call to Action

Approve $50K budget for onboarding automation.

Framework 2: The Trend Story

# Q4 Performance Analysis

## Where We Started

Q3 ended with $1.2M MRR, 15% below target.
Team morale was low after missed goals.

## What Changed

[Timeline visualization]

- Oct: Launched self-serve pricing
- Nov: Reduced friction in signup
- Dec: Added customer success calls

## The Transformation

[Before/after comparison chart]
| Metric | Q3 | Q4 | Change |
|----------------|--------|--------|--------|
| Trial → Paid | 8% | 15% | +87% |
| Time to Value | 14 days| 5 days | -64% |
| Expansion Rate | 2% | 8% | +300% |

## Key Insight

Self-serve + high-touch creates compound growth.
Customers who self-serve AND get a success call
have 3x higher expansion rate.

## Going Forward

Double down on hybrid model.
Target: $1.8M MRR by Q2.

Framework 3: The Comparison Story

# Market Opportunity Analysis

## The Question

Should we expand into EMEA or APAC first?

## The Comparison

[Side-by-side market analysis]

### EMEA

- Market size: $4.2B
- Growth rate: 8%
- Competition: High
- Regulatory: Complex (GDPR)
- Language: Multiple

### APAC

- Market size: $3.8B
- Growth rate: 15%
- Competition: Moderate
- Regulatory: Varied
- Language: Multiple

## The Analysis

[Weighted scoring matrix visualization]

| Factor      | Weight | EMEA Score | APAC Score |
| ----------- | ------ | ---------- | ---------- |
| Market Size | 25%    | 5          | 4          |
| Growth      | 30%    | 3          | 5          |
| Competition | 20%    | 2          | 4          |
| Ease        | 25%    | 2          | 3          |
| **Total**   |        | **2.9**    | **4.1**    |

## The Recommendation

APAC first. Higher growth, less competition.
Start with Singapore hub (English, business-friendly).
Enter EMEA in Year 2 with localization ready.

## Risk Mitigation

- Timezone coverage: Hire 24/7 support
- Cultural fit: Local partnerships
- Payment: Multi-currency from day 1

Visualization Techniques

Technique 1: Progressive Reveal

Start simple, add layers:

Slide 1: "Revenue is growing" [single line chart]
Slide 2: "But growth is slowing" [add growth rate overlay]
Slide 3: "Driven by one segment" [add segment breakdown]
Slide 4: "Which is saturating" [add market share]
Slide 5: "We need new segments" [add opportunity zones]

Technique 2: Contrast and Compare

Before/After:
┌─────────────────┬─────────────────┐
│ BEFORE │ AFTER │
│ │ │
│ Process: 5 days│ Process: 1 day │
│ Errors: 15% │ Errors: 2% │
│ Cost: $50/unit │ Cost: $20/unit │
└─────────────────┴─────────────────┘

This/That (emphasize difference):
┌─────────────────────────────────────┐
│ CUSTOMER A vs B │
│ ┌──────────┐ ┌──────────┐ │
│ │ ████████ │ │ ██ │ │
│ │ $45,000 │ │ $8,000 │ │
│ │ LTV │ │ LTV │ │
│ └──────────┘ └──────────┘ │
│ Onboarded No onboarding │
└─────────────────────────────────────┘

Technique 3: Annotation and Highlight

import matplotlib.pyplot as plt
import pandas as pd

fig, ax = plt.subplots(figsize=(12, 6))

# Plot the main data
ax.plot(dates, revenue, linewidth=2, color='#2E86AB')

# Add annotation for key events
ax.annotate(
    'Product Launch\
+32% spike',
    xy=(launch_date, launch_revenue),
    xytext=(launch_date, launch_revenue * 1.2),
    fontsize=10,
    arrowprops=dict(arrowstyle='->', color='#E63946'),
    color='#E63946'
)

# Highlight a region
ax.axvspan(growth_start, growth_end, alpha=0.2, color='green',
           label='Growth Period')

# Add threshold line
ax.axhline(y=target, color='gray', linestyle='--',
           label=f'Target: ${target:,.0f}')

ax.set_title('Revenue Growth Story', fontsize=14, fontweight='bold')
ax.legend()

Presentation Templates

Template 1: Executive Summary Slide

┌─────────────────────────────────────────────────────────────┐
│  KEY INSIGHT                                                │
│  ══════════════════════════════════════════════════════════│
│                                                             │
│  "Customers who complete onboarding in week 1              │
│   have 3x higher lifetime value"                           │
│                                                             │
├──────────────────────┬──────────────────────────────────────┤
│                      │                                      │
│  THE DATA            │  THE IMPLICATION                     │
│                      │                                      │
│  Week 1 completers:  │  ✓ Prioritize onboarding UX         │
│  • LTV: $4,500       │  ✓ Add day-1 success milestones     │
│  • Retention: 85%    │  ✓ Proactive week-1 outreach        │
│  • NPS: 72           │                                      │
│                      │  Investment: $75K                    │
│  Others:             │  Expected ROI: 8x                    │
│  • LTV: $1,500       │                                      │
│  • Retention: 45%    │                                      │
│  • NPS: 34           │                                      │
│                      │                                      │
└──────────────────────┴──────────────────────────────────────┘

Template 2: Data Story Flow

Slide 1: THE HEADLINE
"We can grow 40% faster by fixing onboarding"

Slide 2: THE CONTEXT
Current state metrics
Industry benchmarks
Gap analysis

Slide 3: THE DISCOVERY
What the data revealed
Surprising finding
Pattern identification

Slide 4: THE DEEP DIVE
Root cause analysis
Segment breakdowns
Statistical significance

Slide 5: THE RECOMMENDATION
Proposed actions
Resource requirements
Timeline

Slide 6: THE IMPACT
Expected outcomes
ROI calculation
Risk assessment

Slide 7: THE ASK
Specific request
Decision needed
Next steps

Template 3: One-Page Dashboard Story

# Monthly Business Review: January 2024

## THE HEADLINE

Revenue up 15% but CAC increasing faster than LTV

## KEY METRICS AT A GLANCE

┌────────┬────────┬────────┬────────┐
│ MRR │ NRR │ CAC │ LTV │
│ $125K │ 108% │ $450 │ $2,200 │
│ ▲15% │ ▲3% │ ▲22% │ ▲8% │
└────────┴────────┴────────┴────────┘

## WHAT'S WORKING

✓ Enterprise segment growing 25% MoM
✓ Referral program driving 30% of new logos
✓ Support satisfaction at all-time high (94%)

## WHAT NEEDS ATTENTION

✗ SMB acquisition cost up 40%
✗ Trial conversion down 5 points
✗ Time-to-value increased by 3 days

## ROOT CAUSE

[Mini chart showing SMB vs Enterprise CAC trend]
SMB paid ads becoming less efficient.
CPC up 35% while conversion flat.

## RECOMMENDATION

1. Shift $20K/mo from paid to content
2. Launch SMB self-serve trial
3. A/B test shorter onboarding

## NEXT MONTH'S FOCUS

- Launch content marketing pilot
- Complete self-serve MVP
- Reduce time-to-value to \x3C 7 days

Writing Techniques

Headlines That Work

BAD: "Q4 Sales Analysis"
GOOD: "Q4 Sales Beat Target by 23% - Here's Why"

BAD: "Customer Churn Report"
GOOD: "We're Losing $2.4M to Preventable Churn"

BAD: "Marketing Performance"
GOOD: "Content Marketing Delivers 4x ROI vs. Paid"

Formula:
[Specific Number] + [Business Impact] + [Actionable Context]

Transition Phrases

Building the narrative:
• "This leads us to ask..."
• "When we dig deeper..."
• "The pattern becomes clear when..."
• "Contrast this with..."

Introducing insights:
• "The data reveals..."
• "What surprised us was..."
• "The inflection point came when..."
• "The key finding is..."

Moving to action:
• "This insight suggests..."
• "Based on this analysis..."
• "The implication is clear..."
• "Our recommendation is..."

Handling Uncertainty

Acknowledge limitations:
• "With 95% confidence, we can say..."
• "The sample size of 500 shows..."
• "While correlation is strong, causation requires..."
• "This trend holds for [segment], though [caveat]..."

Present ranges:
• "Impact estimate: $400K-$600K"
• "Confidence interval: 15-20% improvement"
• "Best case: X, Conservative: Y"

Best Practices

Do's

  • Start with the "so what" - Lead with insight
  • Use the rule of three - Three points, three comparisons
  • Show, don't tell - Let data speak
  • Make it personal - Connect to audience goals
  • End with action - Clear next steps

Don'ts

  • Don't data dump - Curate ruthlessly
  • Don't bury the insight - Front-load key findings
  • Don't use jargon - Match audience vocabulary
  • Don't show methodology first - Context, then method
  • Don't forget the narrative - Numbers need meaning

Resources

安全使用建议
This skill is a content/template guide and appears coherent. Before installing or allowing autonomous runs: (1) confirm whether your agent will execute the example Python — if so, ensure matplotlib/pandas are installed and that any data passed into those examples is safe and approved; (2) note the SKILL.md ends mid-code (truncated) — review the full content to ensure nothing omitted; (3) because the skill can be invoked autonomously by default, restrict or review any automated runs if you don't want the agent to produce or run code without human oversight.
功能分析
Type: OpenClaw Skill Name: data-storytelling Version: 1.0.0 The skill bundle provides comprehensive instructions and templates for data storytelling, including narrative structures, visualization techniques, and presentation frameworks. It contains a standard Python plotting example using matplotlib and pandas in SKILL.md. No malicious patterns, data exfiltration, or unauthorized execution risks were identified.
能力评估
Purpose & Capability
Name/description (data storytelling, presentations, visualization) match the SKILL.md content. The skill declares no binaries, env vars, or installs, which is appropriate for a prose/template-style guidance skill.
Instruction Scope
SKILL.md provides narrative frameworks, slide/visualization patterns, and example plotting code (matplotlib/pandas). The examples reference variables like dates/revenue/launch_date but are illustrative and do not instruct the agent to read system files, secrets, or external endpoints. The file is truncated near the end (example code incomplete); if the agent will execute code, confirm the runtime has required libraries and that only user-approved data is used.
Install Mechanism
No install specification and no code files — lowest-risk category (instruction-only). Nothing will be written to disk by the skill itself.
Credentials
The skill requests no environment variables, credentials, or config paths. Nothing disproportionate is being asked relative to the stated purpose.
Persistence & Privilege
always is false (default); the skill does not request persistent/system-level privileges or modify other skills. Autonomous invocation remains platform-default and is not by itself a concern here.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install data-storytelling
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /data-storytelling 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
Initial registration
元数据
Slug data-storytelling
版本 1.0.0
许可证 MIT-0
累计安装 2
当前安装数 2
历史版本数 1
常见问题

data-storytelling 是什么?

Transform data into compelling narratives using visualization, context, and persuasive structure. Use when presenting analytics to stakeholders, creating dat... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 274 次。

如何安装 data-storytelling?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install data-storytelling」即可一键安装,无需额外配置。

data-storytelling 是免费的吗?

是的,data-storytelling 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

data-storytelling 支持哪些平台?

data-storytelling 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 data-storytelling?

由 JackHua6(@jackhua6)开发并维护,当前版本 v1.0.0。

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