Productivity

data-analysis

claude-office-skills/skills · updated Apr 8, 2026

$npx skills add https://github.com/claude-office-skills/skills --skill data-analysis
summary

Analyze data in spreadsheets, uncover insights, and create compelling visualizations.

skill.md

Data Analysis Assistant

Analyze data in spreadsheets, uncover insights, and create compelling visualizations.

Overview

This skill helps you:

  • Understand and explore your data
  • Perform statistical analysis
  • Generate insights and recommendations
  • Create charts and visualizations
  • Write formulas and queries

How to Use

Getting Started

  1. Share your spreadsheet or data file
  2. Describe what you want to analyze
  3. Get insights, formulas, or visualizations

Analysis Types

Exploratory Analysis

"What patterns do you see in this data?"
"Give me an overview of this dataset"
"What are the key statistics?"

Specific Questions

"What was the total revenue by region?"
"Which products had the highest growth?"
"Is there a correlation between X and Y?"

Visualization Requests

"Create a chart showing sales trends"
"Make a comparison chart of Q1 vs Q2"
"Show the distribution of customer ages"

Output Formats

Data Overview

## Dataset Overview

**Rows**: 1,234
**Columns**: 15
**Date Range**: Jan 2025 - Dec 2025

### Column Summary
| Column | Type | Non-null | Unique | Sample Values |
|--------|------|----------|--------|---------------|
| date | Date | 100% | 365 | 2025-01-01 |
| revenue | Number | 98% | 890 | $1,234.56 |
| region | Text | 100% | 5 | North, South |

### Data Quality Issues
- [X] rows have missing values in [column]
- [Y] potential duplicates detected

Statistical Analysis

## Statistical Summary

### [Metric Name]
- **Mean**: X
- **Median**: Y
- **Std Dev**: Z
- **Min/Max**: A / B

### Key Findings
1. [Finding with statistical support]
2. [Finding with statistical support]

### Recommendations
- [Action based on analysis]

Insight Report

## Analysis Report: [Topic]

### Executive Summary
[2-3 sentence overview of key findings]

### Key Metrics
| Metric | Value | Change |
|--------|-------|--------|
| Total Revenue | $X | +Y% |
| Avg Order Value | $Z | -W% |

### Trends
1. **[Trend 1]**: [Description with data]
2. **[Trend 2]**: [Description with data]

### Recommendations
1. [Actionable recommendation]
2. [Actionable recommendation]

Common Analysis Workflows

Sales Analysis

1. "Show total sales by month"
2. "Which products are top performers?"
3. "What's the customer segment breakdown?"
4. "Compare this year vs last year"
5. "Forecast next quarter based on trends"

Customer Analysis

1. "What's the customer distribution by segment?"
2. "Calculate customer lifetime value"
3. "Which customers are at risk of churning?"
4. "What's the acquisition cost vs LTV ratio?"

Financial Analysis

1. "Calculate profit margins by product"
2. "What's the expense breakdown?"
3. "Show cash flow trends"
4. "Compare budget vs actual"

Formula Generation

Request Formulas

"Write a formula to calculate year-over-year growth"
"Create a VLOOKUP to match customer data"
"Make a dynamic sum based on criteria"

Formula Output

## Formula: [Purpose]

### Excel/Google Sheets
```excel
=SUMIFS(Sales[Amount], Sales[Region], "North", Sales[Date], ">="&DATE(2025,1,1))

Explanation

  • SUMIFS: Sums values meeting multiple criteria
  • First argument: Column to sum
  • Subsequent pairs: Criteria column + criteria value

Usage

Place in cell [X] where you want the result.


## Visualization Recommendations

### Choose the Right Chart
| Data Type | Best Chart |
|-----------|------------|
| Trends over time | Line chart |
| Part of whole | Pie/Donut chart |
| Comparison | Bar chart |
| Distribution | Histogram |
| Correlation | Scatter plot |
| Geographic | Map chart |

### Chart Specifications
```markdown
## Recommended Chart: [Type]

**Data Series**:
- X-axis: [Column] (e.g., Date)
- Y-axis: [Column] (e.g., Revenue)
- Series: [Column] (e.g., Region)

**Formatting**:
- Title: "[Descriptive title]"
- Colors: Use consistent color scheme
- Labels: Show values on data points

**Chart Description**:
[What this chart shows and why it's useful]

Advanced Analysis

Pivot Table Design

## Pivot Table: [Purpose]

**Rows**: [Field 1], [Field 2]
**Columns**: [Field 3]
**Values**: SUM of [Field 4], AVG of [Field 5]
**Filters**: [Field 6]

Expected Output:
| Region | Q1 | Q2 | Q3 | Q4 | Total |
|--------|----|----|----|----|-------|
| North | $X | $X | $X | $X | $X |
| South | $X | $X | $X | $X | $X |

Cohort Analysis

## Cohort Analysis

**Cohort Definition**: Customers grouped by [first purchase month]
**Metric**: [Retention rate / Revenue / etc.]
**Time Period**: [12 months]

| Cohort | M0 | M1 | M2 | M3 | ... |
|--------|-----|-----|-----|-----|-----|
| Jan 25 | 100%| 45% | 32% | 28% | ... |
| Feb 25 | 100%| 48% | 35% | 30% | ... |

Best Practices

For Better Analysis

  1. Clean data first: Handle missing values, duplicates
  2. Define metrics clearly: What exactly are you measuring?
  3. Consider context: Industry benchmarks, seasonality
  4. Validate findings: Cross-check with other data sources

For Better Visualizations

  1. Keep it simple: One main message per chart
  2. Label clearly: Title, axes, legend
  3. Use appropriate scale: Don't truncate misleadingly
  4. Consider colorblind users: Use patterns or distinct colors

Limitations

  • Cannot directly execute code on your data
  • Large datasets may need sampling
  • Complex statistical models need specialized tools
  • Real-time data requires live connections
  • Cannot guarantee 100% accuracy on OCR'd data
general reviews

Ratings

4.510 reviews
  • Shikha Mishra· Oct 10, 2024

    data-analysis is among the better-maintained entries we tried; worth keeping pinned for repeat workflows.

  • Piyush G· Sep 9, 2024

    Keeps context tight: data-analysis is the kind of skill you can hand to a new teammate without a long onboarding doc.

  • Chaitanya Patil· Aug 8, 2024

    Registry listing for data-analysis matched our evaluation — installs cleanly and behaves as described in the markdown.

  • Sakshi Patil· Jul 7, 2024

    data-analysis reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Ganesh Mohane· Jun 6, 2024

    I recommend data-analysis for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.

  • Oshnikdeep· May 5, 2024

    Useful defaults in data-analysis — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.

  • Dhruvi Jain· Apr 4, 2024

    data-analysis has been reliable in day-to-day use. Documentation quality is above average for community skills.

  • Rahul Santra· Mar 3, 2024

    Solid pick for teams standardizing on skills: data-analysis is focused, and the summary matches what you get after install.

  • Pratham Ware· Feb 2, 2024

    We added data-analysis from the explainx registry; install was straightforward and the SKILL.md answered most questions upfront.

  • Yash Thakker· Jan 1, 2024

    data-analysis fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.