Summary
TL;DR: Data visualization, report generation, SQL queries, and spreadsheet automation. Convert your AI agent into a data-savvy analyst that turns raw data into actionable insights.
Data Analyst turns your AI agent into a number-crunching assistant. It handles data visualization, report generation, SQL queries, and spreadsheet automation.
Point it at a dataset and ask questions. It can write SQL to pull the numbers, build charts to visualize trends, and format the results into clean reports. Your agent goes from raw data to actionable insight.
Whether you are working with CSVs, databases, or spreadsheets, this skill gives your agent the tools to analyze data without you writing every query by hand. Part of our finance & data collection.
Use cases
- Writing SQL queries to answer business questions from your database
- Creating charts and visualizations from raw data files
- Generating formatted reports with key metrics and trends
- Automating spreadsheet operations like pivot tables and formulas
Installation
Run this command to install the skill on your OpenClaw agent:
npx clawhub@latest install data-analystSKILL.md
---
name: data-analyst
version: 1.0.0
description: "Data visualization, report generation, SQL queries, and spreadsheet automation. Transform your AI agent into a data-savvy analyst that turns raw data into actionable insights."
author: openclaw
---
# Data Analyst Skill π
**Turn your AI agent into a data analysis powerhouse.**
Query databases, analyze spreadsheets, create visualizations, and generate insights that drive decisions.
---
## What This Skill Does
β
**SQL Queries** β Write and execute queries against databases
β
**Spreadsheet Analysis** β Process CSV, Excel, Google Sheets data
β
**Data Visualization** β Create charts, graphs, and dashboards
β
**Report Generation** β Automated reports with insights
β
**Data Cleaning** β Handle missing data, outliers, formatting
β
**Statistical Analysis** β Descriptive stats, trends, correlations
---
## Quick Start
1. Configure your data sources in `TOOLS.md`:
```markdown
### Data Sources
- Primary DB: [Connection string or description]
- Spreadsheets: [Google Sheets URL / local path]
- Data warehouse: [BigQuery/Snowflake/etc.]
```
2. Set up your workspace:
```bash
./scripts/data-init.sh
```
3. Start analyzing!
---
## SQL Query Patterns
### Common Query Templates
**Basic Data Exploration**
```sql
-- Row count
SELECT COUNT(*) FROM table_name;
-- Sample data
SELECT * FROM table_name LIMIT 10;
-- Column statistics
SELECT
column_name,
COUNT(*) as count,
COUNT(DISTINCT column_name) as unique_values,
MIN(column_name) as min_val,
MAX(column_name) as max_val
FROM table_name
GROUP BY column_name;
```
**Time-Based Analysis**
```sql
-- Daily aggregation
SELECT
DATE(created_at) as date,
COUNT(*) as daily_count,
SUM(amount) as daily_total
FROM transactions
GROUP BY DATE(created_at)
ORDER BY date DESC;
-- Month-over-month comparison
SELECT
DATE_TRUNC('month', created_at) as month,
COUNT(*) as count,
LAG(COUNT(*)) OVER (ORDER BY DATE_TRUNC('month', created_at)) as prev_month,
(COUNT(*) - LAG(COUNT(*)) OVER (ORDER BY DATE_TRUNC('month', created_at))) /
NULLIF(LAG(COUNT(*)) OVER (ORDER BY DATE_TRUNC('month', created_at)), 0) * 100 as growth_pct
FROM transactions
GROUP BY DATE_TRUNC('month', created_at)
ORDER BY month;
```
**Cohort Analysis**
```sql
-- User cohort by signup month
SELECT
DATE_TRUNC('month', u.created_at) as cohort_month,
DATE_TRUNC('month', o.created_at) as activity_month,
COUNT(DISTINCT u.id) as users
FROM users u
LEFT JOIN orders o ON u.id = o.user_id
GROUP BY cohort_month, activity_month
ORDER BY cohort_month, activity_month;
```
**Funnel Analysis**
```sql
-- Conversion funnel
WITH funnel AS (
SELECT
COUNT(DISTINCT CASE WHEN event = 'page_view' THEN user_id END) as views,
COUNT(DISTINCT CASE WHEN event = 'signup' THEN user_id END) as signups,
COUNT(DISTINCT CASE WHEN event = 'purchase' THEN user_id END) as purchases
FROM events
WHERE date >= CURRENT_DATE - INTERVAL '30 days'
)
SELECT
views,
signups,
ROUND(signups * 100.0 / NULLIF(views, 0), 2) as signup_rate,
purchases,
ROUND(purchases * 100.0 / NULLIF(signups, 0), 2) as purchase_rate
FROM funnel;
```
---
## Data Cleaning
### Common Data Quality Issues
| Issue | Detection | Solution |
|-------|-----------|----------|
| **Missing values** | `IS NULL` or empty string | Impute, drop, or flag |
| **Duplicates** | `GROUP BY` with `HAVING COUNT(*) > 1` | Deduplicate with rules |
| **Outliers** | Z-score > 3 or IQR method | Investigate, cap, or exclude |
| **Inconsistent formats** | Sample and pattern match | Standardize with transforms |
| **Invalid values** | Range checks, referential integrity | Validate and correct |
### Data Cleaning SQL Patterns
```sql
-- Find duplicates
SELECT email, COUNT(*)
FROM users
GROUP BY email
HAVING COUNT(*) > 1;
-- Find nulls
SELECT
COUNT(*) as total,
SUM(CASE WHEN email IS NULL THEN 1 ELSE 0 END) as null_emails,
SUM(CASE WHEN name IS NULL THEN 1 ELSE 0 END) as null_names
FROM users;
-- Standardize text
UPDATE products
SET category = LOWER(TRIM(category));
-- Remove outliers (IQR method)
WITH stats AS (
SELECT
PERCENTILE_CONT(0.25) WITHIN GROUP (ORDER BY value) as q1,
PERCENTILE_CONT(0.75) WITHIN GROUP (ORDER BY value) as q3
FROM data
)
SELECT * FROM data, stats
WHERE value BETWEEN q1 - 1.5*(q3-q1) AND q3 + 1.5*(q3-q1);
```
### Data Cleaning Checklist
```markdown
# Data Quality Audit: [Dataset]
## Row-Level Checks
- [ ] Total row count: [X]
- [ ] Duplicate rows: [X]
- [ ] Rows with any null: [X]
## Column-Level Checks
| Column | Type | Nulls | Unique | Min | Max | Issues |
|--------|------|-------|--------|-----|-----|--------|
| [col] | [type] | [n] | [n] | [v] | [v] | [notes] |
## Data Lineage
- Source: [Where data came from]
- Last updated: [Date]
- Known issues: [List]
## Cleaning Actions Taken
1. [Action and reason]
2. [Action and reason]
```
---
## Spreadsheet Analysis
### CSV/Excel Processing with Python
```python
import pandas as pd
# Load data
df = pd.read_csv('data.csv') # or pd.read_excel('data.xlsx')
# Basic exploration
print(df.shape) # (rows, columns)
print(df.info()) # Column types and nulls
print(df.describe()) # Numeric statistics
# Data cleaning
df = df.drop_duplicates()
df['date'] = pd.to_datetime(df['date'])
df['amount'] = df['amount'].fillna(0)
# Analysis
summary = df.groupby('category').agg({
'amount': ['sum', 'mean', 'count'],
'quantity': 'sum'
}).round(2)
# Export
summary.to_csv('analysis_output.csv')
```
### Common Pandas Operations
```python
# Filtering
filtered = df[df['status'] == 'active']
filtered = df[df['amount'] > 1000]
filtered = df[df['date'].between('2024-01-01', '2024-12-31')]
# Aggregation
by_category = df.groupby('category')['amount'].sum()
pivot = df.pivot_table(values='amount', index='month', columns='category', aggfunc='sum')
# Window functions
df['running_total'] = df['amount'].cumsum()
df['pct_change'] = df['amount'].pct_change()
df['rolling_avg'] = df['amount'].rolling(window=7).mean()
# Merging
merged = pd.merge(df1, df2, on='id', how='left')
```
---
## Data Visualization
### Chart Selection Guide
| Data Type | Best Chart | Use When |
|-----------|------------|----------|
| Trend over time | Line chart | Showing patterns/changes over time |
| Category comparison | Bar chart | Comparing discrete categories |
| Part of whole | Pie/Donut | Showing proportions (β€5 categories) |
| Distribution | Histogram | Understanding data spread |
| Correlation | Scatter plot | Relationship between two variables |
| Many categories | Horizontal bar | Ranking or comparing many items |
| Geographic | Map | Location-based data |
### Python Visualization with Matplotlib/Seaborn
```python
import matplotlib.pyplot as plt
import seaborn as sns
# Set style
plt.style.use('seaborn-v0_8-whitegrid')
sns.set_palette("husl")
# Line chart (trends)
plt.figure(figsize=(10, 6))
plt.plot(df['date'], df['value'], marker='o')
plt.title('Trend Over Time')
plt.xlabel('Date')
plt.ylabel('Value')
plt.xticks(rotation=45)
plt.tight_layout()
plt.savefig('trend.png', dpi=150)
# Bar chart (comparisons)
plt.figure(figsize=(10, 6))
sns.barplot(data=df, x='category', y='amount')
plt.title('Amount by Category')
plt.xticks(rotation=45)
plt.tight_layout()
plt.savefig('comparison.png', dpi=150)
# Heatmap (correlations)
plt.figure(figsize=(10, 8))
sns.heatmap(df.corr(), annot=True, cmap='coolwarm', center=0)
plt.title('Correlation Matrix')
plt.tight_layout()
plt.savefig('correlation.png', dpi=150)
```
### ASCII Charts (Quick Terminal Visualization)
When you can't generate images, use ASCII:
```
Revenue by Month (in $K)
========================
Jan: ββββββββββββββββ 160
Feb: ββββββββββββββββββ 180
Mar: ββββββββββββββββββββββββ 240
Apr: ββββββββββββββββββββββ 220
May: ββββββββββββββββββββββββββ 260
Jun: ββββββββββββββββββββββββββββ 280
```
---
## Report Generation
### Standard Report Template
```markdown
# [Report Name]
**Period:** [Date range]
**Generated:** [Date]
**Author:** [Agent/Human]
## Executive Summary
[2-3 sentences with key findings]
## Key Metrics
| Metric | Current | Previous | Change |
|--------|---------|----------|--------|
| [Metric] | [Value] | [Value] | [+/-X%] |
## Detailed Analysis
### [Section 1]
[Analysis with supporting data]
### [Section 2]
[Analysis with supporting data]
## Visualizations
[Insert charts]
## Insights
1. **[Insight]**: [Supporting evidence]
2. **[Insight]**: [Supporting evidence]
## Recommendations
1. [Actionable recommendation]
2. [Actionable recommendation]
## Methodology
- Data source: [Source]
- Date range: [Range]
- Filters applied: [Filters]
- Known limitations: [Limitations]
## Appendix
[Supporting data tables]
```
### Automated Report Script
```bash
#!/bin/bash
# generate-report.sh
# Pull latest data
python scripts/extract_data.py --output data/latest.csv
# Run analysis
python scripts/analyze.py --input data/latest.csv --output reports/
# Generate report
python scripts/format_report.py --template weekly --output reports/weekly-$(date +%Y-%m-%d).md
echo "Report generated: reports/weekly-$(date +%Y-%m-%d).md"
```
---
## Statistical Analysis
### Descriptive Statistics
| Statistic | What It Tells You | Use Case |
|-----------|-------------------|----------|
| **Mean** | Average value | Central tendency |
| **Median** | Middle value | Robust to outliers |
| **Mode** | Most common | Categorical data |
| **Std Dev** | Spread around mean | Variability |
| **Min/Max** | Range | Data boundaries |
| **Percentiles** | Distribution shape | Benchmarking |
### Quick Stats with Python
```python
# Full descriptive statistics
stats = df['amount'].describe()
print(stats)
# Additional stats
print(f"Median: {df['amount'].median()}")
print(f"Mode: {df['amount'].mode()[0]}")
print(f"Skewness: {df['amount'].skew()}")
print(f"Kurtosis: {df['amount'].kurtosis()}")
# Correlation
correlation = df['sales'].corr(df['marketing_spend'])
print(f"Correlation: {correlation:.3f}")
```
### Statistical Tests Quick Reference
| Test | Use Case | Python |
|------|----------|--------|
| T-test | Compare two means | `scipy.stats.ttest_ind(a, b)` |
| Chi-square | Categorical independence | `scipy.stats.chi2_contingency(table)` |
| ANOVA | Compare 3+ means | `scipy.stats.f_oneway(a, b, c)` |
| Pearson | Linear correlation | `scipy.stats.pearsonr(x, y)` |
---
## Analysis Workflow
### Standard Analysis Process
1. **Define the Question**
- What are we trying to answer?
- What decisions will this inform?
2. **Understand the Data**
- What data is available?
- What's the structure and quality?
3. **Clean and Prepare**
- Handle missing values
- Fix data types
- Remove duplicates
4. **Explore**
- Descriptive statistics
- Initial visualizations
- Identify patterns
5. **Analyze**
- Deep dive into findings
- Statistical tests if needed
- Validate hypotheses
6. **Communicate**
- Clear visualizations
- Actionable insights
- Recommendations
### Analysis Request Template
```markdown
# Analysis Request
## Question
[What are we trying to answer?]
## Context
[Why does this matter? What decision will it inform?]
## Data Available
- [Dataset 1]: [Description]
- [Dataset 2]: [Description]
## Expected Output
- [Deliverable 1]
- [Deliverable 2]
## Timeline
[When is this needed?]
## Notes
[Any constraints or considerations]
```
---
## Scripts
### data-init.sh
Initialize your data analysis workspace.
### query.sh
Quick SQL query execution.
```bash
# Run query from file
./scripts/query.sh --file queries/daily-report.sql
# Run inline query
./scripts/query.sh "SELECT COUNT(*) FROM users"
# Save output to file
./scripts/query.sh --file queries/export.sql --output data/export.csv
```
### analyze.py
Python analysis toolkit.
```bash
# Basic analysis
python scripts/analyze.py --input data/sales.csv
# With specific analysis type
python scripts/analyze.py --input data/sales.csv --type cohort
# Generate report
python scripts/analyze.py --input data/sales.csv --report weekly
```
---
## Integration Tips
### With Other Skills
| Skill | Integration |
|-------|-------------|
| **Marketing** | Analyze campaign performance, content metrics |
| **Sales** | Pipeline analytics, conversion analysis |
| **Business Dev** | Market research data, competitor analysis |
### Common Data Sources
- **Databases:** PostgreSQL, MySQL, SQLite
- **Warehouses:** BigQuery, Snowflake, Redshift
- **Spreadsheets:** Google Sheets, Excel, CSV
- **APIs:** REST endpoints, GraphQL
- **Files:** JSON, Parquet, XML
---
## Best Practices
1. **Start with the question** β Know what you're trying to answer
2. **Validate your data** β Garbage in = garbage out
3. **Document everything** β Queries, assumptions, decisions
4. **Visualize appropriately** β Right chart for right data
5. **Show your work** β Methodology matters
6. **Lead with insights** β Not just data dumps
7. **Make it actionable** β "So what?" β "Now what?"
8. **Version your queries** β Track changes over time
---
## Common Mistakes
β **Confirmation bias** β Looking for data to support a conclusion
β **Correlation β causation** β Be careful with claims
β **Cherry-picking** β Using only favorable data
β **Ignoring outliers** β Investigate before removing
β **Over-complicating** β Simple analysis often wins
β **No context** β Numbers without comparison are meaningless
---
## License
**License:** MIT β use freely, modify, distribute.
---
*"The goal is to turn data into information, and information into insight." β Carly Fiorina*
Version history
Initial release of the Data Analyst skill: - Provides SQL query patterns for common analyses, including cohort and funnel analysis. - Enables spreadsheet processing and data cleaning techniques. - Offers Python code samples for data analysis and visualization. - Includes guides for chart selection and terminal-friendly ASCII charts. - Delivers templates and checklists for data audits and report generation.
Frequently asked questions
It works with CSV files, Excel spreadsheets, and SQL databases. Your agent can read data from these sources, analyze it, and produce visualizations and reports.
Installation method
Send this prompt to your agent to install the skill
npx clawhub@latest install data-analystSkill data sourced from ClawHub