Agent skill
data-analysis
Use this skill when the user uploads Excel (.xlsx/.xls) or CSV files and wants to perform data analysis, generate statistics, create summaries, pivot tables, SQL queries, or any form of structured data exploration. Supports multi-sheet Excel workbooks, aggregation, filtering, joins, and exporting results to CSV/JSON/Markdown.
Install this agent skill to your Project
npx add-skill https://github.com/bytedance/deer-flow/tree/main/skills/public/data-analysis
SKILL.md
Data Analysis Skill
Overview
This skill analyzes user-uploaded Excel/CSV files using DuckDB — an in-process analytical SQL engine. It supports schema inspection, SQL-based querying, statistical summaries, and result export, all through a single Python script.
Core Capabilities
- Inspect Excel/CSV file structure (sheets, columns, types, row counts)
- Execute arbitrary SQL queries against uploaded data
- Generate statistical summaries (mean, median, stddev, percentiles, nulls)
- Support multi-sheet Excel workbooks (each sheet becomes a table)
- Export query results to CSV, JSON, or Markdown
- Handle large files efficiently with DuckDB's columnar engine
Workflow
Step 1: Understand Requirements
When a user uploads data files and requests analysis, identify:
- File location: Path(s) to uploaded Excel/CSV files under
/mnt/user-data/uploads/ - Analysis goal: What insights the user wants (summary, filtering, aggregation, comparison, etc.)
- Output format: How results should be presented (table, CSV export, JSON, etc.)
- You don't need to check the folder under
/mnt/user-data
Step 2: Inspect File Structure
First, inspect the uploaded file to understand its schema:
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/data.xlsx \
--action inspect
This returns:
- Sheet names (for Excel) or filename (for CSV)
- Column names, data types, and non-null counts
- Row count per sheet/file
- Sample data (first 5 rows)
Step 3: Perform Analysis
Based on the schema, construct SQL queries to answer the user's questions.
Run SQL Query
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/data.xlsx \
--action query \
--sql "SELECT category, COUNT(*) as count, AVG(amount) as avg_amount FROM Sheet1 GROUP BY category ORDER BY count DESC"
Generate Statistical Summary
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/data.xlsx \
--action summary \
--table Sheet1
This returns for each numeric column: count, mean, std, min, 25%, 50%, 75%, max, null_count. For string columns: count, unique, top value, frequency, null_count.
Export Results
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/data.xlsx \
--action query \
--sql "SELECT * FROM Sheet1 WHERE amount > 1000" \
--output-file /mnt/user-data/outputs/filtered-results.csv
Supported output formats (auto-detected from extension):
.csv— Comma-separated values.json— JSON array of records.md— Markdown table
Parameters
| Parameter | Required | Description |
|---|---|---|
--files |
Yes | Space-separated paths to Excel/CSV files |
--action |
Yes | One of: inspect, query, summary |
--sql |
For query |
SQL query to execute |
--table |
For summary |
Table/sheet name to summarize |
--output-file |
No | Path to export results (CSV/JSON/MD) |
[!NOTE] Do NOT read the Python file, just call it with the parameters.
Table Naming Rules
- Excel files: Each sheet becomes a table named after the sheet (e.g.,
Sheet1,Sales,Revenue) - CSV files: Table name is the filename without extension (e.g.,
data.csv→data) - Multiple files: All tables from all files are available in the same query context, enabling cross-file joins
- Special characters: Sheet/file names with spaces or special characters are auto-sanitized (spaces → underscores). Use double quotes for names that start with numbers or contain special characters, e.g.,
"2024_Sales"
Analysis Patterns
Basic Exploration
-- Row count
SELECT COUNT(*) FROM Sheet1
-- Distinct values in a column
SELECT DISTINCT category FROM Sheet1
-- Value distribution
SELECT category, COUNT(*) as cnt FROM Sheet1 GROUP BY category ORDER BY cnt DESC
-- Date range
SELECT MIN(date_col), MAX(date_col) FROM Sheet1
Aggregation & Grouping
-- Revenue by category and month
SELECT category, DATE_TRUNC('month', order_date) as month,
SUM(revenue) as total_revenue
FROM Sales
GROUP BY category, month
ORDER BY month, total_revenue DESC
-- Top 10 customers by spend
SELECT customer_name, SUM(amount) as total_spend
FROM Orders GROUP BY customer_name
ORDER BY total_spend DESC LIMIT 10
Cross-file Joins
-- Join sales with customer info from different files
SELECT s.order_id, s.amount, c.customer_name, c.region
FROM sales s
JOIN customers c ON s.customer_id = c.id
WHERE s.amount > 500
Window Functions
-- Running total and rank
SELECT order_date, amount,
SUM(amount) OVER (ORDER BY order_date) as running_total,
RANK() OVER (ORDER BY amount DESC) as amount_rank
FROM Sales
Pivot-style Analysis
-- Pivot: monthly revenue by category
SELECT category,
SUM(CASE WHEN MONTH(date) = 1 THEN revenue END) as Jan,
SUM(CASE WHEN MONTH(date) = 2 THEN revenue END) as Feb,
SUM(CASE WHEN MONTH(date) = 3 THEN revenue END) as Mar
FROM Sales
GROUP BY category
Complete Example
User uploads sales_2024.xlsx (with sheets: Orders, Products, Customers) and asks: "Analyze my sales data — show top products by revenue and monthly trends."
Step 1: Inspect the file
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/sales_2024.xlsx \
--action inspect
Step 2: Top products by revenue
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/sales_2024.xlsx \
--action query \
--sql "SELECT p.product_name, SUM(o.quantity * o.unit_price) as total_revenue, SUM(o.quantity) as total_units FROM Orders o JOIN Products p ON o.product_id = p.id GROUP BY p.product_name ORDER BY total_revenue DESC LIMIT 10"
Step 3: Monthly revenue trends
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/sales_2024.xlsx \
--action query \
--sql "SELECT DATE_TRUNC('month', order_date) as month, SUM(quantity * unit_price) as revenue FROM Orders GROUP BY month ORDER BY month" \
--output-file /mnt/user-data/outputs/monthly-trends.csv
Step 4: Statistical summary
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/sales_2024.xlsx \
--action summary \
--table Orders
Present results to the user with clear explanations of findings, trends, and actionable insights.
Multi-file Example
User uploads orders.csv and customers.xlsx and asks: "Which region has the highest average order value?"
python /mnt/skills/public/data-analysis/scripts/analyze.py \
--files /mnt/user-data/uploads/orders.csv /mnt/user-data/uploads/customers.xlsx \
--action query \
--sql "SELECT c.region, AVG(o.amount) as avg_order_value, COUNT(*) as order_count FROM orders o JOIN Customers c ON o.customer_id = c.id GROUP BY c.region ORDER BY avg_order_value DESC"
Output Handling
After analysis:
- Present query results directly in conversation as formatted tables
- For large results, export to file and share via
present_filestool - Always explain findings in plain language with key takeaways
- Suggest follow-up analyses when patterns are interesting
- Offer to export results if the user wants to keep them
Caching
The script automatically caches loaded data to avoid re-parsing files on every call:
- On first load, files are parsed and stored in a persistent DuckDB database under
/mnt/user-data/workspace/.data-analysis-cache/ - The cache key is a SHA256 hash of all input file contents — if files change, a new cache is created
- Subsequent calls with the same files will use the cached database directly (near-instant startup)
- Cache is transparent — no extra parameters needed
This is especially useful when running multiple queries against the same data files (inspect → query → summary).
Notes
- DuckDB supports full SQL including window functions, CTEs, subqueries, and advanced aggregations
- Excel date columns are automatically parsed; use DuckDB date functions (
DATE_TRUNC,EXTRACT, etc.) - For very large files (100MB+), DuckDB handles them efficiently without loading everything into memory
- Column names with spaces are accessible using double quotes:
"Column Name"
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