Skip to main content
ClaudeWave
Skill389 estrellas del repoactualizado 3d ago

profiling-tables

Profiling-tables executes a systematic SQL-based analysis of a specified table to generate comprehensive data documentation. It retrieves column metadata and data types, calculates row counts, computes statistical measures appropriate to each column's type (min/max/average for numerics, length statistics for strings, date ranges for timestamps), analyzes categorical distributions, and samples representative records. Use this skill when users request table profiles, data quality assessments, dataset statistics, or need to understand table structure and content for onboarding or validation purposes.

Instalar en Claude Code
Copiar
git clone --depth 1 https://github.com/astronomer/agents /tmp/profiling-tables && cp -r /tmp/profiling-tables/skills/profiling-tables ~/.claude/skills/profiling-tables
Después abre una sesión nueva de Claude Code; el skill carga automáticamente.

SKILL.md

# Data Profile

Generate a comprehensive profile of a table that a new team member could use to understand the data.

## Step 1: Basic Metadata

Query column metadata:

```sql
SELECT COLUMN_NAME, DATA_TYPE, COMMENT
FROM <database>.INFORMATION_SCHEMA.COLUMNS
WHERE TABLE_SCHEMA = '<schema>' AND TABLE_NAME = '<table>'
ORDER BY ORDINAL_POSITION
```

If the table name isn't fully qualified, search INFORMATION_SCHEMA.TABLES to locate it first.

## Step 2: Size and Shape

Run via `run_sql`:

```sql
SELECT
    COUNT(*) as total_rows,
    COUNT(*) / 1000000.0 as millions_of_rows
FROM <table>
```

## Step 3: Column-Level Statistics

For each column, gather appropriate statistics based on data type:

### Numeric Columns
```sql
SELECT
    MIN(column_name) as min_val,
    MAX(column_name) as max_val,
    AVG(column_name) as avg_val,
    STDDEV(column_name) as std_dev,
    PERCENTILE_CONT(0.5) WITHIN GROUP (ORDER BY column_name) as median,
    SUM(CASE WHEN column_name IS NULL THEN 1 ELSE 0 END) as null_count,
    COUNT(DISTINCT column_name) as distinct_count
FROM <table>
```

### String Columns
```sql
SELECT
    MIN(LEN(column_name)) as min_length,
    MAX(LEN(column_name)) as max_length,
    AVG(LEN(column_name)) as avg_length,
    SUM(CASE WHEN column_name IS NULL OR column_name = '' THEN 1 ELSE 0 END) as empty_count,
    COUNT(DISTINCT column_name) as distinct_count
FROM <table>
```

### Date/Timestamp Columns
```sql
SELECT
    MIN(column_name) as earliest,
    MAX(column_name) as latest,
    DATEDIFF('day', MIN(column_name), MAX(column_name)) as date_range_days,
    SUM(CASE WHEN column_name IS NULL THEN 1 ELSE 0 END) as null_count
FROM <table>
```

## Step 4: Cardinality Analysis

For columns that look like categorical/dimension keys:

```sql
SELECT
    column_name,
    COUNT(*) as frequency,
    ROUND(COUNT(*) * 100.0 / SUM(COUNT(*)) OVER(), 2) as percentage
FROM <table>
GROUP BY column_name
ORDER BY frequency DESC
LIMIT 20
```

This reveals:
- High-cardinality columns (likely IDs or unique values)
- Low-cardinality columns (likely categories or status fields)
- Skewed distributions (one value dominates)

## Step 5: Sample Data

Get representative rows:

```sql
SELECT *
FROM <table>
LIMIT 10
```

If the table is large and you want variety, sample from different time periods or categories.

## Step 6: Data Quality Assessment

Summarize quality across dimensions:

### Completeness
- Which columns have NULLs? What percentage?
- Are NULLs expected or problematic?

### Uniqueness
- Does the apparent primary key have duplicates?
- Are there unexpected duplicate rows?

### Freshness
- When was data last updated? (MAX of timestamp columns)
- Is the update frequency as expected?

### Validity
- Are there values outside expected ranges?
- Are there invalid formats (dates, emails, etc.)?
- Are there orphaned foreign keys?

### Consistency
- Do related columns make sense together?
- Are there logical contradictions?

## Step 7: Output Summary

Provide a structured profile:

### Overview
2-3 sentences describing what this table contains, who uses it, and how fresh it is.

### Schema
| Column | Type | Nulls% | Distinct | Description |
|--------|------|--------|----------|-------------|
| ... | ... | ... | ... | ... |

### Key Statistics
- Row count: X
- Date range: Y to Z
- Last updated: timestamp

### Data Quality Score
- Completeness: X/10
- Uniqueness: X/10
- Freshness: X/10
- Overall: X/10

### Potential Issues
List any data quality concerns discovered.

### Recommended Queries
3-5 useful queries for common questions about this data.
add-adapter-methodSlash Command

Add a new method to both Airflow adapters

add-toolSlash Command

Add a new MCP tool to server.py

check-airflow-compatSlash Command

Verify code works with both Airflow 2.x and 3.x

airflow-adapterSkill

Airflow adapter pattern for v2/v3 API compatibility. Use when working with adapters, version detection, or adding new API methods that need to work across Airflow 2.x and 3.x.

airflow-hitlSkill

Use when the user needs human-in-the-loop workflows in Airflow (approval/reject, form input, or human-driven branching). Covers ApprovalOperator, HITLOperator, HITLBranchOperator, HITLEntryOperator, HITLTrigger. Requires Airflow 3.1+. Does not cover AI/LLM calls (see airflow-ai).

airflow-pluginsSkill

Build Airflow 3.1+ plugins that embed FastAPI apps, custom UI pages, React components, middleware, macros, and operator links directly into the Airflow UI. Use this skill whenever the user wants to create an Airflow plugin, add a custom UI page or nav entry to Airflow, build FastAPI-backed endpoints inside Airflow, serve static assets from a plugin, embed a React app in the Airflow UI, add middleware to the Airflow API server, create custom operator extra links, or call the Airflow REST API from inside a plugin. Also trigger when the user mentions AirflowPlugin, fastapi_apps, external_views, react_apps, plugin registration, or embedding a web app in Airflow 3.1+. If someone is building anything custom inside Airflow 3.1+ that involves Python and a browser-facing interface, this skill almost certainly applies.

airflowSkill

Queries, manages, and troubleshoots Apache Airflow using the af CLI. Covers listing DAGs, triggering runs, reading task logs, diagnosing failures, debugging DAG import errors, checking connections, variables, pools, and monitoring health. Also routes to sub-skills for writing DAGs, debugging, deploying, and migrating Airflow 2 to 3. Use when user mentions "Airflow", "DAG", "DAG run", "task log", "import error", "parse error", "broken DAG", or asks to "trigger a pipeline", "debug import errors", "check Airflow health", "list connections", "retry a run", or any Airflow operation. Do NOT use for warehouse/SQL analytics on Airflow metadata tables — use analyzing-data instead.

analyzing-dataSkill

Queries data warehouse and answers business questions about data. Handles questions requiring database/warehouse queries including "who uses X", "how many Y", "show me Z", "find customers", "what is the count", data lookups, metrics, trends, or SQL analysis.