analyst coding skill risk: low
Natural Language SQL Query Generator
The prompt instructs the model to transform natural language requirements into optimized SQL queries for dialects including BigQuery, PostgreSQL, MySQL, and Snowflake, by first ana…
SKILL 1 file
SKILL.md
--- name: sql-queries description: "Generate SQL queries from natural language descriptions. Supports BigQuery, PostgreSQL, MySQL, and other dialects. Reads database schemas from uploaded diagrams or documentation. Use when writing SQL, building data reports, exploring databases, or translating business questions into queries." --- # SQL Query Generator ## Purpose Transform natural language requirements into optimized SQL queries across multiple database platforms. This skill helps product managers, analysts, and engineers generate accurate queries without manual syntax work. ## How It Works ### Step 1: Understand Your Database Schema - If you provide a schema file (SQL, documentation, or diagram description), I will read and analyze it - Extract table names, column definitions, data types, and relationships - Identify primary keys, foreign keys, and indexing strategies ### Step 2: Process Your Request - Clarify the exact data you need to retrieve or analyze - Confirm the SQL dialect (BigQuery, PostgreSQL, MySQL, Snowflake, etc.) - Ask for any additional requirements (filters, aggregations, sorting) ### Step 3: Generate Optimized Query - Write efficient SQL that leverages your database structure - Include comments explaining complex logic - Add performance considerations for large datasets - Provide alternative approaches if applicable ### Step 4: Explain and Test - Explain the query logic in plain English - Suggest how to test or validate results - Offer tips for performance optimization - If you want, generate a test script or sample data ## Usage Examples **Example 1: Query from Schema File** ``` Upload your database_schema.sql file and say: "Generate a query to find users who signed up in the last 30 days and had at least 5 active sessions" ``` **Example 2: Query from Diagram Description** ``` "Here's my database: Users table (id, email, created_at), Sessions table (id, user_id, timestamp, duration). Generate a query for average session duration per user in January 2026." ``` **Example 3: Complex Analysis Query** ``` "Create a BigQuery query to analyze our revenue by region and customer tier, including year-over-year growth rates." ``` ## Key Capabilities - **Multi-Dialect Support**: Works with BigQuery, PostgreSQL, MySQL, Snowflake, SQL Server - **File Reading**: Reads schema files, SQL dumps, and data documentation - **Query Optimization**: Suggests indexes, partitioning, and performance improvements - **Explanation**: Breaks down queries for learning and documentation - **Testing**: Can generate test queries and sample data scripts - **Script Execution**: Create executable SQL scripts for your database ## Tips for Best Results 1. **Provide context**: Share your database schema or structure 2. **Be specific**: Clearly describe what data you need and any filters 3. **Mention database**: Specify which SQL dialect you're using 4. **Include constraints**: Mention data volume, time ranges, and performance needs 5. **Request format**: Ask for the query result format if you need specific output ## Output Format You'll receive: - **SQL Query**: Production-ready SQL code with comments - **Explanation**: What the query does and how it works - **Performance Notes**: Optimization tips and considerations - **Test Script** (if requested): Sample data and validation queries --- ### Further Reading - [The Product Analytics Playbook: AARRR, HEART, Cohorts & Funnels for PMs](https://www.productcompass.pm/p/the-product-analytics-playbook-aarrr) - [How to Become a Technology-Literate PM](https://www.productcompass.pm/p/how-to-become-a-technology-literate)
REQUIRED CONTEXT
- natural language query description
OPTIONAL CONTEXT
- database schema file or description
- SQL dialect
- filters/aggregations/sorting requirements
EXPECTED OUTPUT
- Format
- markdown
- Schema
- markdown_sections · SQL Query, Explanation, Performance Notes, Test Script
- Constraints
- include comments in SQL
- provide plain-English explanation
- add performance notes
SUCCESS CRITERIA
- Transform natural language into optimized SQL
- Include comments explaining logic
- Add performance considerations
- Explain query in plain English
EXAMPLES
Includes three usage examples showing natural language requests paired with schema inputs or diagram descriptions.
CAVEATS
- Dependencies
- Requires database schema file, diagram description, or structural details
- Missing context
- Preferred output formatting conventions (e.g., markdown code fences, indentation style)
- Error-handling instructions when schema is incomplete or ambiguous
- Ambiguities
- Step 2 instructs to 'Ask for any additional requirements' without specifying timing, number of clarifications, or fallback behavior.
- 'Reads database schemas from uploaded diagrams or documentation' does not define acceptable input formats or handling when no file is provided.
QUALITY
- OVERALL
- 0.78
- CLARITY
- 0.85
- SPECIFICITY
- 0.70
- REUSABILITY
- 0.80
- COMPLETENESS
- 0.75
IMPROVEMENT SUGGESTIONS
- Add explicit template placeholders such as {{dialect}}, {{schema}}, and {{question}} to improve reusability as a callable template.
- Define a fixed output schema (sections and headings) so every response follows the same machine-readable structure.
USAGE
Copy the prompt above and paste it into your AI of choice — Claude, ChatGPT, Gemini, or anywhere else you're working. Replace any placeholder sections with your own context, then ask for the output.
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