From pm-data
Explains SQL queries in plain English, optimizes for performance, generates SQL from natural language, and creates data dictionaries. Supports PostgreSQL, MySQL, BigQuery, Snowflake, SQLite.
npx claudepluginhub mohitagw15856/pm-claude-skills --plugin pm-dataThis skill uses the workspace's default tool permissions.
This skill explains SQL queries in plain language, identifies optimisation opportunities, and helps communicate data logic to non-technical stakeholders. It also writes and documents new queries from natural language descriptions.
Optimizes SQL queries, designs database schemas, troubleshoots performance in PostgreSQL, MySQL, SQL Server, Oracle. Handles complex joins, CTEs, window functions, indexing, EXPLAIN/ANALYZE, dialect migrations.
Optimizes SQL queries, designs database schemas, and troubleshoots performance issues for PostgreSQL, MySQL, SQL Server, Oracle. Use for slow queries, complex joins, CTEs, window functions, indexing strategies, EXPLAIN/ANALYZE.
Writes optimized SQL queries from natural language for dialects like PostgreSQL, Snowflake, BigQuery, MySQL. Builds multi-CTE queries with joins, aggregations; optimizes performance on large tables.
Share bugs, ideas, or general feedback.
This skill explains SQL queries in plain language, identifies optimisation opportunities, and helps communicate data logic to non-technical stakeholders. It also writes and documents new queries from natural language descriptions.
Detect which mode the user needs based on their request:
When given a SQL query, produce:
[1–3 sentences. What does this query do? What data does it return? Write as if explaining to a business analyst, not a developer.]
Break the query into logical sections. For each section:
[Describe the shape of the output: "Returns one row per user, with columns for X, Y, Z. Ordered by [field] descending."]
When asked to optimise a query, produce:
Rate overall: 🟢 Well-optimised / 🟡 Some improvements possible / 🔴 Significant issues
For each issue:
Issue [N]: [Short name, e.g. "Missing index on join column"]
-- Before
[original snippet]
-- After
[improved snippet]
When given a natural language description, generate the SQL query and then explain it using Mode 1.
Ask the user to confirm:
users, orders, user_id)Produce:
When asked to create documentation for a query or table:
Query: [Name]
Purpose: [One sentence — what business question this answers]
Author: [If provided]
Last reviewed: [If provided]
Inputs:
- Table: [table_name] — [what it contains]
- Filter: [any WHERE conditions and their business meaning]
Output columns:
| Column | Type | Description |
|--------|------|-------------|
| [name] | [type] | [plain English description] |
Assumptions:
- [Any implicit assumptions the query makes]
Known limitations:
- [Edge cases not handled, data quality dependencies, etc.]