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sql-queries
Expert SQL query generation for DBX Studio. Use when writing, optimizing, or debugging SQL queries against user database connections.
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Expert SQL query generation for DBX Studio. Use when writing, optimizing, or debugging SQL queries against user database connections.
Professional frontend standards for building, scaffolding, extending, or reviewing any UI or frontend project — new or existing — even when standards aren't explicitly asked for. Keeps generated code consistent, reusable, secure, and production-quality. Framework-agnostic: React, Vue, Angular, Svelte, plain JS.
发布本地生成的 HTML、Markdown、TXT、PDF、Word 或 PPTX 到 ShareOne 平台,生成公网分享短链接;或者当用户提供 ShareOne 链接并要求下载文件、修改文件、拉取/处理评论时使用此技能。当用户要求“发布”、“分享”、“生成链接”、“上线”,或者“下载这个链接的文件”、“修改这个 ShareOne 链接的内容”、“拉取这个链接的评论”时,必须使用此技能。
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| name | sql-queries |
| description | Expert SQL query generation for DBX Studio. Use when writing, optimizing, or debugging SQL queries against user database connections. |
This project supports multiple database backends via user connections. Always write dialect-appropriate SQL.
| Dialect | Provider |
|---|---|
| PostgreSQL | Default / Railway |
| Snowflake | Via MCP connector |
| BigQuery | Via MCP connector |
| Databricks | Via MCP connector |
| MySQL | Via connection string |
| SQLite | Via connection string |
Always add LIMIT unless the user explicitly wants all rows:
SELECT * FROM "schema"."table" LIMIT 100;
WITH ranked AS (
SELECT *, ROW_NUMBER() OVER (PARTITION BY category ORDER BY created_at DESC) AS rn
FROM orders
)
SELECT * FROM ranked WHERE rn = 1;
SELECT
DATE_TRUNC('month', created_at) AS month,
COUNT(*) AS total,
SUM(amount) AS revenue
FROM orders
GROUP BY 1
ORDER BY 1 DESC;
SELECT
user_id,
amount,
SUM(amount) OVER (PARTITION BY user_id ORDER BY created_at) AS running_total
FROM transactions;
The AI has access to these tools — always use them rather than guessing:
| Tool | When to Use |
|---|---|
read_schema | First call — understand table structure |
get_table_data | Preview rows before writing complex queries |
execute_query | Run SELECT queries (SELECT/WITH only) |
describe_table | Get column details, FK relationships |
get_table_stats | Row counts, distributions |
generate_chart | Visualize query results |
execute_query"schema"."table"."column"read_schema or describe_table first