deepwiki-ask

通过 DeepWiki MCP 查询仓库信息。支持提问、获取结构、获取文档内容。Query a repository via DeepWiki MCP: ask questions, get structure, get documentation. 用户提供 owner/repo 时触发。

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Best use case

deepwiki-ask is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

通过 DeepWiki MCP 查询仓库信息。支持提问、获取结构、获取文档内容。Query a repository via DeepWiki MCP: ask questions, get structure, get documentation. 用户提供 owner/repo 时触发。

Teams using deepwiki-ask should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/deepwiki-ask/SKILL.md --create-dirs "https://raw.githubusercontent.com/openclaw/skills/main/skills/autoxj/deepwiki-ask/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/deepwiki-ask/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How deepwiki-ask Compares

Feature / Agentdeepwiki-askStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

通过 DeepWiki MCP 查询仓库信息。支持提问、获取结构、获取文档内容。Query a repository via DeepWiki MCP: ask questions, get structure, get documentation. 用户提供 owner/repo 时触发。

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

Related Guides

SKILL.md Source

# DeepWiki 仓库查询

通过 DeepWiki MCP 对指定仓库发起查询,支持三种操作模式:提问、获取仓库结构、获取文档内容。

## 触发场景

- 用户询问某仓库的作用、结构或功能
- 用户提供仓库名(owner/repo)并带有问题
- 用户需要了解仓库的整体结构
- 用户需要查看仓库的详细文档内容

## 参数

| 参数   | 必填 | 说明           |
|--------|------|----------------|
| repo   | 是   | 仓库名 owner/repo |
| question | 否 | 要问的问题(提问模式) |
| structure | 否 | 获取文档结构(结构模式) |
| contents | 否 | 获取文档内容(内容模式) |
| topic | 否 | 指定文档主题(与 contents 一起使用) |

## 执行流程

### 提问模式
1. 从用户消息提取 **repo**(owner/repo)和 **question**。
2. 执行(必须加 `--json`):
   ```
   python <SKILL_ROOT>/deepwiki_ask.py -r <owner/repo> -q "<question>" --json
   ```
   Windows 下中文问题若编码异常,可把问题写入 UTF-8 文件后:`-q @<SKILL_ROOT>/temp_q.txt`

### 结构模式
1. 从用户消息提取 **repo**(owner/repo)。
2. 执行(必须加 `--json`):
   ```
   python <SKILL_ROOT>/deepwiki_ask.py -r <owner/repo> --structure --json
   ```

### 内容模式
1. 从用户消息提取 **repo**(owner/repo)和可选的 **topic**。
2. 执行(必须加 `--json`):
   ```
   python <SKILL_ROOT>/deepwiki_ask.py -r <owner/repo> --contents --json
   python <SKILL_ROOT>/deepwiki_ask.py -r <owner/repo> --contents --topic "<topic_name>" --json
   ```

3. 解析 stdout JSON:`status == "success"` 则根据操作模式展示相应结果;`status == "error"` 则提示 `message`。
4. 请求可能需 30–120 秒,需等待。

## 输出示例

### 提问模式
```json
{"status": "success", "repo": "owner/repo", "mode": "question", "question": "...", "result": "..."}
```

### 结构模式
```json
{"status": "success", "repo": "owner/repo", "mode": "structure", "result": "..."}
```

### 内容模式
```json
{"status": "success", "repo": "owner/repo", "mode": "contents", "result": "..."}
```

### 错误响应
```json
{"status": "error", "repo": "owner/repo", "message": "..."}
```

## 配置

`config.json`:`request_timeout_seconds`(10–600,默认 120)、`request_max_retries`(0–10,默认 3)。

## 错误处理

- 仓库格式错误:提示 owner/repo 格式
- 超时/网络错误:脚本重试后返回 `status: "error"`,需要提示用户检查网络

## 历史版本

**v1.1.0** (2026-03-14)
- 📋 支持获取文档结构(--structure)
- 📄 支持获取文档内容(--contents)
- 📄 支持指定文档主题(--topic)
- 🔄 重构为 MCP 客户端类,移除 requests 依赖,改用标准库 urllib

**v1.0.0** (2026-03-10)
- 🎉 初始版本发布
- 📖 支持 owner/repo + question 单次问答

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