dingtalk-ai-table
钉钉 AI 表格(多维表)操作技能。使用 mcporter CLI 连接钉钉官方新版 AI 表格 MCP server,基于 baseId / tableId / fieldId / recordId 体系执行 Base、Table、Field、Record 的查询与增删改。适用于创建 AI 表格、搜索表格、读取表结构、批量增删改记录、批量建字段、更新字段配置、按模板建表等场景。需要配置 DINGTALK_MCP_URL 或直接使用 Streamable HTTP URL。
Best use case
dingtalk-ai-table is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
钉钉 AI 表格(多维表)操作技能。使用 mcporter CLI 连接钉钉官方新版 AI 表格 MCP server,基于 baseId / tableId / fieldId / recordId 体系执行 Base、Table、Field、Record 的查询与增删改。适用于创建 AI 表格、搜索表格、读取表结构、批量增删改记录、批量建字段、更新字段配置、按模板建表等场景。需要配置 DINGTALK_MCP_URL 或直接使用 Streamable HTTP URL。
Teams using dingtalk-ai-table 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
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/dingtalk-ai-table/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How dingtalk-ai-table Compares
| Feature / Agent | dingtalk-ai-table | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
钉钉 AI 表格(多维表)操作技能。使用 mcporter CLI 连接钉钉官方新版 AI 表格 MCP server,基于 baseId / tableId / fieldId / recordId 体系执行 Base、Table、Field、Record 的查询与增删改。适用于创建 AI 表格、搜索表格、读取表结构、批量增删改记录、批量建字段、更新字段配置、按模板建表等场景。需要配置 DINGTALK_MCP_URL 或直接使用 Streamable HTTP URL。
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.
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SKILL.md Source
# 钉钉 AI 表格操作(新版 MCP)
按 **新版 MCP schema** 工作:
- Base:`baseId`
- Table:`tableId`
- Field:`fieldId`
- Record:`recordId`
不要再用旧版 `dentryUuid / sheetIdOrName / fieldIdOrName`。
## 版本守门规则(每个 MCP Server 地址只强制检查一次)
在真正开始任何 AI 表格操作前,必须先检查当前 `mcporter` 注册的 `dingtalk-ai-table` MCP server 实际返回的 tools schema。**但这个检查不该每次都重复做;同一个 MCP Server 地址只需要强制检查一次。**
### 一次性检查策略
1. 先读取当前 `mcporter` 里 `dingtalk-ai-table` 对应的 MCP Server 地址。
2. 用这个地址生成一个本地检查标记(例如基于完整 URL 或其 hash)。
3. 在工作区保存检查结果,例如放到:
```text
~/.openclaw/workspace/.cache/dingtalk-ai-table/
```
建议文件名模式:
```text
schema-check-<url-hash>.json
```
4. 如果当前地址对应的检查标记已经存在,并且结果是“已确认新版 schema”,则**跳过重复检查**,直接继续后续 AI 表格操作。
5. 只有在以下情况才重新强制检查:
- 第一次运行,没有检查标记
- `mcporter` 里的 MCP Server 地址变了
- 之前检查结果是旧版 schema / 检查失败
- 用户明确要求重新验证
### 强制检查时执行
```bash
mcporter list dingtalk-ai-table --schema
```
### 判断标准
如果返回的 tools 仍然是旧版这一套,例如出现:
- `get_root_node_of_my_document`
- `create_base_app`
- `list_base_tables`
- `add_base_record`
- `search_base_record`
- `list_base_field`
或者整体仍然基于:
- `dentryUuid`
- `sheetIdOrName`
- `fieldIdOrName`
那么说明:**虽然 skill 文件已经是新版,但 mcporter 里注册的 MCP server 地址还是旧的,不能继续操作。**
### 遇到旧版 schema 时的强制提示
此时必须明确提示用户:
1. 打开这个页面:
`https://mcp.dingtalk.com/#/detail?mcpId=9555&detailType=marketMcpDetail`
2. 点击右侧 **「获取 MCP Server 配置」** 按钮
3. 复制新的 MCP Server 地址
4. 用新的地址替换 `mcporter` 里已经注册的 `dingtalk-ai-table` 地址
5. 替换完成后,再重新执行:
```bash
mcporter list dingtalk-ai-table --schema
```
只有当返回的 tools 已经变成新版 schema,例如出现:
- `list_bases`
- `get_base`
- `get_tables`
- `get_fields`
- `query_records`
- `create_records`
- `update_records`
- `delete_records`
才允许继续真正的 AI 表格操作。
### 通过检查后的处理
一旦确认当前 MCP Server 地址返回的是新版 schema,就把结果写入本地检查标记。后续只要 `mcporter` 里的 `dingtalk-ai-table` 地址没变,就不要再重复做这一步守门检查。
### 用户提示文案(可直接复用)
```text
当前 mcporter 里注册的 dingtalk-ai-table 还是旧版 MCP schema,暂时不能按新版技能操作。
请打开 https://mcp.dingtalk.com/#/detail?mcpId=9555&detailType=marketMcpDetail ,点击右侧“获取 MCP Server 配置”按钮,复制新的 MCP Server 地址,并替换 mcporter 里已注册的 dingtalk-ai-table 地址。替换后重新检查 schema,确认出现 list_bases / get_base / create_records 等新版 tools 后,再继续操作 AI 表格。
```
## 前置要求
### 安装 mcporter CLI
```bash
npm install -g mcporter
# 或
bun install -g mcporter
```
验证:
```bash
mcporter --version
```
### 配置 MCP Server
在钉钉 MCP 广场 https://mcp.dingtalk.com/#/detail?mcpId=9555&detailType=marketMcpDetail 获取新版钉钉 AI 表格 MCP 的 `Streamable HTTP URL`。
方式一:直接配置到 mcporter
```bash
mcporter config add dingtalk-ai-table --url "<Streamable_HTTP_URL>"
```
方式二:使用环境变量
```bash
export DINGTALK_MCP_URL="<Streamable_HTTP_URL>"
```
> 这个 URL 带访问令牌,等同密码,不要泄露。
### 工作区沙箱
脚本读取本地文件时,会优先使用 `OPENCLAW_WORKSPACE` 作为允许根目录:
```bash
export OPENCLAW_WORKSPACE="$HOME/.openclaw/workspace"
```
未设置时默认使用当前工作目录。
## 核心工具集
### Base 层
- `list_bases`
- `search_bases`
- `get_base`
- `create_base`
- `update_base`
- `delete_base`
- `search_templates`
### Table 层
- `get_tables`
- `create_table`
- `update_table`
- `delete_table`
### Field 层
- `get_fields`
- `create_fields`
- `update_field`
- `delete_field`
### Record 层
- `query_records`
- `create_records`
- `update_records`
- `delete_records`
## 推荐工作流
### 1. 先找 Base
```bash
mcporter call dingtalk-ai-table list_bases limit=10 --output json
mcporter call dingtalk-ai-table search_bases query="销售" --output json
```
### 2. 再拿 Table 目录
```bash
mcporter call dingtalk-ai-table get_base baseId="base_xxx" --output json
```
### 3. 再展开表结构
```bash
mcporter call dingtalk-ai-table get_tables \
--args '{"baseId":"base_xxx","tableIds":["tbl_xxx"]}' \
--output json
```
### 4. 字段复杂时读完整配置
```bash
mcporter call dingtalk-ai-table get_fields \
--args '{"baseId":"base_xxx","tableId":"tbl_xxx","fieldIds":["fld_xxx"]}' \
--output json
```
### 5. 再查 / 写记录
```bash
mcporter call dingtalk-ai-table query_records \
--args '{"baseId":"base_xxx","tableId":"tbl_xxx","limit":20}' \
--output json
mcporter call dingtalk-ai-table create_records \
--args '{"baseId":"base_xxx","tableId":"tbl_xxx","records":[{"cells":{"fld_name":"张三"}}]}' \
--output json
```
## 脚本
### 批量新增字段
```bash
python3 scripts/bulk_add_fields.py <baseId> <tableId> fields.json
```
`fields.json` 示例:
```json
[
{"fieldName":"任务名","type":"text"},
{"fieldName":"优先级","type":"singleSelect","config":{"options":[{"name":"高"},{"name":"中"},{"name":"低"}]}}
]
```
兼容项:
- `name` 会自动映射为 `fieldName`
- `phone` 会自动映射为 `telephone`
### 批量导入记录
```bash
python3 scripts/import_records.py <baseId> <tableId> data.csv
python3 scripts/import_records.py <baseId> <tableId> data.json 50
```
说明:
- CSV 表头默认按 `fieldId` 解释
- JSON 支持:
- `[{"cells": {...}}]`
- `[{"fld_xxx": "value"}]`
## 安全规则
- 文件路径受 `OPENCLAW_WORKSPACE` 沙箱限制
- 仅允许读取工作区内 `.json` / `.csv` 文件
- Base / Table / Field / Record ID 都做格式校验
- 批量上限按 MCP server 实际限制控制:
- `create_fields`:最多 15
- `get_tables / get_fields`:最多 10
- `create_records / update_records / delete_records`:最多 100
## 调试原则
- 先 `get_base`,再 `get_tables`,必要时 `get_fields`
- 不要猜 `fieldId`
- 复杂参数一律用 `--args` JSON
- `singleSelect / multipleSelect` 过滤时必须传 option ID,不是 option name
## 参考
- API 参考:`references/api-reference.md`
- 错误排查:`references/error-codes.md`Related Skills
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## Description