research-deep

Solid

读取调研outline,为每个item启动独立agent进行深度调研。禁用task output。

AI & Automation 1,083 stars 93 forks Updated 1 months ago MIT

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Skill Content

# Research Deep - 深度调研 ## 触发方式 `/research-deep` ## 执行流程 ### Step 1: 自动定位Outline 在当前工作目录查找 `*/outline.yaml` 文件,读取items列表、execution配置(含items_per_agent)。 ### Step 2: 断点续传检查 - 检查output_dir下已完成的JSON文件 - 跳过已完成的items ### Step 3: 分批执行 - 按batch_size分批(完成一批需要得到用户同意才可进行下一批) - 每个agent负责items_per_agent个项目 - 启动web-search-agent(后台并行,禁用task output) **参数获取**: - `{topic}`: outline.yaml中的topic字段 - `{item_name}`: item的name字段 - `{item_related_info}`: item的完整yaml内容(name + category + description等) - `{output_dir}`: outline.yaml中execution.output_dir(默认./results) - `{fields_path}`: {topic}/fields.yaml的绝对路径 - `{output_path}`: {output_dir}/{item_name_slug}.json的绝对路径(slugify处理item_name:空格替换为_,移除特殊字符) **硬约束**:以下prompt必须严格复述,仅替换{xxx}中的变量,禁止改写结构或措辞。 **Prompt模板**: ```python prompt = f"""## 任务 调研 {item_related_info},输出结构化JSON到 {output_path} ## 字段定义 读取 {fields_path} 获取所有字段定义 ## 输出要求 1. 按fields.yaml定义的字段输出JSON 2. 不确定的字段值标注[不确定] 3. JSON末尾添加uncertain数组,列出所有不确定的字段名 4. 所有字段值必须使用中文输出(调研过程可用英文,但最终JSON值为中文) ## 输出路径 {output_path} ## 验证 完成JSON输出后,运行验证脚本确保字段完整覆盖: python ~/.claude/skills/research/validate_json.py -f {fields_path} -j {output_path} 验证通过后才算完成任务。 """ ``` **One-shot示例**(假设调研GitHub Copilot): ``` ## 任务 调研 name: GitHub Copilot category: 国际产品 description: Microsoft/GitHub开发,首个主流AI编程助手,市场份额约40%,输出结构化JSON到 {project_dir}/results/GitHub_Copilot.json ## 字段定义 读取 {project_dir}/fields.yaml 获取所有字段定义 ## 输出要求 1. 按fields.yaml定义的字段输出JSON 2. 不确定的字段值标注[不确定] 3. JSON末尾添加uncertain数组,列出所有不确定的字段名 4. 所有字段值必须使用中文输出(调研过程...

Details

Author
Weizhena
Repository
Weizhena/Deep-Research-skills
Created
5 months ago
Last Updated
1 months ago
Language
Python
License
MIT

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