interview-prep
上传岗位描述(JD)和个人简历,AI 自动预测面试题(必问/针对性/追问三类), 给出 STAR 答题框架,分析简历与 JD 匹配度,导出备考手册。
Best use case
interview-prep is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
上传岗位描述(JD)和个人简历,AI 自动预测面试题(必问/针对性/追问三类), 给出 STAR 答题框架,分析简历与 JD 匹配度,导出备考手册。
Teams using interview-prep 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/jd-interview-prep/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How interview-prep Compares
| Feature / Agent | interview-prep | 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?
上传岗位描述(JD)和个人简历,AI 自动预测面试题(必问/针对性/追问三类), 给出 STAR 答题框架,分析简历与 JD 匹配度,导出备考手册。
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
# JD + 简历 → 面试题预测助手 🎯 ## 你能做什么 上传岗位描述(JD)和个人简历,我帮你: 1. **预测面试题** — 分三类共 15 道,覆盖必问、针对、追问 2. **给出答题框架** — 每题配 STAR 结构思路 + 关键词提示 3. **评估匹配度** — 你的简历和 JD 有多契合,哪里是弱点 4. **生成备考手册** — 一键导出 Markdown,随时温习 --- ## 使用方式 ### 基本用法 直接粘贴 JD 和简历文本: ``` JD: [粘贴岗位描述] 简历: [粘贴简历内容] ``` ### 文件上传 ``` 请分析我的面试准备,JD 文件:/path/to/jd.txt,简历:/path/to/resume.pdf ``` 支持格式:`.txt` / `.md` / `.pdf` / `.docx` --- ## 输出格式 ### 一、匹配度分析 ``` 📊 简历与 JD 匹配度:78% ✅ 优势匹配项(重点展示) - Python 5年经验 ↔ JD要求:Python 3年以上 ✓ - 带过5人团队 ↔ JD要求:有团队管理经验 ✓ ⚠️ 待补强项(重点准备) - JD 要求 Kubernetes 经验 → 简历未提及 - JD 强调客户沟通能力 → 简历案例较少 ``` ### 二、面试题预测(15题) #### 📌 必问题(5题) > 岗位通用高频题,几乎必问 1. **请简单介绍一下你自己** - 答题要点:30秒版本 + 2分钟版本各准备一个 - STAR框架:背景→核心技能→最大成就→为何适合这个岗位 #### 🎯 针对性题(5题) > 根据你简历 vs JD 的 gap 生成,面试官大概率会追问的薄弱点 ... #### 🔍 追问题(5题) > 针对简历中的亮点/可疑点,深挖细节 ... ### 三、备考手册(导出) 运行导出命令后生成 `interview_prep_YYYY-MM-DD.md`,包含所有题目+答题框架。 --- ## 工具调用 ```python # 解析文件(PDF/DOCX → 文本) exec: python3 SKILL_DIR/scripts/parse_file.py "/path/to/file.pdf" # 生成面试题报告 exec: python3 SKILL_DIR/scripts/generate_questions.py \ --jd "JD文本或文件路径" \ --resume "简历文本或文件路径" \ --output "/tmp/interview_prep.md" ``` --- ## 注意事项 - JD 和简历都可以粘贴纯文本,不需要特定格式 - PDF 解析需要 `pdfplumber`:`pip install pdfplumber` - DOCX 解析需要 `python-docx`:`pip install python-docx` - 没有安装时自动 fallback 到纯文本输入
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