customer-service-reply
version: "2.0.0"
by ckchzh · published 2026-03-22
$ claw add gh:ckchzh/ckchzh-customer-service-reply---
version: "2.0.0"
name: Customer Service Reply
description: "客服话术和回复模板生成器。售前咨询、售后问题、差评回复、退换货、升级处理、行业FAQ、满意度挽回。. Use when you need customer service reply capabilities. Triggers on: customer service reply."
客服回复模板。售前咨询、售后处理、退换货、投诉回复、好评引导、升级处理、行业FAQ、满意度挽回。Customer service reply templates for pre-sale, after-sale, returns, complaints, escalation, FAQ generation, satisfaction recovery. 客服话术、电商客服、售后模板、投诉处理、满意度管理。Use when responding to customer inquiries.
author: BytesAgain
homepage: https://bytesagain.com
source: https://github.com/bytesagain/ai-skills
---
# customer-service-reply
客服话术和回复模板生成器。售前咨询、售后问题、差评回复、退换货、升级处理、行业FAQ、满意度挽回。
Usage
This skill provides a script `cs.sh` for generating customer service reply templates.
Commands
| Command | Description |
|---------|-------------|
| `cs.sh presale "产品" "客户问题"` | 售前咨询回复 |
| `cs.sh complaint "投诉内容"` | 投诉处理话术 |
| `cs.sh bad-review "差评内容"` | 差评回复(诚恳+解决方案) |
| `cs.sh refund "退款原因"` | 退换货话术 |
| `cs.sh escalate "问题描述"` | 升级处理方案(L1→L2→L3→L4分级话术) |
| `cs.sh faq "行业"` | 行业FAQ自动生成(20个高频问题+标准回答) |
| `cs.sh satisfaction "评分" "反馈"` | 满意度挽回(根据1-5分输出对应策略) |
| `cs.sh help` | 显示帮助信息 |
How to run
bash scripts/cs.sh <command> [args...]Examples
# 基础功能
bash scripts/cs.sh presale "蓝牙耳机" "能防水吗"
bash scripts/cs.sh complaint "发货太慢了,等了一周还没收到"
bash scripts/cs.sh bad-review "质量太差,用了两天就坏了"
bash scripts/cs.sh refund "尺码不合适想换货"
# 新增功能
bash scripts/cs.sh escalate "客户要求退一赔三,威胁投诉12315"
bash scripts/cs.sh faq "美妆"
bash scripts/cs.sh faq "数码"
bash scripts/cs.sh satisfaction "2" "产品有质量问题"
bash scripts/cs.sh satisfaction "5" "非常满意"查看 `tips.md` 获取电商客服实战技巧(响应速度、投诉处理、满意度管理等)。
Notes
---
💬 Feedback & Feature Requests: https://bytesagain.com/feedback
Powered by BytesAgain | bytesagain.com
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