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geo-quickhook

GEO售前快速钩子。输入客户品牌+5-8个头部竞品+1-2个签约词,5引擎并行采集,输出一张对比卡:客户排名末尾红色高亮,竞品头部绿色领先,一眼制造焦虑触发签约。触发词:"售前钩子"、"快速分析"、"给销售出个报告"、"geo-quick-hook"、"客户现在多差"、"信源分析"、"竞品信源对比"。
GEO售前快速钩子。输入客户品牌+5-8个头部竞品+1-2个签约词,5引擎并行采集,输出一张对比卡:客户排名末尾红色高亮,竞品头部绿色领先,一眼制造焦虑触发签约。触发词:"售前钩子"、"快速分析"、"给销售出个报告"、"geo-quick-hook"、"客户现在多差"、"信源分析"、"竞品信源对比"。
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数据分析 clawhub v1.0.0 1 版本 100000 Key: 需要
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#ai-seo#brand-visibility#geo#latest#presales#sales

概述

GEO Pre-Sales Quick Hook

📌 Skill Overview

Pre-Sales Quick Hook is the first step in the GEO product sales pipeline, designed specifically for sales scenarios:

> Sales rep has a target client + 1-2 target keywords → Quickly generate a competitive comparison card → Show the client how far behind they are → Create urgency → Trigger sign-up

Relationship with other tools:

  • geo-quick-hook (this tool) = Pre-sales hook (create urgency, trigger sign-up intent)
  • geo-brand-extractor = Pre-sales keyword selection (determine which keywords to target)
  • geo-visibility-tracker = Post-sign-up baseline (full 48 questions, establish comparison starting point)
  • geo-after-sale = Post-sale delivery (monthly progress reports)

Core visual: Competitive ranking chart with the client at the bottom, highlighted in red ⚠️ — instantly devastating.

Report naming convention: GEO_QuickHook_[BrandName]_5engines_[YYYYMMDD].html


🚀 Execution Flow (Three Questions + Sub-Agent Execution)

> Rule: After all three questions are confirmed, you must spawn a sub-agent to execute — the Main Brain does not run scripts directly.

Step 1: First Question

Got it, launching pre-sales hook analysis! 🎯

① What is the target client's brand name?

⏸️ Wait for answer


Step 2: Second Question

Got it! ② Who are the competitors? We recommend 5-8 top industry names.
(The bigger the competitors, the more impactful the contrast!)

⏸️ Wait for answer


Step 3: Third Question

③ What are the target keywords? 1-2 is ideal — focus the firepower.
(These are the keywords the sales rep is pitching to this client.)

⏸️ Wait for answer, then spawn sub-agent to execute


Step 4: Spawn Sub-Agent

Sub-agent execution command:

python3 <skill_dir>/scripts/quick_hook.py \
  --brand "[BrandName]" \
  --competitors "[Comp1,Comp2,Comp3...]" \
  --keywords "[keyword1,keyword2]"

Environment variables must be set in advance:

export LLM_API_KEY="your-api-key-here"
export LLM_BASE_URL="https://api.openai.com/v1"
export LLM_MODEL="gpt-4o"

After the report is generated, screenshot and send via Feishu (html-to-feishu standard flow):

HTML_FILE=$(ls -t ~/Desktop/GEO_QuickHook_*.html | head -1)
ENCODED=$(python3 -c "import urllib.parse,os; print(urllib.parse.quote(os.path.basename('$HTML_FILE')))")
pkill -f "http.server 18899" 2>/dev/null
python3 -m http.server 18899 --directory ~/Desktop &
SERVER_PID=$!
for i in 1 2 3 4 5; do
  STATUS=$(curl -s -o /dev/null -w "%{http_code}" "http://localhost:18899/" 2>/dev/null)
  if [ "$STATUS" = "200" ]; then break; fi
  sleep 1
done
browser(action="open", profile="openclaw", url="http://localhost:18899/$ENCODED") → targetId
browser(action="screenshot", profile="openclaw", targetId=targetId, fullPage=True, type="jpeg") → img_path
local_path = img_path.replace("MEDIA:", "")  # strip prefix to get local path
message(action="send", channel="feishu", target="user:YOUR_FEISHU_OPEN_ID",
        message="⚡ [BrandName] Pre-Sales Hook Report — Competitive ranking at a glance!")
message(action="send", channel="feishu", target="user:YOUR_FEISHU_OPEN_ID",
        media=local_path)
kill $SERVER_PID 2>/dev/null

📊 Output Description

ModuleContent
-----------------
CoverBrand name + 5 engines + date
Comparison card (per keyword)Brand × engine matrix + combined average bar chart + fatal conclusion
Citation comparison rowWhether competitors appear as citations (✅ cited / - listed only) + citation warning text
Bottom hook"Want to learn how to change this?" (fixed copy)

🔧 Technical Details

Script path: skills/geo-quick-hook/scripts/quick_hook.py

5 engines: Qwen / Doubao / DeepSeek / Kimi / Ernie (parallel collection)

> Note: In the open-source version, all engines share the same LLM_API_KEY / LLM_BASE_URL / LLM_MODEL environment variables.

> To connect each engine to its own independent API, configure separate environment variables in ENGINE_MAP.

Usage example:

export LLM_API_KEY="sk-xxxx"
export LLM_BASE_URL="https://api.openai.com/v1"
export LLM_MODEL="gpt-4o"

python3 quick_hook.py \
  --brand "Brand X" \
  --competitors "CompA,CompB,CompC,CompD,CompE" \
  --keywords "keyword1,keyword2"

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-03-20 05:12 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
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腾讯云安全 (Sanbu)

安全,无风险
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