Chat History Analyzer
Extracts and analyzes Cursor IDE chat history to identify key discoveries, obstacles, and solutions, saving findings to the journal.
技能说明
name: chat-history-analyzer displayName: Chat History Analyzer | OpenClaw Skill description: Extracts and analyzes Cursor IDE chat history to identify key discoveries, obstacles, and solutions, saving findings to the journal. version: 1.0.0
Chat History Analyzer | OpenClaw Skill
Description
Extracts and analyzes Cursor IDE chat history to identify key discoveries, obstacles, and solutions, saving findings to the journal.
Chat History Analyzer | OpenClaw Skill
Extracts chat history from Cursor IDE's local SQLite databases, analyzes the last hour of conversations for key discoveries, obstacles, and solutions, and saves structured findings to the OpenClaw journal directory.
Usage
- As a scheduled cron job to continuously track insights from chat history
- Manually to analyze recent chat activity
- To identify recurring patterns, problems, or solutions in your workflow
# Combined log and chat history analysis (for cron jobs)
python3 /Users/ghost/.openclaw/workspace/skills/chat-history-analyzer/scripts/analyze_logs.py
# Analyze last hour of chat history only
python3 /Users/ghost/.openclaw/workspace/skills/chat-history-analyzer/scripts/chat_history_analyzer.py
# Analyze last 2 hours
python3 /Users/ghost/.openclaw/workspace/skills/chat-history-analyzer/scripts/chat_history_analyzer.py --hours 2
# Output JSON format
python3 /Users/ghost/.openclaw/workspace/skills/chat-history-analyzer/scripts/analyze_logs.py --json
What this skill does
- Extracts chat history from Cursor's SQLite databases (global and workspace-specific)
- Analyzes the last hour of messages for patterns indicating discoveries, obstacles, and solutions
- Saves structured findings to
/Users/ghost/.openclaw/journal/as markdown files - Runs automatically via cron job every hour
Integration as a Cron Job
This skill is designed to run hourly via OpenClaw cron. The analyze_logs.py script combines both log analysis and chat history analysis.
Example Cron Job Configuration:
{
"payload": {
"kind": "agentTurn",
"message": "Run analyze_logs.py script to analyze the last hour of logs and Cursor chat history, saving findings to journal.",
"model": "openrouter/google/gemini-2.5-flash",
"thinking": "low",
"timeoutSeconds": 180
},
"schedule": {
"kind": "cron",
"cron": "0 * * * *"
},
"delivery": {
"mode": "announce"
},
"sessionTarget": "isolated",
"name": "Chat History & Log Analysis"
}
Or run directly via shell script:
# Add to crontab (crontab -e)
# Run every hour at minute 0
0 * * * * /Users/ghost/.openclaw/workspace/skills/chat-history-analyzer/scripts/analyze_logs.py --json >> /Users/ghost/.openclaw/logs/analyze_logs.log 2>&1
Output Format
Findings are saved to /Users/ghost/.openclaw/journal/chat_analysis_YYYY-MM-DD_HHMMSS.md with sections for:
- Key Discoveries: Successful findings, realizations, and implementations
- Obstacles Encountered: Errors, failures, and blockers
- Solutions Found: Fixes, workarounds, and resolutions
Requirements
- Cursor IDE installed with chat history stored locally
- SQLite3 available (usually pre-installed on macOS)
- OpenClaw journal directory writable
How it works
- Connects to Cursor's SQLite databases at
~/Library/Application Support/Cursor/User/globalStorage/state.vscdband workspace-specific databases - Extracts messages from the last N hours (default: 1 hour)
- Analyzes message content using pattern matching for discoveries, obstacles, and solutions
- Saves structured markdown report to the journal directory
如何使用「Chat History Analyzer」?
- 打开小龙虾AI(Web 或 iOS App)
- 点击上方「立即使用」按钮,或在对话框中输入任务描述
- 小龙虾AI 会自动匹配并调用「Chat History Analyzer」技能完成任务
- 结果即时呈现,支持继续对话优化