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clawlens

What do you use Claw for most? Where do you get stuck? Clawlens analyzes your conversation history to surface usage patterns, friction points, and skill effe...
What do you use Claw for most? Where do you get stuck? Clawlens analyzes your conversation history to surface usage patterns, friction points, and skill effe...
dunzhang
数据分析 clawhub v1.0.5 2 版本 100000 Key: 需要
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概述

Clawlens - OpenClaw Usage Insights

Generate a comprehensive usage insights report by analyzing conversation history.

When to Use

User SaysAction
-------------------
"show me my usage report"Run full report
"analyze my conversations"Run full report
"how am I using Claw"Run full report
"clawlens" / "claw lens"Run full report
"usage insights" / "usage analysis"Run full report

How to Run

Execute the analysis script:

python3 scripts/clawlens.py [OPTIONS]

Options

FlagDefaultDescription
----------------------------
--agent-idmainAgent ID to analyze
--days180Analysis time window in days
--modelauto-detectLLM model in litellm format (e.g. deepseek/deepseek-chat). If omitted, auto-detected from OpenClaw config.
--langzhReport language: zh or en
--formatmdOutput format: md (Markdown) or html (self-contained dark-themed HTML)
--no-cachefalseIgnore cached facet extraction results
--max-sessions2000Maximum sessions to process
--concurrency10Max parallel LLM calls
--verbosefalsePrint progress to stderr
-o / --outputstdoutOutput file path

Model Selection (Agent Interaction)

When the user requests a clawlens report without specifying a model, you must ask the user before running:

> 是否使用 OpenClaw 当前配置的模型来生成报告?如果不使用,请告诉我你想用的模型(litellm 格式,如 deepseek/deepseek-chat)。

  • User agrees to use OpenClaw model: Run without --model (the script auto-detects from ~/.openclaw/openclaw.json).
  • User specifies a different model: Run with --model . The user must also set the corresponding API key env var (e.g. DEEPSEEK_API_KEY).

Note: Each user's OpenClaw model configuration may differ — some use API-key-based providers (e.g. openai-completions), others use OAuth-based providers (e.g. anthropic-messages). The script handles both transparently.

Examples

# Auto-detect model from OpenClaw config (simplest)
python3 scripts/clawlens.py --verbose

# Auto-detect, English, last 7 days
python3 scripts/clawlens.py --lang en --days 7

# Manually specify model (DeepSeek)
DEEPSEEK_API_KEY=sk-xxx python3 scripts/clawlens.py --model deepseek/deepseek-chat

# OpenAI, English, last 7 days
OPENAI_API_KEY=sk-xxx python3 scripts/clawlens.py --model openai/gpt-4o --lang en --days 7

# Verbose, save to file
ANTHROPIC_API_KEY=sk-xxx python3 scripts/clawlens.py --model anthropic/claude-sonnet-4-20250514 --verbose -o /tmp/clawlens-report.md

# HTML report (dark-themed, self-contained)
DEEPSEEK_API_KEY=sk-xxx python3 scripts/clawlens.py --model deepseek/deepseek-chat --format html -o /tmp/clawlens-report.html

Output

The script outputs a report to stdout (or to the file specified by -o). Progress messages go to stderr when --verbose is set.

  • Markdown (--format md, default): Plain Markdown report. Present it directly to the user.
  • HTML (--format html): Self-contained dark-themed HTML file with glassmorphism styling, animated stat cards, CSS bar charts, and interactive navigation. Opens directly in any browser — no external dependencies. Requires the markdown Python package for Markdown-to-HTML conversion.

The report includes all dimensions: usage overview, task classification, friction analysis, skills ecosystem, autonomous behavior audit, and multi-channel analysis.

Present the output directly to the user. Do not summarize or truncate it.

Model Configuration

--model is optional. If omitted, the model is automatically resolved from OpenClaw configuration:

  1. Reads primary model from ~/.openclaw/openclaw.json (agents.defaults.model.primary, e.g. kimi-code/kimi-for-coding)
  2. Looks up the provider's baseUrl and api type (e.g. openai-completions, anthropic-messages)
  3. Retrieves API key/token from ~/.openclaw/agents/{agentId}/agent/auth-profiles.json
  4. Maps to litellm format automatically (e.g. openai/kimi-for-coding with custom api_base)

If you prefer to specify a model manually, use --model with litellm's provider format:

Provider--model valueRequired env var
--------------------------------------------
DeepSeekdeepseek/deepseek-chatDEEPSEEK_API_KEY
OpenAIopenai/gpt-4oOPENAI_API_KEY
Anthropicanthropic/claude-sonnet-4-20250514ANTHROPIC_API_KEY
OpenAI-compatibleopenai/ + set OPENAI_API_BASEOPENAI_API_KEY

The format is always /. Refer to litellm docs for the full list of supported providers and their env var naming conventions.

Data Source

The script reads conversation data from:

  • ~/.openclaw/agents/{agentId}/sessions/sessions.json (session index)
  • ~/.openclaw/agents/{agentId}/sessions/*.jsonl (per-session logs, including unindexed historical files)
  • ~/.openclaw/skills/ (installed skills directory for ecosystem analysis)

Cache is written to ~/.openclaw/agents/{agentId}/sessions/.clawlens-cache/facets/ to avoid re-analyzing the same sessions.

Privacy Notice

This skill sends conversation transcript data to an external LLM provider (specified by --model) for analysis. Specifically:

  • Stage 2 (Facet Extraction): Each session's conversation transcript (truncated to ~80K chars) is sent to the LLM to extract structured analysis (task categories, friction points, etc.). Results are cached locally so each session is only sent once.
  • Stage 4 (Report Generation): Aggregated statistics and session summaries (not raw transcripts) are sent to the LLM to generate the report sections.

API key handling: When --model is omitted, this skill reads openclaw.json and auth-profiles.json to auto-detect the model and retrieve the API key. The API key is used only for LLM calls during report generation and is not stored or transmitted elsewhere. When --model is specified explicitly, the user must provide the API key via environment variables — no OpenClaw config files are accessed for credentials.

版本历史

共 2 个版本

  • v1.0.5 当前
    2026-05-01 16:41 安全 安全
  • v1.0.3
    2026-03-20 06:37 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
查看报告

腾讯云安全 (Sanbu)

安全,无风险
查看报告

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