Note Processor
Summarize, extract keywords, search, and list research notes from research-assistant's database to review progress and find insights efficiently.
技能说明
name: note-processor description: Summarize and analyze research notes created by research-assistant. Features: generate summaries, extract keywords, search within topics, list all topics. Works with research_db.json format. Perfect for finding patterns, reviewing research progress, and extracting insights from accumulated notes without re-reading everything.
Note Processor
Analyze and summarize research notes to extract insights quickly.
Quick Start
note_processor.py summarize <topic>
note_processor.py keywords <topic>
note_processor.py extract <topic> <keyword>
note_processor.py list
Examples:
# Get a summary of a research topic
note_processor.py summarize income-experiments
# Extract top keywords from notes
note_processor.py keywords security-incident
# Search for specific information
note_processor.py extract income-experiments skill
# List all research topics with stats
note_processor.py list
Features
- Summaries - Overview of topic with statistics, tags, key points
- Keywords - Extract most common words (filters stop words)
- Search - Find notes containing specific keywords
- List - See all research topics with basic stats
- Integration - Works with research-assistant's database format
When to Use
After Research Sessions
# Summarize what you learned
note_processor.py summarize new-research-topic
# Extract key themes
note_processor.py keywords new-research-topic
Before Writing Reports
# Find specific information
note_processor.py extract income-experiments monetization
# Get overview for introductions
note_processor.py summarize income-experiments
Reviewing Progress
# See all topics and their sizes
note_processor.py list
# Check what you've been working on
note_processor.py keywords income-experiments
Command Details
summarize <topic>
Shows:
- Note count and word count
- Creation and last update dates
- Top 5 tags
- Key points (sentences with important words)
- 3 most recent notes
Output example:
📊 Summary: income-experiments
------------------------------------------------------------
Notes: 4
Words: 63
Created: 2026-02-07
Last update: 2026-02-07
🏷️ Top Tags:
content: 2
automation: 2
experiment: 2
💡 Key Points:
1. First experiment: create and publish skills...
2. Second experiment: content automation pipeline...
keywords <topic>
Shows:
- Total unique keywords
- Top 20 keywords with frequency
- Filters common stop words (that, this, with, from, etc.)
Output example:
🔤 Keywords: income-experiments
------------------------------------------------------------
Total unique keywords: 38
Top 20 Keywords:
1. experiment ( 4x)
2. skill ( 3x)
3. clawhub ( 2x)
4. content ( 2x)
extract <topic> <keyword>
Shows:
- All notes containing the keyword
- Keyword highlighted in uppercase
- Timestamps and tags
- Preview of matched content
Output example:
🔍 Search Results: 'skill' in income-experiments
------------------------------------------------------------
Found 4 match(es)
1. [2026-02-07 19:09:51]
Tags: ideas, autonomous
First experiment: create and publish **SKILL**s to ClawHub...
list
Shows:
- All research topics
- Note count and word count
- Last update date
- Preview of most recent note
Output example:
📚 Research Topics (5)
------------------------------------------------------------
income-experiments
Notes: 4 | Words: 63 | Updated: 2026-02-07
Latest: Experiment 2 STARTING: Content automation...
security-incident
Notes: 1 | Words: 45 | Updated: 2026-02-07
Latest: Day 1: Security vulnerability found...
Integration with research-assistant
note-processor works with the same database as research-assistant (research_db.json).
Typical Workflow
# 1. Add research notes
research_organizer.py add "new-topic" "Research finding here" "tag1" "tag2"
# 2. Add more notes over time
research_organizer.py add "new-topic" "Another finding" "tag3"
# 3. Summarize when done
note_processor.py summarize new-topic
# 4. Find specific information
note_processor.py extract new-topic keyword
# 5. See all topics
note_processor.py list
Using Both Together
# Research phase
research_organizer.py add "experiment" "Test result 1" "testing"
research_organizer.py add "experiment" "Test result 2" "testing"
research_organizer.py add "experiment" "Conclusion: worked!" "results"
# Analysis phase
note_processor.py summarize experiment
note_processor.py keywords experiment
# Writing phase
note_processor.py extract experiment conclusion
# Now write report based on extracted notes
Key Point Detection
The summarize command detects key points by finding sentences with important words:
- important, key, critical, essential
- must, should, note, remember
- warning, priority, critical
This helps surface actionable insights from your research.
Keyword Extraction
The keywords command:
- Filters words shorter than 4 characters
- Removes common stop words
- Counts frequency across all notes
- Shows top 20 keywords
Stop words filtered: that, this, with, from, have, been, will, what, when, where, which, their, there, would, could, should, about, these, those, other, into, through
Use Cases
Before Writing a Report
# Get overview
note_processor.py summarize research-topic
# Find specific data points
note_processor.py extract research-topic metrics
# Extract themes
note_processor.py keywords research-topic
Reviewing Research Progress
# See what you've been working on
note_processor.py list
# Check a specific topic's progress
note_processor.py summarize current-project
# Find patterns
note_processor.py keywords current-project
Finding Specific Information
# Search across a topic
note_processor.py extract income-experiments monetization
# Find references to specific tools
note_processor.py extract security-incident path-validation
# Locate conclusions
note_processor.py extract experiment conclusion
Best Practices
- Use summaries - Get overview before diving into details
- Search first - Use extract before reading all notes
- Check keywords - Find themes you might have missed
- List regularly - Review all topics to see gaps
- Tag consistently - Makes keywords more meaningful
Data Location
Database: ~/.openclaw/workspace/research_db.json
Format: Compatible with research-assistant skill
Limitations
- Simple keyword extraction - Frequency-based, not semantic
- No NLP - Basic text processing (no ML/AI)
- Stop word list - English-focused, customize for other languages
- Key point detection - Pattern-based, not understanding-based
Tips
For Better Keywords
- Use consistent terminology in your notes
- Avoid abbreviations or synonyms for the same concept
- Tag notes with important terms
- Review keywords to see if important terms appear
For Better Summaries
- Write complete sentences in notes
- Include important words (key, critical, must, etc.)
- Tag notes with themes
- Regularly summarize to track progress
For Better Search
- Use specific keywords in extract
- Search for related terms (synonyms)
- Check tags in results
- Use summaries to find the right topic
Troubleshooting
"Topic not found"
Topic 'x' not found.
Solution: Check topic name spelling. Use note_processor.py list to see all topics.
"No matches found"
No matches for 'keyword' in topic 'x'
Solution: Try different keywords, check spelling, use note_processor.py keywords to find related terms.
Poor keyword results
Top Keywords are mostly common words
Solution:
- Use more specific terms in your notes
- Tag notes with important terms
- The stop word filter can be customized in the code
Examples by Use Case
Project Review
# What have I been working on?
note_processor.py list
# Tell me about this project
note_processor.py summarize project-x
# What are the main themes?
note_processor.py keywords project-x
Writing Documentation
# Find specific details
note_processor.py extract security-incident vulnerability
# Get overview for introduction
note_processor.py summarize security-incident
# What's important?
note_processor.py keywords security-incident
Preparing a Report
# Find all relevant information
note_processor.py extract income-experiments monetization
# Get summary
note_processor.py summarize income-experiments
# Extract key points
note_processor.py summarize income-experiments
# Key points are in the output
Integration with Other Skills
With research-assistant
- research-assistant: add notes
- note-processor: analyze notes
- Use together: add → analyze → write report
With task-runner
# Add task to summarize research
task_runner.py add "Summarize experiment results" "documentation"
# When complete
note_processor.py summarize experiment
# Mark done
task_runner.py complete 1
With file skills
# Extract research notes
note_processor.py extract research-topic important
# Export for sharing
research_organizer.py export research-topic ~/shared/summary.md
# Or export summary output to file
note_processor.py summarize research-topic > ~/shared/summary.txt
Zero-Cost Advantage
This skill requires:
- ✅ Python 3 (included)
- ✅ No API keys
- ✅ No external dependencies
- ✅ No paid services
- ✅ Works with research-assistant (free)
Perfect for autonomous research workflows with no additional costs.
如何使用「Note Processor」?
- 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「Note Processor」技能完成任务
- 结果即时呈现,支持继续对话优化