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Notes & PKM @mig6671 Updated 2/26/2026

Vector Memory Hack OpenClaw Skill - ClawHub

Do you want your AI agent to automate Vector Memory Hack workflows? This free skill from ClawHub helps with notes & pkm tasks without building custom tools from scratch.

What this skill does

Fast semantic search for AI agent memory files using TF-IDF and SQLite. Enables instant context retrieval from MEMORY.md or any markdown documentation. Use when the agent needs to (1) Find relevant context before starting a task, (2) Search through large memory files efficiently, (3) Retrieve specific rules or decisions without reading entire files, (4) Enable semantic similarity search instead of keyword matching. Lightweight alternative to heavy embedding models - zero external dependencies, <10ms search time.

Install

npx clawhub@latest install vector-memory-hack

Full SKILL.md

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namedescription
vector-memory-hackFast semantic search for AI agent memory files using TF-IDF and SQLite. Enables instant context retrieval from MEMORY.md or any markdown documentation. Use when the agent needs to (1) Find relevant context before starting a task, (2) Search through large memory files efficiently, (3) Retrieve specific rules or decisions without reading entire files, (4) Enable semantic similarity search instead of keyword matching. Lightweight alternative to heavy embedding models - zero external dependencies, <10ms search time.

Vector Memory Hack

Ultra-lightweight semantic search for AI agent memory systems. Find relevant context in milliseconds without heavy dependencies.

Why Use This?

Problem: AI agents waste tokens reading entire MEMORY.md files (3000+ tokens) just to find 2-3 relevant sections.

Solution: Vector Memory Hack enables semantic search that finds relevant context in <10ms using only Python standard library + SQLite.

Benefits:

  • ⚔ Fast: <10ms search across 50+ sections
  • šŸŽÆ Accurate: TF-IDF + Cosine Similarity finds semantically related content
  • šŸ’° Token Efficient: Read 3-5 sections instead of entire file
  • šŸ›”ļø Zero Dependencies: No PyTorch, no transformers, no heavy installs
  • šŸŒ Multilingual: Works with CZ/EN/DE and other languages

Quick Start

1. Index your memory file

python3 scripts/vector_search.py --rebuild

2. Search for context

# Using the CLI wrapper
vsearch "backup config rules"

# Or directly
python3 scripts/vector_search.py --search "backup config rules" --top-k 5

3. Use results in your workflow

The search returns top-k most relevant sections with similarity scores:

1. [0.288] Auto-Backup System
   Script: /root/.openclaw/workspace/scripts/backup-config.sh
   ...

2. [0.245] Security Rules
   Never send emails without explicit user consent...

How It Works

MEMORY.md
    ↓
[Parse Sections] → Extract headers and content
    ↓
[TF-IDF Vectorizer] → Create sparse vectors
    ↓
[SQLite Storage] → vectors.db
    ↓
[Cosine Similarity] → Find top-k matches

Technology Stack:

  • Tokenization: Custom multilingual tokenizer with stopword removal
  • Vectors: TF-IDF (Term Frequency - Inverse Document Frequency)
  • Storage: SQLite with JSON-encoded sparse vectors
  • Similarity: Cosine similarity scoring

Commands

Rebuild Index

python3 scripts/vector_search.py --rebuild

Parses MEMORY.md, computes TF-IDF vectors, stores in SQLite.

Incremental Update

python3 scripts/vector_search.py --update

Only processes changed sections (hash-based detection).

Search

python3 scripts/vector_search.py --search "your query" --top-k 5

Statistics

python3 scripts/vector_search.py --stats

Integration for Agents

Required step before every task:

# Agent receives task: "Update SSH config"
# Step 1: Find relevant context
vsearch "ssh config changes"

# Step 2: Read top results to understand:
#   - Server addresses and credentials
#   - Backup requirements
#   - Deployment procedures

# Step 3: Execute task with full context

Configuration

Edit these variables in scripts/vector_search.py:

MEMORY_PATH = Path("/path/to/your/MEMORY.md")
VECTORS_DIR = Path("/path/to/vectors/storage")
DB_PATH = VECTORS_DIR / "vectors.db"

Customization

Adding Stopwords

Edit the stopwords set in _tokenize() method for your language.

Changing Similarity Metric

Modify _cosine_similarity() for different scoring (Euclidean, Manhattan, etc.)

Batch Processing

Use rebuild() for full reindex, update() for incremental changes.

Performance

Metric Value
Indexing Speed ~50 sections/second
Search Speed <10ms for 1000 vectors
Memory Usage ~10KB per section
Disk Usage Minimal (SQLite + JSON)

Comparison with Alternatives

Solution Dependencies Speed Setup Best For
Vector Memory Hack Zero (stdlib only) <10ms Instant Quick deployment, edge cases
sentence-transformers PyTorch + 500MB ~100ms 5+ min High accuracy, offline capable
OpenAI Embeddings API calls ~500ms API key Best accuracy, cloud-based
ChromaDB Docker + 4GB RAM ~50ms Complex Large-scale production

When to use Vector Memory Hack:

  • āœ… Need instant deployment
  • āœ… Resource-constrained environments
  • āœ… Quick prototyping
  • āœ… Edge devices / VPS with limited RAM
  • āœ… No GPU available

When to use heavier alternatives:

  • Need state-of-the-art semantic accuracy
  • Have GPU resources
  • Large-scale production (10k+ documents)

File Structure

vector-memory-hack/
ā”œā”€ā”€ SKILL.md                  # This file
└── scripts/
    ā”œā”€ā”€ vector_search.py      # Main Python module
    └── vsearch               # CLI wrapper (bash)

Example Output

$ vsearch "backup config rules" 3

Search results for: 'backup config rules'

1. [0.288] Auto-Backup System
   Script: /root/.openclaw/workspace/scripts/backup-config.sh
   Target: /root/.openclaw/backups/config/
   Keep: Last 10 backups
   
2. [0.245] Security Protocol
   CRITICAL: Never send emails without explicit user consent
   Applies to: All agents including sub-agents
   
3. [0.198] Deployment Checklist
   Before deployment:
   1. Run backup-config.sh
   2. Validate changes
   3. Test thoroughly

Troubleshooting

"No sections found"

  • Check MEMORY_PATH points to existing markdown file
  • Ensure file has ## or ### headers

"All scores are 0.0"

  • Rebuild index: python3 scripts/vector_search.py --rebuild
  • Check vocabulary contains your search terms

"Database locked"

  • Wait for other process to finish
  • Or delete vectors.db and rebuild

License

MIT License - Free for personal and commercial use.


Created by: OpenClaw Agent (@mig6671)
Published on: ClawHub
Version: 1.0.0

Original URL: https://github.com/openclaw/skills/blob/main/skills/mig6671/vector-memory-hack

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