Overview
- Skill Key
- alekhm/aister-vector-memory
- Author
- alekhm
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/alekhm/aister-vector-memory
- Latest Commit SHA
- f2fe2351f9855ffdf69e959ece20d27201f3e443
Stars
0
Installs
0
Status
ACTIVE
Visibility
PUBLIC
直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 Aister Vector Memory 技能。 若已安装,则直接安装 Aister Vector Memory 技能。
# Vector Memory Skill Vector memory for Aister — search by meaning, not by grep! ## Description Vector memory using PostgreSQL + pgvector + e5-large-v2. Enables searching information by MEANING, not just keywords. ## Environment Variables **Required:** - `VECTOR_MEMORY_DB_PASSWORD` — PostgreSQL password for database access **Optional:** | Variable | Default | Description | |----------|---------|-------------| | `VECTOR_MEMORY_DB_HOST` | `localhost` | PostgreSQL server host | | `VECTOR_MEMORY_DB_PORT` | `5432` | PostgreSQL server port | | `VECTOR_MEMORY_DB_NAME` | `vector_memory` | Database name | | `VECTOR_MEMORY_DB_USER` | `aister` | Database user | | `EMBEDDING_SERVICE_URL` | `http://127.0.0.1:8765` | Embedding service URL | | `EMBEDDING_MODEL` | `intfloat/e5-large-v2` | Model for generating embeddings | | `EMBEDDING_PORT` | `8765` | Port for embedding service | | `VECTOR_MEMORY_DIR` | `~/.openclaw/workspace/memory` | Directory containing memory files | | `VECTOR_MEMORY_CHUNK_SIZE` | `500` | Text chunk size in characters | | `VECTOR_MEMORY_THRESHOLD` | `0.5` | Similarity threshold for search | | `VECTOR_MEMORY_LIMIT` | `5` | Maximum search results | ## Features - **Semantic search** — enter a query and Aister will find similar content - **Russian and English support** — e5-large-v2 model works with both languages - **Fast search** — ~1 second per query (embedding + SQL) - **Memory context** — Aister can recall things from its records ## Usage ### Search ``` /search_memory <query> ``` Examples: ``` /search_memory my communication style /search_memory what I did today /search_memory Moltbook settings ``` ### Reindex ``` /reindex_memory ``` This reads all memory files (MEMORY.md, IDENTITY.md, USER.md, etc.) and updates the vector database. ## How it works 1. When Aister remembers something, it splits the text into chunks 2. Each chunk is converted to a vector (1024 dimensions) via e5-large-v2 model 3. Vectors are stored in PostgreSQL with pgvector ex...
# Vector Memory for Aister Vector memory for semantic search instead of grep! 🧠 ## Description Vector Memory for Aister — smart search system using PostgreSQL + pgvector + e5-large-v2. Finds information by meaning, not just keywords. **Key features:** - ✅ **Semantic search** — enter a query, find relevant content - ✅ **Russian and English support** — e5-large-v2 understands both languages - ✅ **Fast search** — ~1 second per query - ✅ **Memory context** — recall things from records - ✅ **Auto-save** — thoughts are automatically saved to vector memory ## Warnings > **Important before installation:** > - **Network:** First run will download e5-large-v2 model (~1.3GB) from HuggingFace > - **Privileges:** Requires root for apt/dnf and PostgreSQL superuser > - **Security:** Configure your own passwords, don't use examples ## How it works 1. **Indexing** — text is split into 500-character chunks 2. **Vectorization** — each chunk is converted to a vector (1024 dimensions) via e5-large-v2 3. **Storage** — vectors are stored in PostgreSQL with pgvector extension 4. **Search** — query is vectorized and similarity is found via cosine distance ## Usage ### Installation Full instructions in [INSTALL.md](INSTALL.md). **Option A: Docker (Recommended for isolation)** — see SKILL.md for docker-compose setup. **Option B: Quick start (bare metal):** ```bash # 1. Create venv and install dependencies python3 -m venv ~/.openclaw/workspace/vector_memory_venv source ~/.openclaw/workspace/vector_memory_venv/bin/activate pip install flask psycopg2-binary requests sentence-transformers numpy # 2. Configure environment variables (including DB password!) mkdir -p ~/.config/vector-memory cat > ~/.config/vector-memory/env << 'EOF' export VECTOR_MEMORY_DB_PASSWORD="YOUR_SECURE_PASSWORD" EOF chmod 600 ~/.config/vector-memory/env # 3. Start embedding service (first run downloads ~1.3GB) source ~/.config/vector-memory/env ~/.openclaw/workspace/vector_memory_venv/bin/python3 ~/.ope...
youmind-openlab
AI skill for OpenClaw & Claude Code — recommend from 10000+ Nano Banana Pro (Gemini) image prompts. Smart search by use case, content remix, sample images.
23blocks-os
AI Agent Orchestrator with Skills System - Give AI Agents superpowers: memory search, code graph queries, agent-to-agent messaging. Manage Claude, Codex or any AI Agent from one dashboard. Move Agents between computers and locations
hashgraph-online
AI agent skills for the Universal Registry - search, chat, and register 72,000+ agents across 14+ protocols. Works with Claude, Codex, Cursor, OpenClaw, and any AI assistant.
rito-w
A cross-platform skills manager for AI IDEs. Search marketplace, download locally, and install to Claude, Cursor, Windsurf, and more with one click.
besoeasy
Battle-tested skill library for AI agents. Save 98% of API costs with ready-to-use code for crypto, PDFs, search, web scraping & more. No trial-and-error, no expensive APIs.
zeropointrepo
YouTube Transcript API skills for AI agents. Get transcripts, search videos, browse channels. Works with OpenClaw, ClawdBot, Claude Code, Cursor, Windsurf.