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SQ Memory

Enables OpenClaw agents to store, recall, update, list, and forget persistent hierarchical memories across sessions via the SQ protocol.
使OpenClaw代理能够通过SQ协议跨会话存储、检索、更新、列出和遗忘持久分层记忆。
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AI智能 clawhub v1.0.1 1 版本 99855.6 Key: 需要
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概述

SQ Memory - OpenClaw Skill

Give your OpenClaw agents permanent memory.

Open Source & MIT Licensed

SQ is open-source software you can run yourself or use our hosted version.

  • Source Code: https://github.com/wbic16/SQ
  • License: MIT (free forever, modify/sell/distribute)
  • Self-Host: Free (5 minute setup)
  • Hosted Option: Paid convenience service at mirrorborn.us

What This Skill Does

OpenClaw agents lose all memory between sessions. Every restart = amnesia.

This skill connects your agent to SQ—persistent 11D text storage. Your agent can:

  • Remember user preferences across sessions
  • Store conversation history beyond context limits
  • Share memory with other agents
  • Never hallucinate forgotten details again

Installation

npx clawhub install sq-memory

Or manually:

git clone https://github.com/wbic16/openclaw-sq-skill.git ~/.openclaw/skills/sq-memory

Configuration

Add to your agent's .openclaw/config.yaml:

skills:
  sq-memory:
    enabled: true
    endpoint: http://localhost:1337
    username: your-username
    password: your-api-key
    namespace: agent-name  # Isolates this agent's memory

Usage

Your agent automatically gets new memory tools:

remember(key, value)

Store something for later:

remember("user/name", "Alice")
remember("user/preferences/theme", "dark")
remember("conversation/2026-02-11/summary", "Discussed phext storage...")

recall(key)

Retrieve stored memory:

const name = recall("user/name")  // "Alice"
const theme = recall("user/preferences/theme")  // "dark"

forget(key)

Delete memory:

forget("conversation/2026-02-11/summary")

list_memories(prefix)

List all memories under a coordinate:

const prefs = list_memories("user/preferences/")
// Returns: ["user/preferences/theme", "user/preferences/language", ...]

Coordinate Structure

Memories are stored at 11D coordinates. The skill uses this convention:

namespace.1.1 / category.subcategory.item / 1.1.1

Example:

  • Agent namespace: my-assistant
  • User preference for theme: my-assistant.1.1/user.preferences.theme/1.1.1

This means:

  • Each agent has isolated memory (namespace collision impossible)
  • Memories are hierarchically organized
  • You can share coordinates between agents if needed

Example: User Preference Agent

// In your agent's system prompt or skill code:

async function getUserTheme() {
  const theme = recall("user/preferences/theme")
  return theme || "light"  // Default to light if not set
}

async function setUserTheme(newTheme) {
  remember("user/preferences/theme", newTheme)
  return `Theme set to ${newTheme}`
}

// Agent conversation:
User: "I prefer dark mode"
Agent: *calls setUserTheme("dark")*
Agent: "Got it! I've set your theme to dark mode."

// Next session (days later):
User: "What's my preferred theme?"
Agent: *calls getUserTheme()*
Agent: "You prefer dark mode."

Example: Conversation History

// Store conversation summaries beyond context window:

async function summarizeAndStore(conversationId, summary) {
  const date = new Date().toISOString().split('T')[0]
  const key = `conversations/${date}/${conversationId}/summary`
  remember(key, summary)
}

async function recallConversation(conversationId) {
  const memories = list_memories(`conversations/`)
  return memories
    .filter(m => m.includes(conversationId))
    .map(key => recall(key))
}

// Usage:
summarizeAndStore("conv-123", "User asked about phext storage, explained 11D coordinates")

// Later:
const history = recallConversation("conv-123")
// Agent can recall what was discussed even after context window cleared

Advanced: Multi-Agent Coordination

Multiple agents can share memory at agreed coordinates:

Agent A (writes):

remember("shared/tasks/pending/task-42", "Review pull request #123")

Agent B (reads):

const task = recall("shared/tasks/pending/task-42")
// Sees: "Review pull request #123"

This enables true multi-agent workflows.

API Reference

All functions are available in the sq namespace:

sq.remember(coordinate, text)

  • coordinate: String in format a.b.c/d.e.f/g.h.i or shorthand category/item
  • text: String to store (max 1MB per coordinate)
  • Returns: {success: true, coordinate: "full.coordinate.path"}

sq.recall(coordinate)

  • coordinate: String (exact match)
  • Returns: String (stored text) or null if not found

sq.forget(coordinate)

  • coordinate: String (exact match)
  • Returns: {success: true} or {success: false, error: "..."}

sq.list_memories(prefix)

  • prefix: String (e.g., "user/" matches all user memories)
  • Returns: Array of coordinate strings

sq.update(coordinate, text)

  • Alias for remember() (overwrites existing)

Rate Limits

  • Free tier: 1,000 API calls/day, 100MB storage
  • SQ Cloud ($50/mo): 10,000 API calls/day, 1TB storage
  • Enterprise: Custom limits

Troubleshooting

"Connection refused" error:

  • Check your endpoint in config (should be https://sq.mirrorborn.us)
  • Verify credentials are correct

"Quota exceeded" error:

  • You've hit rate limits
  • Upgrade to SQ Cloud or wait for daily reset

Memory not persisting:

  • Check namespace isolation (each agent needs unique namespace)
  • Verify coordinate format is valid

Why SQ?

Open source & MIT licensed:

  • Run it yourself for free
  • Modify it to fit your needs
  • No vendor lock-in
  • Transparent codebase

Not a vector database:

  • Agents can read stored text (not just search embeddings)
  • Structured by coordinates (not similarity)
  • Deterministic retrieval (no relevance ranking guesses)

Not Redis:

  • Persistent (survives restarts)
  • 11D addressing (not flat key-value)
  • Immutable history (WAL for time-travel)

Built for agents:

  • Coordinate system matches agent thinking (hierarchical)
  • No schema overhead
  • Scales from KB to TB

Get SQ

Self-Host (Free):

  1. Clone: git clone https://github.com/wbic16/SQ.git
  2. Build: cd SQ && cargo build --release
  3. Run: ./target/release/sq 1337
  4. Configure SQ Memory to http://localhost:1337

Hosted (Convenience):

  1. Sign up: https://mirrorborn.us
  2. Get API key
  3. Configure SQ Memory to https://sq.mirrorborn.us
  4. Pay $50/mo (or use free tier)

Support

  • Discord: https://discord.gg/kGCMM5yQ
  • Docs: https://mirrorborn.us/help.html
  • GitHub: https://github.com/wbic16/SQ

Built by Mirrorborn 🦋 for the OpenClaw ecosystem

版本历史

共 1 个版本

  • v1.0.1 当前
    2026-03-29 01:02 安全 安全

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