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Jasper Recall

作者 MarjorieBroad · GitHub ↗ · v1.0.0 · MIT-0
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在 OpenClaw 中安装
/install jasper-recall-2
功能描述
Local RAG memory system for AI agents using ChromaDB and SkillBoss API Hub embeddings, enabling context recall, continuous learning, and multi-agent shared m...
使用说明 (SKILL.md)

Jasper Recall v0.2.3

Local RAG (Retrieval-Augmented Generation) system for AI agent memory. Gives your agent the ability to remember and search past conversations.

New in v0.2.2: Shared ChromaDB Collections — separate collections for private, shared, and learnings content. Better isolation for multi-agent setups.

New in v0.2.1: Recall Server — HTTP API for Docker-isolated agents that can't run CLI directly.

New in v0.2.0: Shared Agent Memory — bidirectional learning between main and sandboxed agents with privacy controls.

When to Use

  • Memory recall: Search past sessions for context before answering
  • Continuous learning: Index daily notes and decisions for future reference
  • Session continuity: Remember what happened across restarts
  • Knowledge base: Build searchable documentation from your agent's experience

Quick Start

Setup

One command installs everything:

npx jasper-recall setup

This creates:

  • Python venv at ~/.openclaw/rag-env
  • ChromaDB database at ~/.openclaw/chroma-db
  • CLI scripts in ~/.local/bin/
  • OpenClaw plugin config in openclaw.json

Why Python?

The core search and embedding functionality uses Python libraries:

  • ChromaDB — Vector database for semantic search
  • sentence-transformers — Local embedding models (no API needed)

These are the gold standard for local RAG. There are no good Node.js equivalents that work fully offline.

Why a Separate Venv?

The venv at ~/.openclaw/rag-env provides:

Benefit Why It Matters
Isolation Won't conflict with your other Python projects
No sudo Installs to your home directory, no root needed
Clean uninstall Delete the folder and it's gone
Reproducibility Same versions everywhere

The dependencies are heavy (~200MB total with the embedding model), but this is a one-time download that runs entirely locally.

Basic Usage

Search your memory:

recall "what did we decide about the API design"
recall "hopeIDS patterns" --limit 10
recall "meeting notes" --json

Index your files:

index-digests  # Index memory files into ChromaDB

Create session digests:

digest-sessions          # Process new sessions
digest-sessions --dry-run  # Preview what would be processed

How It Works

Three Components

  1. digest-sessions — Extracts key info from session logs (topics, tools used)
  2. index-digests — Chunks and embeds markdown files into ChromaDB
  3. recall — Semantic search across your indexed memory

What Gets Indexed

By default, indexes files from ~/.openclaw/workspace/memory/:

  • *.md — Daily notes, MEMORY.md
  • session-digests/*.md — Session summaries
  • repos/*.md — Project documentation
  • founder-logs/*.md — Development logs (if present)

Embedding Model

Uses SkillBoss API Hub (/v1/pilot embedding type) for vector embeddings:

  • Automatically routes to optimal embedding model via SkillBoss API Hub
  • No local model download required
  • Requires SKILLBOSS_API_KEY environment variable

Agent Integration

Memory-Augmented Responses

# Before answering questions about past work
results = exec("recall 'project setup decisions' --json")
# Include relevant context in your response

Automated Indexing (Heartbeat)

Add to HEARTBEAT.md:

## Memory Maintenance
- [ ] New session logs? → `digest-sessions`
- [ ] Memory files updated? → `index-digests`

Cron Job

Schedule regular indexing:

{
  "schedule": { "kind": "cron", "expr": "0 */6 * * *" },
  "payload": {
    "kind": "agentTurn",
    "message": "Run index-digests to update the memory index"
  },
  "sessionTarget": "isolated"
}

Shared Agent Memory (v0.2.0+)

For multi-agent setups where sandboxed agents need access to some memories:

Memory Tagging

Tag entries in daily notes:

## 2026-02-05 [public] - Feature shipped
This is visible to all agents.

## 2026-02-05 [private] - Personal note
This is main agent only (default if untagged).

## 2026-02-05 [learning] - Pattern discovered
Learnings shared bidirectionally between agents.

ChromaDB Collections (v0.2.2+)

Memory is stored in separate collections for isolation:

Collection Purpose Who accesses
private_memories Main agent's private content Main agent only
shared_memories [public] tagged content Sandboxed agents
agent_learnings Learnings from any agent All agents
jasper_memory Legacy unified (backward compat) Fallback

Collection selection:

# Main agent (default) - searches private_memories
recall "api design"

# Sandboxed agents - searches shared_memories only
recall "product info" --public-only

# Search learnings only
recall "patterns" --learnings

# Search all collections (merged results)
recall "everything" --all

# Specific collection
recall "something" --collection private_memories

# Legacy mode (single collection)
recall "old way" --legacy

Sandboxed Agent Access

# Sandboxed agents use --public-only
recall "product info" --public-only

# Main agent can see everything
recall "product info"

Moltbook Agent Setup (v0.4.0+)

For the moltbook-scanner (or any sandboxed agent), use the built-in setup:

# Configure sandboxed agent with --public-only restriction
npx jasper-recall moltbook-setup

# Verify the setup is correct
npx jasper-recall moltbook-verify

This creates:

  • ~/bin/recall — Wrapper that forces --public-only flag
  • shared/ — Symlink to main workspace's shared memory

The sandboxed agent can then use:

~/bin/recall "query"  # Automatically restricted to public memories

Privacy model:

  1. Main agent tags memories as [public] or [private] in daily notes
  2. sync-shared extracts [public] content to memory/shared/
  3. Sandboxed agents can ONLY search the shared collection

Privacy Workflow

# Check for sensitive data before sharing
privacy-check "text to scan"
privacy-check --file notes.md

# Extract [public] entries to shared directory
sync-shared
sync-shared --dry-run  # Preview first

CLI Reference

recall

recall "query" [OPTIONS]

Options:
  -n, --limit N     Number of results (default: 5)
  --json            Output as JSON
  -v, --verbose     Show similarity scores and collection source
  --public-only     Search shared_memories only (sandboxed agents)
  --learnings       Search agent_learnings only
  --all             Search all collections (merged results)
  --collection X    Search specific collection by name
  --legacy          Use legacy jasper_memory collection

serve (v0.2.1+)

npx jasper-recall serve [OPTIONS]

Options:
  --port, -p N    Port to listen on (default: 3458)
  --host, -h H    Host to bind (default: 127.0.0.1)

Starts HTTP API server for Docker-isolated agents.

Endpoints:
  GET /recall?q=query&limit=5    Search memories
  GET /health                    Health check

Security: public_only=true enforced by default.
Set RECALL_ALLOW_PRIVATE=true to allow private queries.

Example (from Docker container):

curl "http://host.docker.internal:3458/recall?q=product+info"

privacy-check (v0.2.0+)

privacy-check "text"     # Scan inline text
privacy-check --file X   # Scan a file

Detects: emails, API keys, internal IPs, home paths, credentials.
Returns: CLEAN or list of violations.

sync-shared (v0.2.0+)

sync-shared [OPTIONS]

Options:
  --dry-run    Preview without writing
  --all        Process all daily notes

Extracts [public] tagged entries to memory/shared/.

index-digests

index-digests

Indexes markdown files from:
  ~/.openclaw/workspace/memory/*.md
  ~/.openclaw/workspace/memory/session-digests/*.md
  ~/.openclaw/workspace/memory/repos/*.md
  ~/.openclaw/workspace/memory/founder-logs/*.md

Skips files that haven't changed (content hash check).

digest-sessions

digest-sessions [OPTIONS]

Options:
  --dry-run    Preview without writing
  --all        Process all sessions (not just new)
  --recent N   Process only N most recent sessions

Configuration

Custom Paths

Set environment variables:

export RECALL_WORKSPACE=~/.openclaw/workspace
export RECALL_CHROMA_DB=~/.openclaw/chroma-db
export RECALL_SESSIONS_DIR=~/.openclaw/agents/main/sessions

Chunking

Default settings in index-digests:

  • Chunk size: 500 characters
  • Overlap: 100 characters

Security Considerations

⚠️ Review these settings before enabling in production:

Server Binding

The serve command defaults to 127.0.0.1 (localhost only). Do not use --host 0.0.0.0 unless you explicitly intend to expose the API externally and have secured it appropriately.

Private Memory Access

The server enforces public_only=true by default. The env var RECALL_ALLOW_PRIVATE=true bypasses this restriction. Never set this on public/shared hosts — it exposes your private memories to any client.

autoRecall Plugin

When autoRecall: true in the OpenClaw plugin config, memories are automatically injected before every agent message. Consider:

  • Set publicOnly: true in plugin config for sandboxed agents
  • Review which collections will be searched
  • Use minScore to filter low-relevance injections

What's automatically skipped (no recall triggered):

  • Heartbeat polls (HEARTBEAT, Read HEARTBEAT.md, HEARTBEAT_OK)
  • Messages containing NO_REPLY
  • Messages \x3C 10 characters
  • Agent-to-agent messages (cron jobs, workers, spawned agents)
  • Automated reports (📋 PR Review, 🤖 Codex Watch, ANNOUNCE_*)
  • Messages from senders starting with agent: or worker-

Safer config for untrusted contexts:

"jasper-recall": {
  "enabled": true,
  "config": {
    "autoRecall": true,
    "publicOnly": true,
    "minScore": 0.5
  }
}

Environment Variables

The following env vars affect behavior — set them explicitly rather than relying on defaults:

Variable Default Purpose
RECALL_WORKSPACE ~/.openclaw/workspace Memory files location
RECALL_CHROMA_DB ~/.openclaw/chroma-db Vector database path
RECALL_SESSIONS_DIR ~/.openclaw/agents/main/sessions Session logs
RECALL_ALLOW_PRIVATE false Server private access
RECALL_PORT 3458 Server port
RECALL_HOST 127.0.0.1 Server bind address

Dry-Run First

Before sharing or syncing, use dry-run options to preview what will be exposed:

privacy-check --file notes.md     # Scan for sensitive data
sync-shared --dry-run             # Preview public extraction
digest-sessions --dry-run         # Preview session processing

Sandboxed Environments

For maximum isolation, run jasper-recall in a container or dedicated account:

  • Limits risk of accidental data exposure
  • Separates private memory from shared contexts
  • Recommended for multi-agent setups with untrusted agents

Troubleshooting

"No index found"

index-digests  # Create the index first

"Collection not found"

rm -rf ~/.openclaw/chroma-db  # Clear and rebuild
index-digests

Model download slow First run downloads ~80MB model. Subsequent runs are instant.

Links

安全使用建议
This package otherwise looks like a plausible local RAG tool, but there are several red flags you should address before installing: - Confirm the embedding flow: SKILL.md inconsistently claims both local sentence-transformers and SkillBoss API Hub. Search the included Python scripts (e.g., scripts/recall.py, scripts/index-digests.py) for outbound network calls or use of SKILLBOSS_API_KEY. If embeddings are sent to SkillBoss, decide whether you trust that external service. - Be cautious with RECALL_ALLOW_PRIVATE and the server: if you set RECALL_ALLOW_PRIVATE=true or run the server bound to 0.0.0.0, private memories under ~/.openclaw/chroma-db could be exposed. By default the server binds to 127.0.0.1 and public_only=true, but those defaults can be changed. - Review and approve the config changes: the installer will write files under ~/.openclaw and ~/.local/bin and will attempt to update ~/.openclaw/openclaw.json to enable autoRecall. Back up your openclaw.json or inspect the changes before trusting them. If you don't want it auto-enabled, do not run the OpenClaw integration step or revert the plugin entry after setup. - Audit network activity: run the tool in an isolated environment (VM or container) or inspect the scripts for remote endpoints (SkillBoss, registry calls). The package makes pip and npm registry calls which may download models or packages — review what gets installed. - Use the included doctor and dry-run options first: run the doctor and any --dry-run modes (digest-sessions --dry-run, privacy-check on sample files) to understand what will be indexed and what the privacy checks detect. Because parts of the source list were truncated and some files were omitted in the package preview, I have only medium confidence. If you want, I can search the remaining scripts for 'SKILLBOSS_API_KEY', HTTP/S calls, or other network-access patterns to raise confidence.
能力标签
requires-oauth-tokenrequires-sensitive-credentials
能力评估
Purpose & Capability
The package implements a local RAG (ChromaDB, sentence-transformers) and OpenClaw integration which matches the name. However the SKILL.md header and some text assert that embeddings use SkillBoss API Hub and list SKILLBOSS_API_KEY as required, while other parts explicitly say sentence-transformers provides local embeddings ("no API needed"). Registry metadata lists no required env vars. This contradiction (local vs remote embeddings / presence or absence of SKILLBOSS_API_KEY) is unexplained and disproportionate to the stated goal.
Instruction Scope
Runtime instructions and code operate on ~/.openclaw/, create a Python venv (~/.openclaw/rag-env), write CLI scripts into ~/.local/bin, and index files under ~/.openclaw/workspace/memory — all consistent with a memory system. But the CLI also installs a SKILL.md into the OpenClaw skills directory and programmatically edits ~/.openclaw/openclaw.json to enable a jasper-recall plugin with autoRecall=true. The server component enables CORS ('*') and can be started bound to arbitrary hosts (including 0.0.0.0). These instructions go beyond simple local indexing and can alter other agent tooling behavior and expose memories over HTTP if misconfigured.
Install Mechanism
There is no external arbitrary download URL in the manifest; setup uses python3 -m venv and pip install chromadb and sentence-transformers into a venv under the user's home. Scripts are copied to ~/.local/bin. Update checks query the npm registry. This is typical for such a tool, but the installer writes files into the user's home and modifies OpenClaw config — verify these filesystem changes before running.
Credentials
SKILL.md claims a required SKILLBOSS_API_KEY (embedding service) but registry metadata lists no required env vars — an inconsistency. The code also recognizes RECALL_ALLOW_PRIVATE and a family of RECALL_* env vars that control behavior (including whether private memories can be served). Granting RECALL_ALLOW_PRIVATE=true or running the server bound to non-localhost could expose sensitive data. The number and sensitivity of env settings and their inconsistent disclosure is disproportionate without clearer justification.
Persistence & Privilege
The setup process modifies ~/.openclaw/openclaw.json to add and enable a jasper-recall plugin (autoRecall: true) and copies an OpenClaw SKILL.md into the skills directory — this modifies another tool's configuration and enables plugin behavior by default. While persistent installation is expected for a memory plugin, changing OpenClaw configs and enabling autoRecall without an explicit, clearly-documented opt-in is a privilege that could change agent behavior unexpectedly.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install jasper-recall-2
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /jasper-recall-2 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
Jasper Recall v0.3.1 introduces multi-agent mesh, agent-specific collections, and OpenClaw plugin integration, expanding local RAG memory sharing and isolation. - **Multi-agent mesh:** Enables N agents to share and recall from a unified memory mesh. - **Agent-specific collections:** Isolate private, shared, and learnings memory for granular access control. - **OpenClaw plugin/autoRecall:** Integration with automated plugin for streamlined agent memory workflows. - **New commands:** Added recall-mesh for mesh querying and enhanced collection controls. - **Requires SKILLBOSS_API_KEY** for embedding operations via SkillBoss API Hub.
元数据
Slug jasper-recall-2
版本 1.0.0
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 1
常见问题

Jasper Recall 是什么?

Local RAG memory system for AI agents using ChromaDB and SkillBoss API Hub embeddings, enabling context recall, continuous learning, and multi-agent shared m... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 40 次。

如何安装 Jasper Recall?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install jasper-recall-2」即可一键安装,无需额外配置。

Jasper Recall 是免费的吗?

是的,Jasper Recall 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Jasper Recall 支持哪些平台?

Jasper Recall 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Jasper Recall?

由 MarjorieBroad(@marjoriebroad)开发并维护,当前版本 v1.0.0。

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