Recall

Recall

Open-source MCP memory server for AI agents — persistent, searchable, tiered memory across sessions. Works over stdio (Cursor, Claude Desktop) or HTTP+SSE. MIT licensed.

Category
Visit Server

README

<!-- @wbx-modified copilot-a3f7 | 2026-04-30 01:30 MTN | v0.5.5-readme | add mcp-name marker for MCP Registry namespace verify | prev: copilot-a3f7@2026-04-30 03:25 MTN --> <!-- mcp-name: io.github.RecallWorks/recall --> <div align="center">

Recall™

A better memory server for AI agents — works for one, scales to many. Local, free, zero-config, MCP-native. Your data stays on your machine.

Tests Docker PyPI npm License: MIT Python 3.11+ MCP Container

Quickstart · vs. mem0/Letta/Zep · Multi-agent · Recall Pro → · Book a demo

</div>

Without a memory server, every Claude / Copilot / Cursor conversation starts cold. You re-explain the codebase, the conventions, the decisions, the gotchas — every time. Recall fixes that.

Start here: what Recall does for one developer, one AI

Install it once, point your MCP client at it, and your AI now:

  • Remembers across sessions — "what did we decide about the auth flow last week?" returns the actual decision, not a hallucination
  • Indexes your code and docsindex_file + recall = local semantic RAG over your repo
  • Cites where the answer came fromanswer returns text plus the chunks it pulled from
  • Builds project knowledge — every checkpoint, reflect, and anti_pattern becomes searchable later
  • Survives restarts — append-only artifacts on disk, vector store rebuildable from them

One pip install, one config block, done. No API key. No external service. No per-token bill. MIT license. This is what 95% of users will ever use Recall for.


How is this different from mem0 / Letta / Zep?

Recall does the same job they do — persistent memory across AI sessions, semantic recall, "remember what the user said last week." The difference is where and how:

mem0 / Letta / Zep Recall
Where memory lives Their cloud Your ~/.recall/
API key required Yes No
Cost Per-token / monthly SaaS Free
Embeddings Their service Local ONNX (offline)
Network calls Every recall Zero
Air-gappable No Yes
MCP-native Wrapper or SDK Built on MCP
Multi-agent coordination None 6 primitives

If you're happy paying a hosted memory provider per token, those are great products and you don't need Recall. If you'd rather your AI's memory live on your laptop or your own server, free and offline, that's what Recall is for.


Scaling up: coordination when you run more than one agent

The same install that gives one developer a personal AI memory also works as a shared brain when more than one agent talks to it. Two Copilot windows. A planner + executor pair. Three Claude instances dividing up a refactor. A pre-commit agent and a code-review agent on the same PR. They all remember and recall from the same store.

That introduces a new problem none of the hosted memory services have even tried to solve: agents stepping on each other. Agent A starts refactoring src/auth.py. Agent B, in another window, rewrites the same file with no idea A is mid-edit. Whoever saves last wins. The other agent's work is gone.

Recall ships six MCP primitives that turn parallel agents from a clobber-fest into a coordinated team:

Tool What it does
claim(resource, agent) Soft-lock a file/table/URL with an auto-expiring TTL
release(resource, agent) Drop the lock (soft-archive — audit trail survives)
who_has(resource) "Is anyone editing src/foo.py right now?"
claims() All active locks across all agents
handoff(to_agent, ...) Explicit work transfer with intent + files + context
pulse_others(self_agent) The N most recent checkpoints from agents other than you

Claims are advisory (like git locks) — Recall doesn't physically stop a second agent from writing, but every well-behaved client checks first. TTLs prevent a crashed agent from freezing a resource forever. Releases soft-archive (per the project-wide delete=archive rule) so the audit trail of who held what when survives.

If you're a single user, these tools just sit there unused. If you ever scale up to multiple agents, they're already there.

   ┌──────────────┐                           ┌──────────────┐
   │  Agent a3f7  │      claim(file, ttl)     │  Agent b1c4  │
   │  Claude #1   │ ───────────┐  ┌─────────► │  Claude #2   │
   └──────┬───────┘            ▼  │           └──────┬───────┘
          │              ┌────────┴───────┐          │
          │   remember   │     Recall     │   pulse  │
          ├────────────► │ • shared memory│ ◄────────┤
          │              │ • claims/locks │          │
          │   handoff    │ • handoffs     │  handoff │
          ├────────────► │ • who_has      │ ◄────────┤
          │              └────────────────┘          │
          ▼                                          ▼
       22 MCP tools — Copilot, Claude, Cursor, custom

22 MCP tools total — 16 memory tools every user gets, plus the 6 coordination primitives that activate when you scale up.


One-line install (Claude Desktop, VS Code, Cursor)

Recall ships as a stdio MCP server. Zero config — no API keys, no Docker, no ports. Memory lives in ~/.recall/.

pip install "ai-recallworks[mcp]"

Then add Recall to your MCP client config:

Claude Desktop (~/Library/Application Support/Claude/claude_desktop_config.json on macOS, %APPDATA%\Claude\claude_desktop_config.json on Windows):

{
  "mcpServers": {
    "recall": {
      "command": "recall-mcp"
    }
  }
}

VS Code (mcp.json in your workspace or user settings):

{
  "servers": {
    "recall": {
      "command": "recall-mcp"
    }
  }
}

Restart the client. Your agent now has persistent memory across sessions. Embeddings run fully offline (Chroma's bundled all-MiniLM-L6-v2). Upgrade to Ollama / OpenAI / Voyage embeddings via env vars when you want.


Five-minute install (HTTP / multi-user / team)

1. Run the server:

docker run -d --name recall \
  -p 8787:8787 \
  -e API_KEY=changeme \
  -v recall-data:/data \
  ghcr.io/recallworks/recall:latest

2. Talk to it — pick your stack:

# Raw HTTP (any language)
curl -H "X-API-Key: changeme" \
     -H "Content-Type: application/json" \
     -d '{"content":"first memory","tags":"hello"}' \
     http://localhost:8787/tool/remember
# Python (use requests/httpx — no SDK pkg needed)
import requests
h = {"X-API-Key": "changeme", "Content-Type": "application/json"}
requests.post("http://localhost:8787/tool/remember", headers=h,
              json={"content": "first memory", "tags": "hello"})
print(requests.post("http://localhost:8787/tool/recall", headers=h,
                    json={"query": "memory"}).json()["result"])
// TypeScript / JavaScript (Node 18+, Bun, Deno, browser)
npm install @recallworks/recall-client

import { RecallClient } from "@recallworks/recall-client";
const c = new RecallClient({ baseUrl: "http://localhost:8787", apiKey: "changeme" });
await c.remember("first memory", { tags: "hello" });
console.log((await c.recall("memory")).result);

Full walkthrough: docs/quickstart.md.


What you get

  • 13 toolsremember, recall, reflect, anti_pattern, checkpoint, pulse, session_close, index_file, reindex, snapshot_index, memory_stats, forget, maintenance.
  • Two transports — plain HTTP (POST /tool/{name}) and MCP over SSE. Drop into Copilot, Claude Code, Cursor, or any MCP client.
  • Bring your own models — pluggable embedder (default / OpenAI / Ollama) and summarizer (noop / OpenAI / Ollama). Run fully offline, fully on-prem, or against your own Azure-OpenAI tenant. See docs/byo-models.md.
  • Durable by default — ephemeral live store with auto-snapshot to disk; container restarts come up whole.
  • Append-only artifacts — every write also lands as a .md file. If the vector store ever burns down, reindex rebuilds it from the artifacts.
  • forget is soft-archive — guardrail wired into the OSS code itself, not bolted on as policy. Memory you delete can be recovered.

How it's different

Recall Mem0 / Letta / Zep
License (core) MIT mixed; SaaS-first
Self-host one docker run varies, often non-trivial
BYO embedder default / OpenAI / Ollama (env var) usually fixed
BYO LLM noop / OpenAI / Ollama (env var) usually fixed
Storage model append-only artifacts + vector index, rebuildable live DB only
delete soft-archive by design hard delete
Tool surface 13 opinionated tools (memory + workflow) embedding + retrieval primitives
MCP-native yes, plus plain HTTP partial / via wrapper
Ops model single binary, single container multi-service stack

If you want a managed service, see Recall Cloud below. If you want a brain you fully own, this OSS core is enough.


Repo layout

Path What
src/recall/ OSS server (MIT)
src/recall/tools/ One module per tool
src/recall/transport/ HTTP + MCP/SSE adapters
docker/single-tenant/ Reference Dockerfile + compose
tests/ pytest suite (no Docker required)
docs/ Quickstart, conventions, architecture
enterprise/ Multi-tenant, SSO, control plane (BSL)

Conventions

These are the practices that make the tools pay off. Pick what fits.

  • Cold-start ritual — opening protocol every session should run.
  • Branding — signed-edit headers so you can trace which agent touched which file when.

Status

Alpha. The code in src/recall/ is extracted from a hosted production brain that has served thousands of sessions, then sanitized of org-specific paths, extensions, and tenant data. Expect breaking changes before 1.0; pin the image tag.


Contributing

Yes — please read CONTRIBUTING.md first. We accept bug fixes, new Store backends, doc improvements, and anti-pattern entries. We don't accept architectural rewrites without prior discussion.

Security issues: see SECURITY.md.


License

  • src/recall/, clients/, docker/single-tenant/, docs/, examples/MIT (LICENSE)
  • enterprise/BSL 1.1, 5-seat additional-use grant, converts to MIT after 3 years (LICENSE-COMMERCIAL.md)

Recall Open Source vs. Recall Pro vs. Hosted

Capability OSS (this repo) Recall Pro Recall Cloud
Single-tenant Docker image n/a (hosted)
13 memory tools, MCP + HTTP
BYO embedder + LLM
Append-only artifacts + auto-snapshot
Multi-tenant, SSO, RBAC
Audit log + retention policy
Cross-session entity graph
PII sanitization pipeline
Snapshot replication / DR
Vendor support + SLA community business hours 24×7
Hosted on our infra
Pricing free from $99/mo per node from $0.10 per 1k tools

Recall Pro ships from the enterprise/ tree under a Business Source License — source-available, 5-seat free Additional Use Grant, converts to MIT after 3 years. Buy a license and the enterprise/ modules light up alongside your OSS install.

Recall Cloud is the hosted multi-tenant version. Same tools, no infra. Reach out for early-access pricing.

➡️ Talk to sales: sales@recall.works · Book a 20-min walkthrough: https://recall.works/demo


Vertical builds powered by Recall

Recall is the engine. We ship turn-key vertical brains on top of it:

  • IceWhisperer — the memory + workflow brain for ICE Mortgage Technology / Encompass shops. Pre-loaded SDK index, settings recipes, plugin audits, drift detection. Pilots from $250/mo.

If you want a vertical brain for your industry, we'll build it. Email partners@recall.works.


Maintainers

Reach the maintainers at maintainers@recall.works. Issues and PRs welcome on GitHub.

Recommended Servers

playwright-mcp

playwright-mcp

A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots without requiring vision models or screenshots.

Official
Featured
TypeScript
Magic Component Platform (MCP)

Magic Component Platform (MCP)

An AI-powered tool that generates modern UI components from natural language descriptions, integrating with popular IDEs to streamline UI development workflow.

Official
Featured
Local
TypeScript
Audiense Insights MCP Server

Audiense Insights MCP Server

Enables interaction with Audiense Insights accounts via the Model Context Protocol, facilitating the extraction and analysis of marketing insights and audience data including demographics, behavior, and influencer engagement.

Official
Featured
Local
TypeScript
VeyraX MCP

VeyraX MCP

Single MCP tool to connect all your favorite tools: Gmail, Calendar and 40 more.

Official
Featured
Local
graphlit-mcp-server

graphlit-mcp-server

The Model Context Protocol (MCP) Server enables integration between MCP clients and the Graphlit service. Ingest anything from Slack to Gmail to podcast feeds, in addition to web crawling, into a Graphlit project - and then retrieve relevant contents from the MCP client.

Official
Featured
TypeScript
Kagi MCP Server

Kagi MCP Server

An MCP server that integrates Kagi search capabilities with Claude AI, enabling Claude to perform real-time web searches when answering questions that require up-to-date information.

Official
Featured
Python
E2B

E2B

Using MCP to run code via e2b.

Official
Featured
Neon Database

Neon Database

MCP server for interacting with Neon Management API and databases

Official
Featured
Qdrant Server

Qdrant Server

This repository is an example of how to create a MCP server for Qdrant, a vector search engine.

Official
Featured
Exa Search

Exa Search

A Model Context Protocol (MCP) server lets AI assistants like Claude use the Exa AI Search API for web searches. This setup allows AI models to get real-time web information in a safe and controlled way.

Official
Featured