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Cortex

GitHub stars License: MIT

🧠 Try Cortex in your browser β€” zero install, 124KB WASM, runs entirely client-side.

If Cortex helps your AI remember, give it a ⭐ β€” it takes 1 second and helps others discover the project.

δΈ­ζ–‡ | ζ—₯本θͺž | ν•œκ΅­μ–΄

Memory for AI agents that never leaves your device.

Private. Free. Local. β€” a memory engine for personal AI agents.

Your AI's memory lives on your device β€” your data never leaves, never costs, never spies. Pure Rust. 3.8MB binary. No third-party servers in the data path, zero telemetry, zero cost. Syncs through your own cloud storage. (On-device semantic search downloads a ~30MB model once on first use, then runs fully offline β€” or go 100% offline with CORTEX_NO_EMBEDDINGS=1. See Security & Privacy.)

Cortex remembering across sessions β€” a real, local cortex-mcp-server recording

What you get

  • πŸ”’ Private by default β€” memories live in a local SQLite file, never leave your device, zero telemetry (CI-enforced).

  • 🧠 Real memory, not a text file β€” 4 tiers, multi-signal retrieval, self-correcting Bayesian beliefs, a cross-channel people graph.

  • ⚑ Sub-millisecond β€” 156Β΅s ingest, 568Β΅s search. ~528Γ— faster than cloud memory APIs, with no network round-trip.

  • πŸ”Œ Drop-in for any agent β€” one MCP server gives Claude Code / Claude Desktop (or any MCP client) persistent cross-session memory.

  • ☁️ Yours across devices β€” optional end-to-end-encrypted sync through your own iCloud / Drive / Dropbox. No server of ours, ever.

See it remember across sessions β€” ~30 seconds:

brew install gambletan/tap/cortex-mcp-server          # or: cargo build --release -p cortex-mcp-server
claude mcp add cortex-memory -- cortex-mcp-server ~/.cortex/memory.db

Tell Claude "remember I deploy on Fly.io and always run tests before pushing." Open a brand-new session and ask "how do I deploy this project?" β€” it answers from memory, 100% on your machine.

⭐ If that's useful, give it a star β€” it helps others find a memory engine that respects their privacy.


LLMs start blank every session β€” they forget your name, your preferences, yesterday's conversation, last week's decision. The usual fixes are flat text files (no ranking, no decay), keyword grep, or cloud APIs that add 200–500ms, charge you, and ship your personal data to someone else's server. Cortex gives your AI structured, self-evolving long-term memory that persists across sessions and channels β€” all local, all yours. Your memories are not a cloud provider's training data, a startup's monetization asset, or a surveillance target.

Cortex vs Mem0 vs OpenAI Memory

Cortex

Mem0

OpenAI Memory

Privacy

100% local, zero cloud

Cloud API (your data on their servers)

OpenAI servers

Latency

156Β΅s ingest, 568Β΅s search

~200-500ms

~300-800ms

Cost

Free, forever

$99+/mo (Pro)

ChatGPT Plus ($20/mo)

Memory tiers

4 (Working/Episodic/Semantic/Procedural)

1 (flat)

1 (flat)

Bayesian beliefs

Self-correcting with evidence

No

No

People graph

Cross-channel identity resolution

Paid tier only

No

Conversation compression

Automatic session summarization

No

No

Relationship inference

Pattern-based (EN + CN)

No

No

Temporal retrieval

Intent-aware ("recently" / "first time")

No

No

Contradiction detection

Automatic with confidence scores

No

No

Consolidation

Episodic β†’ Semantic auto-promotion

No

No

Context injection

Token-budgeted LLM-ready output

Manual

Automatic but opaque

Import/Export

Full JSON backup & restore

API only

No export

Self-hosted

Native binary, Docker, MCP

Cloud only

Cloud only

Binary size

3.8 MB

npm package

N/A

Dependencies

0 runtime services (single binary)

Node.js + cloud

N/A

Open source

MIT

Partial

No

Encryption

AES-256-GCM encrypted sync (opt-in)

No

No

Key rotation

Versioned envelopes, forward secrecy

No

No

Privacy levels

Private (default, never syncs) / Shared / Public β€” per-memory opt-in, demote retracts from other devices

No

No

Tool authorization

Deny-by-default capability policy on the MCP surface

No

No

Zero telemetry

No analytics, no phone-home, verifiable

Unknown

No

Cost

Free forever, unlimited

$99+/mo (Pro)

$20/mo (Plus)

Chinese NLP

Native (inference, retrieval, relationships)

No

Limited

Namespace isolation

Per-user/context memory separation

No

No

Plugin system

Compile-time hooks for ingest/retrieve/consolidation

No

No

MCP tools

30 tools for Claude/LLM integration

3rd party

N/A

Performance Benchmarks

Operation

Cortex

Mem0 (cloud)

File-based

Ingest

156Β΅s

~200ms

~1ms

Search (top-10)

568Β΅s

~300ms

~10ms

Context generation

621Β΅s

~500ms

manual

Belief update

66Β΅s

N/A

N/A

People graph

51Β΅s

paid tier

N/A

Structured facts

45Β΅s

N/A

N/A

1K memories search

1.6ms

~500ms

~50ms

528x faster than Mem0 cloud. With features neither Mem0 nor OpenAI Memory offer.

Note: Benchmarks include proactive inference (auto-extracting facts, preferences, relationships) on every ingest. Raw ingest without inference is ~15Β΅s. Numbers from cargo bench on M-series Mac.

LoCoMo Benchmark (ACL 2024)

Academic-grade long-term conversation memory evaluation β€” 10 conversations, 1540 QA pairs across 4 categories.

System

Single-hop

Multi-hop

Open-domain

Temporal

Overall

Backboard

89.4%

75.0%

91.2%

91.9%

90.0%

MemMachine v0.2

β€”

β€”

β€”

β€”

84.9%

Cortex

72.5%

59.5%

88.8%

74.1%

73.7%

Mem0-Graph

65.7%

47.2%

75.7%

58.1%

68.4%

Mem0

67.1%

51.2%

72.9%

55.5%

66.9%

OpenAI Memory

β€”

β€”

β€”

β€”

52.9%

Key findings:

  • Open-domain 88.8% β€” leads Mem0 (72.9%) by +15.9%

  • Temporal 74.1% β€” leads Mem0 (55.5%) by +18.6%

  • Single-hop 72.5% β€” leads Mem0 (67.1%) by +5.4%

  • Multi-hop 59.5% β€” leads Mem0 (51.2%) by +8.3%

  • Overall 73.7% β€” beats Mem0 (66.9%) by +6.8%, beats OpenAI Memory (52.9%) by +20.8%

Cortex outperforms Mem0 on all 4 categories β€” while running 100% locally, end-to-end encrypted, at $0 cost.

Setup: Claude Sonnet 4 (QA + judge), nomic-embed-text (embeddings via Ollama), top-30 retrieval. Reproducible with that setup: python3 bench/locomo_bench.py (needs ANTHROPIC_API_KEY + a local Ollama with nomic-embed-text). Numbers measured on the v1.7 engine; the v2.2 retrieval beam fix (paraphrase recall 40%β†’90% at 5K, see docs/scale-test-2026-06-13.md) has not yet been re-run on LoCoMo, so these are reported as the last verified figures, not a v2.2 claim.

Architecture

Cortex implements a 4-tier memory model inspired by human cognition:

                    +---------------------+
                    |   Working Memory    |  Current session context
                    +---------------------+
                              |
                    +---------------------+
                    |   Episodic Memory   |  Raw experiences: conversations, events, observations
                    +---------------------+
                              |  consolidation (decay, promotion, pattern extraction)
                    +---------------------+
                    |   Semantic Memory   |  Distilled facts, preferences, relationships
                    +---------------------+
                              |
                    +---------------------+
                    | Procedural Memory   |  Learned routines, user-specific workflows
                    +---------------------+

Working holds the current session scratch pad. Episodic stores raw experiences with timestamps and source metadata. The Consolidation Engine periodically promotes recurring patterns into Semantic facts and decays stale episodes. Procedural captures learned workflows and routines.

Related MCP server: GrantAi

Key Components

People Graph

Cross-channel identity resolution. The same person messaging you on Telegram, emailing you, and showing up in calendar events gets unified into a single identity node. Interactions, relationship strength, and communication patterns are tracked per-person.

Bayesian Belief System

Self-correcting understanding of the world. Beliefs are formed from evidence, updated with each new observation, and can be contradicted. Confidence scores reflect actual certainty rather than recency bias.

cortex.observe_belief("user_prefers_morning_meetings", true, 0.8)?;
cortex.observe_belief("user_prefers_morning_meetings", false, 0.6)?;
// Confidence adjusts automatically via Bayesian update

Consolidation Engine

Episodic-to-semantic promotion, decay of stale memories, and pattern extraction. Runs as a background cycle that keeps the memory store lean and queryable. Returns a report of what was promoted, decayed, and merged.

Multi-signal Retrieval

Queries combine five signals for relevance ranking:

  • Similarity -- vector cosine distance against query embedding

  • Temporal -- recency weighting with configurable decay

  • Salience -- importance scoring from access patterns and explicit hints

  • Social -- boost for memories involving specific people

  • Channel -- filter or boost by source channel

Context Injection Protocol

Generates LLM-ready context strings from memory state. Pass a token budget, optional channel/person filters, and get back a structured text block your LLM can consume directly.

Storage

SQLite for persistence, in-memory vector index for fast similarity search. Single-file database, no external services required. Designed for edge deployment -- runs on a laptop, a Raspberry Pi, or a server.

Cloud Sync

Sync memories across devices through your own cloud storage β€” no third-party server involved.

Device A (Mac)              Your Cloud Storage              Device B (iPhone)
β”Œβ”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”         β”Œβ”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”         β”Œβ”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”
β”‚ SQLite DB β”‚ ──W──>  β”‚ iCloud / GDrive /    β”‚  <──R── β”‚ SQLite DBβ”‚
β”‚ (local)   β”‚         β”‚ OneDrive / Dropbox   β”‚         β”‚ (local)  β”‚
β”‚           β”‚ <──R──  β”‚                      β”‚  ──W──> β”‚          β”‚
β””β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”˜         β””β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”˜         β””β”€β”€β”€β”€β”€β”€β”€β”€β”€β”€β”˜
  • Changelog-based: Each device writes append-only operation logs to its own subfolder

  • No conflicts: Devices never write to the same file. Merge uses Last-Writer-Wins with Hybrid Logical Clocks

  • Encrypted: AES-256-GCM encryption (opt-in). Even if your cloud account is compromised, memories stay private

  • Tamper-evident: the sync manifest and every operation carry an HMAC; tampered or plaintext-injected oplog lines are rejected, and a manifest without integrity protection refuses to load (no key-rollback path)

  • Key rotation & forward secrecy: rotate to a new key version (ENC2 envelopes) without re-encrypting history; old versions stay readable, new writes are unreadable to a leaked old key

  • Privacy-aware, per-memory opt-in: Private memories (the default) never leave your device. Mark a memory shared to sync it; demote it back to private and a retraction deletes it from your other devices (local copy kept)

  • Survives restarts: sync settings persist in the database (passphrase never touches disk β€” macOS login Keychain or CORTEX_SYNC_PASSPHRASE); the server resumes sync and starts background pull (30s poll + fs watcher) automatically

Supported providers: iCloud Drive, Google Drive, OneDrive, Dropbox (auto-detected).

use cortex_core::sync::SyncConfig;
use cortex_core::types::PrivacyLevel;

// Enable sync with encryption (settings persist; passphrase goes to the OS keychain)
let config = SyncConfig::new(sync_dir, device_id, device_name)
    .with_encryption("my-strong-passphrase");
cortex.enable_sync(config)?;

// Opt a memory into sync β€” everything is Private unless you say otherwise
cortex.set_memory_privacy(mem_id, PrivacyLevel::Shared { scope: "all".into() })?;

// Pull changes from other devices (also happens automatically in the background)
let applied = cortex.sync_pull()?;
println!("Applied {} remote changes", applied);

Security & Privacy

Feature

Detail

Encryption

AES-256-GCM with Argon2id key derivation (per-line random nonce)

Key rotation

Versioned ENC2 envelopes with per-version passphrase-derived keys β€” forward secrecy against AES-key exfiltration, no full re-encryption needed

Integrity

HMAC on the sync manifest and on every sync operation; plaintext lines in an encrypted oplog are rejected outright (injection defense)

Privacy levels

Private (default, never syncs), Shared, Public β€” set at ingest (privacy arg / --privacy) or later (memory_set_privacy); demoting to Private retracts the memory from other devices

Capability policy

Deny-by-default tool authorization on the MCP surface: a capabilities.json grants tool groups (read/write/sync/plugins) or exact tools; ungranted tools are invisible and uncallable; malformed policy fails closed

Query budget

Every retrieval is bounded (candidate cap + wall-clock cap) β€” query cost never scales with total store size; DoS guard and timing-side-channel bound in one

Secret handling

Sync passphrase is never written to disk by Cortex β€” macOS login Keychain or env var only; missing passphrase fails safe (sync off, never plaintext)

Memory zeroization

Sensitive data cleared from RAM on drop (zeroize crate)

Zero telemetry

No analytics, no phone-home, no user data ever leaves the device β€” enforced in CI (scripts/check-no-network-egress.sh): the build fails if any network/telemetry crate enters cortex-core's default tree, and the check also proves the --no-default-features binary is completely zero-network.

Embedding model fetch (one-time)

The default cortex-mcp-server enables on-device semantic search, which downloads a ~30 MB model (all-MiniLM-L6-v2) from the Hugging Face CDN on first ingest, then runs fully offline and sends none of your data. For a 100%-offline setup: run with CORTEX_NO_EMBEDDINGS=1 (keyword/FTS recall, zero network) or build --no-default-features. A one-time stderr notice is printed before any download β€” nothing is ever fetched silently.

No accounts

No API key, no registration, no cloud dependency

See SECURITY.md for the full threat model.

Prerequisites

Install the Rust toolchain (provides cargo):

curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh

After installation, either restart your terminal or run:

source "$HOME/.cargo/env"

Verify:

cargo --version

Real-World Example: A Personal AI That Actually Remembers

Imagine your AI assistant across a week of real conversations:

# Day 1 β€” You chat on Telegram
You: "Sarah works at Stripe. She's interested in our API."

  Cortex auto-extracts:
  β”œβ”€β”€ episodic memory stored (156Β΅s)
  β”œβ”€β”€ fact: Sarah β†’ works_at β†’ Stripe (confidence: 0.70)
  └── person resolved: sarah_telegram

# Day 2 β€” Sarah emails you
From: sarah@stripe.com
"Here's the technical spec we discussed."

  Cortex:
  β”œβ”€β”€ person resolved: sarah@stripe.com β†’ merged with sarah_telegram
  β”‚   (same person, different channel β€” automatic identity resolution)
  └── fact: Sarah β†’ sent β†’ technical spec

# Day 3 β€” You ask your AI
You: "What's the status with Stripe?"

  Cortex retrieves (568Β΅s):
  β”œβ”€β”€ Sarah works at Stripe (semantic fact)
  β”œβ”€β”€ Meeting went well, interested in API (episodic, Day 1)
  β”œβ”€β”€ She sent technical spec (episodic, Day 2)
  └── Cross-channel context: Telegram + Email unified under one person

  Your AI responds with full context β€” no "sorry, I don't remember" 🎯

# Day 5 β€” New information arrives
You: "Sarah now works at Anthropic."

  Cortex:
  β”œβ”€β”€ contradiction detected: Sarah works_at Stripe vs Sarah works_at Anthropic
  β”œβ”€β”€ old fact superseded + decayed: Stripe (salience Γ—0.3, kept as history)
  β”œβ”€β”€ new fact stored: Sarah β†’ works_at β†’ Anthropic
  └── current employer now ranks first; self-correcting, no manual cleanup

  (Third-party relations are extracted from natural-language verbs β€”
   "works at / works for / joined / now works at", "runs on", "hosted in",
   "manages", "part of", … β€” between two proper-noun entities.)

# Day 7 β€” Consolidation runs
  Cortex auto-consolidation:
  β”œβ”€β”€ 3 episodic memories about Sarah β†’ promoted to semantic summary
  β”œβ”€β”€ stale memories from other topics β†’ decayed
  └── pattern detected: you have recurring Monday meetings

All of this happens locally in <1ms per operation. No cloud. No API calls. No one else sees your data.

Install

Homebrew (macOS / Linux)

brew tap gambletan/tap
brew install cortex-mcp-server

From source

cargo build --release -p cortex-mcp-server
cp target/release/cortex-mcp-server ~/.local/bin/

Official packages (avoid look-alikes)

Cortex is published under the cortex-ai-memory name. Several similarly-named packages on npm/PyPI are not affiliated with this project β€” use exactly these:

Ecosystem

Official package

Use for

Binary / MCP server

GitHub Releases, or brew install gambletan/tap/cortex-mcp-server

the memory engine (primary)

PyPI

cortex-ai-memory

Python bindings

npm

@cortex-ai-memory/cortex-memory (scoped)

OpenClaw memory plugin

⚠️ Not us: npm cortex-mcp, npm cortex-ai-memory (unscoped), PyPI cortex-memory. The source of truth is always this repo β€” github.com/gambletan/cortex. When in doubt, the binary from Releases is the canonical install.

Quick Start

use cortex_core::Cortex;

// Open (or create) a memory database
let cortex = Cortex::open("memory.db")?;

// Ingest a memory from a Telegram conversation
let embedding = your_embedding_fn("Met with Alice about the Q3 roadmap");
cortex.ingest(
    "Met with Alice about the Q3 roadmap",
    "telegram",               // source channel
    Some("alice_123"),         // user ID (triggers identity resolution)
    Some(0.8),                 // salience hint
    Some(embedding),           // vector embedding
)?;

// Add a semantic fact directly
cortex.add_fact(
    "Alice", "works_at", "Acme Corp",
    0.95, "telegram", None,
)?;

// Store a preference
cortex.add_preference("timezone", "America/Los_Angeles", 0.9)?;

// Retrieve relevant memories
let results = cortex.retrieve(
    "What do I know about Alice?",
    5,                         // top-k
    None,                      // any channel
    None,                      // any person
    Some(query_embedding),     // vector for similarity search
)?;

// Generate LLM-ready context (token-budgeted)
let context = cortex.get_context(
    2000,                      // max tokens
    Some("telegram"),          // channel filter
    None,                      // no person filter
)?;
// Pass `context` as system/user message prefix to your LLM

// Run consolidation (call periodically)
let report = cortex.run_consolidation()?;
println!("Promoted: {}, Decayed: {}", report.promoted, report.decayed);

Python Bindings

Coming soon via PyO3. The cortex-python crate will expose the full API as a native Python module:

from cortex import Cortex

cx = Cortex.open("memory.db")
cx.ingest("Had lunch with Bob at the Thai place", channel="imessage", user_id="bob")
results = cx.retrieve("Where does Bob like to eat?", limit=5)

Integration with unified-channel-hub

Cortex is designed as the memory layer for unified-channel-hub. Messages flow in from any channel adapter, Cortex ingests and indexes them, and the context injection protocol feeds relevant memory back to your LLM before each response.

Telegram ─┐                          β”Œβ”€ Context
Discord  ──  unified-channel-hub  β†’  β”‚  Cortex  β†’  LLM
Email    ──  (ingest)                 β”‚  (retrieve + inject)
Calendar β”€β”˜                          └─ Response

Integration with LangGraph

Add persistent memory to any LangGraph agent via langchain-mcp-adapters β€” no custom code needed.

from langchain_mcp_adapters.client import MultiServerMCPClient
from langgraph.prebuilt import create_react_agent
from langchain_openai import ChatOpenAI

model = ChatOpenAI(model="gpt-4o")

async with MultiServerMCPClient({
    "cortex": {
        "command": "cortex-mcp-server",
        "args": ["~/.cortex/memory.db"]
    }
}) as client:
    agent = create_react_agent(model, client.get_tools())
    # Agent now has all 30 Cortex memory tools
    result = await agent.ainvoke({
        "messages": [{"role": "user", "content": "What do you remember about Alice?"}]
    })

Your LangGraph agent gets instant access to memory_search, memory_ingest, fact_add, belief_observe, person_resolve, and 25 more tools β€” all running locally.

Integration with DeerFlow (ByteDance)

Cortex works as a persistent memory layer for DeerFlow β€” ByteDance's open-source multi-agent orchestration platform. Zero code changes needed.

# Add to DeerFlow config.yaml
mcp_servers:
  cortex-memory:
    command: cortex-mcp-server
    args:
      - ~/.cortex/deerflow.db

All DeerFlow agents (Telegram, Slack, Feishu) get instant access to 30 memory tools β€” cross-session memory, fact storage, people graph, and belief tracking across all channels.

CLI

Cortex doubles as a standalone CLI tool β€” no MCP client required.

$ cortex-mcp-server --help
Cortex memory engine β€” MCP server & CLI tools

Usage: cortex-mcp-server [DB_PATH] [COMMAND]

Commands:
  ingest  Store a new memory
  search  Search memories
  stats   Show memory statistics
  sync    Show cloud sync status and detected providers
  export  Export all data as JSON
  import  Import data from JSON file
  info    Show version, DB path, and capabilities
  help    Print this message or the help of the given subcommand(s)

Arguments:
  [DB_PATH]  Path to the Cortex database file (default: ~/.cortex/memory.db)

Options:
  -h, --help     Print help
  -V, --version  Print version

Examples:

# Store a memory
cortex-mcp-server ~/.cortex/memory.db ingest "Met with Alice about Q3 roadmap"
cortex-mcp-server ~/.cortex/memory.db ingest -c telegram "Sarah now works at Anthropic"

# Search
cortex-mcp-server ~/.cortex/memory.db search "Alice"
cortex-mcp-server ~/.cortex/memory.db search -l 10 "Q3 roadmap"

# Stats
cortex-mcp-server ~/.cortex/memory.db stats

# Cloud sync
cortex-mcp-server ~/.cortex/memory.db sync                        # status
cortex-mcp-server ~/.cortex/memory.db sync enable                  # auto-detect provider
cortex-mcp-server ~/.cortex/memory.db sync enable -p icloud        # specific provider
cortex-mcp-server ~/.cortex/memory.db sync pull                    # pull remote changes

# Export / Import (backup & restore)
cortex-mcp-server ~/.cortex/memory.db export -o backup.json
cortex-mcp-server ~/.cortex/new.db import backup.json

# Version & capabilities
cortex-mcp-server ~/.cortex/memory.db info

No subcommand = MCP stdio mode (for Claude Code / Claude Desktop integration).

MCP Server (Claude Code / Claude Desktop)

Cortex ships as an MCP server β€” works with any MCP-compatible client.

Setup

1. Build & install the binary:

mkdir -p ~/.local/bin ~/.cortex
cargo build --release -p cortex-mcp-server
cp target/release/cortex-mcp-server ~/.local/bin/

2. Register as MCP server:

Claude Code (CLI):

# Global (all projects)
claude mcp add cortex --scope user -- ~/.local/bin/cortex-mcp-server ~/.cortex/memory.db

# Or per-project
claude mcp add cortex -- ~/.local/bin/cortex-mcp-server ~/.cortex/memory.db

Claude Desktop β€” add to ~/Library/Application Support/Claude/claude_desktop_config.json:

{
  "mcpServers": {
    "cortex": {
      "command": "/Users/you/.local/bin/cortex-mcp-server",
      "args": ["/Users/you/.cortex/memory.db"]
    }
  }
}

3. Allow tools in "don't ask" mode:

Add to ~/.claude/settings.json β†’ permissions.allow:

"mcp__cortex__*"

Note: MCP tool permissions do not support parentheses format (e.g. mcp__cortex__memory_ingest(*)). Use the wildcard mcp__cortex__* instead.

4. Make it automatic β€” add to your CLAUDE.md (project or global ~/.claude/CLAUDE.md):

# Memory (Cortex)
You have persistent memory via Cortex MCP tools. Use them automatically:
- Start of conversation: call `memory_context` to load what you know about the user
- When the user shares a preference, fact, or personal info: call `memory_ingest` to store it
- When you learn a structured fact: call `fact_add` (e.g. "User works_at Google")
- When you detect a preference: call `preference_set` (e.g. editor=neovim)
- When evidence supports or contradicts a belief: call `belief_observe`
- When talking to someone new: call `person_resolve` to track identity
- Periodically: call `memory_consolidate` to clean up stale memories

5. Auto-inject memory on session start (Claude Code hooks β€” fully automatic):

Create ~/.claude/hooks/cortex-memory-inject.sh:

#!/bin/bash
CORTEX_BIN="${CORTEX_BIN:-$HOME/.local/bin/cortex-mcp-server}"
CORTEX_DB="${CORTEX_DB:-$HOME/.cortex/memory.db}"
[ -x "$CORTEX_BIN" ] || exit 0

printf '%s\n%s\n%s\n' \
  '{"jsonrpc":"2.0","id":1,"method":"initialize","params":{"protocolVersion":"2024-11-05","capabilities":{},"clientInfo":{"name":"hook","version":"1.0"}}}' \
  '{"jsonrpc":"2.0","method":"notifications/initialized"}' \
  '{"jsonrpc":"2.0","id":2,"method":"tools/call","params":{"name":"memory_context","arguments":{"max_tokens":1500}}}' \
  | "$CORTEX_BIN" "$CORTEX_DB" 2>/dev/null \
  | grep '"id":2' \
  | python3 -c "import sys,json; r=json.load(sys.stdin); print(r['result']['content'][0]['text'])" 2>/dev/null

Add to ~/.claude/settings.json:

{
  "hooks": {
    "SessionStart": [
      {
        "matcher": "",
        "hooks": [
          {
            "type": "command",
            "command": "~/.claude/hooks/cortex-memory-inject.sh"
          }
        ]
      }
    ]
  }
}

Now every new Claude Code session automatically loads your memory context β€” zero manual effort. Claude learns as you work and remembers across sessions.

Cross-Device Memory Sync

Your Claude's memory follows you across all your devices β€” MacBook, iMac, work laptop β€” through your own cloud storage.

Enable sync (one command):

You: "Enable cross-device memory sync"

Claude calls sync_enable β†’ auto-detects iCloud Drive β†’
  generates device ID + AES-256-GCM encryption key β†’ done.

Output:
  Provider:   iCloud Drive
  Encryption: AES-256-GCM
  Passphrase: a1b2c3...  ← save this for your other devices

On your second device β€” one script does everything (build/install, wait for iCloud, join, restore):

git clone https://github.com/gambletan/cortex && cortex/scripts/setup-device-sync.sh
# Prompts for your passphrase (hidden input; or set CORTEX_SYNC_PASSPHRASE)
# β†’ full restore on join, passphrase saved to that device's login Keychain

Or conversationally:

You: "Enable sync with passphrase a1b2c3..."

Claude calls sync_enable(passphrase: "a1b2c3...") β†’
  connects to the same iCloud sync folder β†’ pulls all memories.

Now both devices share the same memory β€” and keep sharing it
automatically (background sync: 30s poll + filesystem watcher).

What syncs and what doesn't:

  • Private memories (default) never leave your device. Opt in per memory: memory_ingest with privacy: "shared", cortex-mcp-server ingest --privacy shared, or memory_set_privacy on an existing memory

  • Demote a shared memory back to private and it is retracted (deleted) from your other devices β€” the local copy stays

  • All sync data is AES-256-GCM encrypted with HMAC integrity β€” even if your cloud account is compromised, memories stay private and tampering is detected

  • Sync survives restarts: settings persist, the passphrase lives in the OS keychain, the server resumes automatically

  • No server, no API, no account β€” just your own cloud folder

CLI alternative:

# Device A
cortex-mcp-server sync enable
# Save the passphrase from the output

# Device B
cortex-mcp-server sync enable --passphrase "your-passphrase-from-device-A"

# Manual pull (background sync also pulls automatically)
cortex-mcp-server sync pull

Multi-Project Isolation

Working across multiple projects? Use separate databases for physical memory isolation β€” no cross-project leakage, zero code changes needed.

~/.cortex/
β”œβ”€β”€ global.db          # User preferences, people graph, cross-project knowledge
β”œβ”€β”€ my-app.db          # Project A memories
└── my-api.db          # Project B memories

Global config (~/.claude/settings.json) β€” user-level knowledge:

{
  "mcpServers": {
    "cortex-global": {
      "command": "~/.local/bin/cortex-mcp-server",
      "args": ["~/.cortex/global.db"]
    }
  },
  "permissions": { "allow": ["mcp__cortex-global__*", "mcp__cortex-project__*"] }
}

Per-project config (~/.claude/projects/<path>/settings.json) β€” project-specific:

{
  "mcpServers": {
    "cortex-project": {
      "command": "~/.local/bin/cortex-mcp-server",
      "args": ["~/.cortex/my-app.db"]
    }
  }
}

Then add these memory isolation rules to your project's CLAUDE.md:

## Memory Isolation

Two Cortex MCP servers: `cortex-project` (project DB) and `cortex-global` (global DB).

### Write Policy
- Save to `cortex-project` if the memory is about this repo's architecture, code,
  modules, tests, workflows, configs, bugs, decisions, or terminology.
- Save to `cortex-global` only for long-term user preferences, communication style,
  cross-project habits, or personal background useful across repos.
- **Default: if uncertain, save to `cortex-project`.**

### Read Policy
1. Query `cortex-project` first.
2. Query `cortex-global` second, only for user-level preferences.
3. Prefer project memory when they conflict.

### Anti-Leak Rules
- Never auto-copy from `cortex-project` into `cortex-global`.
- Never store repo-specific paths, module names, or account names in `cortex-global`.
- Never treat project implementation details as user-global preferences.

### Update Rule
- Cortex is append-only. To update: search old entry β†’ delete β†’ ingest new.

This gives you two independent Cortex instances per project β€” complete isolation with shared user knowledge.

30 Tools

Tool access is governed by an optional deny-by-default capability policy: drop a capabilities.json next to your database ({"version":1,"grants":["read","write"]}) and only granted tool groups (read / write / sync / plugins / all) or exact tool names are listed and callable. No policy file = everything enabled (legacy).

Tool

Purpose

memory_ingest

Store a memory (text, channel, person context, optional privacy)

memory_set_privacy

Change a memory's privacy level β€” promote to shared to sync it, demote to private to retract it from other devices

memory_search

Semantic search across all memory tiers

memory_context

Generate LLM-ready context summary (token-budgeted)

memory_consolidate

Run decay + promotion + sweep cycle

memory_infer

Preview inference without storing

memory_compress

Compress old conversation sessions

memory_stats

Get memory statistics (counts per tier, index size)

memory_decay

Run temporal decay on episodic memories

belief_observe

Update a Bayesian belief with evidence

belief_list

Query beliefs above confidence threshold

fact_add

Store structured knowledge (subject-predicate-object)

fact_query

Query facts by entity (SQL-indexed)

preference_set

Store user preference with confidence

preference_query

Query preferences by key pattern

person_resolve

Cross-channel identity resolution

person_list

List all known people

contradiction_check

Check for fact contradictions

relationship_extract

Extract relationships from text

sync_status

Cloud sync status (provider, devices, pending ops)

sync_providers

Detect available cloud storage providers

sync_enable

Enable cross-device cloud sync with optional encryption

sync_pull

Pull and apply remote changes from other devices

memory_archive

Archive a memory to cold storage

memory_restore

Restore an archived memory back to an active tier

memory_delete

Permanently delete a memory by ID

memory_ingest_batch

Ingest multiple memories in a single transaction

tag_list_taxonomy

List all tags in use across memories with counts

namespace_list

List all namespaces with memory counts

person_merge

Merge two person identities into one

OpenClaw Plugin

Give your OpenClaw agent persistent memory with auto-recall and auto-capture.

Install:

# 1. Install Cortex binary
curl -fsSL https://raw.githubusercontent.com/gambletan/cortex/main/install.sh | bash

# 2. Install the OpenClaw plugin
openclaw plugin add @cortex-ai-memory/cortex-memory

Configure (optional β€” works with defaults):

{
  "plugins": {
    "@cortex-ai-memory/cortex-memory": {
      "autoCapture": true,
      "autoRecall": true,
      "topK": 10
    }
  }
}

What it does:

  • autoCapture: Automatically stores conversation context after each turn

  • autoRecall: Injects relevant memories before each turn (your agent "remembers")

  • 7 tools: memory_search, memory_store, fact_add, belief_observe, person_resolve, and more

See openclaw-plugin/README.md for full configuration options.

Project Structure

cortex/
β”œβ”€β”€ cortex-core/          # Rust core library (all memory logic)
β”‚   β”œβ”€β”€ src/
β”‚   β”‚   β”œβ”€β”€ lib.rs              # Cortex entry point
β”‚   β”‚   β”œβ”€β”€ types.rs            # MemObject, MemoryTier, etc.
β”‚   β”‚   β”œβ”€β”€ inference.rs        # Proactive inference (EN + CN)
β”‚   β”‚   β”œβ”€β”€ episode.rs          # Episodic memory store
β”‚   β”‚   β”œβ”€β”€ semantic.rs         # Semantic facts + preferences
β”‚   β”‚   β”œβ”€β”€ working.rs          # Working memory (session scratch pad)
β”‚   β”‚   β”œβ”€β”€ procedural.rs       # Learned routines
β”‚   β”‚   β”œβ”€β”€ people.rs           # People graph + identity resolution
β”‚   β”‚   β”œβ”€β”€ belief.rs           # Bayesian belief system
β”‚   β”‚   β”œβ”€β”€ consolidation.rs    # Episodicβ†’semantic promotion + decay
β”‚   β”‚   β”œβ”€β”€ retrieval.rs        # Multi-signal retrieval engine
β”‚   β”‚   β”œβ”€β”€ context.rs          # LLM context generation
β”‚   β”‚   β”œβ”€β”€ sync/               # Cloud sync (oplog, HLC, merge, encryption)
β”‚   β”‚   └── storage/            # SQLite + in-memory vector index
β”‚   └── benches/                # Performance benchmarks
β”œβ”€β”€ cortex-http/          # HTTP REST API (axum, local-only)
β”œβ”€β”€ cortex-mcp-server/    # MCP server binary (3.8MB)
β”œβ”€β”€ cortex-python/        # Python bindings (PyO3, WIP)
β”œβ”€β”€ openclaw-plugin/      # OpenClaw memory plugin
β”œβ”€β”€ Dockerfile            # Self-hosted Docker image
└── Cargo.toml            # Workspace root

HTTP API

Cortex ships a lightweight HTTP server for integration with any language or framework. Binds to 127.0.0.1 by default β€” your data never leaves your machine.

# Build & run
cargo build --release -p cortex-http
./target/release/cortex-http --port 3315 --db ~/.cortex/memory.db

# Or via Docker (pre-built from GHCR)
docker run -v ~/.cortex:/data -p 3315:3315 ghcr.io/gambletan/cortex/cortex-http:latest

# Or build locally
docker build -t cortex .
docker run -v ~/.cortex:/data -p 3315:3315 cortex

Endpoints

Method

Path

Description

GET

/health

Health check

POST

/v1/memories

Ingest a memory

POST

/v1/memories/search

Semantic search

GET

/v1/memories/context

Generate LLM context

POST

/v1/memories/consolidate

Run consolidation cycle

POST

/v1/memories/infer

Preview inference (no store)

POST

/v1/facts

Add a semantic fact

POST

/v1/facts/contradictions

Check for contradictions

POST

/v1/preferences

Set a preference

GET

/v1/beliefs

List beliefs

POST

/v1/beliefs/observe

Update belief with evidence

POST

/v1/people

Resolve person identity

POST

/v1/memories/compress

Compress old conversation sessions

POST

/v1/relationships/extract

Extract relationships from text

GET

/v1/export

Export all data (JSON backup)

POST

/v1/import

Import data from backup

Examples

# Store a memory
curl -X POST http://localhost:3315/v1/memories \
  -H 'Content-Type: application/json' \
  -d '{"text": "I prefer dark mode", "channel": "cli"}'

# Search
curl -X POST http://localhost:3315/v1/memories/search \
  -H 'Content-Type: application/json' \
  -d '{"query": "preferences", "limit": 5}'

# Export all data (backup to iCloud, NAS, etc.)
curl http://localhost:3315/v1/export > ~/iCloud/cortex-backup.json

# Import from backup
curl -X POST http://localhost:3315/v1/import \
  -H 'Content-Type: application/json' \
  -d @~/iCloud/cortex-backup.json

Roadmap

  • v0.2 βœ… β€” Local embedding integration (all-MiniLM-L6-v2/ONNX), batch queries, importance-aware decay + auto-consolidation

  • v0.3 βœ… β€” Proactive inference (auto-extract facts), temporal awareness, contradiction detection, Chinese NLP

  • v0.4 βœ… β€” HTTP REST API (axum), import/export (JSON backup), Docker packaging

  • v0.5 βœ… β€” Conversation compression, relationship inference (EN + CN), temporal retrieval enhancement, 112 tests

  • v1.0 βœ… β€” Feature comparison table, benchmark update, 18-feature Cortex vs Mem0 vs OpenAI

  • v1.1 βœ… β€” HNSW vector index (50K search: 12ms β†’ 91Β΅s), Python SDK (pip install cortex-ai-memory)

  • v1.2 βœ… β€” Negation detection (EN + CN), multi-hop retrieval, 117 tests

  • v1.3 βœ… β€” Context quality optimization, query expansion, bidirectional relationships, 126 tests

  • v1.4 βœ… β€” Incremental HNSW, SQL-indexed entity queries, LLM summarizer hook, 18 MCP tools, configurable decay, LLM-assisted inference, 131 tests

  • v1.5 βœ… β€” Docker image (GHCR auto-publish), batch ingest, dedup, namespace isolation, plugin system, event bus, archival, 351 tests

  • v1.6 βœ… β€” Int8 quantization (75% storage reduction), materialized column indexes, FTS5 triggers, LRU caches (MemObject + entity-facts), rayon parallel decay, Arc embedding, generation-based cache invalidation, 25 MCP tools, batch inference, enhanced Chinese NLP

  • v1.7 βœ… β€” Cloud sync (changelog-based, HLC ordering, LWW merge), AES-256-GCM encryption (Argon2id KDF), privacy enforcement (Private/Shared/Public), zeroize (memory wiping), SECURITY.md, 27 MCP tools, 400+ tests

  • v2.0 βœ… β€” Background sync (filesystem watcher + polling), Web Dashboard, Homebrew tap, integration docs (CrewAI/AutoGen/LangGraph/DeerFlow), /v1/memories/recent API, 12 rounds Codex review fixes, 489 tests

  • v2.1 βœ… β€” WASM build (124KB, runs entirely in the browser, GitHub Pages demo)

  • v2.2 βœ… β€” Security hardening series (self-evolution iterations 11–17): manifest + per-operation HMAC, plaintext-injection rejection, timing-attack hardening, key rotation with forward secrecy (ENC2), bounded query budget, deny-by-default MCP capability policy, per-memory privacy opt-in with cross-device retraction, persistent sync (Keychain) + auto background sync, frecency ranking, one-shot device setup script, 30 MCP tools, 500+ tests

  • v2.3 β€” Mobile targets (iOS/Android), multi-modal memory


If you find Cortex useful, please consider giving it a star ⭐ β€” it helps others discover the project and motivates continued development!

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