Mnemex
Allows storing long-term memories as Markdown files in an Obsidian vault.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@Mnemexremember I like coffee with no sugar"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Mnemex: Temporal Memory for AI
A Model Context Protocol (MCP) server providing human-like memory dynamics for AI assistants. Memories naturally fade over time unless reinforced through use, mimicking the Ebbinghaus forgetting curve.
π§ ACTIVE DEVELOPMENT - EXPECT BUGS π§
This project is under active development and should be considered experimental. You will likely encounter bugs, breaking changes, and incomplete features. Use at your own risk. Please report issues on GitHub, but understand that this is research code, not production-ready software.
Known issues:
API may change without notice between versions
Test coverage is incomplete
π New to this project? Start with the ELI5 Guide for a simple explanation of what this does and how to use it.
What is Mnemex?
Mnemex gives AI assistants like Claude a human-like memory system.
The Problem
When you chat with Claude, it forgets everything between conversations. You tell it "I prefer TypeScript" or "I'm allergic to peanuts," and three days later, you have to repeat yourself. This is frustrating and wastes time.
What Mnemex Does
Mnemex makes AI assistants remember things naturally, just like human memory:
π§ Remembers what matters - Your preferences, decisions, and important facts
β° Forgets naturally - Old, unused information fades away over time (like the Ebbinghaus forgetting curve)
πͺ Gets stronger with use - The more you reference something, the longer it's remembered
π¦ Saves important things permanently - Frequently used memories get promoted to long-term storage
How It Works (Simple Version)
You talk naturally - "I prefer dark mode in all my apps"
Memory is saved automatically - No special commands needed
Time passes - Memory gradually fades if not used
You reference it again - "Make this app dark mode"
Memory gets stronger - Now it lasts even longer
Important memories promoted - Used 5+ times? Saved permanently to your Obsidian vault
No flashcards. No explicit review. Just natural conversation.
Why It's Different
Most memory systems are dumb:
β "Delete after 7 days" (doesn't care if you used it 100 times)
β "Keep last 100 items" (throws away important stuff just because it's old)
Mnemex is smart:
β Combines recency (when?), frequency (how often?), and importance (how critical?)
β Memories fade naturally like human memory
β Frequently used memories stick around longer
β You can mark critical things to "never forget"
Technical Overview
This repository contains research, design, and a complete implementation of a short-term memory system that combines:
Novel temporal decay algorithm based on cognitive science
Reinforcement learning through usage patterns
Two-layer architecture (STM + LTM) for working and permanent memory
Smart prompting patterns for natural LLM integration
Git-friendly storage with human-readable JSONL
Knowledge graph with entities and relations
Why Mnemex?
π Privacy & Transparency
All data stored locally on your machine - no cloud services, no tracking, no data sharing.
Short-term memory: Human-readable JSONL files (
~/.config/mnemex/jsonl/)One JSON object per line
Easy to inspect, version control, and backup
Git-friendly format for tracking changes
Long-term memory: Markdown files optimized for Obsidian
YAML frontmatter with metadata
Wikilinks for connections
Permanent storage you control
You own your data. You can read it, edit it, delete it, or version control it - all without any special tools.
Core Algorithm
The temporal decay scoring function:
$$ \Large \text{score}(t) = (n_{\text{use}})^\beta \cdot e^{-\lambda \cdot \Delta t} \cdot s $$
Where:
$\large n_{\text{use}}$ - Use count (number of accesses)
$\large \beta$ (beta) - Sub-linear use count weighting (default: 0.6)
$\large \lambda = \frac{\ln(2)}{t_{1/2}}$ (lambda) - Decay constant; set via half-life (default: 3-day)
$\large \Delta t$ - Time since last access (seconds)
$\large s$ - Strength parameter $\in [0, 2]$ (importance multiplier)
Thresholds:
$\large \tau_{\text{forget}}$ (default 0.05) β if score < this, forget
$\large \tau_{\text{promote}}$ (default 0.65) β if score β₯ this, promote (or if $\large n_{\text{use}}\ge5$ in 14 days)
Decay Models:
PowerβLaw (default): heavier tail; most humanβlike retention
Exponential: lighter tail; forgets sooner
TwoβComponent: fast early forgetting + heavier tail
See detailed parameter reference, model selection, and worked examples in docs/scoring_algorithm.md.
Tuning Cheat Sheet
Balanced (default)
Half-life: 3 days (Ξ» β 2.67e-6)
Ξ² = 0.6, Ο_forget = 0.05, Ο_promote = 0.65, use_countβ₯5 in 14d
Strength: 1.0 (bump to 1.3β2.0 for critical)
Highβvelocity context (ephemeral notes, rapid switching)
Half-life: 12β24 hours (Ξ» β 1.60e-5 to 8.02e-6)
Ξ² = 0.8β0.9, Ο_forget = 0.10β0.15, Ο_promote = 0.70β0.75
Long retention (research/archival)
Half-life: 7β14 days (Ξ» β 1.15e-6 to 5.73e-7)
Ξ² = 0.3β0.5, Ο_forget = 0.02β0.05, Ο_promote = 0.50β0.60
Preference/decision heavy assistants
Half-life: 3β7 days; Ξ² = 0.6β0.8
Strength defaults: 1.3β1.5 for preferences; 1.8β2.0 for decisions
Aggressive space control
Raise Ο_forget to 0.08β0.12 and/or shorten half-life; schedule weekly GC
Environment template
MNEMEX_DECAY_LAMBDA=2.673e-6, MNEMEX_DECAY_BETA=0.6
MNEMEX_FORGET_THRESHOLD=0.05, MNEMEX_PROMOTE_THRESHOLD=0.65
MNEMEX_PROMOTE_USE_COUNT=5, MNEMEX_PROMOTE_TIME_WINDOW=14
Decision thresholds:
Forget: $\text{score} < 0.05$ β delete memory
Promote: $\text{score} \geq 0.65$ OR $n_{\text{use}} \geq 5$ within 14 days β move to LTM
Key Innovations
1. Temporal Decay with Reinforcement
Unlike traditional caching (TTL, LRU), Mnemex scores memories continuously by combining recency (exponential decay), frequency (sub-linear use count), and importance (adjustable strength). See Core Algorithm for the mathematical formula. This creates memory dynamics that closely mimic human cognition.
2. Smart Prompting System
Patterns for making AI assistants use memory naturally:
Auto-Save
User: "I prefer TypeScript over JavaScript"
β Automatically saved with tags: [preferences, typescript, programming]Auto-Recall
User: "Can you help with another TypeScript project?"
β Automatically retrieves preferences and conventionsAuto-Reinforce
User: "Yes, still using TypeScript"
β Memory strength increased, decay slowedNo explicit memory commands needed - just natural conversation.
3. Natural Spaced Repetition
Inspired by how concepts naturally reinforce across different contexts (the "Maslow effect" - remembering Maslow's hierarchy better when it appears in history, economics, and sociology classes).
No flashcards. No explicit review sessions. Just natural conversation.
How it works:
Review Priority Calculation - Memories in the "danger zone" (0.15-0.35 decay score) get highest priority
Cross-Domain Detection - Detects when memories are used in different contexts (tag Jaccard similarity <30%)
Automatic Reinforcement - Memories strengthen naturally when used, especially across domains
Blended Search - Review candidates appear in 30% of search results (configurable)
Usage pattern:
User: "Can you help with authentication in my API?"
β System searches, retrieves JWT preference memory
β System uses memory to answer question
β System calls observe_memory_usage with context tags [api, auth, backend]
β Cross-domain usage detected (original tags: [security, jwt, preferences])
β Memory automatically reinforced, strength boosted
β Next search naturally surfaces memories needing reviewConfiguration:
MNEMEX_REVIEW_BLEND_RATIO=0.3 # 30% review candidates in search
MNEMEX_REVIEW_DANGER_ZONE_MIN=0.15 # Lower bound of danger zone
MNEMEX_REVIEW_DANGER_ZONE_MAX=0.35 # Upper bound of danger zone
MNEMEX_AUTO_REINFORCE=true # Auto-reinforce on observeSee docs/prompts/ for LLM system prompt templates that enable natural memory usage.
4. Two-Layer Architecture
βββββββββββββββββββββββββββββββββββββββ
β Short-term memory β
β - JSONL storage β
β - Temporal decay β
β - Hours to weeks retention β
ββββββββββββββββ¬βββββββββββββββββββββββ
β Automatic promotion
β
βββββββββββββββββββββββββββββββββββββββ
β LTM (Long-Term Memory) β
β - Markdown files (Obsidian) β
β - Permanent storage β
β - Git version control β
βββββββββββββββββββββββββββββββββββββββQuick Start
Installation
Recommended: UV Tool Install (from PyPI)
# Install from PyPI (recommended - fast, isolated, includes all 7 CLI commands)
uv tool install mnemexThis installs mnemex and all 7 CLI commands in an isolated environment.
Alternative Installation Methods
# Using pipx (similar isolation to uv)
pipx install mnemex
# Using pip (traditional, installs in current environment)
pip install mnemex
# From GitHub (latest development version)
uv tool install git+https://github.com/simplemindedbot/mnemex.gitFor Development (Editable Install)
# Clone and install in editable mode
git clone https://github.com/simplemindedbot/mnemex.git
cd mnemex
uv pip install -e ".[dev]"Configuration
Copy .env.example to .env and configure:
# Storage
MNEMEX_STORAGE_PATH=~/.config/mnemex/jsonl
# Decay model (power_law | exponential | two_component)
MNEMEX_DECAY_MODEL=power_law
# Power-law parameters (default model)
MNEMEX_PL_ALPHA=1.1
MNEMEX_PL_HALFLIFE_DAYS=3.0
# Exponential (if selected)
# MNEMEX_DECAY_LAMBDA=2.673e-6 # 3-day half-life
# Two-component (if selected)
# MNEMEX_TC_LAMBDA_FAST=1.603e-5 # ~12h
# MNEMEX_TC_LAMBDA_SLOW=1.147e-6 # ~7d
# MNEMEX_TC_WEIGHT_FAST=0.7
# Common parameters
MNEMEX_DECAY_LAMBDA=2.673e-6
MNEMEX_DECAY_BETA=0.6
# Thresholds
MNEMEX_FORGET_THRESHOLD=0.05
MNEMEX_PROMOTE_THRESHOLD=0.65
# Long-term memory (optional)
LTM_VAULT_PATH=~/Documents/Obsidian/VaultMCP Configuration
Add to your Claude Desktop config (~/Library/Application Support/Claude/claude_desktop_config.json):
{
"mcpServers": {
"mnemex": {
"command": "mnemex"
}
}
}That's it! No paths, no environment variables needed.
For development (editable install):
{
"mcpServers": {
"mnemex": {
"command": "uv",
"args": ["--directory", "/path/to/mnemex", "run", "mnemex"],
"env": {"PYTHONPATH": "/path/to/mnemex/src"}
}
}
}Configuration:
Storage paths are configured in
~/.config/mnemex/.envor project.envSee
.env.examplefor all available settings
Troubleshooting: Command Not Found
If Claude Desktop shows spawn mnemex ENOENT errors, the mnemex command isn't in Claude Desktop's PATH.
macOS/Linux: GUI apps don't inherit shell PATH
GUI applications on macOS and Linux don't see your shell's PATH configuration (.zshrc, .bashrc, etc.). Claude Desktop only searches:
/usr/local/bin/opt/homebrew/bin(macOS)/usr/bin/bin/usr/sbin/sbin
If uv tool install placed mnemex in ~/.local/bin/ or another custom location, Claude Desktop can't find it.
Solution: Use absolute path
# Find where mnemex is installed
which mnemex
# Example output: /Users/username/.local/bin/mnemexUpdate your Claude config with the absolute path:
{
"mcpServers": {
"mnemex": {
"command": "/Users/username/.local/bin/mnemex"
}
}
}Replace /Users/username/.local/bin/mnemex with your actual path from which mnemex.
Alternative: System-wide install
You can also install to a system location that Claude Desktop searches:
# Option 1: Link to /usr/local/bin
sudo ln -s ~/.local/bin/mnemex /usr/local/bin/mnemex
# Option 2: Install with pipx/uv to system location (requires admin)
sudo uv tool install git+https://github.com/simplemindedbot/mnemex.gitMaintenance
Use the maintenance CLI to inspect and compact JSONL storage:
# Show storage stats (active counts, file sizes, compaction hints)
mnemex-maintenance stats
# Compact JSONL (rewrite without tombstones/duplicates)
mnemex-maintenance compactMigrating to UV Tool Install
If you're currently using an editable install (uv pip install -e .), you can switch to the simpler UV tool install:
# 1. Uninstall editable version
uv pip uninstall mnemex
# 2. Install as UV tool
uv tool install git+https://github.com/simplemindedbot/mnemex.git
# 3. Update Claude Desktop config to just:
# {"command": "mnemex"}
# Remove the --directory, run, and PYTHONPATH settingsYour data is safe! This only changes how the command is installed. Your memories in ~/.config/mnemex/ are untouched.
Migrating from STM Server
If you previously used this project as "STM Server", use the migration tool:
# Preview what will be migrated
mnemex-migrate --dry-run
# Migrate data files from ~/.stm/ to ~/.config/mnemex/
mnemex-migrate --data-only
# Also migrate .env file (rename STM_* variables to MNEMEX_*)
mnemex-migrate --migrate-env --env-path ./.envThe migration tool will:
Copy JSONL files from
~/.stm/jsonl/to~/.config/mnemex/jsonl/Optionally rename environment variables (STM_* β MNEMEX_*)
Create backups before making changes
Provide clear next-step instructions
After migration, update your Claude Desktop config to use mnemex instead of stm.
CLI Commands
The server includes 7 command-line tools:
mnemex # Run MCP server
mnemex-migrate # Migrate from old STM setup
mnemex-index-ltm # Index Obsidian vault
mnemex-backup # Git backup operations
mnemex-vault # Vault markdown operations
mnemex-search # Unified STM+LTM search
mnemex-maintenance # JSONL storage stats and compactionMCP Tools
11 tools for AI assistants to manage memories:
Tool | Purpose |
| Save new memory with tags, entities |
| Search with filters and scoring (includes review candidates) |
| Unified search across STM + LTM |
| Reinforce memory (boost strength) |
| Record memory usage for natural spaced repetition |
| Garbage collect low-scoring memories |
| Move to long-term storage |
| Find similar memories |
| Merge similar memories (algorithmic) |
| Get entire knowledge graph |
| Retrieve specific memories |
| Link memories explicitly |
Example: Unified Search
Search across STM and LTM with the CLI:
mnemex-search "typescript preferences" --tags preferences --limit 5 --verboseExample: Reinforce (Touch) Memory
Boost a memory's recency/use count to slow decay:
{
"memory_id": "mem-123",
"boost_strength": true
}Sample response:
{
"success": true,
"memory_id": "mem-123",
"old_score": 0.41,
"new_score": 0.78,
"use_count": 5,
"strength": 1.1
}Example: Promote Memory
Suggest and promote high-value memories to the Obsidian vault.
Auto-detect (dry run):
{
"auto_detect": true,
"dry_run": true
}Promote a specific memory:
{
"memory_id": "mem-123",
"dry_run": false,
"target": "obsidian"
}As an MCP tool (request body):
{
"query": "typescript preferences",
"tags": ["preferences"],
"limit": 5,
"verbose": true
}Example: Consolidate Similar Memories
Find and merge duplicate or highly similar memories to reduce clutter:
Auto-detect candidates (preview):
{
"auto_detect": true,
"mode": "preview",
"cohesion_threshold": 0.75
}Apply consolidation to detected clusters:
{
"auto_detect": true,
"mode": "apply",
"cohesion_threshold": 0.80
}The tool will:
Merge content intelligently (preserving unique information)
Combine tags and entities (union)
Calculate strength based on cluster cohesion
Preserve earliest
created_atand latestlast_usedtimestampsCreate tracking relations showing consolidation history
Mathematical Details
Decay Curves
For a memory with $n_{\text{use}}=1$, $s=1.0$, and $\lambda = 2.673 \times 10^{-6}$ (3-day half-life):
Time | Score | Status |
0 hours | 1.000 | Fresh |
12 hours | 0.917 | Active |
1 day | 0.841 | Active |
3 days | 0.500 | Half-life |
7 days | 0.210 | Decaying |
14 days | 0.044 | Near forget |
30 days | 0.001 | Forgotten |
Use Count Impact
With $\beta = 0.6$ (sub-linear weighting):
Use Count | Boost Factor |
1 | 1.0Γ |
5 | 2.6Γ |
10 | 4.0Γ |
50 | 11.4Γ |
Frequent access significantly extends retention.
Documentation
Scoring Algorithm - Complete mathematical model with LaTeX formulas
Smart Prompting - Patterns for natural LLM integration
Architecture - System design and implementation
API Reference - MCP tool documentation
Bear Integration - Guide to using Bear app as an LTM store
Graph Features - Knowledge graph usage
Use Cases
Personal Assistant (Balanced)
3-day half-life
Remember preferences and decisions
Auto-promote frequently referenced information
Development Environment (Aggressive)
1-day half-life
Fast context switching
Aggressive forgetting of old context
Research / Archival (Conservative)
14-day half-life
Long retention
Comprehensive knowledge preservation
License
MIT License - See LICENSE for details.
Clean-room implementation. No AGPL dependencies.
Knowledge & Memory
mem0ai/mem0-mcp (Python) - A MCP server that provides a smart memory for AI to manage and reference past conversations, user preferences, and key details.
mnemex (Python) - A Python-based MCP server that provides a human-like short-term working memory (JSONL) and long-term memory (Markdown) system for AI assistants. The core of the project is a temporal decay algorithm that causes memories to fade over time unless they are reinforced through use.
modelcontextprotocol/server-memory (TypeScript) - A knowledge graph-based persistent memory system for AI.
Related Work
Model Context Protocol - MCP specification
Ebbinghaus Forgetting Curve - Cognitive science foundation
Research inspired by: Memoripy, Titan MCP, MemoryBank
Citation
If you use this work in research, please cite:
@software{mnemex_2025,
title = {Mnemex: Temporal Memory for AI},
author = {simplemindedbot},
year = {2025},
url = {https://github.com/simplemindedbot/mnemex},
version = {0.5.3}
}Contributing
Contributions are welcome! See CONTRIBUTING.md for detailed instructions.
π¨ Help Needed: Windows & Linux Testers!
I develop on macOS and need help testing on Windows and Linux. If you have access to these platforms, please:
Try the installation instructions
Run the test suite
Report what works and what doesn't
See the Help Needed section in CONTRIBUTING.md for details.
General Contributions
For all contributors, see CONTRIBUTING.md for:
Platform-specific setup (Windows, Linux, macOS)
Development workflow
Testing guidelines
Code style requirements
Pull request process
Quick start:
Read CONTRIBUTING.md for platform-specific setup
Understand the Architecture docs
Review the Scoring Algorithm
Follow existing code patterns
Add tests for new features
Update documentation
Status
Version: 1.0.0 Status: Research implementation - functional but evolving
Phase 1 (Complete) β
10 MCP tools
Temporal decay algorithm
Knowledge graph
Phase 2 (Complete) β
JSONL storage
LTM index
Git integration
Smart prompting documentation
Maintenance CLI
Memory consolidation (algorithmic merging)
Future Work
Spaced repetition optimization
Adaptive decay parameters
Performance benchmarks
LLM-assisted consolidation (optional enhancement)
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