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AI agents forget everything between sessions. Robots lose context between missions. They repeat mistakes, miss patterns, and treat every interaction like the first one.

Shodh-Memory fixes this. It's persistent memory that actually learns — memories you use often become easier to find, old irrelevant context fades automatically, and recalling one thing brings back related things. Works for chat agents (MCP/HTTP), robots (Zenoh/ROS2), and edge devices. No API keys. No cloud. No external databases. No LLM in the loop. One binary.

Why Not Just Use mem0 / Cognee / Zep?

Shodh

mem0

Cognee

Zep

LLM calls to store a memory

0

2+ per add

3+ per cognify

2+ per episode

External services needed

None

OpenAI + vector DB

OpenAI + Neo4j + vector DB

OpenAI + Neo4j

Time to store a memory

55ms

~20 seconds

seconds

seconds

Learns from usage

Yes (Hebbian)

No

No

No

Forgets irrelevant data

Yes (decay)

No

No

Temporal only

Runs fully offline

Yes

No

No

No

Robotics / ROS2 native

Yes (Zenoh)

No

No

No

Binary size

~17MB

pip install + API keys

pip install + API keys + Neo4j

Cloud only

Every other memory system delegates intelligence to LLM API calls — that's why they're slow, expensive, and can't work offline.

Related MCP server: aimemory

No LLM in the Loop

Storing a memory makes zero LLM calls. Recalling makes zero LLM calls. Entity extraction, relation typing, knowledge-graph construction, causal tracing, ranking, decay, consolidation — all of it runs locally as algorithms, not API round-trips:

  • Local embeddings — MiniLM (22MB, INT8) via ONNX Runtime, on-device semantic search

  • Local NER — GLiNER bi-edge-v2 span typer (ONNX, schema-driven: 141 fine / 18 coarse entity types), auto-downloaded on first run from the pinned release, with a rule-based fallback

  • Typed relation extraction without an LLM — directed lexical cues + exemplar-matched semantic typing build a typed knowledge graph (LocatedIn, WorksAt, Causes…) from plain text

  • Causal lineage — "what was the root cause of X?" is answered by walking typed causal edges backward through the graph, not by asking a model

  • Mathematical memory dynamics — Hebbian strengthening, exponential→power-law decay, spreading activation, long-term potentiation

What that buys you: fully offline operation, millisecond latency instead of multi-second API calls, zero inference cost at any scale, deterministic, testable behavior, and data that never leaves the machine. Your agent's LLM does the reasoning — its memory doesn't need one.

Get Started

Unified CLI

# Download from GitHub Releases (or brew tap varun29ankuS/shodh-memory && brew install shodh-memory)
shodh init          # First-time setup — creates config, generates API key, downloads AI model
shodh server        # Start the memory server on :3030
shodh setup-hooks   # Print instructions to set up Claude Code hooks
shodh tui           # Launch the TUI dashboard
shodh status        # Check server health
shodh doctor        # Diagnose issues

One binary, all functionality. No Docker, no API keys, no external dependencies.

Claude Code

# 1. Add the MCP server (auto-downloads the backend binary)
claude mcp add shodh-memory -- npx -y @shodh/memory-mcp

# 2. Enable automatic memory capture (optional but recommended)
npx @shodh/memory-mcp setup-hooks

Step 1 gives Claude persistent memory tools. Step 2 installs Claude Code hooks that automatically capture context from every session — memories surface without you having to ask.

# 1. Start the server
docker run -d -p 3030:3030 -v shodh-data:/data varunshodh/shodh-memory

# 2. Add to Claude Code
claude mcp add shodh-memory -- npx -y @shodh/memory-mcp

For Linux users who want the Rust HTTP server supervised separately from MCP clients, see Direct server mode with systemd.

{
  "mcpServers": {
    "shodh-memory": {
      "command": "npx",
      "args": ["-y", "@shodh/memory-mcp"]
    }
  }
}

For local use, no API key is needed — one is generated automatically. For remote servers, add "env": { "SHODH_API_KEY": "your-key" }.

Python

pip install shodh-memory
from shodh_memory import Memory

memory = Memory(storage_path="./my_data")
memory.remember("User prefers dark mode", memory_type="Decision")
results = memory.recall("user preferences", limit=5)

Rust

[dependencies]
shodh-memory = "0.1"
use shodh_memory::{MemorySystem, MemoryConfig};

let memory = MemorySystem::new(MemoryConfig::default())?;
memory.remember("user-1", "User prefers dark mode", MemoryType::Decision, vec![])?;
let results = memory.recall("user-1", "user preferences", 5)?;

Docker

docker run -d -p 3030:3030 -v shodh-data:/data varunshodh/shodh-memory

What It Does

You use a memory often  →  it becomes easier to find (Hebbian learning)
You stop using a memory →  it fades over time (activation decay)
You recall one memory   →  related memories surface too (spreading activation)
A connection is used    →  it becomes permanent (long-term potentiation)

Under the hood, memories flow through three tiers:

Working Memory ──overflow──▶ Session Memory ──importance──▶ Long-Term Memory
   (100 items)                  (100 MB)                      (RocksDB)

This is based on Cowan's working memory model and Wixted's memory decay research. The neuroscience isn't a gimmick — it's why the system gets better with use instead of just accumulating data.

Performance

Operation

Latency

Store memory (API response)

<200ms

Store memory (core)

55-60ms

Semantic search

34-58ms

Tag search

~1ms

Entity lookup

763ns

Graph traversal (3-hop)

30µs

Single binary. No GPU required. Content-hash dedup ensures identical memories are never stored twice.

51 MCP Tools

Full list of tools available to Claude, Cursor, and other MCP clients:

remember · recall · recall_by_tags · proactive_context · context_summary · list_memories · read_memory · forget

quick_recall · query · topic · what_i_know · recent_memories · pending_work · count · memory_health · session_summary

session_digest · session_history · fact_narratives · purge_facts

add_todo · list_todos · update_todo · complete_todo · delete_todo · reorder_todo · list_subtasks · add_todo_comment · list_todo_comments · update_todo_comment · delete_todo_comment · todo_stats

add_project · list_projects · archive_project · delete_project

set_reminder · list_reminders · dismiss_reminder

memory_stats · verify_index · repair_index · token_status · reset_token_session · consolidation_report · backup_create · backup_list · backup_verify · backup_restore · backup_purge

REST API

160+ endpoints on http://localhost:3030. All /api/* endpoints require X-API-Key header.

Full API reference →

# Store a memory
curl -X POST http://localhost:3030/api/remember \
  -H "Content-Type: application/json" \
  -H "X-API-Key: your-key" \
  -d '{"user_id": "user-1", "content": "User prefers dark mode", "memory_type": "Decision"}'

# Search memories
curl -X POST http://localhost:3030/api/recall \
  -H "Content-Type: application/json" \
  -H "X-API-Key: your-key" \
  -d '{"user_id": "user-1", "query": "user preferences", "limit": 5}'

Robotics & ROS2

Shodh-Memory isn't just for chat agents. It's persistent memory for robots — Spot, drones, humanoids, any system running ROS2 or Zenoh. No cloud, survives power cycles, learns from rewards, speaks Zenoh natively.

# Enable Zenoh transport (compile with --features zenoh)
SHODH_ZENOH_ENABLED=true SHODH_ZENOH_LISTEN=tcp/0.0.0.0:7447 shodh server

# ROS2 robots connect via zenoh-bridge-ros2dds or rmw_zenoh — zero code changes
ros2 run zenoh_bridge_ros2dds zenoh_bridge_ros2dds

See Robotics Quickstart for full setup and examples.

What robots can do over Zenoh:

Operation

Key Expression

Description

Remember

shodh/{user_id}/remember

Store with GPS, local position, heading, sensor data, mission context

Recall

shodh/{user_id}/recall

Spatial search (haversine), mission replay, action-outcome filtering

Stream

shodh/{user_id}/stream/sensor

Auto-remember high-frequency sensor data via extraction pipeline

Mission

shodh/{user_id}/mission/start

Track mission boundaries, searchable across missions

Fleet

shodh/fleet/**

Automatic peer discovery via Zenoh liveliness tokens

Each robot uses its own user_id as the key segment (e.g., shodh/spot-1/remember). The robot_id is an optional payload field for fleet grouping.

Every Experience carries 26 robotics-specific fields: geo_location, local_position, heading, sensor_data, robot_id, mission_id, action_type, reward, terrain_type, nearby_agents, decision_context, action_params, outcome_type, confidence, failure/anomaly tracking, recovery actions, and prediction learning.

{
  "user_id": "spot-1",
  "content": "Detected crack in concrete at waypoint alpha",
  "robot_id": "spot_v2",
  "mission_id": "building_inspection_2026",
  "geo_location": [37.7749, -122.4194, 10.0],
  "local_position": [12.5, 3.2, 0.0],
  "heading": 90.0,
  "sensor_data": {"battery": 72.5, "temperature": 28.3},
  "action_type": "inspect",
  "reward": 0.9,
  "terrain_type": "indoor",
  "tags": ["crack", "concrete", "structural"]
}
{
  "user_id": "spot-1",
  "query": "structural damage near entrance",
  "mode": "spatial",
  "lat": 37.7749,
  "lon": -122.4194,
  "radius_meters": 50.0,
  "mission_id": "building_inspection_2026"
}
SHODH_ZENOH_ENABLED=true                # Enable Zenoh transport
SHODH_ZENOH_MODE=peer                   # peer | client | router
SHODH_ZENOH_LISTEN=tcp/0.0.0.0:7447    # Listen endpoints
SHODH_ZENOH_CONNECT=tcp/1.2.3.4:7447   # Connect endpoints
SHODH_ZENOH_PREFIX=shodh               # Key expression prefix

# Auto-subscribe to ROS2 topics (via zenoh-bridge-ros2dds)
SHODH_ZENOH_AUTO_TOPICS='[
  {"key_expr": "rt/spot1/status", "user_id": "spot-1", "mode": "sensor"},
  {"key_expr": "rt/nav/events", "user_id": "spot-1", "mode": "event"}
]'

Works with ROS2 Kilted (rmw_zenoh), PX4 drones, Boston Dynamics Spot, humanoids — anything that speaks Zenoh or ROS2 DDS.

Platform Support

Linux x86_64 · Linux ARM64 · macOS Apple Silicon · macOS Intel · Windows x86_64

Production Deployment

SHODH_ENV=production              # Production mode
SHODH_API_KEYS=key1,key2,key3     # Comma-separated API keys
SHODH_HOST=127.0.0.1              # Bind address (default: localhost)
SHODH_PORT=3030                   # Port (default: 3030)
SHODH_MEMORY_PATH=/var/lib/shodh  # Data directory
# SHODH_IPC_ENABLED=false         # Local IPC is enabled by default; false disables it
# SHODH_IPC_ENDPOINT=/private/path/shodh-memory.sock  # Optional platform-specific override
# SHODH_IPC_REQUIRED=true         # Fail closed instead of falling back to HTTP
SHODH_REQUEST_TIMEOUT=60          # Request timeout in seconds
SHODH_MAX_CONCURRENT=200          # Max concurrent requests
SHODH_ROCKSDB_BLOCK_CACHE_MB=256  # Shared RocksDB block cache (MiB)
SHODH_CORS_ORIGINS=https://app.example.com

The server enables authenticated local IPC by default and keeps HTTP available. Native shodh serve prefers the platform-default IPC endpoint and falls back to SHODH_API_URL unless fail-closed mode is enabled; the TypeScript MCP client uses IPC only when SHODH_IPC_ENDPOINT is set. See the local IPC architecture for platform defaults, security properties, and limitations.

services:
  shodh-memory:
    image: varunshodh/shodh-memory:latest
    environment:
      - SHODH_ENV=production
      - SHODH_HOST=0.0.0.0
      - SHODH_API_KEYS=${SHODH_API_KEYS}
    volumes:
      - shodh-data:/data
    networks:
      - internal

  caddy:
    image: caddy:latest
    ports:
      - "443:443"
    volumes:
      - ./Caddyfile:/etc/caddy/Caddyfile
    networks:
      - internal

volumes:
  shodh-data:

networks:
  internal:

The server binds to 127.0.0.1 by default. For network deployments, place behind a reverse proxy:

memory.example.com {
    reverse_proxy localhost:3030
}

Community

Project

Description

Author

SHODH on Cloudflare

Edge-native implementation on Cloudflare Workers

@doobidoo

References

[1] Cowan, N. (2010). The Magical Mystery Four. Current Directions in Psychological Science. [2] Magee & Grienberger (2020). Synaptic Plasticity Forms and Functions. Annual Review of Neuroscience. [3] Subramanya et al. (2019). DiskANN. NeurIPS 2019.

License

Apache 2.0


Keywords: LLM-free memory · no LLM in the loop · local-first AI memory · offline agent memory · persistent memory for AI agents · long-term memory for LLM agents · MCP memory server · Claude Code memory · knowledge graph memory · hybrid vector + graph search · causal lineage · Hebbian learning · memory decay · edge AI memory · robotics memory · ROS2 / Zenoh robot memory · air-gapped RAG alternative

A
license - permissive license
-
quality - not tested
A
maintenance

Maintenance

Maintainers
3hResponse time
2wRelease cycle
17Releases (12mo)
Commit activity
Issues opened vs closed

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