Skip to main content
Glama

Sema: When the Hash Is the Word

Content-addressed semantics for multi-agent coordination.

PyPI MCP Registry Paper DOI Code: MIT Content: CC BY 4.0

Sema is a semantic commons that content-addresses meaning itself: the definition is the identifier. By deriving identifiers from the cryptographic hash of a pattern's definition, any divergence in meaning produces a distinct hash, guaranteeing that misaligned agents halt rather than fail silently.

Web: semahash.org · Discord: Join

Install

Add to any MCP client (Claude Code, Cursor, VS Code, Windsurf, Claude Desktop):

{
  "mcpServers": {
    "sema": {
      "command": "uvx",
      "args": ["--from", "semahash[mcp]", "sema", "mcp"]
    }
  }
}

Or via Claude Code CLI:

claude mcp add sema -- uvx --from "semahash[mcp]" sema mcp

This uses uv to download, install, and run sema in an isolated environment on first invocation, then caches it for subsequent calls.

Claude Code plugin (MCP server + skill)

Sema also ships as a Claude Code plugin — MCP server plus a skill that teaches the agent the search/resolve/mint/handshake workflow:

# One-time: add the Emergent Wisdom marketplace
claude plugin marketplace add emergent-wisdom/marketplace

# Install the plugin
claude plugin install sema

This gives you the MCP server and the sema-usage skill (auto-loaded), which teaches when to search vs mint, how to embed handles in text, and how to verify meaning at boundaries. The skill is a Claude Code convenience — the MCP server works with any client.

For local development:

claude --plugin-dir /path/to/sema

Permanent install (pip)

pip install "semahash[mcp]"

For CLI-only use (no MCP server):

pip install semahash

Quick Start

Use with AI Agents (MCP)

Already covered above via the JSON config or pip install path. For development against this repo:

git clone https://github.com/emergent-wisdom/sema.git
pip install -e "./sema[mcp]"

Your agent now has access to sema_search, sema_lookup, sema_handshake, and 9 more tools. Any MCP-compatible client works — Sema exposes a standard stdio server.

Verify it works — ask your agent: "Search sema for coordination patterns and handshake on StateLock"

Sema exposes a standard MCP stdio server — any MCP-compatible client works, including OpenClaw (openclaw mcp set sema '{"command":"uvx","args":["--from","semahash[mcp]","sema","mcp"]}').

Use via CLI

# Search the vocabulary
sema search "coordination"

# Look up a specific pattern
sema resolve StateLock

# Print a pattern's full definition
sema show StateLock

# Browse the graph structure
sema skeleton

# Start local API + web frontend (binds to 127.0.0.1 by default)
sema serve

Bring Your Own Vocabulary

Build a private registry from scratch — no PR or maintainer in the loop:

sema init ./mylib.db
export SEMA_DB_PATH=$(pwd)/mylib.db
sema apply --add path/to/MyPattern.json
sema search "..."

Subsequent sema commands (including sema mcp) read from your private registry. See CONTRIBUTING.md for the canonical contribution path and docs/specification/versioning.md for the refinement and supersession policy.

Use in Python

from sema.core.actions import sema_handshake
import json

# Look up the canonical hash
result = json.loads(sema_handshake("StateLock"))
print(result["canonical_stub"])  # b91b

# Verify alignment
result = json.loads(sema_handshake("StateLock#5602"))
print(result["verdict"])  # PROCEED

Try the Protocol (No API Keys Needed)

python experiments/demos/local_handshake.py

See the handshake in action: matching hashes PROCEED, mismatched hashes HALT, unknown patterns HALT. Takes 2 seconds.

How It Works

word = hash(canonical(definition))

Take any concept (a coordination protocol, a reasoning pattern, a trust mechanism), express it in canonical form, hash it. That hash IS the word. Change one byte in the definition, get a different word.

Agent A: "Let's use StateLock#5602"
Agent B: sema_handshake("StateLock#5602")
         -> PROCEED (hashes match) or HALT (drift detected)

This is the Anti-Postel principle: same bytes = PROCEED, different bytes = HALT. No ambiguity, no silent failures.

The Vocabulary

427 default patterns across 4 layers (additional patterns with a higher risk surface are kept in a separate DB — see Safety):

  • Physics — Immutable substrate (locks, entropy, causality)

  • Mind — Hybrid cognition (reasoning, inference, strategy)

  • Society — Multi-agent coordination (economics, governance, protocols)

  • Infrastructure — Operational constraints (data structures, verification)

Each pattern is an executable specification containing machine-verifiable contracts, invariants, failure modes, and typed dependencies.

MCP Tools

When running as an MCP server (sema mcp), these tools are available:

Tool

Description

sema_search

Search patterns by name, description, or meaning

sema_lookup

Get a pattern by its reference (e.g., StateLock#5602)

sema_resolve

Get a pattern with dependencies expanded

sema_handshake

Fail-closed semantic verification between agents

sema_mint

Create a new pattern (validate, hash, add to vocabulary)

sema_propose_context

Compute a context digest for a multi-agent definition set (drift detection)

sema_verify_context

Verify a context proposal from another agent

sema_tree

Browse vocabulary by layer and category

sema_validate

Validate a pattern JSON for correctness

sema_stats

Vocabulary statistics

sema_graph_skeleton

Ultra-minimal graph overview (~150 tokens)

sema_reset_session

Clear session cache so searches return full results again

Web Frontend

pip install "semahash[api]"
sema serve
# Open http://localhost:3000

Interactive 3D graph visualization, pattern browser, and search. Built with React + Three.js.

Experiments

The experiments/ directory contains a controlled multi-agent design challenge comparing three conditions:

Condition

Sema

Turns

Outcome

A: Natural language only

No

4

Design rejected

B: Sema vocabulary

Yes

11

SAD Engine approved

C: Sema + protocol

Yes

25

SAD Engine with exhaustive vetting

Agents with Sema patterns produced physics-grounded designs that survived adversarial scrutiny. Agents without Sema produced shallow designs that failed safety review.

To reproduce:

cd experiments/sema_design_challenge
export GOOGLE_API_KEY=your_key
./reproduce.sh

See experiments/sema_design_challenge/README.md for details.

Key Properties

  • Zero semantic collisions across the full vocabulary

  • 16.9x average token compression via content-addressed stubs

  • Fail-closed architecture — mismatches halt, never fail silently

  • Mean embedding similarity of 0.21 — high structural distinctness

Using with understanding-graph

Sema gives your agents shared semantic memory — a vocabulary of cognitive patterns with content-addressed identity. Understanding Graph gives them shared episodic memory — the actual thinking trail behind a decision. They compose:

claude mcp add sema -- uvx --from "semahash[mcp]" sema mcp
claude mcp add ug   -- npx -y understanding-graph mcp

With both installed, an agent can:

  1. Anchor an understanding-graph decision node in a sema pattern hash (e.g. StateLock#5602) so the meaning of the primitive can never drift.

  2. Use graph_semantic_search to find all past graph nodes that reference a given sema pattern — hash-stable history, not keyword matching.

  3. Call sema_handshake before writing a decision that depends on a shared concept; if it returns HALT, the agent writes a tension node instead and stops, preventing silent divergence.

Full walkthrough: docs/guides/understanding-graph.md

Repository Structure

sema/
├── src/sema/              Core library (hashing, validation, MCP server, API)
├── data/                  Vocabulary (427 default + 26 higher-risk pattern cards + taxonomy databases)
├── docs/                  Documentation (philosophy, schema spec, CLI reference)
├── paper/                 Academic paper (sema.tex)
├── web/                   Web frontend (React + Three.js graph visualization)
├── experiments/
│   ├── orchestrator/      Multi-agent engine (bundled for experiment reproduction)
│   ├── sema_design_challenge/  Main experiment (3 conditions, 5 runs, full traces)
│   └── demos/             Standalone demos (local handshake, Babel Test)
└── pyproject.toml         Package config (extras: [mcp], [api], [full])

Contributing

Want to add patterns, improve existing ones, or host the frontend locally? See CONTRIBUTING.md.

Citing

@misc{westerberg2026sema,
  title        = {Sema: When the Hash Is the Word},
  author       = {Westerberg, Henrik},
  year         = {2026},
  month        = apr,
  publisher    = {Zenodo},
  doi          = {10.5281/zenodo.19548971},
  url          = {https://doi.org/10.5281/zenodo.19548971}
}

See CITATION.cff for the machine-readable version (GitHub renders a "Cite this repository" button from it).

Safety

Sema ships no executable code — it's a library of pattern definitions (handles, mechanisms, invariants, dependency graphs). The MCP server hands patterns to clients as data; it does not execute the behaviors they describe.

Intended use: reasoning and reference. Patterns are thinking tools — named concepts agents can search, resolve, and handshake on to reason about coordination, risk, and procedure. See docs/manuals/vocabulary-design.md for the intent behind each pattern and the design choices.

Running patterns as executable recipes is untested. Many patterns describe procedures an agent could step through. That path is still a research phase — the mechanism text has not been validated end-to-end, and we make no claims about safety when a pattern is executed rather than referenced. If you go this route, run the agent's execution step in a sandboxed environment. Patterns with known risks carry a caution field in their metadata; absence of that flag means the pattern has not been classified as risky, not that it has been certified safe.

The long-term goal is cryptographically enforced safety constraints on agent-to-agent communication — an active research direction.

License

Sema is dual-licensed:

  • Code (everything in src/, web/, experiments/, scripts/, and the package config) — MIT. Self-host it, fork it, build commercial products on top of it.

  • Content (the pattern vocabulary in data/, the documentation in docs/, the academic paper in paper/, and the prose displayed on semahash.org) — CC BY 4.0. Reuse the patterns and prose anywhere, for any purpose including commercial, as long as you attribute Henrik Westerberg.

For academic citation, see CITATION.cff. GitHub renders this as a "Cite this repository" button on the project page that generates APA and BibTeX automatically.

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

Maintenance

Maintainers
Response time
0dRelease cycle
12Releases (12mo)

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/emergent-wisdom/sema'

If you have feedback or need assistance with the MCP directory API, please join our Discord server