agentmako
Local-first codebase intelligence engine providing AI coding agents with a typed MCP toolset for understanding and navigating code repositories.
README
<p align="center"> <img src="apps/web/public/agentmako.png" alt="agentmako logo" width="180" /> </p>
agentmako
agentmako is a local-first codebase intelligence engine for AI coding tools.
It gives agents like Codex, Claude Code, Cursor, and local harnesses a typed MCP toolset for understanding a project before they edit it. Mako indexes your repo, builds local SQLite-backed facts, tracks diagnostics and review notes, and returns structured context packets instead of making the agent rediscover everything with raw grep.
Mako is built for the first mile of coding-agent work:
What files matter? What routes, symbols, tables, diagnostics, and prior findings are relevant? What should the agent read next?
What You Get
- MCP server for coding agents:
agentmako mcp - Local dashboard:
agentmako dashboard - Deterministic context packets:
context_packet,reef_scout - Code search and structure tools:
cross_search,live_text_search,ast_find_pattern,repo_map - Reef Engine facts and findings across indexed, working-tree, and staged state
- TypeScript, ESLint, Oxlint, Biome, and staged git diagnostic ingestion
- Optional Postgres/Supabase schema snapshots and read-only DB inspection
- Local DB review comments for notes on tables, RLS, triggers, publications, subscriptions, and replication
- Recall, acknowledgements, and agent feedback for repeated review work
Everything important runs locally. No hosted service is required.
Install
Requires Node.js 20 or newer.
npm install -g agentmako
Confirm the CLI is available:
agentmako doctor
You should see green checks for configuration and the local API service.
Prefer to build from source (e.g. to contribute)? See Develop From Source at the bottom of this file.
Happy Path Setup
1. Attach your real project
Go to the project you want Mako to understand:
cd C:/path/to/your/project
Attach and index it:
agentmako connect . --no-db
Use --no-db for the first run. It gets the code intelligence path
working before adding database scope.
2. Confirm Mako sees the project
agentmako status .
agentmako tool list
Run a real scout query:
agentmako --json tool call . reef_scout "{\"query\":\"where should I inspect auth route state?\"}"
If that returns ranked candidates, facts, or findings, the core setup is working.
3. Configure your MCP client
Add this to your MCP client config:
{
"mcpServers": {
"mako-ai": {
"command": "agentmako",
"args": ["mcp"]
}
}
}
Restart the MCP client and confirm the mako-ai server starts.
In the agent, start with one of these tools:
tool_searchwhen you need to find the right Mako toolcontext_packetwhen you have a coding task and want starting contextreef_scoutwhen you want ranked project facts/findings/historyaskwhen you have a natural-language repo question
4. Optional: use the Claude Code plugin
Plain MCP works with Claude Code, but the bundled plugin adds Mako-specific
Claude skills and includes the same agentmako mcp wiring in
mako-ai-claude-plugin/.mcp.json.
Prerequisites:
- Claude Code installed
agentmakoavailable onPATH- Your target project already attached with
agentmako connect
From the agentmako repo root:
claude plugin validate .\mako-ai-claude-plugin
claude --plugin-dir .\mako-ai-claude-plugin
Inside Claude Code, run /mcp and confirm mako-ai is connected.
The plugin exposes these skills:
/mako-ai:mako-guide/mako-ai:mako-discovery/mako-ai:mako-trace/mako-ai:mako-neighborhoods/mako-ai:mako-graph/mako-ai:mako-database/mako-ai:mako-code-intel/mako-ai:mako-workflow
Use the plugin when you want Claude Code to load Mako-specific guidance for which tools to call and how to interpret their results.
5. Optional: launch the dashboard
From your target project:
agentmako dashboard .
This starts the local API, harness service, and web dashboard.
6. Optional: add Supabase/Postgres awareness
Mako works without a database. Add this only after code intelligence is working.
For a one-time interactive setup:
agentmako connect .
For CI or scripted setup using an environment variable:
set DATABASE_URL=postgres://...
agentmako connect . --db-env DATABASE_URL --yes
Then refresh and verify the local schema snapshot:
agentmako refresh .
agentmako verify .
Interactive mode stores database secrets in your OS keychain by default. Project config stores references, not plaintext DB URLs.
Normal Daily Loop
From the target project:
agentmako status .
agentmako dashboard .
agentmako --json tool call . context_packet "{\"query\":\"fix the broken auth callback route\"}"
For staged review checks:
agentmako git precommit . --json
For database review notes:
agentmako --json tool call . db_review_comment "{\"objectType\":\"replication\",\"objectName\":\"supabase_database_replication\",\"category\":\"review\",\"comment\":\"Check publication coverage before relying on realtime events.\",\"tags\":[\"supabase\",\"replication\"]}"
Develop From Source
If you want to hack on Mako itself, clone and build instead of installing from npm.
Prerequisites:
- Node.js 20 or newer
- Git
- Corepack (
corepack enable, included with modern Node.js)
git clone https://github.com/drhalto/agentmako.git
cd agentmako
corepack pnpm install
corepack pnpm run build
npm link ./apps/cli
npm link ./apps/cli makes the source-built CLI available as
agentmako on your PATH, replacing any global npm install. Re-run
corepack pnpm run build after pulling changes.
To go back to the published version: npm install -g agentmako.
Development Checks
corepack pnpm run typecheck
corepack pnpm run build
corepack pnpm run test:smoke:reef-tooling
corepack pnpm run test:smoke:reef-model-facing-views
Full verification:
corepack pnpm test
Repository Layout
apps/
cli/ agentmako CLI and MCP entrypoint (the published package)
web/ local dashboard
packages/
contracts/ public TypeScript contracts and tool schemas
config/ shared config helpers
logger/ shared logger
sdk/ programmatic SDK
store/ SQLite stores, migrations, and query helpers
tools/ shared tool implementations
harness-core/ local agent harness runtime
harness-tools/ action tools available to the harness
harness-contracts/ harness contracts and provider catalog
services/
api/ local API and MCP transports
engine/ Reef Engine fact/finding pipeline
harness/ local harness HTTP service
indexer/ repo and schema indexing logic
worker/ background worker
extensions/ provider and integration packages
storage/ schema migrations, models, queries
test/smoke/ smoke coverage
mako-ai-claude-plugin/ Claude Code plugin with Mako skills
More Docs
- Tool overview
- CLI docs
- Reef Engine
- Claude Code plugin
- Agent guidance to paste into CLAUDE.md / AGENTS.md
- Contributing
- Security policy
- Changelog
License
Apache-2.0. See LICENSE.
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