Loads the knowledge. Skips the search.
100% accuracy · 0 tool calls · −66% tokens vs Obsidian+MCP
Real agentic sessions. Benchmark →
/plugin marketplace add guhcostan/claude-mega-brain
/plugin install mega-brain@mega-brain
Then in any project:
/mega-brain:init
Start a new session — the knowledge base loads automatically.
Without claude-mega-brain, Claude guesses from training data:
User: What column stores the order total?
Claude (no context): Typically total_amount (DECIMAL) or amount (FLOAT)...
# Wrong — this project uses total_cents (INT64)
With claude-mega-brain, the exact schema is injected at SessionStart:
<mega-brain>
Knowledge: 4 documented concepts found in project
docs/orders.md [BigQuery Table] — total_cents INT64, status STRING(pending/confirmed/shipped/done)
docs/customers.md [BigQuery Table] — customer_id STRING, email STRING, country STRING
docs/wau.md [Metric] — COUNT(DISTINCT user_id) WHERE session_date >= CURRENT_DATE-7
docs/net_revenue.md [Metric] — SUM(total_cents - refund_cents)/100 WHERE status='done'
</mega-brain>
User: What column stores the order total?
Claude: total_cents (INT64) — from docs/orders.md
# Correct. 0 tool calls. First turn.
10 questions with project-specific values unknowable from training data. Real agentic sessions — not simulated.
| metric | no context | Obsidian+MCP | CLAUDE.md (raw files) | claude-mega-brain |
|---|---|---|---|---|
| accuracy (no tools) | 50% | 13% | 100% | 100% |
| accuracy (agentic) | 100%† | 100%† | 100% | 100% |
| tool calls avg | 1.1 | 0.9 | 0.1 | 0 |
| tokens avg | 61,521 | 49,186 | 20,624 | 16,547 |
| latency avg ms | 10,267 | 10,986 | 5,494 | 4,384 |
† raw and Obsidian+MCP reach 100% agentic accuracy by using tool calls to explore the project — spending 3–4× more tokens and time. Without tools, they drop to 50% and 13%.
CLAUDE.md (raw files) matches mega-brain on accuracy but uses 25% more tokens and is 25% slower. mega-brain's compressed OKF index is smaller and faster — the gap widens as knowledge bases grow.
At SessionStart, a hook scans the entire project for any .md file with type: in its YAML frontmatter and injects a compact index:
<mega-brain>
Knowledge: 8 documented concepts found in project
Recent (log.md):
2026-06-29 — added customers table
index.md [Index] — Central reference for all sales data
docs/orders.md [BigQuery Table] — One row per completed order
docs/customers.md [BigQuery Table] — Customer profiles
docs/wau.md [Metric] — Weekly active users
...
</mega-brain>
No dedicated folder needed — documents can live anywhere in the project. When Claude reads an OKF file, linked concepts surface automatically via PostToolUse.
Zero overhead when not in use — if no documented concepts are found, the hook exits in <5ms.
| tool | auto-inject | schema enforcement | tool calls to answer | accuracy (no tools) |
|---|---|---|---|---|
| claude-mega-brain | ✓ SessionStart hook | required (type:) |
0 | 100% |
| CLAUDE.md + additionalDirectories | manual setup | none | 0 | 100%* |
| Obsidian + MCP | ✗ manual | none | 1–3 | 13% |
| Notion | ✗ manual | proprietary | N/A | — |
| Logseq | ✗ plugin-based | none | N/A | — |
| mem.ai | ✗ none | none | N/A | — |
* CLAUDE.md matches mega-brain accuracy but uses 25% more tokens and is 25% slower — raw file dump vs compressed structured index.
Any .md file in the project with type: in its YAML frontmatter is automatically picked up. No dedicated folder needed.
---
type: BigQuery Table
title: Orders
description: One row per completed customer order.
resource: https://console.cloud.google.com/bigquery?p=acme&d=sales&t=orders
tags: [sales, revenue]
timestamp: 2026-06-29T00:00:00Z
---
# Schema
| Column | Type | Description |
|-------------|-----------|--------------------------|
| order_id | STRING | Globally unique order ID |
| customer_id | STRING | FK → customers |
| total_cents | INT64 | Order total in cents |
| status | STRING | pending/confirmed/shipped/done |
# Joins
Joined with [customers](customers.md) on `customer_id`.| File | Purpose |
|---|---|
index.md (with type: Index) |
Knowledge map — Claude reads this first |
log.md (with type: Log) |
Append-only changelog — last 3 entries injected at session start |
BigQuery Table · BigQuery Dataset · Table · Metric · API · Runbook · Concept · Service · Pipeline
Types are freeform — add your own.
/mega-brain:init
Creates index.md and log.md anywhere you want. Start a new session — context injects automatically.
/mega-brain:migrate
Scans openapi.yaml, schema.prisma, schema.sql, docs/, README sections and adds type: frontmatter to generate OKF concepts.
/mega-brain:ingest
Document a specific table, metric, API, or service. Saves the file wherever makes sense for your project structure.
/plugin marketplace add guhcostan/claude-mega-brain
/plugin install mega-brain@mega-brain
claude plugin install /path/to/claude-mega-brainOptional per-project overrides:
{
"dir": "knowledge",
"maxConcepts": 100,
"priorityTypes": ["Metric", "BigQuery Table"]
}| Field | Default | Description |
|---|---|---|
dir |
(none) | Limit scanning to this subdirectory (relative to project root). When unset, the entire project is scanned. |
maxConcepts |
60 |
Max concepts in injected index |
priorityTypes |
[] |
Types shown at top of index |
exclude |
[] |
Additional dirs to skip when scanning |
Does it slow down every session? No. If no OKF directory exists, the hook exits in <5ms with no context injected.
Can I use it with an existing wiki or docs folder?
Add type: YAML frontmatter to any Markdown file and drop it in your OKF dir. Done.
What if I have 500 concepts?
Set maxConcepts in .mega-brain.json. The index stays compact; index.md holds the full map.
- Open Knowledge Format — Google Cloud
- LLM Wiki pattern — Andrej Karpathy
- Mega Brain — Thiago Finch — the meme this plugin is named after
MIT — The shortest license that works.