MidOS Research Protocol
MidOS Research Protocol: curated skills & knowledge versioned.
125 skill packs across 20+ tech stacks. 46,000+ curated chunks. 436 validated discoveries. Every piece reviewed, cross-validated, and myth-busted.
Your agent asks: "How do I implement optimistic updates in React 19?"
MidOS returns: Battle-tested pattern with useOptimistic + Server Actions, validated Feb 2026.
Context7 returns: Raw React docs from reactjs.org.
Quick Start
One line. Add to your MCP config and start querying:
{
"mcpServers": {
"midos": {
"url": "https://midos.dev/mcp"
}
}
}
Add a new server:
- Name:
midos - URL:
https://midos.dev/mcp - Transport: Streamable HTTP
{
"mcpServers": {
"midos": {
"url": "https://midos.dev/mcp",
"transportType": "streamable-http"
}
}
}
{
"mcp": {
"midos": {
"type": "remote",
"url": "https://midos.dev/mcp"
}
}
}
Or self-hosted (stdio):
{
"mcp": {
"midos": {
"type": "local",
"command": ["python", "-m", "modules.mcp_server.midos_mcp"],
"enabled": true
}
}
}
git clone https://github.com/MidOSresearch/midos-mcp.git
cd midos-mcp
pip install -e .
pip install -e hive_commons/
python -m modules.mcp_server.midos_mcp --http --port 8419
Then point your MCP client to http://localhost:8419/mcp.
First Tool Call
After connecting, personalize your experience:
agent_handshake(model="claude-opus-4-6", client="claude-code", languages="python,typescript", frameworks="fastapi,react")
Then search for what you need:
search_knowledge("React 19 Server Components patterns")
Tools Reference
Free Tier (no API key)
| Tool | Description | Example |
|---|---|---|
search_knowledge | Search 46,000+ curated chunks across all stacks | search_knowledge("FastAPI dependency injection") |
hybrid_search | Combined keyword + semantic search with reranking | hybrid_search("PostgreSQL JSONB indexing") |
list_skills | Browse 125 skill packs by technology | list_skills(stack="react") |
get_skill | Get a specific skill pack (preview in free, full in Dev) | get_skill("nextjs") |
get_protocol | Protocol and pattern documentation | get_protocol("domain-driven-design") |
hive_status | System health and live statistics | hive_status() |
project_status | Knowledge pipeline dashboard | project_status() |
agent_handshake | Personalized onboarding for your model + stack | See example above |
Dev Tier ($20/mo — full content + advanced search)
| Tool | Description | Example |
|---|---|---|
get_eureka | Validated breakthrough discoveries (436 items) | get_eureka("response-cache") |
get_truth | Empirically verified truth patches (52 items) | get_truth("qlora-myths") |
semantic_search | Vector search with Gemini embeddings (3072-d) | semantic_search("event sourcing CQRS") |
research_youtube | Extract knowledge from video content | research_youtube("https://youtube.com/...") |
chunk_code | Intelligent code chunking for ingestion | chunk_code(code="...", language="python") |
memory_stats | Vector store analytics and health | memory_stats() |
episodic_search | Search agent session history | episodic_search("last deployment issue") |
Ops Tier (custom — security, infrastructure, advanced ops)
Contact for specialized knowledge packs. midos.dev/pricing
Skill Packs (125 and growing)
Production-tested patterns for:
Frontend: React 19, Next.js 16, Angular 21, Svelte 5, Tailwind CSS v4, Remix v2
Backend: FastAPI, Django 5, NestJS 11, Laravel 12, Spring Boot, Symfony 8
Languages: TypeScript, Go, Rust, Python
Data: PostgreSQL, Redis, MongoDB, Elasticsearch, LanceDB, Drizzle ORM, Prisma 7
Infrastructure: Kubernetes, Terraform, Docker, GitHub Actions
AI/ML: LoRA/QLoRA, MCP patterns, multi-agent orchestration, Vercel AI SDK
Testing: Playwright, Vitest
Architecture: DDD, GraphQL, event-driven, microservices, spec-driven dev
How MidOS is Different
| Raw Docs (Context7, etc.) | MidOS | |
|---|---|---|
| Content | Documentation dumps | Curated, human-reviewed, cross-validated |
| Quality | No validation | 5-layer pipeline: chunks → truth → EUREKA → SOTA |
| Search | Keyword matching | Semantic + hybrid search (Gemini embeddings, 3072-d) |
| Onboarding | Generic | Personalized per model + CLI + stack |
| Format | Raw text | Stack-specific skill packs with production patterns |
| Accuracy | Stale docs | Myth-busted with empirical evidence |
Knowledge Pipeline
staging/ → chunks/ → skills/ → truth/ → EUREKA/ → SOTA/
(entry) (L1) (L2) (L3) (L4) (L5)
- Chunks (46,000+): Curated, indexed knowledge across 20+ stacks
- Skills (125): Organized, actionable, versioned by stack
- Truth (52): Verified with empirical evidence
- EUREKA (436): Validated improvements with measured ROI
- SOTA (138): Best-in-class, currently unimprovable
Using an API Key
Pass your key via the Authorization header for Dev/Ops access:
{
"mcpServers": {
"midos": {
"url": "https://midos.dev/mcp",
"headers": {
"Authorization": "Bearer midos_your_key_here"
}
}
}
}
Get a key at midos.dev/pricing.
Architecture
midos-mcp/
├── modules/mcp_server/ FastMCP server (streamable-http)
├── knowledge/
│ ├── chunks/ Curated knowledge (L1) — 46,000+ items
│ ├── skills/ Stack-specific skill packs (L2) — 125 items
│ ├── EUREKA/ Validated discoveries (L4) — 436 items
│ └── truth/ Empirical patches (L3) — 52 items
├── hive_commons/ Shared library (LanceDB vector store, config)
├── smithery.yaml Smithery marketplace manifest
├── Dockerfile Production container
└── pyproject.toml Dependencies and build config
Tech Stack
- Server: FastMCP 2.x (streamable-http transport)
- Vectors: LanceDB + Gemini embeddings (670,000+ vectors, 3072-d)
- Auth: 2-tier API key middleware (free → dev) with rate limiting
- Pipeline: 5-layer quality validation with myth-busting
- Deploy: Docker + Coolify (auto-deploy on push)
Contributing
MidOS is community-first. If you have production-tested patterns, battle scars, or discovered that a popular claim is false — we want it.
- Search existing knowledge first:
search_knowledge("your topic") - Open an issue describing the pattern or discovery
- We'll review and add it to the pipeline
License
Related Servers
RivalSearchMCP
Advanced MCP server for comprehensive web research, content discovery, and trends analysis. Features multi-engine search, intelligent content extraction, website traversal, and real-time data streaming.
Gemini Search
Generates responses using the Gemini API and Google Search for up-to-date information.
google-maps-mcp-server
STDIO-based MCP server for Google Maps Platform APIs
BibTeX MCP Server
Search academic references from arXiv, DBLP, Semantic Scholar, and OpenAlex, and generate BibTeX entries.
G-Search MCP
A Google search server using Playwright for parallel keyword searches.
Boring News
Fetches the latest news headlines from the Boring News API.
Ebook MCP Service
Access and search EPUB ebook collections using semantic vector search.
Deep Research
An agent-based tool for web search and advanced research, including analysis of PDFs, documents, images, and YouTube transcripts.
Web Search MCP Server
Free web search using Google search results, no API key required.
Typesense MCP Server
Provides access to Typesense search capabilities, requiring a connection to a Typesense server.