knowledgelib-mcp
Search 1,500+ pre-verified, cited knowledge units across 16 domains. 6 tools: query, batch query, get unit, list domains, suggest topics, report issues. Free, no API key required.
README
knowledgelib.io
AI Knowledge Library — structured, cited knowledge units for AI agents. Pre-verified answers that save tokens, reduce hallucinations, and cite every source.
What is this?
1,564 knowledge units across 16 domains (consumer electronics, software, business strategy, ERP integration, compliance, energy, finance, and more). Each unit answers one canonical question with:
- Confidence scores (0.0-1.0) per published methodology
- Inline source citations from 5-8 authoritative sources
- Freshness tracking with verified dates and temporal validity
- Quality status — verified, needs_review, or unreliable
- Knowledge graph — related units with typed edges
One API call replaces 5 web searches and 8,000 tokens of parsing.
Quick Start
MCP Server (Claude, Cursor, Windsurf)
npx knowledgelib-mcp
Or add to claude_desktop_config.json:
{
"mcpServers": {
"knowledgelib": {
"command": "npx",
"args": ["knowledgelib-mcp"]
}
}
}
MCP over HTTP (no install needed)
POST https://knowledgelib.io/mcp
Streamable HTTP transport, JSON-RPC 2.0, MCP spec 2025-03-26.
REST API
# Search
curl https://knowledgelib.io/api/v1/query?q=best+wireless+earbuds+under+150
# Batch search (up to 10 queries)
curl -X POST https://knowledgelib.io/api/v1/batch \
-H "Content-Type: application/json" \
-d '{"queries":[{"q":"earbuds"},{"q":"headphones"}]}'
# Get full unit
curl https://knowledgelib.io/api/v1/units/consumer-electronics/audio/wireless-earbuds-under-150/2026.md
# Health check
curl https://knowledgelib.io/api/v1/health
LangChain (Python)
pip install langchain-knowledgelib
from langchain_knowledgelib import KnowledgelibRetriever
retriever = KnowledgelibRetriever()
docs = retriever.invoke("best wireless earbuds")
n8n
npm install n8n-nodes-knowledgelib
MCP Tools
| Tool | Description | Read-only |
|---|---|---|
query_knowledge |
Search across all knowledge units with filters | Yes |
batch_query |
Search multiple topics in one call (max 10) | Yes |
get_unit |
Retrieve full markdown content by ID | Yes |
list_domains |
List all domains with unit counts | Yes |
suggest_question |
Submit a topic request for new unit creation | No |
report_issue |
Flag incorrect, outdated, or broken content | No |
All read-only tools are marked with readOnlyHint: true and idempotentHint: true per MCP spec 2025-03-26, enabling parallel execution by agents.
API Features
- Structured error codes with retryable flag and retry_after_ms
- ETag / If-None-Match caching (304 Not Modified)
- Correlation IDs (X-Request-Id header on all responses)
- Quality status (verified / needs_review / unreliable) on all results
- Related units for knowledge graph traversal
- Content previews (150-char summaries without fetching full unit)
- Token budgeting (total_tokens across results)
- Rate limiting on write endpoints (10 suggestions/hr, 20 feedback/hr)
- Zod validation with per-field error messages
Entity Types
| Type | Count | Description |
|---|---|---|
| product_comparison | 418 | Best-of roundups with decision logic and buy links |
| concept | 336 | Definitions of terms agents often get wrong |
| software_reference | 239 | Code examples, anti-patterns, decision trees |
| execution_recipe | 202 | Step-by-step implementation plans |
| erp_integration | 166 | API capabilities, rate limits, data mapping |
| agent_prompt | 55 | System prompts for pipeline sub-agents |
| assessment | 54 | Structured scoring frameworks |
| decision_framework | 35 | Decision trees with trade-offs |
| benchmark | 28 | Industry benchmarks by segment |
| rule | 28 | Actionable directives with evidence |
Discovery
- /llms.txt — Plain-text guide for LLMs
- /llms-full.txt — Complete index of all questions
- /.well-known/ai-knowledge.json — Machine-readable manifest
- /catalog.json — Full catalog with metadata
- /for-agents — Integration guide
Links
- Website: https://knowledgelib.io
- npm: https://www.npmjs.com/package/knowledgelib-mcp
- PyPI: https://pypi.org/project/langchain-knowledgelib/
- HTTP MCP: https://knowledgelib.io/mcp
- OpenAPI: https://knowledgelib.io/api/v1/openapi.json
- GPT Actions: https://knowledgelib.io/.well-known/openapi-gpt.json
License
CC BY-SA 4.0
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