Memex Targeted Search Server
Performs targeted searches across Memex conversation history and project files.
Memex Targeted Search Server
A Model Context Protocol (MCP) server that provides targeted search capabilities across Memex conversation history and project files.
Overview
This MCP server enables AI agents to efficiently search through:
- Conversation History: 952+ conversation files from Memex with metadata, titles, summaries, and message content
- Project Files: 516+ project directories in the user's workspace with various file types and technologies
Features
🔍 Core Search Tools
search_conversations- Search conversation history by text, metadata, and filtersget_conversation_snippet- Retrieve specific parts of conversations without context overloadsearch_projects- Search project files by content, file types, and namesget_project_overview- Get project summaries with technology detectionfind_command- NEW! Find specific commands, CLI usage, or code snippets from conversation history
🎯 Smart Context Management
- Returns targeted snippets instead of full conversations
- Limits search scope to prevent context explosion
- Supports faceted filtering (dates, projects, file types)
- Provides relevance scoring for search results
Installation
# Clone the repository
git clone https://github.com/memextech/memex-targeted-search-server.git
cd memex-targeted-search-server
# Install dependencies
npm install
# Build the project
npm run build
Configuration
The server is configured to search:
- Conversation History:
~/Library/Application Support/Memex/history/ - Project Files:
~/Workspace/
MCP Server Configuration
Add to your MCP configuration (e.g., Claude Desktop config):
{
"mcpServers": {
"memex-search": {
"command": "node",
"args": ["/path/to/memex-targeted-search-server/dist/index.js"]
}
}
}
Usage Examples
1. Find Forgotten Commands
"I don't remember what the command is to run the memex agent cli"
find_command({
query: "memex agent cli",
command_type: "cli",
limit: 5
})
Find specific npm commands
find_command({
query: "npm install",
command_type: "cli",
limit: 5
})
Example Response:
{
"query": "npm install",
"total_found": 3,
"commands": [
{
"command": "npm install -g firebase-tools",
"context": "Install Firebase CLI: `npm install -g firebase-tools`\n- Login to Firebase: `firebase login`",
"conversation_id": "abc123",
"conversation_title": "Firebase Setup Guide",
"message_index": 7,
"confidence": 0.9,
"type": "cli"
}
]
}
2. Search Conversations
Find conversations about specific topics
search_conversations({
query: "3D modeling",
limit: 5
})
Example Response:
{
"total_found": 3,
"conversations": [
{
"conversation_id": "a3edfc8f-0978-415e-9de8-18f4d94ea3a2",
"title": "3D Interactive Solar System Model",
"summary": "Design an engaging, visually appealing 3D representation of planets and celestial bodies",
"created_at": "2025-05-27T17:13:26Z",
"project": "Stellar 3d solar system",
"message_count": 76,
"relevance": "content"
}
]
}
Filter by date range and project
search_conversations({
query: "python",
project: "cad_example",
date_from: "2025-01-01",
date_to: "2025-03-01",
limit: 3
})
3. Get Conversation Details
Retrieve specific messages from a conversation
get_conversation_snippet({
conversation_id: "bf283daa-25d3-434f-ad7e-9adda48cdcdd",
message_start: 1,
message_count: 3
})
Example Response:
{
"conversation_id": "bf283daa-25d3-434f-ad7e-9adda48cdcdd",
"title": "3D Model 3MF File Creation",
"message_range": "1-3",
"total_messages": 30,
"messages": [
{
"index": 1,
"role": "user",
"content": "can I create a 3D model in .3mf?"
},
{
"index": 2,
"role": "assistant",
"content": "I'll help you create a 3D model using PythonOCC and convert it to .3mf format..."
}
]
}
4. Search Projects
Find files by technology
search_projects({
query: "interface",
file_types: ["ts", "js"],
limit: 10
})
Search all project files
search_projects({
query: "streamlit",
limit: 5
})
Example Response:
{
"total_found": 3,
"results": [
{
"project": "ad_campaign_dashboard",
"file": "ad_campaign_dashboard/app.py",
"match": "import streamlit as st",
"line": 1
}
]
}
5. Get Project Overview
Analyze project structure and tech stack
get_project_overview({
project_name: "memex_targeted_search_server"
})
Example Response:
{
"name": "memex_targeted_search_server",
"path": "/Users/user/Workspace/memex_targeted_search_server",
"file_count": 8,
"directories": ["dist", "src"],
"file_types": {
"ts": 1,
"js": 1,
"json": 3,
"md": 1
},
"main_files": ["package.json", "README.md"],
"technologies": ["JavaScript/TypeScript"]
}
Real-World Usage Scenarios
Scenario 1: "I forgot that command..."
// User: "I don't remember what the command is to run the memex agent cli"
find_command({
query: "memex agent",
command_type: "cli",
limit: 5
})
// User: "What was that firebase command to deploy?"
find_command({
query: "firebase deploy",
command_type: "cli",
limit: 3
})
// Result: Finds exact commands with context from previous conversations
Scenario 2: Finding Related Work
// Agent: "I need to find previous conversations about Blender projects"
search_conversations({
query: "blender",
limit: 5
})
// Result: Finds 2 conversations about 3D Manhattan cityscape and geometric skyscraper
// Agent can then drill down into specific conversations for details
Scenario 3: Code Reference Lookup
// Agent: "Show me Python projects that use Streamlit"
search_projects({
query: "streamlit",
file_types: ["py"],
limit: 10
})
// Result: Finds specific Python files with Streamlit imports
// Agent can then examine project structure and implementation patterns
Scenario 4: Cross-Reference Discovery
// Agent: "Find conversations from January 2025 about 3D modeling"
search_conversations({
query: "3D model",
date_from: "2025-01-01",
date_to: "2025-01-31",
limit: 5
})
// Agent: "Now show me the related project files"
get_project_overview({
project_name: "cad_example"
})
API Reference
search_conversations
- Purpose: Search conversation history with flexible filtering
- Parameters:
query(required),limit,project,date_from,date_to - Returns: Array of conversation metadata with relevance scoring
get_conversation_snippet
- Purpose: Retrieve specific message ranges from conversations
- Parameters:
conversation_id(required),message_start,message_count - Returns: Conversation snippet with message details
search_projects
- Purpose: Search project files by content and metadata
- Parameters:
query(required),file_types,limit - Returns: Array of file matches with context
get_project_overview
- Purpose: Analyze project structure and technology stack
- Parameters:
project_name(required) - Returns: Project summary with file counts and tech detection
find_command
- Purpose: Find specific commands, CLI usage, or code snippets from conversation history
- Parameters:
query(required),command_type(cli/code/config/any),limit - Returns: Array of commands with context, confidence scoring, and conversation references
Architecture
Built with:
- TypeScript - Type-safe development
- MCP SDK - Official Model Context Protocol SDK
- Node.js - Runtime environment
- File System APIs - Direct file access for performance
Performance Considerations
- Limits search scope to prevent overwhelming results
- Uses streaming JSON parsing for large files
- Implements intelligent file filtering
- Caches frequently accessed metadata
- Returns truncated content with full context available on demand
Agent Experience
The server is designed for optimal agent interaction:
- Targeted Search: Find specific information without context overload
- Faceted Filtering: Multiple search dimensions (date, project, file type)
- Progressive Discovery: Start with summaries, drill down to details
- Context Preservation: Maintain conversation and project relationships
Development
Running in Development
npm run dev
Building for Production
npm run build
npm start
Testing
The server includes comprehensive error handling and graceful degradation for:
- Missing or corrupted conversation files
- Inaccessible project directories
- Invalid JSON parsing
- Large file handling
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
License
ISC License
🤖 Generated with Memex
Co-Authored-By: Memex [email protected]
संबंधित सर्वर
Crawleo MCP Server
Crawleo MCP - Web Search & Crawl for AI Enable AI assistants to access real-time web data through native tool integration. Two Powerful Tools: web.search - Real-time web search with flexible formatting Search from any country/language Device-specific results (desktop, mobile, tablet) Multiple output formats: Enhanced HTML (AI-optimized, clean) Raw HTML (original source) Markdown (formatted text) Plain Text (pure content) Auto-crawl option for full content extraction Multi-page search support web.crawl - Deep content extraction Extract clean content from any URL JavaScript rendering support Markdown conversion Screenshot capture Multi-URL support Features: ✅ Zero data retention (complete privacy) ✅ Real-time, not cached results ✅ AI-optimized with Enhanced HTML mode ✅ Global coverage (any country/language) ✅ Device-specific search (mobile/desktop/tablet) ✅ Flexible output formats (4 options) ✅ Cost-effective (5-10x cheaper than competitors) ✅ Simple Claude Desktop integration Perfect for: Research, content analysis, data extraction, AI agents, RAG pipelines, multi-device testing
PBS API
Access Australian Pharmaceutical Benefits Scheme data for medicine information, pricing, and availability. Built with Python and FastAPI.
EU Regulations MCP
Query 37 EU regulations (DORA, NIS2, GDPR, AI Act, CRA) with full-text search, cross-regulation comparison, and ISO 27001/NIST CSF control mappings. Auto-updates via EUR-Lex monitoring.
Legal MCP Server
Court records, patent search, trademark lookup, and legal document research
Perigon MCP Server
Official MCP server for the Perigon API, providing access to real-time news and media data.
Banana Prompts MCP Server
MCP server that allows you to search for high-quality AI art prompts directly from Banana Prompts (bananaprompts.fun).
Whois MCP
MCP server that performs whois lookup against domain, IP, ASN and TLD.
LeadMagic
Access LeadMagic's B2B data enrichment API suite for email finding, profile enrichment, and company intelligence.
Facebook Ads Library
Get any answer from the Facebook Ads Library, conduct deep research including messaging, creative testing and comparisons in seconds.
doctree-mcp
BM25 search + tree navigation over markdown docs for AI agents. No embeddings, no LLM calls at index time.