journaling_mcp
Language:
Python
Stars:
4
Forks:
3
MCP Journaling Server
An MCP (Message Control Protocol) server designed to handle interactive journaling sessions with support for emotional analysis and automatic conversation saving.
Features
- Automatic journaling session management
- Conversation saving in Markdown format
- Temporal analysis of conversations with timestamps
- Support for reading recent journal entries
- Chronological organization of journal entries
Installation
Depend from your MCP client, on Claude Desktop:
"mcpServers": {
"journaling": {
"command": "uv",
"args": [
"--directory",
,
"run",
"server.py"
]
}
}
Configuration
The server can be configured using environment variables in .env file:
JOURNAL_DIR
: Directory for saving journal files (default: ~/Documents/journal)FILENAME_PREFIX
: Prefix for file names (default: "journal")FILE_EXTENSION
: Journal file extension (default: ".md")
If not specified, default values will be used.
File Structure
Journal entries are saved with the following structure:
[JOURNAL_DIR]/
├── journal_2025-01-27.md
├── journal_2025-01-26.md
└── ...
Entry Format
Each journal entry includes:
- Header with date
- Conversation transcript with timestamps
- Emotional analysis
- Reflections and recurring themes
API
Tools
start_new_session()
: Start a new journaling sessionrecord_interaction(user_message, assistant_message)
: Record a message exchangegenerate_session_summary(summary)
: Generate and save session summaryget_recent_journals()
: Retrieve 5 most recent entries
Resources
journals://recent
: Endpoint to access recent journal entries
Prompts
- `start_journaling`: Initial prompt
Publisher info
More MCP servers built with Python
Create, backtest, and execute trades directly in one chat box. The Composer MCP Server gives LLMs the power to backtest investment ideas and execute automated trading strategies. Trade across stocks, ETFs, and crypto directly in Claude.
An MCP to generate presentations with AI. Create and edit PowerPoint presentations with AI.
The PaddleOCR MCP server brings enterprise-grade OCR and document parsing capabilities to AI applications. Built on PaddleOCR — a proven solution with 50,000+ GitHub stars, deeply integrated by leading projects like MinerU, RAGFlow, and OmniParser— with targeted optimizations based on the MCP concept.