MCP Scheduler
Provides tools for scheduling AI content generation tasks using OpenAI models, such as generating reports or summaries on a cron schedule.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@MCP Scheduleradd a command task to run backup.sh every day at midnight"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
MCP Scheduler
A robust task scheduler server built with Model Context Protocol (MCP) for scheduling and managing various types of automated tasks.
Overview
MCP Scheduler is a versatile task automation system that allows you to schedule and run different types of tasks:
Shell Commands: Execute system commands on a schedule
API Calls: Make HTTP requests to external services
AI Tasks: Generate content through OpenAI models
Reminders: Display desktop notifications with sound
The scheduler uses cron expressions for flexible timing and provides a complete history of task executions. It's built on the Model Context Protocol (MCP), making it easy to integrate with AI assistants and other MCP-compatible clients.
Features
Multiple Task Types: Support for shell commands, API calls, AI content generation, and desktop notifications
Cron Scheduling: Familiar cron syntax for precise scheduling control
Run Once or Recurring: Option to run tasks just once or repeatedly on schedule
Execution History: Track successful and failed task executions
Cross-Platform: Works on Windows, macOS, and Linux
Interactive Notifications: Desktop alerts with sound for reminder tasks
MCP Integration: Seamless connection with AI assistants and tools
Robust Error Handling: Comprehensive logging and error recovery
Installation
Prerequisites
Python 3.10 or higher
uv (recommended package manager)
Installing uv (recommended)
# For Mac/Linux
curl -LsSf https://astral.sh/uv/install.sh | sh
# For Windows (PowerShell)
powershell -c "irm https://astral.sh/uv/install.ps1 | iex"After installing uv, restart your terminal to ensure the command is available.
Project Setup
# Clone the repository
git clone https://github.com/phialsbasement/mcp-scheduler.git
cd mcp-scheduler
# Create and activate a virtual environment with uv
uv venv
source .venv/bin/activate # On Unix/MacOS
# or
.venv\Scripts\activate # On Windows
# Install dependencies with uv
uv pip install -r requirements.txtStandard pip installation (alternative)
If you prefer using standard pip:
# Clone the repository
git clone https://github.com/phialsbasement/mcp-scheduler.git
cd mcp-scheduler
# Create and activate a virtual environment
python -m venv .venv
source .venv/bin/activate # On Unix/MacOS
# or
.venv\Scripts\activate # On Windows
# Install dependencies
pip install -r requirements.txtUsage
Running the Server
# Run with default settings (stdio transport)
python main.py
# Run with server transport on specific port
python main.py --transport sse --port 8080
# Run with debug mode for detailed logging
python main.py --debugIntegrating with Claude Desktop or other MCP Clients
To use your MCP Scheduler with Claude Desktop:
Make sure you have Claude Desktop installed
Open your Claude Desktop App configuration at:
macOS:
~/Library/Application Support/Claude/claude_desktop_config.jsonWindows:
%APPDATA%\Claude\claude_desktop_config.json
Create the file if it doesn't exist, and add your server:
{
"mcpServers": [
{
"type": "stdio",
"name": "MCP Scheduler",
"command": "python",
"args": ["/path/to/your/mcp-scheduler/main.py"]
}
]
}Alternatively, use the fastmcp utility if you're using the FastMCP library:
# Install your server in Claude Desktop
fastmcp install main.py --name "Task Scheduler"Command Line Options
--address Server address (default: localhost)
--port Server port (default: 8080)
--transport Transport mode (sse or stdio) (default: stdio)
--log-level Logging level (default: INFO)
--log-file Log file path (default: mcp_scheduler.log)
--db-path SQLite database path (default: scheduler.db)
--config Path to JSON configuration file
--ai-model AI model to use for AI tasks (default: gpt-4o)
--version Show version and exit
--debug Enable debug mode with full traceback
--fix-json Enable JSON fixing for malformed messagesConfiguration File
You can use a JSON configuration file instead of command-line arguments:
{
"server": {
"name": "mcp-scheduler",
"version": "0.1.0",
"address": "localhost",
"port": 8080,
"transport": "sse"
},
"database": {
"path": "scheduler.db"
},
"logging": {
"level": "INFO",
"file": "mcp_scheduler.log"
},
"scheduler": {
"check_interval": 5,
"execution_timeout": 300
},
"ai": {
"model": "gpt-4o",
"openai_api_key": "your-api-key"
}
}MCP Tool Functions
The MCP Scheduler provides the following tools:
Task Management
list_tasks: Get all scheduled tasksget_task: Get details of a specific taskadd_command_task: Add a new shell command taskadd_api_task: Add a new API call taskadd_ai_task: Add a new AI taskadd_reminder_task: Add a new reminder task with desktop notificationupdate_task: Update an existing taskremove_task: Delete a taskenable_task: Enable a disabled taskdisable_task: Disable an active taskrun_task_now: Run a task immediately
Execution and Monitoring
get_task_executions: Get execution history for a taskget_server_info: Get server information
Cron Expression Guide
MCP Scheduler uses standard cron expressions for scheduling. Here are some examples:
0 0 * * *- Daily at midnight0 */2 * * *- Every 2 hours0 9-17 * * 1-5- Every hour from 9 AM to 5 PM, Monday to Friday0 0 1 * *- At midnight on the first day of each month0 0 * * 0- At midnight every Sunday
Environment Variables
The scheduler can be configured using environment variables:
MCP_SCHEDULER_NAME: Server name (default: mcp-scheduler)MCP_SCHEDULER_VERSION: Server version (default: 0.1.0)MCP_SCHEDULER_ADDRESS: Server address (default: localhost)MCP_SCHEDULER_PORT: Server port (default: 8080)MCP_SCHEDULER_TRANSPORT: Transport mode (default: stdio)MCP_SCHEDULER_LOG_LEVEL: Logging level (default: INFO)MCP_SCHEDULER_LOG_FILE: Log file pathMCP_SCHEDULER_DB_PATH: Database path (default: scheduler.db)MCP_SCHEDULER_CHECK_INTERVAL: How often to check for tasks (default: 5 seconds)MCP_SCHEDULER_EXECUTION_TIMEOUT: Task execution timeout (default: 300 seconds)MCP_SCHEDULER_AI_MODEL: OpenAI model for AI tasks (default: gpt-4o)OPENAI_API_KEY: API key for OpenAI tasks
Examples
Adding a Shell Command Task
await scheduler.add_command_task(
name="Backup Database",
schedule="0 0 * * *", # Midnight every day
command="pg_dump -U postgres mydb > /backups/mydb_$(date +%Y%m%d).sql",
description="Daily database backup",
do_only_once=False # Recurring task
)Adding an API Task
await scheduler.add_api_task(
name="Fetch Weather Data",
schedule="0 */6 * * *", # Every 6 hours
api_url="https://api.weather.gov/stations/KJFK/observations/latest",
api_method="GET",
description="Get latest weather observations",
do_only_once=False
)Adding an AI Task
await scheduler.add_ai_task(
name="Generate Weekly Report",
schedule="0 9 * * 1", # 9 AM every Monday
prompt="Generate a summary of the previous week's sales data.",
description="Weekly sales report generation",
do_only_once=False
)Adding a Reminder Task
await scheduler.add_reminder_task(
name="Team Meeting",
schedule="30 9 * * 2,4", # 9:30 AM every Tuesday and Thursday
message="Don't forget the team standup meeting!",
title="Meeting Reminder",
do_only_once=False
)MCP Auto-discovery Endpoint
When running in SSE (HTTP) mode, MCP Scheduler exposes a well-known endpoint for tool/schema auto-discovery:
Endpoint:
/.well-known/mcp-schema.json(on the HTTP port + 1, e.g., if your server runs on 8080, the schema is on 8081)Purpose: Allows clients and AI assistants to discover all available MCP tools and their parameters automatically.
Example
If you run:
python main.py --transport sse --port 8080You can access the schema at:
http://localhost:8081/.well-known/mcp-schema.jsonExample Response
{
"tools": [
{
"name": "list_tasks",
"description": "List all scheduled tasks.",
"endpoint": "list_tasks",
"method": "POST",
"parameters": {
"type": "object",
"properties": {},
"required": [],
"additionalProperties": false
}
},
{
"name": "add_command_task",
"description": "Add a new shell command task.",
"endpoint": "add_command_task",
"method": "POST",
"parameters": {
"type": "object",
"properties": {
"name": {"type": "string"},
"schedule": {"type": "string"},
"command": {"type": "string"},
"description": {"type": "string"},
"enabled": {"type": "boolean"},
"do_only_once": {"type": "boolean"}
},
"required": ["name", "schedule", "command"],
"additionalProperties": false
}
}
// ... more tools ...
]
}This schema is generated automatically from the registered MCP tools and always reflects the current server capabilities.
Development
If you want to contribute or develop the MCP Scheduler further, here are some additional commands:
# Install the MCP SDK for development
uv pip install "mcp[cli]>=1.4.0"
# Or for FastMCP (alternative implementation)
uv pip install fastmcp
# Testing your MCP server
# With the MCP Inspector tool
mcp inspect --stdio -- python main.py
# Or with a simple MCP client
python -m mcp.client.stdio python main.pyContributing
Contributions are welcome! Please feel free to submit a Pull Request.
Fork the repository
Create your feature branch (
git checkout -b feature/amazing-feature)Commit your changes (
git commit -m 'Add some amazing feature')Push to the branch (
git push origin feature/amazing-feature)Open a Pull Request
License
This project is licensed under the MIT License - see the LICENSE file for details.
Acknowledgments
Built on the Model Context Protocol
Uses croniter for cron parsing
Uses OpenAI API for AI tasks
Uses FastMCP for enhanced MCP functionality
This server cannot be installed
Maintenance
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