Omilia MCP Tools
A set of tools for managing miniapps, orchestrator apps, and dialog logs on the Omilia Cloud Platform (OCP).
Omilia MCP Tools
This repository contains a set of tools for working with the Omilia Cloud Platform (OCP). These utilities help manage miniapps, orchestrator apps, and dialog logs.
Tools Overview
- search_miniapps: Search for miniapps by name or keyword.
- get_miniapp: Retrieve details for a specific miniapp using its ID.
- set_miniapp_prompt: Update prompts (welcome, error, reaction messages) for a miniapp.
- get_dialog_logs: Fetch logs for a specific dialog session.
- search_orchestrator_apps: Search for Orchestrator apps by keyword.
- get_orchestrator_app: Retrieve the canvas (nodes and edges) for an Orchestrator app by ID.
- search_dialog_logs: Search dialog logs with various filters (date, app, region, etc.).
- search_numbers: Search for phone numbers with optional search term.
- search_variable_collections: Search variable collections with optional search term.
- get_collection_variables: Get a list of all variables in a collection by ID.
Installation
- Make sure you have Python 3.10 or newer installed.
- Install uv.
- Clone this repository and navigate to the project directory.
- Copy the file
.env.exampleto.envand set the appropriate values. - Test if the istallation is correct by running
uv run mcp dev src/main.py. This should open the mcp development server. Click on connect and try it out.
Usage
You can use these tools in two main ways:
1. Self-hosting (MCP Python SDK)
You can run your own MCP server using the official Python MCP SDK. This is the most flexible option and is recommended for advanced users. For full instructions, see the MCP Python SDK README.
2. Local usage with Gemini CLI, Cursor, or Claude Desktop
You can also use this project locally with any MCP-compatible client, such as:
Each of these clients allows you to connect to local MCP servers. For more information, see their respective documentation:
- Gemini CLI: Configuring custom MCP servers
- Claude Desktop: MCP servers
- Cursor: Configuring custom MCP servers
Configuring MCP Servers
To use this project with any of the above clients, you need to configure your MCP servers. For example, you can use the following mcp.json configuration (place it in the appropriate config directory for your client):
{
"mcpServers": {
"Omilia MCP": {
"command": "uv",
"args": [
"run",
"--with",
"mcp",
"mcp",
"run",
"<path_to_cloned_repository>>/omilia-mcp/src/main.py"
],
"env": {
"PATH": "<depending on how you installed the needed tools you may need to paste your PATH here>"
}
}
}
}
Máy chủ liên quan
Scout Monitoring MCP
nhà tài trợPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
nhà tài trợAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
BioMCP
Enhances large language models with protein structure analysis capabilities, including active site analysis and disease-protein searches, by connecting to the RCSB Protein Data Bank.
BerryRAG
A local RAG system with Playwright MCP integration for Claude and OpenAI embeddings, using local storage.
Windows CLI
Interact with Windows command-line interfaces like PowerShell, CMD, Git Bash, and WSL.
mcp-airflow-simple
simple mcp server for Airflow 3 (API version 2)
CodeRabbit
Integrate with CodeRabbit AI for automated code reviews, pull request analysis, and report generation.
Sentry
Retrieve and analyze issues, error reports, and debugging information from Sentry.io.
JSON Diff
A JSON diff tool to compare two JSON strings.
Glif
Run AI workflows from glif.app using the Glif MCP server.
Android Preference Editor
Edit Android preferences using adb and Node.js.
DIY MCP
A from-scratch implementation of the Model Context Protocol (MCP) for building servers and clients, using a Chinese tea collection as an example.