Opera Omnia
Access a rich collection of JSON datasets for games, storytelling, and bot development from the Opera Omnia project.
Opera Omnia MCP Server
An MCP server that provides access to the rich collection of JSON datasets from the Opera Omnia project, a comprehensive library of creative content for games, storytelling, and bot development.
Features
- Access to all Opera Omnia datasets
- Random selection from datasets
- Filtering datasets by criteria
- Combining multiple datasets
- Generating creative content using templates
Installation
- Clone this repository
- Install dependencies:
npm install
- Build the project:
npm run build
Usage
Running the Server
npm start
MCP Configuration
Add the following to your MCP settings file:
{
"mcpServers": {
"opera-omnia": {
"command": "node",
"args": ["path/to/opera-omnia-mcp/build/index.js"],
"disabled": false,
"autoApprove": []
}
}
}
Replace path/to/opera-omnia-mcp with the actual path to this project.
Available Tools
list_categories
List all available data categories.
const result = await use_mcp_tool({
server_name: "opera-omnia",
tool_name: "list_categories",
arguments: {}
});
list_datasets
List all datasets within a category.
const result = await use_mcp_tool({
server_name: "opera-omnia",
tool_name: "list_datasets",
arguments: {
category: "characters"
}
});
get_dataset
Get the complete contents of a specific dataset.
const result = await use_mcp_tool({
server_name: "opera-omnia",
tool_name: "get_dataset",
arguments: {
category: "characters",
dataset: "personalities"
}
});
get_random_item
Get a random item from a specific dataset.
const result = await use_mcp_tool({
server_name: "opera-omnia",
tool_name: "get_random_item",
arguments: {
category: "characters",
dataset: "personalities"
}
});
get_filtered_items
Get items from a dataset that match specific criteria.
const result = await use_mcp_tool({
server_name: "opera-omnia",
tool_name: "get_filtered_items",
arguments: {
category: "characters",
dataset: "personalities",
filter: "brave"
}
});
combine_datasets
Combine multiple datasets and get random selections.
const result = await use_mcp_tool({
server_name: "opera-omnia",
tool_name: "combine_datasets",
arguments: {
datasets: [
{ category: "characters", dataset: "personalities" },
{ category: "characters", dataset: "backstories" }
],
count: 3
}
});
generate_content
Generate creative content based on multiple datasets.
const result = await use_mcp_tool({
server_name: "opera-omnia",
tool_name: "generate_content",
arguments: {
template: "A {adjective} {class} must {quest} to obtain {artifact}",
datasets: {
adjective: { category: "attributes", dataset: "adjectives" },
class: { category: "rpg", dataset: "classes" },
quest: { category: "situations", dataset: "quests" },
artifact: { category: "equipment", dataset: "artifacts" }
}
}
});
Available Resources
opera-omnia://categories
List of all available data categories.
const result = await access_mcp_resource({
server_name: "opera-omnia",
uri: "opera-omnia://categories"
});
opera-omnia://category/{category}
List of datasets available in a specific category.
const result = await access_mcp_resource({
server_name: "opera-omnia",
uri: "opera-omnia://category/characters"
});
opera-omnia://dataset/{category}/{dataset}
Contents of a specific dataset.
const result = await access_mcp_resource({
server_name: "opera-omnia",
uri: "opera-omnia://dataset/characters/personalities"
});
Future Enhancements
We have several ideas for future enhancements to the Opera Omnia MCP server:
-
Advanced Content Generation: Add more sophisticated content generation capabilities beyond simple template substitution.
-
Improved Caching: Implement better caching mechanisms for improved performance, especially for frequently accessed datasets.
-
User-Contributed Datasets: Add support for user-contributed datasets, allowing users to extend the available content.
-
Visualization Tools: Create visualization tools for exploring the data and understanding relationships between different datasets.
-
Local Data Files: Add support for local data files as an alternative to fetching from GitHub.
-
Integration Examples: Provide more examples of integrating the MCP server with different applications and frameworks.
Release Notes
For detailed information about the current and past releases, see the RELEASE_NOTES.md file.
License
This project is licensed under the MIT License - see the LICENSE.md file for details.
相关服务器
AlphaFold MCP Server
Access the AlphaFold Protein Structure Database for protein structure prediction and analysis.
Elasticsearch
Connects agents to Elasticsearch data, enabling natural language interaction with indices.
FOCUS DATA MCP Server
Enables AI assistants to query data from DataFocus using natural language.
Vestige MCP
Provides comprehensive DeFi analytics and data for the Algorand ecosystem through the Vestige API.
Vertica MCP Server
Provides read-only access to Vertica databases.
Generect MCP
Generect MCP connects your live lead database directly to AI models like OpenAI or Claude without exports or delays. It streams enriched, up-to-date contact data (titles, firmographics, signals) straight into prompts so LLMs can personalize, score, and recommend leads automatically in real time.
MarkLogic MCP Server by CData
A read-only MCP server by CData for querying live MarkLogic data with LLMs. Requires a separate CData JDBC Driver.
Python MSSQL MCP Server
A Python MCP server for Microsoft SQL Server, enabling schema inspection and SQL query execution.
Firebolt
Connect your LLM to the Firebolt Data Warehouse for data querying and analysis.
Epicor Kinetic MCP Server by CData
A read-only MCP server by CData that enables LLMs to query live data from Epicor Kinetic.