Watson Discovery
A server based on the Model Context Protocol (MCP) for securely interacting with Watson Discovery and supporting query operations through natural language processing.
rating : 2 points
downloads : 6
What is the Watson Discovery MCP Server?
The Watson Discovery MCP Server is a secure and efficient tool for connecting AI assistants with IBM Watson Discovery. It allows users to list projects, query collections, and perform complex searches through natural language processing.How to use the Watson Discovery MCP Server?
First, set the environment variables and install the necessary dependencies, then start the server. You can integrate this server directly into a desktop application or run it separately.Applicable Scenarios
Suitable for enterprise scenarios that require rapid retrieval of large amounts of documents, such as the legal, financial, and medical industries.Main Features
List Available ProjectsEasily view all your projects in Watson Discovery.
List Collections in a ProjectBrowse the specific content collections of each project.
Natural Language Processing QueryQuickly obtain the required information through simple natural language input.
Advantages and Limitations
Advantages
Powerful natural language processing capabilities
Support for multi - platform integration
High - security guarantee
Limitations
Requires proper API key configuration
Has certain requirements for the network environment
How to Use
Install Dependencies
Ensure that Python and the uv tool are installed. Run `uv install` to install the necessary dependencies.
Start the Server
Run the following command to start the MCP server: `uv run main-py`.
Usage Examples
List All ProjectsUse the MCP server to list all available Watson Discovery projects.
Perform a Natural Language QueryPerform complex query tasks through natural language input.
Frequently Asked Questions
How to set the environment variables?
Does the server support multiple languages?
Related Resources
Official Documentation
Detailed API documentation and usage guides.
GitHub Repository
Source code and contribution guides.
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