Genji MCP Server
Search and analyze classical Japanese literature using the Genji API, with advanced normalization features.
Genji MCP Server
A Model Context Protocol (MCP) server that provides access to the Genji API for classical Japanese literature analysis and search. This server enables AI assistants like Claude to search and analyze texts from classical Japanese literature with advanced normalization features.
Features
- 🏥 Health Check: Monitor API status and availability
- 🔍 Advanced Text Search: Search classical Japanese texts with sophisticated normalization options
- ⚙️ Normalization Rules: Access and understand text normalization rules
- 🔍 Normalization Preview: Preview how text will be normalized before processing
- 🇯🇵 Classical Japanese Support: Specialized handling of historical Japanese text variations
Installation
npm install -g @nakamura196/genji-mcp-server
Configuration
Add the server to your Claude Desktop configuration file:
macOS
Edit ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"genji": {
"command": "npx",
"args": ["@nakamura196/genji-mcp-server"]
}
}
}
Windows
Edit %APPDATA%/Claude/claude_desktop_config.json:
{
"mcpServers": {
"genji": {
"command": "npx",
"args": ["@nakamura196/genji-mcp-server"]
}
}
}
Alternatively, if you installed globally:
{
"mcpServers": {
"genji": {
"command": "genji-mcp-server"
}
}
}
Usage
After configuration, restart Claude Desktop. The Genji tools will be automatically available. You can ask Claude for classical Japanese literature analysis like:
Health Check
- "Check if the Genji API is working"
- "Is the classical Japanese literature database available?"
Text Search
- "Search for '花' in classical Japanese texts"
- "Find passages containing '源氏' with phonetic normalization"
- "Search for text in volume 1 of Genji Monogatari"
- "Look for '恋' with all normalization options enabled"
Normalization Features
- "What normalization rules are available for classical Japanese?"
- "Preview how '源氏物語' would be normalized"
- "Show me the normalization rules for historical kana"
Available Tools
genji_health_check
Checks the health and availability of the Genji API.
Parameters: None
genji_search
Searches classical Japanese texts with advanced normalization options.
Parameters:
query(string, optional): Search query textlimit(number, optional): Maximum results to return (1-100, default: 20)offset(number, optional): Number of results to skip (default: 0)sort(string, optional): Sort order for resultsexpand_repeat_marks(boolean, optional): Expand repeat marks (default: true)unify_kanji_kana(boolean, optional): Unify kanji/kana variations (default: true)unify_historical_kana(boolean, optional): Unify historical kana (default: true)unify_phonetic_changes(boolean, optional): Unify phonetic variations (default: true)unify_dakuon(boolean, optional): Unify voiced sound variations (default: true)vol_str(array, optional): Volume/chapter filter
genji_get_normalization_rules
Retrieves the list of available text normalization rules.
Parameters: None
genji_preview_normalization
Previews how text would be normalized with current rules.
Parameters:
text(string, required): Text to preview normalization for
Text Normalization Features
The server supports various normalization options for classical Japanese text:
- Repeat Marks Expansion: Converts repeat marks (々, ゝ, ゞ) to full characters
- Kanji-Kana Unification: Handles variations between kanji and kana representations
- Historical Kana Unification: Normalizes historical kana usage to modern equivalents
- Phonetic Changes: Accounts for historical phonetic variations
- Dakuon Unification: Handles voiced/unvoiced sound variations
Requirements
- Node.js 16.0.0 or higher
- Internet connection for API access
- Access to the Genji API (https://genji-api.aws.ldas.jp)
Development
# Clone the repository
git clone https://github.com/nakamura196/genji-mcp-server.git
cd genji-mcp-server
# Install dependencies
npm install
# Build the project
npm run build
# Start in development mode
npm run dev
API Reference
This server interfaces with the Genji API, which provides:
- Full-text search of classical Japanese literature
- Advanced text normalization for historical Japanese
- Metadata about literary works and volumes
- Health monitoring endpoints
Error Handling
The server includes comprehensive error handling for:
- API connectivity issues
- Invalid search parameters
- Text encoding problems
- Normalization errors
- Rate limiting (if applicable)
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
License
MIT License - see the LICENSE file for details.
Support
If you encounter any issues, please file them on the GitHub Issues page.
Related Projects
- Genji API - The underlying API for classical Japanese literature
- Model Context Protocol - The protocol this server implements
Changelog
1.0.1
- Fix API URL references in documentation
- Remove unused TypeScript interfaces for cleaner code
- Update documentation links
1.0.0
- Initial release
- Health check functionality
- Advanced text search with normalization options
- Normalization rules management
- Text normalization preview
- Full classical Japanese text analysis support
관련 서버
Wolfram Alpha
Access Wolfram Alpha's computational knowledge engine for expert-level answers and data analysis.
AllTrails
Search for hiking trails and get detailed trail information from AllTrails.
PBS API
Access Australian Pharmaceutical Benefits Scheme data for medicine information, pricing, and availability. Built with Python and FastAPI.
Everything MCP Server
MCP server for Everything (voidtools) file search
Meilisearch
Interact & query with Meilisearch (Full-text & semantic search API)
grep.app Code Search
Search code across millions of public GitHub repositories using the grep.app API.
Perplexity Ask MCP Server
A connector for the Perplexity API to enable web search within the MCP ecosystem.
Not Human Search
MCP search engine for agent-native services. Find 8,600+ APIs, MCP servers, and agentic sites ranked by agentic readiness score (llms.txt, OpenAPI, ai-plugin, MCP) - live MCP endpoint at nothumansearch.ai/mcp with 8 tools.
Hermes Search
Provides full-text and semantic search over structured and unstructured data using Azure Cognitive Search.
Facebook Ads Library
Get any answer from the Facebook Ads Library, conduct deep research including messaging, creative testing and comparisons in seconds.