Sefaria Jewish Library MCP Server
Provides access to Jewish texts from the Sefaria library.
Sefaria Jewish Library MCP Server
An MCP (Model Context Protocol) server that provides access to Jewish texts from the Sefaria library. This server enables Large Language Models to retrieve and reference Jewish texts through a standardized interface.
Features
- Retrieve Jewish texts by reference
- Retrieve commentaries on a given text
- Search the Jewish library for a query
- Get daily/weekly learning schedule from Sefaria's calendar
Installation
Requires Python 3.10 or higher.
Clone the repository
git clone https://github.com/sivan22/mcp-sefaria-server.git
cd mcp-sefaria-server
Running the Server
The server can be run directly:
uv --directory path/to/directory run sefaria_jewish_library
Or through an MCP client that supports the Model Context Protocol. for claude desktop app and cline you should use the following config:
{
"mcpServers": {
"sefaria_jewish_library": {
"command": "uv",
"args": [
"--directory",
"absolute/path/to/mcp-sefaria-server",
"run",
"sefaria_jewish_library"
],
"env": {
"PYTHONIOENCODING": "utf-8"
}
}
}
}
Installing via Smithery
To install Sefaria Jewish Library for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install mcp-sefaria-server --client claude
Available tools
The server provides the following tools through the MCP interface:
get_text
Retrieves a specific Jewish text by its reference.
Example:
reference: "Genesis 1:1"
reference: "שמות פרק ב פסוק ג"
reference: "משנה ברכות פרק א משנה א"
get_commentaries
Retrieves a list of commentaries for a given text.
Example:
reference: "Genesis 1:1"
reference: "שמות פרק ב פסוק ג"
reference: "משנה ברכות פרק א משנה א"
search_texts
Searches for Jewish texts in the Sefaria library based on a query.
Example:
query: "moshiach"
slop: 1
filters: ["Talmud", "Bavli"]
size: 5
get_daily_learnings
Retrieves the daily or weekly learning schedule from Sefaria's calendar API.
Parameters (all optional):
diaspora(boolean): When true, returns weekly Torah reading for diaspora. When false, returns Torah reading for Israel. Default: truecustom(string): If available, the weekly Haftarah will be returned for the selected customyear,month,day(integers): Specific date (all three must be used together, or API falls back to current date)timezone(string): Timezone name in accordance with IANA Standards
Example:
# Get current day's learning schedule
{}
# Get learning schedule for a specific date in Israel
{
"diaspora": false,
"year": 2024,
"month": 12,
"day": 25,
"timezone": "Asia/Jerusalem"
}
Returns a formatted schedule including:
- Weekly Torah portion (Parashat Hashavua) with aliyot
- Haftarah reading
- Daf Yomi (daily Talmud page)
- Daily Mishnah, Rambam, and other learning cycles
- Various Jewish learning programs and their daily selections
Development
This project uses:
- MCP SDK for server implementation
- Sefaria API for accessing Jewish texts
Requirements
- Python >= 3.10
- MCP SDK >= 1.1.1
- Sefaria API
License
MIT License
Máy chủ liên quan
Azure TableStore
An MCP server for interacting with Azure Table Storage, requiring an Azure Storage connection string.
Hydrolix
Hydrolix time-series datalake integration providing schema exploration and query capabilities to LLM-based workflows.
MCP Trino Server
Integrates with Trino and Iceberg for advanced data exploration, querying, and table maintenance.
PawSQL MCP Server
A SQL optimization service providing performance analysis and optimization suggestions through an API.
Python MSSQL MCP Server
A Python MCP server for Microsoft SQL Server, enabling schema inspection and SQL query execution.
MySQL MCP Server
Integrates with MySQL databases to provide secure database access for LLMs.
SignalLayer
MCP server that generates SQL queries from natural language for web3 social data. Works with Claude Desktop, Cursor, and Windsurf. Free tier: 500 queries/day.
MCP Postgres Query Server
An MCP server for querying a PostgreSQL database in read-only mode.
DigitalOcean Database
Integrate AI-powered IDEs with DigitalOcean managed databases using a DigitalOcean API token.
ogham-mcp
Persistent shared memory for AI agents. Hybrid search (pgvector + tsvector), knowledge graph, cognitive scoring - 97.2% Recall@10 on LongMemEval