Sefaria MCP Server
Enables LLMs to access and search Jewish texts from the Sefaria library through 15 MCP tools, including text retrieval, search, and manuscript access.
README
Sefaria MCP Server
A modern MCP (Model Context Protocol) server for accessing the Jewish library via the Sefaria API.
What does this server do?
This server exposes the Sefaria Jewish library as a set of 15 MCP tools, allowing LLMs and other MCP clients to:
Primary Tools:
- get_text - Retrieve Jewish texts by reference (e.g., "Genesis 1:1")
- text_search - Search across the entire Jewish library
- get_current_calendar - Get situational Jewish calendar information
- english_semantic_search - Semantic similarity search on English text embeddings (Currently only works from official Sefaria MCP)
Core Tools:
- get_links_between_texts - Find cross-references and connections between texts
- search_in_book - Search within a specific book or text work
- search_in_dictionaries - Search Jewish reference dictionaries
Support Tools:
- get_english_translations - Retrieve all available English translations for a text
- get_topic_details - Retrieve detailed information about topics in Jewish thought
- clarify_name_argument - Autocomplete and validate text names, book titles, and topics
- clarify_search_path_filter - Convert book names to proper search filter paths
Structure Tools:
- get_text_or_category_shape - Explore the hierarchical structure of texts and categories
- get_text_catalogue_info - Get bibliographic and structural information (index) for a work
Manuscript Tools:
- get_available_manuscripts - Access historical manuscript metadata and image URLs
- get_manuscript_image - Download and process specific manuscript images
All endpoints are optimized for LLM consumption (compact, relevant, and structured responses).
What is MCP?
MCP (Model Context Protocol) is an open protocol for connecting Large Language Models (LLMs) to external tools, APIs, and knowledge sources. It enables LLMs to retrieve, reference, and interact with structured data and external services in a standardized way. Learn more in the MCP documentation.
How to Run
Prerequisites
- Python 3.10+
- Docker (optional, for containerized deployment)
Local Development
- Install dependencies:
pip install -e . - Run the server:
The server will be available atpython -m sefaria_mcp.mainhttp://127.0.0.1:8088/sseby default. SetSEFARIA_MCP_PORTto override the SSE/API port (e.g.,SEFARIA_MCP_PORT=8089 python -m sefaria_mcp.main). Prometheus metrics bind separately onSEFARIA_MCP_METRICS_PORT(default9090).
Docker
- Build the image:
docker build -t sefaria-mcp . - Run the container:
The server will be available atdocker run -d --name sefaria-mcp \ -e SEFARIA_MCP_PORT=8089 \ -e SEFARIA_MCP_METRICS_PORT=9090 \ -p 8089:8089 \ -p 9090:9090 \ sefaria-mcphttp://localhost:8089/sseand metrics athttp://localhost:9090/(adjust the port mappings as needed).
Usage
- Connect your MCP-compatible client to the
/sseendpoint. - All tool endpoints are available via the MCP protocol.
Monitoring
- Prometheus metrics are exposed via the standalone HTTP server started on
SEFARIA_MCP_METRICS_PORT(defaults to9090). - Scrape
http://localhost:9090/(or your configured host/port). Metrics include:mcp_tool_calls_total{tool_name,status}– call counts per tool and status.mcp_tool_duration_seconds{tool_name}– histogram of per-call durations.mcp_tool_payload_bytes{tool_name}– histogram of response payload sizes.mcp_errors_total{tool_name,error_type}– per-tool error counts.mcp_active_connections– current SSE connection gauge.- Standard FastAPI instrumentation (request rate, latency, status codes, in-progress requests, etc.) from
prometheus_fastapi_instrumentator.
Commit Hygiene
This repo uses semantic commits with the fix, feat, and chore keywords.
Acknowledgments
Special thanks to @Sivan22 for pioneering the first Sefaria MCP server (mcp-sefaria-server), which inspired this project and the broader effort to make Jewish texts accessible to LLMs and modern AI tools.
License
MIT
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