Converts arXiv PDF documents to markdown format, with support for table extraction and image extraction from the documents.
Integrates with Llama Stack (hosted on GitHub) to provide document processing capabilities to LLM applications built with the Llama Stack framework.
Converts various document formats to markdown, with support for embedded images extraction and OCR capabilities for scanned documents.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@MCP Docling Serverconvert this PDF to markdown and extract the tables"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
MCP Docling Server
An MCP server that provides document processing capabilities using the Docling library.
Installation
You can install the package using pip:
pip install -e .Related MCP server: MarkItDown MCP Server
Usage
Start the server using either stdio (default) or SSE transport:
# Using stdio transport (default)
mcp-server-lls
# Using SSE transport on custom port
mcp-server-lls --transport sse --port 8000If you're using uv, you can run the server directly without installing:
# Using stdio transport (default)
uv run mcp-server-lls
# Using SSE transport on custom port
uv run mcp-server-lls --transport sse --port 8000Available Tools
The server exposes the following tools:
convert_document: Convert a document from a URL or local path to markdown format
source: URL or local file path to the document (required)enable_ocr: Whether to enable OCR for scanned documents (optional, default: false)ocr_language: List of language codes for OCR, e.g. ["en", "fr"] (optional)
convert_document_with_images: Convert a document and extract embedded images
source: URL or local file path to the document (required)enable_ocr: Whether to enable OCR for scanned documents (optional, default: false)ocr_language: List of language codes for OCR (optional)
extract_tables: Extract tables from a document as structured data
source: URL or local file path to the document (required)
convert_batch: Process multiple documents in batch mode
sources: List of URLs or file paths to documents (required)enable_ocr: Whether to enable OCR for scanned documents (optional, default: false)ocr_language: List of language codes for OCR (optional)
qna_from_document: Create a Q&A document from a URL or local path to YAML format
source: URL or local file path to the document (required)no_of_qnas: Number of expected Q&As (optional, default: 5)Note: This tool requires IBM Watson X credentials to be set as environment variables:
WATSONX_PROJECT_ID: Your Watson X project IDWATSONX_APIKEY: Your IBM Cloud API keyWATSONX_URL: The Watson X API URL (default: https://us-south.ml.cloud.ibm.com)
get_system_info: Get information about system configuration and acceleration status
Example with Llama Stack
https://github.com/user-attachments/assets/8ad34e50-cbf7-4ec8-aedd-71c42a5de0a1
You can use this server with Llama Stack to provide document processing capabilities to your LLM applications. Make sure you have a running Llama Stack server, then configure your INFERENCE_MODEL
from llama_stack_client.lib.agents.agent import Agent
from llama_stack_client.lib.agents.event_logger import EventLogger
from llama_stack_client.types.agent_create_params import AgentConfig
from llama_stack_client.types.shared_params.url import URL
from llama_stack_client import LlamaStackClient
import os
# Set your model ID
model_id = os.environ["INFERENCE_MODEL"]
client = LlamaStackClient(
base_url=f"http://localhost:{os.environ.get('LLAMA_STACK_PORT', '8080')}"
)
# Register MCP tools
client.toolgroups.register(
toolgroup_id="mcp::docling",
provider_id="model-context-protocol",
mcp_endpoint=URL(uri="http://0.0.0.0:8000/sse"))
# Define an agent with MCP toolgroup
agent_config = AgentConfig(
model=model_id,
instructions="""You are a helpful assistant with access to tools to manipulate documents.
Always use the appropriate tool when asked to process documents.""",
toolgroups=["mcp::docling"],
tool_choice="auto",
max_tool_calls=3,
)
# Create the agent
agent = Agent(client, agent_config)
# Create a session
session_id = agent.create_session("test-session")
def _summary_and_qna(source: str):
# Define the prompt
run_turn(f"Please convert the document at {source} to markdown and summarize its content.")
run_turn(f"Please generate a Q&A document with 3 items for source at {source} and display it in YAML format.")
def _run_turn(prompt):
# Create a turn
response = agent.create_turn(
messages=[
{
"role": "user",
"content": prompt,
}
],
session_id=session_id,
)
# Log the response
for log in EventLogger().log(response):
log.print()
_summary_and_qna('https://arxiv.org/pdf/2004.07606')Caching
The server caches processed documents in ~/.cache/mcp-docling/ to improve performance for repeated requests.