Deep Research MCP Server
Open Deep Research MCP Server is an AI - driven deep research assistant that conducts iterative deep research by combining search engines, web scraping, and AI technology to generate comprehensive reports. It supports two usage methods: MCP protocol and CLI, and has functions such as reliability assessment, scope control, and automatic generation of follow - up questions.
rating : 2.5 points
downloads : 94
What is Open Deep Research MCP Server?
This is an AI research assistant that can automatically perform deep iterative research. It combines search engines, web scraping, and AI analysis technologies. By setting the research depth and breadth parameters, it generates detailed research reports including reliability assessments. It can be used as a Model Context Protocol (MCP) tool or an independent CLI.How to use Open Deep Research MCP Server?
After providing the research topic, the system will generate targeted search queries, evaluate the reliability of sources (0 - 1 score), prioritize the use of high - reliability sources (≥0.7), and gradually delve into the topic through iterative research. Finally, it generates a Markdown report containing findings, sources, and reliability assessments.Applicable scenarios
Scenarios that require in - depth information mining, such as academic research, market analysis, technology research, and research preparation before content creation. It is particularly suitable for research needs that require verification of the reliability of information sources.Main features
Deep iterative researchConduct multiple rounds of research by generating targeted search queries and gradually delve into the topic
Reliability assessmentGive a reliability score of 0 - 1 to each source and provide reasons for the assessment
Parameterized controlPrecisely control the research scope through the depth and breadth parameters
Multi - platform supportIt can be integrated into AI agents as an MCP tool or used as an independent CLI
Report generationAutomatically generate Markdown reports containing findings, sources, and reliability assessments
Advantages and limitations
Advantages
Automate the deep research process and save time on manual information collection
The reliability scoring system helps to screen high - quality information sources
Flexible parameter control can adapt to different research needs
Support local deployment to avoid API restrictions
Limitations
The MCP version currently does not support the function of asking follow - up questions
It depends on the quality of search engine results
Basic technical capabilities are required for local deployment
How to use
Installation preparation
Clone the repository and install dependencies
Environment configuration
Copy the example environment file and modify the configuration as needed
Build the project
Compile the server code
Run the research
Use the CLI version to execute research queries
Integrate into Claude Desktop
Add the service to Claude Desktop according to the MCP server quick - start guide
Usage examples
Academic researchExplore the latest developments in a specific academic field in depth
Market analysisObtain in - depth analysis of market trends in a specific industry
Frequently asked questions
How to evaluate the reliability of sources?
What are the advantages of local Firecrawl?
What is the difference between the depth and breadth parameters?
What is the format of the report?
Related resources
GitHub repository
Project source code and latest updates
MCP protocol official website
Official documentation of the Model Context Protocol
Local Firecrawl branch
A local version of Firecrawl using searXNG as the search backend
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