docscanner-mcp
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., "@docscanner-mcprun readability_score on this text"
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.
DocScanner MCP Server v1
DocScanner MCP Server v1 exposes a lightweight documentation review workflow through MCP tools.
It is designed for end users who want to review plain text documents from an MCP-compatible client such as Claude Desktop, Cursor, or VS Code MCP integrations.
What This Server Does
The server provides 4 tools:
review_document
readability_score
style_check
summarize_document
It also provides 2 read-only resources:
style-guide://main
rules://review
Related MCP server: docx-mcp
High-Level Flow
You send document text from an MCP client.
The client calls one of the DocScanner tools.
The tool returns structured JSON results.
You use the response directly, or ask the client to rework your text.
Project Layout
server.py: MCP entry point and tool/resource registration.
tools/review.py: Rule-based issue detection (passive voice, long sentences).
tools/readability.py: Flesch score and grade level.
tools/style.py: Style violations (future tense, sentence length).
tools/summary.py: Basic extractive summary.
resources/style_guide.md: Style guide text served as an MCP resource.
resources/review_rules.md: Review rule categories served as an MCP resource.
smoke_test.py: Local smoke test for all four tools.
Prerequisites
Python 3.10 or newer
pip
Installation
From the project root, install dependencies:
pip install -r requirements.txtIf needed, install directly:
pip install mcp textstatRunning The MCP Server
Start the server from the project root:
python server.pyThe process stays active and waits for MCP client requests.
Connecting From An MCP Client
Configure your MCP client to launch this server with Python.
Command:
pythonArguments:
server.pyWorking directory:
docscanner-mcp project rootAfter connecting, the client should discover:
Tools: review_document, readability_score, style_check, summarize_document
Resources: style-guide://main, rules://review
Tool Reference
1) review_document
Input:
{
"document": "content here"
}Output shape:
{
"issues": [
{
"severity": "high",
"message": "Avoid passive voice"
}
]
}Current behavior:
Returns severity/message issues.
Detects passive voice patterns.
Flags sentences longer than 25 words.
Returns one medium issue when the document is empty.
2) readability_score
Input:
{
"document": "content here"
}Output shape:
{
"flesch_score": 62.5,
"grade_level": 8
}Current behavior:
Computes Flesch Reading Ease using textstat.
Computes Flesch-Kincaid grade level.
Rounds score to one decimal.
Returns zeros for empty input.
3) style_check
Input:
{
"document": "content here"
}Output shape:
{
"violations": [
"Future tense detected",
"Sentence too long"
]
}Current behavior:
Detects future tense keywords: will, shall, going to.
Flags sentences longer than 25 words.
Returns an empty violations list for empty input.
4) summarize_document
Input:
{
"document": "content here"
}Output shape:
{
"summary": "..."
}Current behavior:
Uses the first two sentences as a concise summary.
Truncates long summary text to about 300 characters.
Returns a fallback message for empty input.
Resource Reference
style-guide://main
Serves this guidance:
Use active voice.
Use sentence case.
Avoid future tense.
Keep sentences under 25 words.
rules://review
Serves rule categories:
Passive Voice
Readability
Terminology
Capitalization
Formatting
Example End-User Prompts
Use prompts like these in your MCP client:
Review this document using review_document and list high severity issues first.
Run readability_score on this text and explain if grade_level is suitable for general users.
Run style_check and rewrite only the violating sentences.
Summarize this document in two concise sentences using summarize_document.
Read style-guide://main first, then review my text against it.
Local Smoke Test
A small smoke test is included to verify all tools at once:
python smoke_test.pyExpected result:
JSON output that includes keys for all 4 tools.
Non-empty values for most fields when sample text is present.
Troubleshooting
ModuleNotFoundError for mcp or textstat
Install dependencies again:
pip install -r requirements.txtServer starts but client cannot discover tools
Check:
The client command points to python.
Arguments include server.py.
Working directory is the project root.
The process starts without Python errors.
Empty or weak analysis results
Check document input quality:
Ensure the document field contains plain text.
Use multiple sentences for better summary/readability output.
Avoid sending only headings or very short snippets.
Notes On v1 Scope
This version intentionally stays small and deterministic.
No file parsing (PDF, DOCX) yet
No RAG retrieval pipeline yet
No GitLab integration yet
This keeps setup simple and makes behavior easy to validate before expanding to later versions.
This server cannot be installed
Maintenance
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.
Latest Blog Posts
MCP directory API
We provide all the information about MCP servers via our MCP API.
curl -X GET 'https://glama.ai/api/mcp/v1/servers/Tharun135/docscanner-mcp'
If you have feedback or need assistance with the MCP directory API, please join our Discord server