
BlobGuard MCP
A lightweight, multi-tenant blob storage and diff server that helps LLM coding agents manage large code edits while reducing hallucinations and maintaining work integrity.
README
BlobGuard MCP
BlobGuard MCP is a lightweight, session-isolated blob storage and diff server designed for LLM coding agents making large or frequent code edits. It helps offload text processing overhead, avoid hallucinations, and maintain fidelity of in-progress work.
Purpose
BlobGuard MCP provides a multi-tenant, in-memory blob storage and diffing service, purpose-built for LLM coding agents. By handling blob storage and diffing outside the agent, it enables efficient, accurate management of large or numerous code changes, reducing hallucination risk and preserving the integrity of ongoing work.
Multi-Session Support
This server is designed to be multi-tenant. It automatically creates a unique, isolated workspace for every client connection.
All blobs are automatically namespaced based on the connection. This means that multiple users or applications can interact with the server simultaneously without their data interfering with one another, ensuring a secure and predictable experience without any required client-side configuration.
Installation
To get started with BlobGuard MCP, follow these installation instructions.
-
Clone the Repository:
git clone https://github.com/Voidious/blobguard-mcp.git cd blobguard-mcp
-
Create and Activate a Virtual Environment:
For macOS/Linux:
python3 -m venv .venv source .venv/bin/activate
For Windows:
python -m venv .venv .\.venv\Scripts\activate
-
Install Dependencies: Install the required Python packages using the
requirements.txt
file.pip install -r requirements.txt
Usage
BlobGuard MCP is designed to be used as a server with an MCP-compatible client, such as an AI coding assistant in an editor like Cursor or VS Code.
To configure the server, find the "MCP Tools" or "MCP Servers" settings in your editor's configuration. Then, add a new server configuration block like this:
For macOS/Linux/Windows (Git Bash/WSL/Cygwin):
"blobguard": {
"command": "/path/to/your/clone/of/blobguard-mcp/run.sh"
}
For Windows (Command Prompt or PowerShell):
"blobguard": {
"command": "C:\\path\\to\\your\\clone\\of\\blobguard-mcp\\run.bat"
}
Make sure to replace the path with the actual location of the script in your cloned repository. The script will automatically activate the virtual environment and run the server.
Note: Use run.sh
for Unix-like shells (macOS, Linux, Git Bash, WSL, Cygwin) and run.bat
for native Windows Command Prompt or PowerShell.
Once configured, your AI coding assistant will be able to use the BlobGuard MCP tools.
Starting the Server with Streamable HTTP
By default, the server runs using stdio transport (suitable for local tools and editor integration). To run the server as a Streamable HTTP service (recommended for web-based deployments or remote access), use the --http
flag:
python main.py --http
You can also specify a custom host and port:
python main.py --http --host 0.0.0.0 --port 9000
--http
: Start the server with Streamable HTTP (instead of stdio)--host
: Host for HTTP server (default: 127.0.0.1)--port
: Port for HTTP server (default: 8000)
Note: The run.sh
and run.bat
scripts also support these arguments and will pass them to main.py
. For example:
./run.sh --http --host 0.0.0.0 --port 9000
or on Windows:
run.bat --http --host 0.0.0.0 --port 9000
If you omit --http
, the server will use stdio transport (default behavior):
python main.py
Usage Rules for AI-Assisted Coding Editors
For best results with BlobGuard MCP, load the file blobguard-rules.md into your AI-assisted coding editor (such as Cursor or Windsurf) as rules. This enables your coding assistant to follow best practices and use BlobGuard MCP efficiently and effectively. You may also read the file if you wish, but its main purpose is to serve as a ruleset for your coding assistant.
Available Tools
save_blob
Save a blob with a given name and optional metadata.
Parameters:
name
(str): The unique name for the blob.content
(str): The content to store in the blob.metadata
(dict, optional): Optional metadata to associate with the blob.force
(bool, optional): If True, overwrite any existing blob with the same name. Default is False.
Returns:
dict
:{ "success": True }
if saved, or{ "error": ... }
if the blob exists and force is not set.
Example:
save_blob(name="foo", content="hello world", metadata={"author": "alice"})
get_blob
Retrieve a blob and its metadata by name.
Parameters:
name
(str): The name of the blob to retrieve.
Returns:
dict
:{ "content": content, "metadata": metadata }
if found, or{ "error": ... }
if not found.
Example:
get_blob(name="foo")
diff
Return a unified diff between two blobs by name, similar to the output of the diff command.
Parameters:
name1
(str): The name of the first blob.name2
(str): The name of the second blob.
Returns:
dict
:{ "diff": unified_diff_string }
if both blobs exist, or{ "error": ... }
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