DanilaFe/chapel-support
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A Model-Context-Protocol (MCP) server for the Chapel programming language, providing tools for working with Chapel code, accessing primers and examples, and integrating Chapel functionality with AI assistants and other tools.
Chapel Support for MCP
A Model-Context-Protocol (MCP) server for the Chapel programming language, providing tools for working with Chapel code, accessing primers and examples, and integrating Chapel functionality with AI assistants and other tools.
What is Chapel?
Chapel is an open-source parallel programming language designed for productive parallel computing at scale. It aims to improve the programmability of parallel computers while matching or beating the performance and portability of current programming models like MPI, OpenMP, and CUDA.
Features
This MCP server provides the following Chapel support functionality:
- Chapel Primer Access: Browse and access Chapel's educational primer examples
- Code Compilation: Compile Chapel code directly through the API
- Linting: Check Chapel code for style and best practices using
chplcheck
and apply automatic fixes - Smart CHPL_HOME Detection: Automatically locate Chapel's installation directory
Prerequisites
- Python 3.13 or higher
- Chapel programming language installed (see Chapel installation guide)
- (Optional)
chplcheck
for linting functionality
Installation
-
Clone this repository:
git clone <repository-url> cd chapel-support
-
Create and activate a virtual environment with UV:
uv venv source .venv/bin/activate # On Windows: .venv\Scripts\activate
-
Synchronize the environment with project dependencies:
uv sync
Configuration
The MCP server needs to know the location of your Chapel installation (CHPL_HOME). It will try to find it in this order:
- From the
CHPL_HOME
environment variable - From a
.env
file in the project root - By running
chpl --print-chpl-home
if the Chapel compiler is in your PATH
To use a .env
file, create one in the project root with:
CHPL_HOME=/path/to/your/chapel/installation
See .env.example
for a template.
Usage
Running the MCP Server
uv run chapel-support.py
This will start the MCP server in stdio transport mode using your virtual environment.
Integrating with AI Assistants or Tools
To use this MCP server with AI assistants or other tools, configure them to connect to this server. For example, in a client configuration file:
{
"context_servers": {
"chapel-support": {
"command": {
"path": "uv",
"args": [
"run",
"--directory",
"/path/to/chapel-support",
"chapel-support.py"
],
"env": {}
},
"settings": {}
}
}
}
Note: Adjust the directory path to the location of your chapel-support installation.
Available Tools
list_primers()
Gets the list of available Chapel primers.
Returns: A list of paths to primer files relative to CHPL_HOME.
get_primer(path: str)
Retrieves the content of a specific Chapel primer.
Parameters:
path
: The path to the primer, as returned bylist_primers()
Returns: The content of the primer as a string.
compile_program(program_text: str, program_name: str = "program.chpl")
Compiles a Chapel program.
Parameters:
program_text
: The Chapel code to compileprogram_name
: Optional name for the program file (default: "program.chpl")
Returns: A tuple containing:
- Success status (boolean)
- Compiler output/errors (string)
list_chapel_lint_rules()
Lists all available Chapel linting rules from chplcheck
.
Returns: A list of dictionaries with rule information:
name
: Rule namedescription
: Rule descriptionis_default
: Whether the rule is enabled by default
lint_chapel_code(program_text: str, program_name: str = "program.chpl", fix: bool = False, custom_rules: Optional[List[str]] = None)
Lints Chapel code and optionally applies fixes.
Parameters:
program_text
: The Chapel code to lintprogram_name
: Optional name for the program file (default: "program.chpl")fix
: Whether to apply automatic fixes (default: False)custom_rules
: List of specific rules to enable (default: None, uses default rules)
Returns: A dictionary containing:
warnings
: String containing linting warningsfixed_code
: The fixed code iffix=True
error
: Error message if something went wrongstats
: Statistics about the linting process
Contributing
Contributions are welcome! Please feel free to submit pull requests or open issues.