Skip to main content
Glama

mcp-my-mac

Server Configuration

Describes the environment variables required to run the server.

NameRequiredDescriptionDefault

No arguments

Schema

Prompts

Interactive templates invoked by user choice

NameDescription

No prompts

Resources

Contextual data attached and managed by the client

NameDescription

No resources

Tools

Functions exposed to the LLM to take actions

NameDescription
mcp_call_conda_info

Get comprehensive information about the Conda installation on this system.

If env_name is provided, it will return the information for the specified environment as well. Returns detailed information including: - Conda version and configuration - Python version and virtual packages - Base environment location - Channel URLs and package cache locations - Platform and system details - Complete list of all Conda environments with their paths - Complete list of all packages in the specified environment and their versions This is useful for diagnosing Conda-related issues or understanding the Python environment configuration on this system.
mcp_call_mac_system_profiler
Call the system_profiler with the given datatype. Allow LLM to deepdive into the system information. This function is used to get the system information to help user to understand the system and potentially debug. Allowed datatypes: - SPAirPortDataType - Airport/WiFi information - SPApplicationsDataType - Application information - SPAudioDataType - Audio device information - SPBluetoothDataType - Bluetooth information - SPCameraDataType - Camera information - SPDiagnosticsDataType - Diagnostic information - SPDisplaysDataType - Display and graphics information - SPFirewallDataType - Firewall settings - SPHardwareDataType - Hardware specifications - SPLocationDataType - Location services information - SPMemoryDataType - Memory information - SPNetworkDataType - Network settings and interfaces - SPNVMeDataType - NVMe storage details - SPPCIDataType - PCI devices information - SPPowerDataType - Battery and power information - SPSoftwareDataType - Software and OS information - SPStorageDataType - Storage devices and volumes - SPThunderboltDataType - Thunderbolt ports and connections - SPUSBDataType - USB devices and connections
mcp_call_gpu_available
Check if GPU is available in torch for a specific conda environment. Input: torch or tensorflow if framework is not provided, it will default to torch. Returns a detailed dictionary with the following information: - "torch_version": PyTorch version string - "python_version": Python version string - "platform": Platform information string - "processor": Processor type - "architecture": CPU architecture - "mps_available": True if MPS (Metal Performance Shaders) is available - "mps_built": True if PyTorch was built with MPS support - "mps_functional": True if MPS is functional, False otherwise - "benchmarks": A list of benchmark results for different matrix sizes, each containing: - "size": Matrix size used for benchmark - "cpu_time": Time taken on CPU (seconds) - "mps_time": Time taken on MPS (seconds) - "speedup": Ratio of CPU time to MPS time (higher means MPS is faster) This helps determine if GPU acceleration via Apple's Metal is properly configured and functioning, with performance benchmarks for comparison.

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/zhongmingyuan/mcp-my-mac'

If you have feedback or need assistance with the MCP directory API, please join our Discord server