NVIDIA MCP
Provides tools for NVIDIA NIM and Visual GenAI APIs, enabling chat completions, model listing, and image generation via NVIDIA-hosted endpoints.
README
NVIDIA MCP
Local MCP server for NVIDIA NIM and Visual GenAI APIs. It exposes small, practical tools for:
- checking NVIDIA API configuration
- listing available NVIDIA models
- running chat completions through NVIDIA-hosted LLMs
- generating images through NVIDIA hosted Visual GenAI endpoints
This repository is a personal MCP wrapper. It does not contain an NVIDIA API key and does not run image generation locally; the MCP process runs on the local machine and calls NVIDIA-hosted APIs for inference.
Key Loading
The server does not store secrets in this repository.
It loads environment variables from:
NVIDIA_MCP_ENV_FILE, when provided- this repository's
.env, when present - process environment variables
Supported key names:
NVIDIA_API_KEYNGC_API_KEYNVIDIA_KEYnvidia-key
nvidia-key is accepted for compatibility with an existing local .env, but NVIDIA_API_KEY is preferred for new setups.
Codex MCP Config
Example:
[mcp_servers.nvidiaMcp]
command = "node"
args = ["/path/to/minsoo-nvidia-mcp/src/server.mjs"]
env_vars = ["NVIDIA_API_KEY", "NGC_API_KEY", "NVIDIA_KEY"]
[mcp_servers.nvidiaMcp.env]
NVIDIA_MCP_ENV_FILE = "/path/to/.env"
NVIDIA_MCP_OUTPUT_DIR = "/path/to/minsoo-nvidia-mcp/output"
Image Generation Defaults
The current default image endpoint is:
https://ai.api.nvidia.com/v1/genai/black-forest-labs/flux.2-klein-4b
The MCP uses short, direct, one-paragraph prompts best for FLUX-style image generation. Avoid committing generated images unless they are intentionally part of an example or release artifact.
Safety Defaults
Image generation defaults to dry_run=true so a tool call can preview the request without consuming API credits. Set dry_run=false only when you intentionally want to generate an image.
GitHub Safety
Before publishing:
- keep
.envuntracked - keep
node_modules/untracked - keep
output/untracked unless intentionally publishing sample output - commit
.env.example, not a real key file
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