Cloudinary Media Generation Server
FreeNot checkedEnables generating images from text prompts using various AI models (FLUX, Recraft, GPT Image, etc.) and automatically delivering them through Cloudinary's plat
About
Enables generating images from text prompts using various AI models (FLUX, Recraft, GPT Image, etc.) and automatically delivering them through Cloudinary's platform.
README
Summary
Image Generation API: Use the Image Generation API to generate images from text prompts using various AI models.
The API supports Basic Authentication using your Cloudinary API Key and API Secret, which can be found on the API Keys page of your Cloudinary Console.
Key Features:
- Unified API: A single interface for generating images across multiple best-in-class AI models.
- Cloudinary Integration: Generated images are automatically available for delivery, transformation, and optimization through Cloudinary's platform.
- Future-proof: Adopt new state-of-the-art models as they become available, without rebuilding your integration.
Supported Model Families:
- flux: Photorealistic images (FLUX.2 Klein 9B / FLUX.2 Pro).
- recraft: Vector and illustration (Recraft V3 / Recraft V4).
- gpt-image: Campaign and marketing images (GPT Image 1 Mini / GPT Image 2).
- nano-banana: General purpose generation (Nano Banana 1 / Nano Banana 2).
- ideogram: Realism, text rendering, and artistic generation (Ideogram V4).
The Image Generation API requires the Cloudinary Image Generation add-on.
Note:
This is an early version of our Image Generation API. As the capability grows, certain features and endpoints may be adjusted. We invite you to try it out and share your feedback with our support team.
Table of Contents
Installation
Claude Desktop
Install the MCP server as a Desktop Extension using the pre-built mcp-server.mcpb file:
Simply drag and drop the mcp-server.mcpb file onto Claude Desktop to install the extension.
The MCP bundle package includes the MCP server and all necessary configuration. Once installed, the server will be available without additional setup.
[!NOTE] MCP bundles provide a streamlined way to package and distribute MCP servers. Learn more about Desktop Extensions.
Cursor
Or manually:
- Open Cursor Settings
- Select Tools and Integrations
- Select New MCP Server
- If the configuration file is empty paste the following JSON into the MCP Server Configuration:
{
"command": "npx",
"args": [
"@cloudinary/media-generation-mcp",
"start",
"--api-key",
"",
"--api-secret",
"",
"--cloud-name",
""
]
}
Claude Code CLI
claude mcp add CloudinaryMediaGeneration -- npx -y @cloudinary/media-generation-mcp start --api-key --api-secret --cloud-name
Gemini
gemini mcp add CloudinaryMediaGeneration -- npx -y @cloudinary/media-generation-mcp start --api-key --api-secret --cloud-name
Windsurf
Refer to Official Windsurf documentation for latest information
- Open Windsurf Settings
- Select Cascade on left side menu
- Click on
Manage MCPs. (To Manage MCPs you should be signed in with a Windsurf Account) - Click on
View raw configto open up the mcp configuration file. - If the configuration file is empty paste the full json
{
"command": "npx",
"args": [
"@cloudinary/media-generation-mcp",
"start",
"--api-key",
"",
"--api-secret",
"",
"--cloud-name",
""
]
}
VS Code
Or manually:
Refer to Official VS Code documentation for latest information
- Open Command Palette
- Search and open
MCP: Open User Configuration. This should open mcp.json file - If the configuration file is empty paste the full json
{
"command": "npx",
"args": [
"@cloudinary/media-generation-mcp",
"start",
"--api-key",
"",
"--api-secret",
"",
"--cloud-name",
""
]
}
Stdio installation via npm
To start the MCP server, run:npx @cloudinary/media-generation-mcp start --api-key --api-secret --cloud-name
For a full list of server arguments, run:
npx @cloudinary/media-generation-mcp --help
Custom server / non-default host
By default the server talks to the production Cloudinary API
(https://api.cloudinary.com/v2). To point it at a different host — staging, a
regional endpoint, or a local mock — pass --server-url (or for clients that
use a config block, add it to args):
npx @cloudinary/media-generation-mcp start \
--api-key --api-secret --cloud-name \
--server-url https://api-eu.cloudinary.com/v2
In a client config block:
{
"command": "npx",
"args": [
"@cloudinary/media-generation-mcp",
"start",
"--api-key", "",
"--api-secret", "",
"--cloud-name", "",
"--server-url", "https://api-eu.cloudinary.com/v2"
]
}
Notes:
- Keep the
/v2suffix. Operation paths (/processing/{cloud_name}/...) are appended to this base, so a host without/v2will return 404s. --server-urloverrides the URL entirely.--server-indexselects from the schema'sserverslist, which currently has a single entry, so only--server-index 0is valid — use--server-urlfor anything else.{cloud_name}is independent of the host. It is always taken from--cloud-name/CLOUDINARY_CLOUD_NAME/CLOUDINARY_URL, regardless of--server-url.- Add
--log-level debugto print the outgoing request URL and confirm the override took effect.
Progressive Discovery
MCP servers with many tools can bloat LLM context windows, leading to increased token usage and tool confusion. Dynamic mode solves this by exposing only a small set of meta-tools that let agents progressively discover and invoke tools on demand.
To enable dynamic mode, pass the --mode dynamic flag when starting your server:
{
"mcpServers": {
"CloudinaryMediaGeneration": {
"command": "npx",
"args": ["@cloudinary/media-generation-mcp", "start", "--mode", "dynamic"],
// ... other server arguments
}
}
}
In dynamic mode, the server registers only the following meta-tools instead of every individual tool:
list_tools: Lists all available tools with their names and descriptions.describe_tool_input: Returns the input schema for one or more tools by name.execute_tool: Executes a tool by name with its arguments.
This approach significantly reduces the number of tokens sent to the LLM on each request, which is especially useful for servers with a large number of tools.
Development
Run locally without a published npm package:
- Clone this repository
- Run
npm install - Run
npm run build - Run
node ./bin/mcp-server.js start --api-key --api-secret --cloud-name
To use this local version with Cursor, Claude or other MCP Clients, you'll need to add the following config:
{
"command": "node",
"args": [
"./bin/mcp-server.js",
"start",
"--api-key",
"",
"--api-secret",
"",
"--cloud-name",
""
]
}
Or to debug the MCP server locally, use the official MCP Inspector:
npx @modelcontextprotocol/inspector node ./bin/mcp-server.js start --api-key --api-secret --cloud-name
Contributions
While we value contributions to this MCP Server, the code is generated programmatically. Any manual changes added to internal files will be overwritten on the next generation. We look forward to hearing your feedback. Feel free to open a PR or an issue with a proof of concept and we'll do our best to include it in a future release.
MCP Server Created by Speakeasy
Install Cloudinary Media Generation Server in Claude Desktop, Claude Code & Cursor
unyly install cloudinary-media-generation-mcp-serverInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add cloudinary-media-generation-mcp-server -- npx -y @cloudinary/media-generation-mcpFAQ
Is Cloudinary Media Generation Server MCP free?
Yes, Cloudinary Media Generation Server MCP is free — one-click install via Unyly at no cost.
Does Cloudinary Media Generation Server need an API key?
No, Cloudinary Media Generation Server runs without API keys or environment variables.
Is Cloudinary Media Generation Server hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install Cloudinary Media Generation Server in Claude Desktop, Claude Code or Cursor?
Open Cloudinary Media Generation Server on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
Related MCPs
Omni Video
An MCP server that transforms LLM-enabled IDEs into professional video editors by pre-processing footage into text proxies, generating motion graphics via HTML/
by buildwithtazaARA
Generate images, video and audio from any AI agent — one connector.
by ARAYouTube
Transcripts, channel stats, search
by YouTubeEverArt
AI image generation using various models.
by modelcontextprotocolCompare Cloudinary Media Generation Server with
Not sure what to pick?
Find your stack in 60 seconds
Author?
Embed badge for your README
Browse similar
All media MCPs
