imagesorcery-mcp and image-worker-mcp

These are complementary tools: Image Sorcery provides general-purpose image processing operations while Image Worker MCP specializes in cloud storage integration, making them suitable for use together in workflows requiring both manipulation and persistent cloud deployment.

imagesorcery-mcp
62
Established
image-worker-mcp
47
Emerging
Maintenance 2/25
Adoption 17/25
Maturity 24/25
Community 19/25
Maintenance 2/25
Adoption 6/25
Maturity 24/25
Community 15/25
Stars: 292
Forks: 45
Downloads: 1,289
Commits (30d): 0
Language: Python
License: MIT
Stars: 18
Forks: 4
Downloads:
Commits (30d): 0
Language: TypeScript
License: MIT
Stale 6m
Stale 6m

About imagesorcery-mcp

sunriseapps/imagesorcery-mcp

An MCP server providing tools for image processing operations

This tool helps creative professionals, marketers, and anyone working with images to quickly modify or analyze them using natural language commands. You provide local image files and descriptive text instructions to an AI assistant, and the tool performs operations like cropping, resizing, object detection, or text extraction, returning the modified images or extracted information.

digital-asset-management content-creation visual-marketing document-processing graphic-design

About image-worker-mcp

BoomLinkAi/image-worker-mcp

Effortlessly resize, convert, optimize, and transform images with a single MCP server—then upload them directly to S3, Cloudflare R2, or Google Cloud Storage. Ideal for AI workflows, automation scripts, and developers who want seamless image handling in one tool.

Implements the Model Context Protocol (MCP) via stdio transport to integrate seamlessly with AI assistants and code editors (Cursor, Claude, VSCode, Zed, etc.). Built on the sharp library for fast image processing, it supports flexible input formats—file paths, URLs, and base64—and chains operations like resizing, format conversion, and optimization before uploading to cloud storage with configurable credentials.

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