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URL: https://glama.ai/mcp/servers/integrations/jpeg

⇱ JPEG | Glama


  • Why this server?

    Enables loading, resizing, and pushing JPEG images directly to Divoom Pixoo LED matrices.

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    Enables programmatic control of Divoom Pixoo LED matrices to display layered pixel art, animations, and hardware-rendered scrolling text. Users can compose complex visual scenes, push images, and manage device settings like brightness and channels through an LLM.
    Last updated
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    Apache 2.0
  • Why this server?

    Provides automatic JPEG compression for captured screenshots, enabling efficient transfer of screen content for AI processing

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    Enables AI tools to capture and process screenshots of a user's screen, allowing AI assistants to see and analyze what the user is looking at through a simple MCP interface.
    Last updated
    1
    24
    MIT
  • Why this server?

    Extracts EXIF, GPS, XMP, ICC, IPTC, JFIF metadata from JPEG images, providing tools for analyzing orientation, rotation info, GPS coordinates, and thumbnails.

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    An offline MCP server that allows LLMs or humans to extract and analyze metadata from images using the exifr library, supporting various image formats and metadata segments without external tools.
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    BSD 2-Clause "Simplified"
  • Why this server?

    Supports capturing screenshots in JPEG format with configurable quality settings

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    Captures screenshots of web pages using Puppeteer, allowing AI agents to visually verify web applications and see their progress when generating web apps.
    Last updated
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    MIT
  • Why this server?

    Supports processing JPEG images for visual content analysis and description.

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    A Model Context Protocol server that connects to Google AI Studio/Gemini API, enabling content generation with support for various file types, conversation history, and system prompts.
    Last updated
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    MIT
  • Why this server?

    Supports returning screenshots in compressed JPEG format through the browser_take_screenshot tool, with an option to toggle between JPEG and PNG formats.

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    A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots, providing browser automation capabilities without requiring screenshots or visually tuned models.
    Last updated
    7
    27,152
    Apache 2.0
  • Why this server?

    Supports generating visualizations in JPEG format, providing a compressed image format option for charts, diagrams, and other visual elements.

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    This Model Context Protocol (MCP) server provides powerful visualization tools using QuickChart.io APIs. With this MCP, AI assistants can create charts, diagrams, barcodes, QR codes, word clouds, tables, and more.
    Last updated
    12
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    MIT
  • Why this server?

    Supports JPEG format conversion, compression with quality control, and progressive encoding for image processing operations

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    Enables comprehensive image editing operations including resizing, format conversion, cropping, compression, rotation, flipping, and batch processing. Supports JPEG, PNG, WebP, and AVIF formats with quality control and metadata extraction.
    Last updated
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  • Why this server?

    Converts to and from JPG/JPEG format with quality control and resizing capabilities

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    Enables conversion between multiple image formats including JPG, PNG, WebP, GIF, BMP, TIFF, SVG, ICO, and AVIF with quality control and batch processing capabilities.
    Last updated
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    MIT