Showing 2 open source projects for "generate"

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    MCP Hub

    MCP Hub

    An MCP client for Neovim that seamlessly integrates MCP servers

    ...Create your first MCP capable agent you need only 6 lines of code. Works with any langchain-supported LLM that supports tool calling (OpenAI, Anthropic, Groq, LLama etc.) Explore MCP capabilities and generate starter code with the interactive code builder. An MCP client for Neovim that seamlessly integrates MCP servers into your editing workflow with an intuitive interface for managing, testing, and using MCP servers with your favorite chat plugins.
    Downloads: 3 This Week
    Last Update:
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  • 2
    CycleGAN

    CycleGAN

    Software that can generate photos from paintings

    CycleGAN — in its original form — is a landmark in deep learning for image-to-image translation without paired data. Rather than requiring matching image pairs between source and target domains (which are often hard or impossible to obtain), CycleGAN learns two mappings — one from domain A to B, and another back from B to A — along with a cycle-consistency loss that encourages the round-trip to reconstruct the original image. This innovation lets the model learn domain-to-domain translations...
    Downloads: 0 This Week
    Last Update:
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