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    Qwak

    A platform designed to simplify the building, management, and deployment of Large Language Model (LLM) applications, enabling rapid operationalization of context-aware LLMs and offering integration with its Vector Store.

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    About this tool

    Qwak, now known as JFrog ML, is an MLOps platform designed to scale AI application delivery. It provides a comprehensive solution for managing the entire lifecycle of AI workflows, from initial idea to high-scale deployment.

    Features

    • End-to-End AI Workflow Management: Build, deploy, manage, and monitor all AI applications and workflows within a single platform.
    • Versatile AI Support: Supports a wide range of AI applications, including GenAI, Large Language Models (LLMs), and classic Machine Learning models.
    • Accelerated Delivery: Enables rapid operationalization of AI applications, facilitating quick iteration from concept to production.

    Pricing

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    Information

    Websitewww.qwak.com
    PublishedJul 1, 2025

    Categories

    1 Item
    Vector Database Engines

    Tags

    3 Items
    #MLOps#Llm#platform

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