DocArray is a library for representing, sending, and storing multi-modal data, designed to simplify building ML and neural search applications.
Build ML apps with multi-modal data easily
DocArray is a flexible library that helps you work with multi-modal data, such as text, images, and audio, in your machine learning projects. It focuses on making it easier to represent, send, and store this type of data, which is often used in neural search and AI-powered applications.
Whether you're building a new ML model, setting up a neural search engine, or integrating with frameworks like FastAPI or vector databases, DocArray provides handy tools to streamline your workflow. The site offers clear guides, documentation, and resources to help you get started or migrate from older versions.
If you're a developer or data scientist working with complex data types, DocArray can save you time and effort. You'll find step-by-step instructions, integration tips, and support for popular ML and data tools, making it a practical choice for modern AI development.
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