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  1. Developer Guides (Short Version)

OCY - AI Data Storage and RAG

PreviousDeveloper OverviewNextRivalz Developer Console

Last updated 5 months ago

Rivalz Storage is a cutting-edge distributed vector storage service, allowing users to securely store and access data from any location on the internet. Utilizing advanced decentralization, peer-to-peer (P2P) networking, artificial intelligence, and blockchain technology, Rivalz delivers a scalable, cost-efficient, and resilient solution for cloud-based vector storage.

In addition to its powerful storage capabilities, Rivalz offers an advanced AI platform that extracts valuable knowledge from your documents. We provide an easy-to-use API that allows you to vectorize your documents and integrate them into an AI model, creating a customized "" tailored specifically to your application’s needs.

What is Document Vectorization?

Document vectorization is the process of converting a document into a numerical vector representation. The resulting vector is a mathematical representation of the document’s structure and meaning, making it useful for various tasks such as classification, clustering, and similarity search.

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