VES Vanguard Embedding Solutions
$0.0003
--
24H最低  -- 24H最高  --
更新时间:2025-02-27 17:15:12
OKX欧易app

OKX欧易app

欧易交易所app是全球排名第一的虚拟货币交易所,注册领取6万元盲盒礼包!

APP下载 官网注册
币安APP下载

币安APP下载

币安交易所是世界领先的数字货币交易平台,在手机上即可买卖btc等数字货币!

APP下载 官网注册
暂无数据
火币HTX

火币HTX

全球三大交易所之一,新人注册火币享241 USDT新人礼包!

APP下载 官网注册
时间
涨跌幅
30天
0.04%
时间
涨跌幅
30天
0.04%
Vanguard Embedding Solutions (VES) is an advanced decentralized platform designed to help developers build autonomous AI agents while ensuring high standards of information security. The platform aims to make high-performance, secure, and scalable solutions accessible to a broader audience, not just large tech companies. By utilizing cutting-edge data storage and cryptographic technologies, VES offers unique tools for working with vector data, opening up vast possibilities for the development of complex AI applications. Integration with VES is streamlined into three simple steps: registration and setup, data upload, and API access. The platform prioritizes user privacy and decentralization, providing a secure and reliable environment through blockchain technology and decentralized storage. With decentralized data storage, homomorphic encryption, and zero-knowledge proofs, VES ensures the privacy and security of data. The API allows smooth integration for vector searches and data interactions, enabling developers to efficiently build and scale AI projects. VES's decentralized participation infrastructure (DePIN) allows users to submit nodes to the system, earning rewards in return. This decentralized approach strengthens the network’s resilience and scalability, as each node enhances the efficiency and reliability of vector storage and retrieval. By incentivizing participation, VES fosters a dynamic ecosystem where contributors are rewarded for improving the system's security and capabilities. VES tokens can be used for transactions within the platform, reducing costs and speeding up settlements. With robust blockchain security features, VES meets even the most demanding enterprise requirements. Website: https://www.vesdb.io/ Gitbook: https://vanguard-embedding-solutions.gitbook.io/ves Twitter: https://x.com/ves_db?s=21&t=m_ZxPN7SpojlUcdI-aXUgA

VES相关讨论

暂无数据