4 大新晋去中心化 AI 项目比较:Sentiment,Ritual,Vana & Sahara

深潮Published on 2024-08-21Last updated on 2024-08-21

在众多去中心化人工智能(DeAI)解决方案中,本文提及的四个项目脱颖而出。

作者:0xshakib

编译:深潮TechFlow

推动 DeAI 采用的四个项目:

别忘了StoryProtocol,它是这一切的支柱。让我们一起来看看。

人工智能无处不在,从早到晚影响着我们的生活。

然而,经济利益依然集中在少数科技巨头手中,真正的贡献者——用户、开发者和创作者——却未能得到应有的补偿和认可。

当前的人工智能领域主要由封闭系统主导,这些系统不仅抑制了创新,还囤积了收益。

较小的创新者在没有公平补偿的情况下推动大型公司的发展,延续了一个不公平的体系,限制了人们的访问权并扼杀了创造力。

人工智能面临着一个重要挑战:在其发展过程中如何公平分配收益。

亟需去中心化的方法,以确保高质量的数据,奖励贡献者,并确保人工智能经济惠及每一个人,而不仅仅是特权的少数。

在众多去中心化人工智能(DeAI)解决方案中,这四个项目脱颖而出,准备将加密人工智能提升到超越 OpenAI 的水平:

sentient_agi

通过创建一个安全且道德的平台,解决人工智能开发中的挑战,使模型开放、可货币化和忠诚(OML)。

这使得开发者能够在保留控制权的同时分享他们的人工智能创新,并获得公平的补偿。

Sentient 的核心是原生于人工智能的密码学,采用模型指纹等技术来认证和保护人工智能模型。

这确保了贡献者的工作在生态系统中得到伦理使用和准确追踪。

Sentient 将社区协作融入人工智能的成长,允许开发者贡献、控制和货币化他们的人工智能模型。

通过对齐激励机制并确保透明度,Sentient 创建了一个平衡的人工智能经济,惠及所有参与者。

SaharaLabsAI

推出了一种新的人工智能模型,使每个人——从数据贡献者到模型构建者——都能安全地创建、拥有并从他们的人工智能工作中获益。

这是一个旨在惠及所有人的公平系统,而不仅仅是大型科技公司。

我们的平台利用区块链技术,确保人工智能贡献得到追踪、奖励和保护。

通过 Sahara AI,贡献者可以掌控他们的数据和模型,并获得公平的补偿。

隐私和安全是 Sahara AI 的核心理念。

我们采用先进的加密技术和去中心化身份系统来保护用户数据,确保人工智能资产在安全可信的环境中创建和共享。

Sahara AI 的协作人工智能经济使多元化的社区能够积极参与人工智能的开发。

通过对齐激励机制并确保公平补偿,它促进了整个人工智能生态系统中的创新与公平。

withvana

赋予用户通过去中心化的数据 DAO 控制和货币化个人数据的能力,让他们在基于其数据训练的人工智能模型中拥有股份。这将权力从大型科技公司转移到个人手中。

通过 Vana 的数据流动网络,用户可以安全地对他们的数据进行代币化和交易,同时保持隐私。

该平台确保数据仅用于经过批准的目的,将数据转变为有价值的、用户控制的资产。

Vana 的方法通过允许集体所有权和治理,民主化了人工智能,确保贡献者成为人工智能经济中的积极参与者,而不仅仅是被动提供者。

Vana 生态系统中的项目:

  • finquarium:一个使用人工智能和区块链进行金融预测的去中心化市场。

  • GPTDAO:一个去中心化的网络,通过 web3 协议实现用户拥有的数据。

  • rdatadao:第一个数据 DAO,专注于 Reddit 数据。

  • volaraxyz:一个数据市场,为用户提供所有权并从他们的 X 数据中获得收益。

从我关于 rdatadao最新的一条推文开始:为什么加密技术不能赋予数据所有权?

ritualnet

结合人工智能和区块链,提供一个主权平台,使人工智能模型能够在节点网络中部署,确保隐私和计算完整性,同时在任何区块链上启用原生人工智能操作。

通过其预言机网络 “Infernet”,Ritual 将智能合约与链外人工智能模型连接,使去中心化应用能够无缝集成先进的人工智能能力,增强链上工作流程。

Ritual 的最终目标是作为区块链生态系统的人工智能协处理器,使协议和应用能够安全高效地利用人工智能的力量,而无需集中控制。

那么,像 StoryProtocol 这样的解决方案为什么对人工智能和知识产权IP)至关重要?

随着人工智能的不断发展,缺乏适当的知识产权归属和货币化机制严重阻碍了创新。

Story Protocol 提供了一个重要的解决方案,使创作者能够保护和货币化他们的作品,同时确保他们的贡献在去中心化的人工智能平台上得到认可。

在一个人工智能重混既不可避免又常常非法的环境中,Story Protocol 提供了一层必要的知识产权保护,允许创作者为他们的作品设定明确的规则。

这确保了他们的知识产权在人工智能与加密技术交汇时依然受到保护并实现货币化。

通过将 Story Protocol 与去中心化的人工智能网络结合,创作者可以安全地许可和控制他们知识产权的使用,将静态资产转变为可编程的、产生收入的知识产权。这为人工智能的未来提供了必要的保护和公平。

我迫不及待想要看到在 kbwofficial 上展开的见解和讨论。这将是一场史诗般的盛会

 

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