AI requires heavy amounts of storage and compute. As a result, AI developers are regular users of centralised cloud services such as AWS, GCP and Azure, compute environments such as Jupyter and Colab notebooks, and AI Hubs such as HuggingFace and ActiveLoop. There services are associated with certain benefits and limitations that stem from the underlying infrastructure and governance systems with which they are built. These limitations include high costs, lack of monetization and reward, lack of control and difficulty of reproducibility. At the same time, there are few libraries that allow data scientists to interact with decentralised storage in the language that data scientists are used to, and few hubs where they can discover and interact with AI assets. In this report, we explore the potential of decentralized technologies - such as Web3 wallets, peer-to-peer marketplaces, decentralized storage (IPFS and Filecoin) and compute, and DAOs - to address some of the above limitations. We showcase some of the libraries and integrations that we have built to tackle these issues, as well as a proof of concept of a decentralized AI Hub app, that all use IPFS as a core infrastructural component.
翻译:因此,AI开发商经常使用中央云层服务,如AWS、GCP和Azure, 计算Jupyter和Colab笔记本等环境,以及Hugging Face和FactiveLoop等AI枢纽等AI Hubs, 这些服务具有某些好处和限制,这些好处和限制来自它们赖以建立的基本基础设施和治理系统,这些限制包括高成本、缺乏货币化和奖赏、缺乏控制和难以再生。与此同时,很少有图书馆允许数据科学家与数据科学家所用语言的分散储存互动,也很少有中心可以发现和与AI资产互动。我们在本报告中探讨了分散技术的潜力,如Web3钱包、同侪市场、分散储存(IPFS和Filecoin)以及DAOs等,以解决上述一些限制。我们为解决这些问题而建立的一些图书馆和集成的图书馆,我们展示了其中一些图书馆和集成图书馆,并证明一个分散的AI CUAP概念,所有这些技术都使用IPS的核心部分。