一览 Arweave 新链 AO 上值得关注的 10 个新项目

比推Опубліковано о 2024-08-08Востаннє оновлено о 2024-08-08

覆盖预测市场、稳定币、LRT 等主流赛道。

撰文:@warcin101

编译:Peisen,BlockBeats

最近没有太多人谈论 AO。

注意力在加密货币的世界至关重要,但 AO 并不是典型的新周期叙事。大多数人没有意识到 AO 生态系统是多么充满活力。那么,AO 有什么令人兴奋的地方呢?以下是我现在最喜欢的 10 个 AO 项目。

我一直支持 Arweave Ecosystem,现在比以往任何时候都对这个生态系统感到兴奋。AO 的愿景很明确:重新定义链上计算的意义。它将去中心化的理念与每个网络过程的本地状态融合在一起。那么,为了扩展这一愿景,我对哪些项目感到兴奋呢?

Autonomous Finance

AI Agents 将在解决链上市场中发挥关键作用。Autonomous Finance 正在构建一个全面的框架和终端用户 dApps,以在 AO 上原生支持这一功能。

Autonomous Finance 专注于在超并行计算机 ao 上研究和开发人工智能驱动的金融应用程序。

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ArSwap

这不是又一个 Uni v2 的分叉。我与 ArSwap 团队已经合作了几年,他们准备在经典 DEX 设计上进行创新,并创建一个永续合约 DEX,以推动 AO 上的 DeFi 发展。

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Astro USDA

作为一个行业,我们已经探索了多种构建去中心化稳定币的方法。@KadarSayedAbdi 和他的团队正在将经过实战考验的超额抵押设计与 AO 独特框架所带来的新功能结合起来。

USDA 是首个在 Arweave Ecosystem 和 AO 上推出的稳定币。直接向 Astro Labs 的 CEO 兼创始人 @KadarSayedAbdi 了解 Astro 的使命以及为何 AO 是实现这一使命的理想生态系统。

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LiquidOps

借贷市场是任何 DeFi 生态系统的基础层。Arweavers 的 OG,@lorimer_jenkins 和 @martonlederer,正在为 AO 开发这部分内容。

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AOX

解锁在 AO 上市值 20 亿美元的 AR 代币流动性,似乎是新生态系统的一个很好的起点。这已经在进行中,现在就使用 $wAR 吧!

DeFi 现在正在超并行计算机上逐步整合。

  • 桥接架构 (AOX)

  • 去中心化交易所 (ArSwap)

  • 人工智能 + 投资组合 (Autonomous Finance)

不久之后,整个 Arweave 生态系统将能轻松参与 AO 上的 DeFi。

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Outcome

预测市场现在非常火热。

试想一下在 Polymarket 设计的基础上进行迭代,以无信任的方式解决任何领域或兴趣的市场问题。你还可以担任市场做市商的角色,从各种被动策略中提取阿尔法。现在 AO 可实现这一想法。

介绍 Outcome:预测市场与自主代理的结合。Outcome 利用自主代理来无信任地解决市场问题,创建准确的预测模型,并在 AO 生态系统中激励寻求真相的行为。

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dumdum

好的,这就是 dumdum。

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WeaveVM

想要继续使用 Solidity 和 EVM 工具吗?

WeaveVM 正在开发工具,旨在实现这一目标,使 EVM 代码可以无缝地迁移到 AO 平台上。

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mbd

想知道 AI 和 AO 之间是否有更多的交集吗?@mbdtheworld 现在几乎可以在链上运行所有类型的机器学习模型。

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Cyber Beavers

链上游戏:AO 非常适合处理计算密集型的完全链上游戏。平台上已经有游戏在开发中——快去看看 @LlamaLandAO 和 Cyber Beavers!

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说明: 比推所有文章只代表作者观点,不构成投资建议

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