NEAR联合创始人:链抽象最终的体验是什么样的

币界网Published on 2024-08-02Last updated on 2024-08-02

币界网报道:

作者:Illia(root.near),NEAR联合创始人;编译:0xxz@

最终的链抽象体验可能如下:

1、使用PassKey加入或登录——一个帐户适用于所有链,默认恢复依赖于你的设备生物识别技术,并可以轮换到其他方法;

2、与你的朋友、家人或你信任的公司设置社交恢复——智能合约在你的帐户上有一个密钥,并在达到朋友请求数量时触发密钥恢复;

3、如果是组织则升级到多重签名,并制定围绕各种交易类型和限制的规则。;

4、通过任何链上的加密货币,电汇或卡支付法定货币进入——在每个链上都有接收地址;

5、可以直接从你的钱包中使用Google/Apple Pay付款——你已授权智能合约代表你提取每天/每周/限额内一定金额的资金。无需额外存款,手动维持余额,无需直接支付链上费用,无需在链之间桥接资产。

6、可以购买任何资产——只需输入资产名称,即可查看所有流动性中的最佳报价,通过意图和跨链结算;

7、设置各种服务的订阅付款或自动支付账单——智能合约代表你发送 tx 以支付服务费用;

8、储蓄账户——将资本部署到积极管理的链上基金中,将钱投入可以将资金部署到链上各个地方的合约;

9、作为单一交叉保证金账户在各个链上借入资本。智能合约从所有链接收存款并管理抵押水平。

10、清算保护——监控用户账户状态并通过智能合约自动代表他们发送 tx,以验证减少头寸的条件;

11、设置死人开关恢复——如果账户在 X 个月/年内没有任何交易,账户可以由 recoveryDAO 接管,可以作为遗产规划或在社交和其他恢复失败的情况下使用。

12、使用自然语言界面浏览web3用例,接收交互式菜单和仪表板——工具形成器风格的 LLM,可以在所有链上生成操作

13、根据链上历史和链下数据预测并推荐最佳资产和行动——汇总所有链的数据并构建推荐 ML 模型;

14、AI智能体代表你工作,在后台支付和运行作业——通过智能合约验证规则和要求来预期交易,并在所有链上执行它们。

这只是可能的链抽象最终的体验的开始!

原文链接:https://x.com/ilblackdragon/status/1818595981463572981

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