两种低市值山寨币在加入Coinbase的上市路线图后大幅上涨

币界网Publicado a 2024-08-09Actualizado a 2024-08-09

币界网报道:

在突然获得美国顶级加密货币交易所Coinbase的支持后,两种不为人知的山寨币正在飙升。

在一份新的公告中,Coinbase Assets表示,它正在将可互操作的第1层区块链ZetaChain(ZetaChain)和跨协议跨链桥(AVX)添加到其上市路线图中。

Coinbase的上市路线图是在2022年创建的,旨在提高透明度和抑制领先地位。每当Coinbase决定添加新资产时,它都会首先通过路线图传达这一决定。

ZetaChain被称为“第一个通用区块链”,是一个可互操作的以太坊虚拟机(EVM),允许开发人员在多个区块链上构建去中心化应用程序(dApps),包括比特币(BTC)、宇宙(ATOM)和以太坊(ETH)。

“基于ZetaChain构建的通用应用程序可以连接到加密货币生态系统中的任何东西,让您可以简单、无缝、安全地访问所有加密货币,就好像它们都在一个地方一样。”

在撰写本文时,ZetaChain的交易价格为0.491美元,在过去24小时内上涨了7.7%。

Coinbase支持的另一种数字资产AVX是一个多链桥梁,允许用户使用意图将代币从一个区块链无缝转移到另一个区块。

“跨链意图是一个跨链限价单加上一个要执行的动作。意图用用户结果替换显式执行步骤,允许中继者竞争,为用户提供最佳执行路径…

Across通过意图将用户连接到dApp,而不仅仅是区块链到区块链。开发人员只需在协议操作中嵌入标准顺序,即可创建无缝的跨链体验。”

在撰写本文时,ACX的价值为0.356美元,当天上涨了8.4%。

不要错过任何节拍-订阅以直接将电子邮件提醒发送到您的收件箱

检查价格操作

在X、Facebook和Telegram上关注我们

冲浪每日Hodl混合

特色图片:Shutterstock/FlashMovie/Vladimir Sazonov

Lecturas Relacionadas

Who Makes the Best Use of Claude Code? The Answer Might Not Be Programmers

Claude Code Usage Report Summary (Based on ~400k sessions) Core Finding: In agentic programming with Claude Code, a clear division of labor has emerged: humans primarily decide *what* to build (planning decisions), while Claude decides *how* to build it (execution decisions). Key Insights: 1. **Effectiveness is not limited to programmers.** In code-generation tasks, success rates for users in non-technical fields (law, finance, management, research) are nearing those of software engineers. What matters most is the user's domain expertise and understanding of the problem to be solved. 2. **Domain expertise drives success and efficiency.** Sessions where users exhibited "expert" proficiency in the task's domain saw verified success rates double compared to "novice" sessions. Experts also delegated more work per instruction, with Claude executing more actions and producing more output. 3. **AI is amplifying, not replacing, domain knowledge.** Claude Code lowers the *implementation* barrier, not the *judgment* barrier. The value of knowing the "what" and "why" is increasing relative to just knowing the "how" to code. 4. **Usage is evolving.** Over a 7-month period (Oct '25 - Apr '26), the share of sessions for debugging halved, while use for software operations, data analysis, and non-code writing roughly doubled. The estimated economic value of typical tasks increased by ~25%. Conclusion: The data suggests coding agents are making programming background less critical for completing technical tasks. However, they reward and amplify deep domain understanding. The ability to successfully direct an AI agent stems more from mastery of a specific field than from coding skill itself. The primary gains come from being competent in a domain; deep specialization adds only marginal additional advantage. This may signal a shift where software creation becomes integrated into various professions.

marsbitHace 25 min(s)

Who Makes the Best Use of Claude Code? The Answer Might Not Be Programmers

marsbitHace 25 min(s)

Trading

Spot
Futuros
活动图片