Aptos Labs收购HashPalette,深度布局日本区块链市场

Odaily星球日报2024-10-03 tarihinde yayınlandı2024-10-03 tarihinde güncellendi

Özet

Palette Chain的代币PLT将在11月底与APT进行兑换。

Aptos Labs收购HashPalette,深度布局日本区块链市场

2024 年 10 月 3 日,Aptos Labs 宣布正式收购 HashPalette Inc.,后者是 HashPort Inc.的子公司,开发了 Palette Chain。

根据协议,HashPort 将把 Palette Chain 及 HashPalette 的应用迁移到 Aptos 网络,包括为 2025 年大阪关西博览会提供的 EXPO 2025 数字钱包。这次收购将帮助 Aptos Labs 扩大在亚洲的影响力,并将高性能的 Aptos Network 引入全球重要的数字经济体之一。

为什么是日本?

Aptos Labs 收购 HashPalette 的协议是其进入日本区块链市场的战略举措。HashPalette 与包括 KDDI 在内的多家日本企业建立了稳固的关系,使这次收购成为与日本一些最具影响力公司的联系纽带。Aptos Labs 利用这些关系,加上 Aptos 网络的强大技术,有望推动日本在娱乐、游戏和数字资产领域的 Web3 采用。

该协议还展示了 Aptos Labs 对日本市场的承诺,使公司能够提供可扩展、安全和用户友好的区块链技术,以满足日本独特的需求。Aptos 是增长最快的 Layer 1 区块链之一,其锁仓总价值(TVL)已超过 5.5 亿美元,证明了其技术在全球范围内的日益普及。

Aptos Labs 创始人兼首席执行官 Mo Shaikh 表示:“日本是 Aptos Labs 的重要市场,Aptos Labs 收购 HashPalette 协议,并将 HashPort 的 Palette Chain 迁移到 Aptos ,是为日本企业和开发商提供尖端区块链技术的关键一步。”

2025 年日本大阪关西世博会

Aptos 将成为向 2025 年日本大阪关西世博会提供数字钱包支持的独家区块链。作为规模最大、最负盛名的国际展览, 2025 年日本大阪关西世博会预计在 2025 年 4 月至 10 月期间将吸引超过 2800 万参观者。

此次合作将允许世博会参与者,通过 Aptos 支持的 EXPO 2025 数字钱包与 NFT、数字资产和去中心化应用程序进行交互。使用案例可能包括展馆预订、票务和用户参与活动,例如忠诚度计划和数字收藏品。此次合作将展示 Aptos Labs 在全球范围内提供安全、可扩展且用户友好的区块链解决方案的能力。

对日本企业和生态系统的承诺

除协议外,Aptos Labs 还将与日本领先的区块链咨询公司 HashPort 建立战略合作伙伴关系。此次合作将使 HashPort 能够继续使用 Aptos Network 的基础设施为其企业客户构建区块链解决方案,进一步推动 Web3 在日本的大规模采用。

Aptos Labs 将支持本地开发者、NFT 创作者和企业,帮助培育一个强大且有机的日本 Web3 社区。该公司还计划与日本大学、研究机构和区块链初创公司合作,为充满活力的 Web3 创新者生态系统做出贡献。

Palette Chain 迁移

HashPalette 开发了日本著名的区块链生态之一,专注于娱乐、游戏、动漫和数字资产。通过将 Palette Chain 迁移到 Aptos 网络,用户和开发者将获得更优越的可扩展性、安全性和开发工具,从而推动日本的新一波 Web3 创新。

Palette Chain 的治理代币 PLT 将在 11 月底开始兑换 Aptos 的原生代币 APT。PLT 代币持有者可以通过日本加密资产交易服务提供商进行兑换。目前 Aptos Labs 正与服务提供商进行讨论以确保顺利过渡该阶段,其中兑换后的 APT 代币预计将锁仓一年,并在此期间禁止任何销售或转让。关于代币兑换流程和整合计划的更多细节将在接近兑换日期时公布,兑换将以收购成功为前提。

关于 Aptos Labs

Aptos Labs 由 Mo Shaikh 和 Avery Ching 共同创立,致力于创建更好的网络工具和无缝的用户体验,以将去中心化的好处带给大众。Aptos Labs 得到了顶级投资者的支持,包括 a16z、Katie Haun、Apollo Global Management、Dragonfly、PayPal Ventures 和 Franklin Templeton Investments。

关于 Aptos Network

Aptos 是下一代 Layer 1 区块链,旨在不断演进、提高性能并增强用户安全性。

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