Aptos Labs 正协议收购 HashPalette,向日本市场进行战略扩张

深潮Опубліковано о 2024-10-03Востаннє оновлено о 2024-10-03

此次收购是Aptos Labs扩展在亚洲市场的关键组成部分,并将高性能的Aptos区块链带入世界上最具创新性的数字经济之一。

2024年10月3日——Aptos Labs宣布达成收购HashPalette Inc.的协议,该公司是HashPort Inc.的子公司,并且是Palette区块链的开发者。根据协议,HashPort将把Palette Chain及HashPalette的应用迁移到Aptos网络,包括用于2025年大阪、关西日本博览会的EXPO2025数字钱包。这次收购是Aptos Labs扩展在亚洲市场的关键组成部分,并将高性能的Aptos区块链带入世界上最具创新性的数字经济之一。需要注意的是,该交易尚未最终完成,还在最后的审批阶段。

为什么选择日本?

Aptos Labs收购 HashPalette 是一个战略性举措,使其能够进入日本的区块链市场。HashPalette与包括KDDI在内的主要日本企业建立了强大的关系,这使得这项收购成为通往日本一些最有影响力公司的门户。利用这些关系,加上Aptos网络的强大技术,Aptos Labs能够推动日本在娱乐、游戏和数字资产领域的Web3采用。

该协议还表明了Aptos Labs对日本市场的承诺,它使公司能够提供可扩展、安全和用户友好的区块链技术,满足日本的独特需求。Aptos作为增长最快的 Layer1 之一,总锁定价值(TVL)超过5.5亿美元,这证明了其技术在全球范围内日益受到欢迎。

“Aptos Labs非常重视日本市场,”Aptos Labs创始人兼首席执行官Mo Shaikh表示。“收购HashPalette的协议以及将HashPort的Palette Chain迁移到Aptos是赋能日本企业和开发者获取尖端区块链技术的重要第一步。”

2025年大阪、关西日本博览会

Aptos将成为2025年大阪、关西日本博览会EXPO2025数字钱包的独家区块链支持伙伴。作为最大的、最具声望的国际博览会,2025年大阪、关西博览会预计将在2025年4月至10月期间吸引超过2800万游客。

此次合作将允许博览会参与者通过Aptos驱动的EXPO2025数字钱包与NFT、数字资产和去中心化应用互动。使用案例可能包括展馆预订、购票以及用户参与活动,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、可扩展和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

除了协议外,Aptos Labs还与HashPort建立了战略合作伙伴关系,后者是日本领先的区块链咨询和解决方案公司。这一合作将使HashPort能够继续利用Aptos网络的基础设施为其企业客户构建区块链解决方案,进一步推动该国的Web3大规模采用。

Aptos Labs将支持当地开发者、NFT创作者和企业,帮助培养一个强大而有机的日本Web3社区。公司还计划与日本大学、研究机构和区块链初创企业合作,为Web3创新者的活跃生态系统做出贡献。

Palette Chain的迁移

HashPalette开发了日本最著名的区块链生态系统之一,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好的可扩展性、安全性和开发工具,从而推动日本的新一波Web3创新。

Palette Chain的治理代币持有者 PLT 预计将在11月底开始能够将其PLT代币兑换为APT(即Aptos的原生代币)。代币持有者可以通过参与的日本加密资产交易服务提供商进行PLT的兑换,目前与这些提供商的讨论仍在进行中。为确保顺利过渡,APT代币预计将有一年的锁仓期,禁止在此期间的任何销售或转让。有关代币兑换流程和集成计划的更多细节将在接近兑换日期时宣布,兑换将以成功完成收购为前提。

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可用性,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网络

Aptos是一个下一代 Layer1 区块链,旨在演变、提高性能和增强用户安全性。

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