一周代币解锁预告:SUI解锁超6000万美元,三个项目解锁占比超2%

Odaily星球日报Pubblicato 2024-03-03Pubblicato ultima volta 2024-03-03

Introduzione

HFT、SUI、GAL 将有高比例解锁,但金额不高。

下周, 6 个项目迎来代币解锁事件。HFT、SUI、GAL 将有高比例解锁,但总体金额不大,其余项目解锁比例与金额均较小。

具体解锁详情如下:

一周代币解锁预告:SUI解锁超6000万美元,三个项目解锁占比超2%

Hashflow

项目推特:https://twitter.com/hashflow

项目官网:https://www.hashflow.com/

本次解锁数量: 1386 万枚

本次解锁金额:约 646 万美元

Hashflow 是一个去中心化的交易所,旨在实现零滑点和具备 MEV 保护的交易。Hashflow 目前可在以太坊、BNB Chain、Polygon、Avalanche、Arbitrum 和 Optimism 上使用。HFT 是 Hashflow 协议以及 Hashverse(Hashflow 的游戏化治理平台)的原生代币。

HFT 目前流通量达总量的 44% ,此前经历过一轮大额释放,目前月度释放 3% -4% 的代币,通胀速度中等。本轮将释放流通量的 3.9% ,主要为生态的 1.55% 、早期投资者的 1.45% 和核心团队的 0.67% 。今年内将保持相似的释放速度和对象。

具体释放曲线如下:

一周代币解锁预告:SUI解锁超6000万美元,三个项目解锁占比超2%

Sui

项目推特:https://twitter.com/SuiNetwork

项目官网:https://sui.io/

本次解锁数量: 4028 万枚

本次解锁金额:约 6526 万美元

Sui 是 Meta 系公链中起步最早的一个项目,由 Mysten Labs 团队开发。Sui 旨在创建一款环保、低成本、高吞吐量、低延迟的无权限区块链。相比传统区块链,Sui 最关键的创新在于 Sui 的数据模型及交易处理通道。

本轮解锁为常规线性解锁,全部面向社区项目(Community Access Program)解锁,一次性解锁 3462 万枚,价值 5608 万美元。后续的大额解锁将在五月末和六月末进行。

具体释放曲线如下:

一周代币解锁预告:SUI解锁超6000万美元,三个项目解锁占比超2%

Galxe

项目推特:https://twitter.com/Galxe

项目官网:https://galxe.com/

本次解锁数量: 203 万枚

本次解锁金额:约 706 万美元

Galxe 是一个Web3凭证数据网络。 Galxe 建立在开放和协作的基础架构之上,可帮助Web3开发人员和项目利用数字凭证数据和 NFT 来构建更好的产品和社区。

GAL 当前流通量已达总量的 53% ,常规解锁量影响不大,本次将释放流通量的 2.3% ,主要为基金会的 1.14% ,其余代币面向团队和社区释放,今年将整体保持微量通胀趋势。

具体释放曲线如下:

一周代币解锁预告:SUI解锁超6000万美元,三个项目解锁占比超2%

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