一周代币解锁:四个Layer1/2迎来共3亿美元解锁

Odaily星球日报Опубліковано о 2024-06-09Востаннє оновлено о 2024-06-09

Анотація

Starknet、Aptos、Arbitrum、Immutable X等四个链迎来大额解锁。

下周, 9 个项目迎来代币解锁事件。其中高比例解锁项目为 Starknet,将解锁流通量的 4.91% ,其余项目解锁比例较小,但有数个金额较高项目,分别为 APT、ARB 和 IMX,均为 Laye 1/2 网络。

具体解锁详情如下:

一周代币解锁:四个Layer1/2迎来共3亿美元解锁

Starknet

项目推特:https://twitter.com/Starknet

项目官网:https://starknet.io/

本次解锁数量: 6400 万枚

本次解锁金额:约 7360 万美元

Starknet 是以太坊的 Layer 2 ,利用 zk-STARKs 技术使以太坊交易更加快速且费用降低。StarekNet 的母公司 StarkWare 成立于 2018 年,总部位于以色列,旗下所研发的主要产品有 Starknet 以及 StarkEx。通过使用 STARK,Starknet 验证交易和计算,而无需所有网络节点验证每个操作。这显着减轻了计算负担并增加了区块链网络的吞吐量。

STRK 本轮解锁为常规线性解锁,因当前流通量较小,所以占比较高,解锁将面向早期贡献者发放 3357 万枚,价值约 4330 万美元,向投资者解锁 3043 万枚,价值 3926 万美元。

具体释放曲线如下:

一周代币解锁:四个Layer1/2迎来共3亿美元解锁

Arbitrum

项目推特:https://twitter.com/arbitrum

项目官网:https://arbitrum.io/

本次解锁数量: 9265 万枚

本次解锁金额:约 8964 万美元

Arbitrum 是以太坊 Rollup ,旨在提高以太坊的可扩展性,它在向以太坊主网提交单个交易之前聚合和处理链下交易。这意味着用户可以享受更快、更便宜的交易,同时仍然受益于以太坊网络的安全性和去中心化。Arbitrum 的原生代币为 ARB。 ARB 持有者可以参与决策过程,例如对协议升级或变更提出提案和投票。

ARB 当前流通量为总量的 29% ,因此相对 Starknet 释放占比较小,将向团队解锁价值 6112 万美元的代币,向投资者解锁价值 3977 万美元的代币。

具体释放曲线如下:

一周代币解锁:四个Layer1/2迎来共3亿美元解锁

Aptos

项目推特:https://twitter.com/Aptos_Network

项目官网:https://aptosfoundation.org/

本次解锁数量: 1131 万枚

本次解锁金额:约 9229 万美元

Aptos 是 Layer 1 公链项目,其目标是建设一个可扩展、安全、可信任和可升级的智能合约平台。Aptos 团队由前 Meta 成员独立出来的。APT 为 Aptos 主链的原生代币,用于支付交易手续费、验证抵押及治理。

APT 解锁曲线开始走缓,解锁面向对象较多,分别为核心贡献者 396 万枚(3602 万美元)、社区 321 万枚(2921 万美元)、投资者 281 万枚(2555 万美元)、基金会 133 万枚(1213 万美元)。

具体释放曲线如下:

一周代币解锁:四个Layer1/2迎来共3亿美元解锁

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