一周代币解锁:LINEA解锁达流通量5.3%代币

marsbitPublicado em 2026-04-05Última atualização em 2026-04-05

Resumo

一周代币解锁重点关注两个项目: 1. **Linea**:解锁13.8亿枚代币,占流通量5.3%,价值约466万美元。Linea是由ConsenSys研发的zk-rollup方案,兼容以太坊生态,支持智能合约部署。 2. **Hyperliquid**:解锁33万枚代币,价值约1210美元,致力于构建高性能链上金融系统。 两者均公布了代币释放曲线,需关注市场潜在抛压。

Linea

项目推特:https://x.com/LineaBuild

项目官网:https://linea.build/

本次解锁数量:13.8亿枚

本次解锁金额:约466万美元

Linea 是一种 zk-rollup,由ConsenSys R&D设计并由 ConsenSys运营。它允许开发者部署任何智能合约,使用任何工具,并像在以太坊上构建一样进行开发。

具体释放曲线如下:

Hyperliquid

项目推特:https://x.com/HyperliquidX

项目官网:https://hyperfoundation.org/

本次解锁数量:33万枚

本次解锁金额:约1210美元

Hyperliquid 是一条高性能区块链,其构建愿景是打造一个完全链上的开放式金融系统。流动性、用户应用和交易活动在一个统一的平台上协同作用,旨在容纳所有金融业务。

具体释放曲线如下:

Criptomoedas em alta

Perguntas relacionadas

QLinea解锁的代币数量是多少?

A本次解锁数量为13.8亿枚LINEA代币。

QLinea本次解锁的代币价值约多少美元?

A本次解锁金额约466万美元。

QLinea是什么类型的区块链项目?

ALinea是一种由ConsenSys研发的zk-rollup扩容方案,允许开发者像在以太坊上一样部署智能合约和进行开发。

QHyperliquid本次解锁的代币数量和金额是多少?

AHyperliquid本次解锁33万枚代币,价值约1210美元。

QHyperliquid的构建愿景是什么?

AHyperliquid旨在打造一个完全链上的开放式金融系统,通过统一平台整合流动性、用户应用和交易活动,容纳所有金融业务。

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Como comprar LINEA

Bem-vindo à HTX.com!Tornámos a compra de Linea (LINEA) simples e conveniente.Segue o nosso guia passo a passo para iniciar a tua jornada no mundo das criptos.Passo 1: cria a tua conta HTXUtiliza o teu e-mail ou número de telefone para te inscreveres numa conta gratuita na HTX.Desfruta de um processo de inscrição sem complicações e desbloqueia todas as funcionalidades.Obter a minha contaPasso 2: vai para Comprar Cripto e escolhe o teu método de pagamentoCartão de crédito/débito: usa o teu visa ou mastercard para comprar Linea (LINEA) instantaneamente.Saldo: usa os fundos da tua conta HTX para transacionar sem problemas.Terceiros: adicionamos métodos de pagamento populares, como Google Pay e Apple Pay, para aumentar a conveniência.P2P: transaciona diretamente com outros utilizadores na HTX.Mercado de balcão (OTC): oferecemos serviços personalizados e taxas de câmbio competitivas para os traders.Passo 3: armazena teu Linea (LINEA)Depois de comprar o teu Linea (LINEA), armazena-o na tua conta HTX.Alternativamente, podes enviá-lo para outro lugar através de transferência blockchain ou usá-lo para transacionar outras criptomoedas.Passo 4: transaciona Linea (LINEA)Transaciona facilmente Linea (LINEA) no mercado à vista da HTX.Acede simplesmente à tua conta, seleciona o teu par de trading, executa as tuas transações e monitoriza em tempo real.Oferecemos uma experiência de fácil utilização tanto para principiantes como para traders experientes.

427 Visualizações TotaisPublicado em {updateTime}Atualizado em 2026.06.02

Como comprar LINEA

Discussões

Bem-vindo à Comunidade HTX. Aqui, pode manter-se informado sobre os mais recentes desenvolvimentos da plataforma e obter acesso a análises profissionais de mercado. As opiniões dos utilizadores sobre o preço de LINEA (LINEA) são apresentadas abaixo.

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