星球日报 | SEC不太可能在本周初作出ETF相关决定;TRB触及700美元后暴跌(0102)

Odaily星球日报Publicado a 2024-01-02Actualizado a 2024-01-02

Resumen

Orbit Chain跨链桥疑似遭遇黑客攻击,损失约8150万美元.

星球日报 | SEC不太可能在本周初作出ETF相关决定;TRB触及700美元后暴跌(0102)

头条

消息人士:SEC 仍需时间审查文件,不太可能在本周初作出 ETF 相关决定

Fox Business 记者 Eleanor Terrett 于 X 平台表示,SEC 仍需时间来审查上周四、周五各大 ETF 发行商所提交的 S-1 文件,考虑到自上周五以来 SEC 一直在休假,因此不太可能在本周初关于 ETF 的决定。

Orbit Chain 跨链桥疑似遭遇黑客攻击,损失约 8150 万美元

Orbit Chain 跨链桥疑似被黑客攻击,损失 8150 万美元的加密货币和稳定币。 此次黑客攻击的具体性质尚不清楚。

据悉,在五笔独立的交易中,每笔交易都发送到一个新的钱包,Orbit Bridge 发送了 5000 万美元的稳定币(3000 万 Tether、 1000 万 DAI 和 1000 万 USDC)、 231 枚 wBTC(约 1000 万美元)和 9500 枚 ETH(约 2150 万美元)。

TRB 短线暴跌,且现货与期货合约出现 130 美元价差

欧易 OKX 行情显示,TRB 短线大幅回调,且现货和期货合约价格出现巨大价差,现货现报 387.24 USDT,永续合约现报 252.63 USDT。

行业要闻

加密货币总市值达 1.8 万亿美元,BTC 市占率为 48.3% 

CoinGecko 数据显示,加密货币总市值达 1.8 万亿美元, 24 H 涨幅为 4% 。此外,BTC 市占率上升至 48.3% ,ETH 市占率为 15.8% 。

项目要闻

Synthetix 创始人:因 TRB 异常波动事件,SNX 质押者损失了约 200 万美元

Synthetix 创始人 kain.eth 于 X 平台表示,因今日的 TRB 异常波动事件,SNX 质押者损失了约 200 万美元。

kain.eth 解释称,TRB 在 Synthetix 原本存在上限 25 万美元的未平仓合约限制,但随着其价格在过去几个月的上涨,这一上限已膨胀至 1250 万美元,它本应被下调,但风险控制不严。随着今天 TRB 价格的飙升,几个空头仓位被开设,但由于现货价格和合约价格错位,套利平衡失灵,这对于 Synthetix 而言是一次教训。

Solana Mobile:Saga 手机已交付超 95% 

Solana Mobile 披露最新数据表示,过去几周对于 Solana Mobile 来说非常特别,截至目前 Saga 手机已交付了超过 95% ,剩下需要交付的手机将在本周内发出。

Sushi 回顾 2023 年:总交易额达 510 亿美元

多链 DEX Sushi 发布 2023 年总结报告,总交易额达 510 亿美元。

Sushi 现已部署至 30 多个网络, 2023 年新增支持 Core、LineaAptos、Haqq、BaseFilecoin
2023 年,Sushi 在 3 个网络上使用率最高,交易额排名前三分别是以太坊主网、PolygonArbitrum。在 Sushi V3版本中,Base 网络上的交易额最高。
此外,跨链解决方案 SushiXSwap 已扩展到更多的网络,支持 Ethereum、Arbitrum、Optimism、Polygon、Base、Avalanche、BNB Chain.

Injective:Volan 升级已在测试网上运行,主网升级即将进行

Injective 在 X 平台宣布,Volan 升级现已在 Injective 测试网上成功运行,即将在主网进行升级。据官方介绍,Volan 升级将为 Injective 引入以下功能:
- 亚秒级区块时间:实现快速交易并降低抢先(front-running)交易和 MEV 攻击风险;
- IBC 集成:实现与 Cosmos 生态系统及其他 IBC 支持链的互操作性;
- 支持 CosmWasm 智能合约:允许开发者使用多种编程语言创建多样化应用;
- 与 EVM 兼容:降低开发者迁移应用的门槛;
- 引入治理模块:使 INJ 代币持有者能参与网络决策过程。
据悉,此次升级需要对 Injective 网络进行硬分叉,这意味着所有节点和验证器都必须将其软件更新到最新版本。

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