Bitget Research每周要闻:美联储11月暂停加息,Celestia发币带动Cosmos生态反弹

Odaily星球日报Publicado a 2023-11-03Actualizado a 2023-11-03

Resumen

聚焦链上数据,每周要闻盘点。

过去一周(10.30-11.03 ),市场出现了不少新的热门币种和话题。

1.市场焦点 Market Trends

本周( 10.30-11.03)市场最关注的焦点话题为:

  • 比特币跌破 35000 美元,Unibot 交易已恢复正常

  • 美联储 11 月暂停加息,比特币短时突破 35000 美元

  • 美联储主席发文祝贺 BTC 白皮书发布 15 周年,Hashkey 交易所正式推出平台币 HSK

  • Celestia 发币带动 Cosmos 生态反弹,大盘窄幅震荡静待 11 月 FOMC 会议

  • Memeland 即将发币刺激 NFT 市场回暖,市场保持高位震荡

2.热门项目 Popular Projects

本周( 10.30-11.03)热度最高的项目有:

SATS(Token):BRC 20 代币,比特币最小单位聪为概念的币种,总量一共 2100 万张,作为 Unisat 官方提议其作为 BRC-20 DEX 的 Gas 费消耗代币,随着 Unisat 的 BRC-20 Swap 正式上线,SATS 代币交易量提升, 24 小时链上交易量达 284 万美金,过去 24 小时价格上涨 95.58% ,市值已超 1 亿美金。

AMO(Token):Amino, 一个 Move 2 Earn,运动、健康、健身奖励网络,NFT 球队华盛顿指挥官队官方合作伙伴,Amino Move 作为 APP 在 GooglePlay 上已经 50 万下载,代币热度较高,目前市值超 1 亿美金, 24 小时交易量 410 万美金。

RLB(Token):近期不断有 smart money 买入,根据 nansen Smart Money 24 小时在以太坊网络资金流入追踪榜单中排名,RLB 流入约 141 万美元,目前代币日交易量 1500 万美元,代币近 24 小时下跌 8.24% ;

BIBI(Token):死灰复燃的 BSC 上项目;链上 27, 845 holders,当时在华语地区有一定热度;代币合约权限放弃,发币人实名,链上、社媒都有一定热度,日交易量上升迅速,目前日交易量 1200 万美元左右。

The Captainz(NFT):随着 memeland 发行代币 meme 完成预售并且成功登陆 Binance launchpad,用于锁定代币空投的 NFT 也遭到社区抛售,同时 memeland 发币临近,其所发售的 NFT 如 The Captainz 和 The Potatoz 同样受到热度影响交易量上升。

Bored Ape Yacht Club(NFT):Yuga Labs 公司旗下 IP 系列 BAYC,随着官方代币 APECOIN 底部出现超 30% 反弹,NFT 交易量也出现放大,成交量 486 万美金居 NFT 榜首,价格也出现一定反弹。

Coinbase(Dapp):美国的 Coinbase Advanced 用户现在可以访问受监管的加密货币期货合约。Coinbase 三季度营收 6.741 亿美元,环比下降 4.7% ,同比增长 14.2% ,三季度净亏损 200 万美元,而去年同期亏损 5.45 亿美元。此外,该季度交易量再次下降,从去年同期的 1, 590 亿美元降至 760 亿美元。这代表着 Coinbase 对于目前盈利模式的调整以及对于新业务的开拓。

Maestro(Dapp):Maestro 作为著名的链上 bot 深受加密社区用户喜爱,昨日知名 bot 项目 unibot 受到攻击,因为部分路由导致用户损失资金,但完全没有减少加密社区对 bot 的使用情况,Maestro 依然保持在交互榜前三。

Uniswap(Dapp):DEX 治理代币出现普涨行情,过去 24 小时 UNI 迎来 20% +的涨幅,受近期基金会出售代币的影响,价格相对大盘处于相对弱势,随着昨日 SUSHI 领衔上涨,UNI 价格有所突破。

3.热搜话题 Hot Searches

本周( 10.30-11.03)热度最高的话题有:

Safemoon(Token):SEC 近日指控 BNB Chain 生态 DeFi 协议 SafeMoon LLC 及其创始人 Kyle Nagy、SafeMoon US LLC、公司首席执行官 John Karony 和首席技术官 Thomas Smith,通过未注册的加密资产安全 SafeMoon 进行大规模的欺诈性计划,其中两名 SafeMoon 高管已被捕,Nagy 仍然在逃;

ARB(Token):近日,ARB 代币近期有巨鲸买入,某鲸鱼花费 843 枚 ETH(150 万美元)以均价 0.95 美元购买了 161 万枚 ARB。Arbitrum 生态项目依靠 ARB 代币做项目运营,比如 Radiant 在做 ARB 的空投活动,以激励用户在 ETH 主网和 Arbitrum 链上的 dLP 质押。

JUNO(Token):Celestia 主网上线和发币带动了 Cosmos 生态。Juno 是Web3 的孵化网络,可以在上面构建和使用应用程序,受到 Celestia 对 Cosmos 生态的利好。

Bitget  研究院专注于“聚焦链上数据,挖掘价值资产”,通过实时监测链上数据以及区域热搜等维度,挖掘前沿的价值投资,为加密世界爱好者提供机构级的洞见。截止至今已为 Bitget 全球用户提供了【Arbitrum 生态】、【AI 生态】、【SHIB 生态】等多个热门板块的早期价值资产,通过以数据为驱动的深入研究为 Bitget 全球用户创造更优质的财富效应。

【免责声明】市场有风险,投资需谨慎。本文不构成投资建议,用户应考虑本文中的任何意见、观点或结论是否符合其特定状况。据此投资,责任自负。

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