火币HTX晒七月成绩单:24小时交易量排名第三次升至全球Top 2,稳步向前

HTX成长学院Published on 2024-08-06Last updated on 2026-06-22

Abstract

近日,火币HTX团队交出七月成绩单,与用户分享火币HTX在七月的诸多成就和进展。火币HTX七月成绩单围绕外部排名、上新资产、HTX Ventures投资项目与参与活动、11周年平台活动、HTX DAO流动性捐助、安全和客服数据等领域向新老用户做汇报,用行动回馈用户的信任与支持。

近日,火币HTX团队交出七月成绩单,与用户分享火币HTX在七月的诸多成就和进展。火币HTX七月成绩单围绕外部排名、上新资产、HTX Ventures投资项目与参与活动、11周年平台活动、HTX DAO流动性捐助、安全和客服数据等领域向新老用户做汇报,用行动回馈用户的信任与支持。

火币HTX 24小时交易量升至全球第二位,多个优质资产首发上线

面对加密市场大波动,火币HTX七月交易额环比上涨11.3%,7月24日,据 Trust Score 数据,火币 HTX 的 24 小时交易量升至全球第二位,达 28亿美元,这是火币 HTX 排名今年第三次升至 Top2,稳步向前。

七月,火币HTX上线了15个新资产,包括PIXFI、A8、LRDS、AVAIL,这些资产与Coinbase等交易所共同首发。其中,AVAIL上线后的涨幅达90%,FIGHT上线后涨幅达60%,月底社区调侃为DOGE2.0的NEIRO热点也做了首发上线。

HTX Ventures 七月投资两个项目并参加EthCC活动,火币HTX 11周年平台活动开启

HTX Ventures在七月宣布投资Lombard和Redstone。投资团队参加了在布鲁塞尔举办的EthCC活动,在其周边活动中分享了关于“重质押开发”和“如何成功启动Web3生态系统”的见解,并在媒体上发布了参会行业观察。

HTX Ventures始终在探索前沿,努力为用户带来更多的机遇和价值。HTX Ventures致力于支持以太坊生态系统的长期发展,并持续寻求能够提升加密用户体验的技术和项目。

七月,火币HTX 11 周年KOL荣耀之战正式启动,报名参赛即可角逐20万USDT的奖池。同时,火币HTX开启 11 周年老用户回馈计划,千万美金账户管理费返还。恰逢火币HTX 11 周年,一系列感恩用户长期支持的平台活动已陆续进入活动周期,欢迎登录火币HTX平台查看活动详情。

七月火币HTX持续加强安全措施,时刻守护用户资产安全,贴心服务用户

七月,火币HTX继续加强安全措施,发送用户安全提醒292,937次,打击钓鱼网站和假冒App下载网站5个;拦截向诈骗地址提币4笔,挽回损失10万USDT;处理外部被盗资产流入事件12个,帮助用户冻结被盗资金超13万USDT;新增黑地址7,118条,拦截黑地址充值35笔,金额约65万U。火币HTX安全团队正在用切实可靠的行动时刻守护用户资产安全。

与此同时,HTX DAO 于七月公布2024年第二季度的流动性捐助已完成,Q2累计流动性捐助+销毁达3,050万美元,HTX DAO本次流动性捐助2,150万美元,累计捐助4,250万美元。

同时完成对pGALA增发攻击事件受损用户千万美元的赔付,包括赔款、站内权益、Gala节点等。火币HTX始终坚持为用户的利益保驾护航。

火币HTX客服团队在七月共服务38,800位用户,有效处理61,646个用户进线及工单问题,其中,主要涉及用户账户安全项、P2P交易问题的解决,获得用户高于83%的满意评价。

近期市场行情震荡,但火币HTX会坚定的陪伴每一位用户穿越市场牛熊,共同前行。火币HTX也将迎来11周年庆祝活动,感谢用户多年来的信任与支持。火币HTX始终坚持以用户为中心,不断努力提升服务质量,希望给每一位用户提供最佳交易体验。未来火币HTX团队将继续围绕运营数据、资产表现、投资成绩、安全和客服数据等方面向用户公示成绩单,以诚挚之心,与用户携手共进,共创美好未来。

(英文专用图片。面对加密市场大波动,火币HTX七月交易额环比上涨11.3%,7月24日,据 CoinGecko 数据,火币HTX 的 24 小时交易量升至全球第二位,达 28亿美元,这是火币HTX 排名今年第三次升至 Top2,稳步向前。 )

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