加密货币风险投资在第二季度有所上升,但交易数量有所减少:报告

币界网Pubblicato 2024-08-12Pubblicato ultima volta 2024-08-12

币界网报道:

PitchBook的数据显示,2024年第二季度,加密货币初创公司吸引了27亿美元的风险投资。

据彭博社报道,这比上一季度增长了2.5%,但与去年相比下降了近10%。

然而,交易活动比第一季度下降了12.5%。

数字资产市场在早些时候的高点之后面临着重大挑战,这些高点主要是由美国比特币交易所交易基金(ETF)的推出推动的。彭博社的估计显示,第二季度流入这些ETF的投资者暴跌了80%,

Dragonfly加密货币风险基金合伙人Rob Hadick表示,

“虽然风险投资在3月和4月达到顶峰,但随着4月底和5月大盘转为负值,活动放缓。”

根据该报告,尽管存在这些挑战,但一些分析师对未来的融资持乐观态度,理由是代币价格和机构采用率的潜在改善。

Folius Ventures的创始人Jason Kam说,

“项目估值的上升反映了创始人试图占领一个更乐观的二级市场。”

投资继续集中在基础设施项目上,风险投资公司对消费者应用持谨慎态度。第二季度只记录了一轮加密货币应用的主要融资,突显出向基于应用的投资的转变。

退出活动达到了自2022年初以来的最高水平,报告了26次退出,这表明加密货币交易所和基础设施提供商正在进行整合。

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