加密初创公司在第二季度筹集了27亿美元——这是好消息和坏消息

币界网Publicado a 2024-08-12Actualizado a 2024-08-12

币界网报道:

与上一季度相比,2024年第二季度加密货币行业的风险投资(VC)资金总额略有上升,尽管交易数量大幅下降。

根据最新的PitchBook报告,加密货币领域的初创公司在503笔交易中总共获得了27亿美元。好消息是,与2024年第一季度相比,投资资本增加了2.5%,但交易量下降了12.5%。

该报告强调了交易规模不断扩大的趋势,尽管面临持续的监管挑战和市场波动,投资者仍对加密货币市场表现出信心。

报告指出:“交易价值的增加和交易数量的减少表明,本季度交易规模总体上有所增加。”。

与2024年第一季度相比,投资动态的转变是显而易见的。

虽然上一季度的交易量有所增加,但第二季度的重点似乎已转向质量和规模,更多的投资集中在更少的公司。

报告补充道:“随着投资者对加密货币的积极情绪回归,除非出现任何重大市场低迷,我们预计全年投资量和速度将继续增加。”这暗示2024年下半年可能会强劲。

基础设施初创公司在获得资金方面处于领先地位,最大的几轮融资流向了Monad,这是一个并行化Layer 1平台,在a轮融资中筹集了2.25亿美元;DeFi特有的L1 Berachain在B轮融资中筹集了1亿美元;比特币重启平台Babylon在早期融资中筹集了7000万美元。

此外,基于区块链的社交媒体平台Farcaster在a轮融资中筹集了1.5亿美元,标志着10亿美元的融资后估值。

该报告还提供了对更广泛的风险投资市场的见解,强调虽然种子和早期投资的估值上升,但后期投资的估值下降。

具体而言,种子期公司的资金前估值中位数从2023年全年上升了97.0%,达到2300万美元,早期估值飙升了166.0%,达到6380万美元。

相比之下,后期估值下降了36.0%,至4080万美元,反映出投资者在公司增长后期采取了更为谨慎的态度。

由Stacy Elliott编辑。

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