a16z 布局下一轮牛市的押注项目一览

MarsBit2023-06-07 tarihinde yayınlandı2023-06-07 tarihinde güncellendi

Özet

a16z在主要的协议上进行了大量的投资,例如:$COMP $LDO $UNI $MKR $ETH $OP $SOL $AVAX

想知道加密货币的下一步是什么吗?
以下是@a16z对下一轮牛市的押注。
1/ @dYdX
dYdX是DeFi中最早推出的永续DEX之一。目前,dYdX的日交易量仍然超过所有其他竞争对手的总和。
募集金额:87,500,000美元
共同投资人:@paradigm、@polychaincap、@Dragonfly_xyz以及其他。

a16z


2/ @alongsidefi
AMKT是一种加密指数代币,旨在为25种资产的市值加权篮提供市场风险,每月进行重新平衡,每季度进行重组。
募集金额:11,000,000美元
共同投资人:@coinbase、@FTI_Global以及其他。

a16z


3/ @LayerZero_Labs
LayerZero是一个全能链的互操作协议,通过链上的光节点实现跨链应用。
募集金额:263,000,000美元
共同投资人:@Binance、@Circle、@coinbase、@sequoia以及其他。
4/ @stelolabs
Stelo是一个浏览器扩展,通过进行预测性风险评估和提供一个易于阅读的界面,帮助保护加密货币资产免受Web3钓鱼的影响。
募集金额:600万美元
共同投资人:@opensea 及其他。

a16z


5/ 展望未来,新手将进入Web3空间,并可能随时失去他们的资金,显然需要像Stelo这样的协议。
不要在它上面睡觉。
去安装它,保证你的资金安全。
6/ @zksync
zkSync是一个Layer 2协议,通过增加以太坊的吞吐量并保持其分散性和安全性来扩展以太坊。
募集金额:458,000,000美元
共同投资人:@BitDAO_Official、@ConsenSys以及其他。
7/ @goldfinch_fi
Goldfinch是一个去中心化的信贷平台,为区块链提供真实世界的借贷,由真实世界的资产而不是加密货币作为抵押。
募集金额:37,000,000美元
共同投资人:@coinbase、@OrangeDAOxyz以及其他。
8/ 随着RWAs的叙述获得牵引力,并预计会有更多的增长,值得关注$GFI,即使其图表看起来像过山车。
9/ @aztecnetwork
Aztec与zkSync类似,是以太坊上的一个私有ZK-rollup,使去中心化的应用程序能够获得隐私和规模。
募集金额:119,000,000美元
共同投资人:@coinbase、@paradigm以及其他。
10/ @syndicateio
Syndicate允许用户创建一个由大约99名参与者组成的DAO,汇集他们的资本,然后作为一个团体投票决定资金的投资方向。
募集金额:28,000,000美元
共同投资人:@coinbase、@paradigm以及其他。
11/ 这个背后的概念对我来说相当有趣,特别是考虑到风险DAO的日益流行。
想象一下,你有可能在几分钟内与你的亲密朋友一起开设一个DAO,并集体投资于早期项目。
12/ @weareflowcarbon
Flowcarbon提供投资策略和解决方案,从碳项目的发起和融资到信贷销售和企业碳组合管理。
募集金额:70,000,000美元
共同投资人:@CeloOrg以及其他。
13/ @TrueFiDAO
TrueFi是一个由TRU持有人管理的现实世界和加密货币原生贷款的信贷协议。
到目前为止,TrueFi已经发放了17亿美元的贷款,并收到了15亿美元的还款。
募集金额:32,500,000美元
共同投资人:@BlockTower、@Jumpcapital以及其他。
14/ 蓝筹股
最后,a16z在主要的协议上进行了大量的投资,例如:
$COMP $LDO $UNI $MKR $ETH $OP $SOL $AVAX

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