看好$ETH的十个理由

marsbitPublished on 2024-08-20Last updated on 2024-08-21

以太坊很好:

看好 ETH 的十个理由以太坊

1.低通胀:

尽管 Gas 费用较低,但 ETH 的年通胀率仍低于 1%。

相比之下,其他主要 L1 竞争对手的通货膨胀率更高,例如 SOL 约为 4%,并且预计未来几年大多数其他 L1(SUI、APTOS 等)的 VC 解锁幅度将显著提高。

以太坊

2.开发能力

以太坊生态系统中强大的开发者社区和累积的智力支持持续创新和增长。

以太坊

3.TVL、dApps...

采用所有 L2 的以太坊仍然是顶级智能合约平台,TVL 占比为 58%(但采用所有 L2 的平台则为 ~65 %) 。

以太坊

4.监管确定性:

ETH 和 BTC 不是证券。SOL 也许是证券???

美国和欧盟更加清晰的监管正在增强信心,为贝莱德等机构参与者的进入打开大门。

以太坊

5.稳定币的主导地位:

所有稳定币供应量的 50% 以上都是在以太坊上发行的。

以太坊

6.以太坊在 RWA 发行方面处于领先地位。

在其平台上发行的代币化美国国债总额为 19 亿美元,其中 13 亿美元。

以太坊

7.模块化扩展:

L2s 因流动性分散和用户体验较差而受到很多人的厌恶。

但 L2 提供了可扩展的增长,使以太坊具有足够的灵活性,能够长期适应。此外,跨 L2 互操作性问题可能比我们想象的更快得到解决。

以太坊

8.即将到来的 Pectra 升级将带来用户体验的改善,使开发更加顺畅和高效。

最后,

9.网络效应:

总而言之,ETH 强大的网络效应来自于其早期的领先地位、庞大的开发者社区、成熟的 DeFi 生态系统、机构的采用和强大的安全性,使其成为 dApp 构建者的首选平台。

还有一件事:偏见

我积攒了太多的 ETH,迫切地想把它推销给我的追随者。

10.不要忘记 ETH ETF

当前流量较低,但当市场转为看涨时,有可能出现大量流入。

机构还没有到来。但如果他们想进来,他们有的是办法!

以太坊

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