一文梳理40个未发币的潜力项目

Odaily星球日报Published on 2024-03-05Last updated on 2024-03-05

Abstract

本文盘点了40个还没有发币的高潜力项目。

原文作者:Leshka.eth

原文编译:深潮 TechFlow

本文列举了 40 个还没有发币的项目,根据分配最高空投/时间成本的潜力进行划分。

我没有在本文中包括 $ZRO 和 $ZKS 等主流项目。因为你肯定已经听说过它们了。让我们关注一下在空投方面很有潜力的项目。

巨大潜力 (Tremendous)

  • @aevoxyz :衍生的 L2 解决方案并且已经确认空投

  • @fuel_network :具有免费测试网的无许可第 2 层协议

  • @AleoHQ :测试网阶段隐私第一的第一层区块链

  • @eigenlayer :带有积分系统的再质押

  • @monad_xyz :与 LayerZero Labs 合作的以太坊兼容 L1 解决方案,有可能超越其他的 L1 和 L2

  • @AvailProject :可靠的基线(baseline)水平,开展自己的激励活动

  • @puffer_finance :EigenLayer 的再质押中心,为 Eigen 和 Puffer 提供激励

  • @Hyperlane_xyz :无需许可的互操作层,具有空投的潜力

  • @Backpack :Solana 上的加密钱包和交易所,已确认空投和 3700 万美元投资

  • @taikoxyz :无需许可的以太坊等价 ZK-Rollup,将在第一季度至第二季度奖励其活动参与者

  • @Scroll_ZKP :EVM 等效的 ZK-rollup,具有减少网络内链上活动的巨大潜力

  • @Metis L2 :无需许可的以太坊第 2 层网络,为测试网参与者提供奖励

  • @PolyhedraZK :Web3 互操作性的基础设施协议,很有可能出现代币空投,类似于 Panda NFT 发生的情况

高潜力

  • @swellnetworkio :以太坊 LST 协议,提供自己的奖励系统

  • @Parcl :一个已确认代币的去中心化房地产交易平台

  • @initiaFDN :由 Binance Labs 支持的未来集成 rollup 网络

  • @Polymer_Labs :以太坊和 L2 之间的互操作枢纽,已开通了候补名单表

  • @DriftProtocol :Solana 上的链上永续 DEX,预计在第二季度提供积分和代币

  • @berachain :EVM 兼容区块链,在免费激励活动中拥有超过 200 万参与者

  • @ourZORA :为以太坊设计的协议,为创作者提供奖励并有机会获得空投

  • @HyperliquidX :去中心化永续交易所,预计在第二季度将积分转换为代币

  • @tensor_hq :Solana 上最大的 NFT 市场,提供获得第 3 季奖励的机会

  • @ether_fi :以太坊上的再质押协议,提供了获得 EigenLayer 和 EtherFi 忠诚积分的机会

  • @KaminoFinance :Solana 的借贷、流动性和杠杆协议,正在进行其第一个积分季节

  • @Calderaxyz :一个模块化区块链平台,允许您部署自己的 rollup,类似于 AltLayer

  • @base :由 Coinbase 孵化并为创作者创建的新以太坊第 2 层,创作者从其项目中获得激励

  • @sovereign_labs :适合所有人的可互操作和可扩展的 rollup 生态系统

较高潜力

  • @Orbiter_Finance :最大的去中心化跨链桥之一,嵌入了桥、铭文等的积分系统

  • @QuaiNetwork :进行 Galaxy 活动和测试网的工作量证明区块链网络

  • @marginfi :Solana 上最大的借贷协议,与 Backpack 合作,预计将推出代币

  • @RenzoProtocol :EigenLayer 再质押中心,TVL 超过 7 亿美元

  • @kinzafinance :BNB 链上的借贷协议,由币安支持,上市机会很大

  • @zerolendxyz :zkSync、Blast 和 Manta 上的借贷市场,为存入/借出资金提供积分作为奖励

  • @ambient_finance :Blast、Scroll 和以太坊上的 zero-to-One 去中心化交易协议,具有积分系统

  • @MeteoraAG :Solana 上的第一个动态流动性协议

  • @PikeFinance :由 Wormhole 提供支持并拥有自己的积分系统的跨链借贷平台

  • @KelpDAO :流动性重新抵押协议,为 $ETH、 $ETHx、 $stETH 和 $sfrxETH 质押者提供奖励

  • @NibiruChain :L1 区块链为智能合约中心提供支持,提供空投计划

  • @KiloEx_perp :BNB Chain、opBNB 和 Manta 网络上的永久 DEX;由 Binance Labs 支持

原文链接

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