盘点Solana生态36个潜力空投项目及交互策略

Odaily星球日报Pubblicato 2024-03-05Pubblicato ultima volta 2024-03-05

Introduzione

Solana生态或将迎来空投季,汇总36个潜力项目。

原文作者:Lumus, 加密 KOL

原文编译:Felix, PANews

加密 KOL Lumus 盘点了 Solana 生态 36 个具有潜在空投的项目,您需要:

  • 准备好你的钱包

  • 完成尽可能多的步骤

Phantom(钱包)

  • 访问:https://phantom.app/

  • 创建钱包或导入助记词

  • 在内部进行一些交易

  • 打开 dApp - > 任务 - > Connect Drip

  • 在手机上下载钱包并铸造 NFT(重要)

  • 然后,与一些 DEX 连接即可

盘点Solana生态36个潜力空投项目及交互策略

MagicEden(钱包)

  • 访问网站:https://magiceden.io/

  • 创建钱包

  • 在 Solana 上进行一些交易

  • 桥接到 ETH/BTC

  • 在 MagicEden 上购买一些 NFT,然后通过钱包出售

盘点Solana生态36个潜力空投项目及交互策略

Backpack(钱包)

盘点Solana生态36个潜力空投项目及交互策略

Tensor

  • 访问网站:https://links.tensor.trade/

  • 连接钱包(使用 Backpack 钱包,+ 25% 积分)

  • 交易(买/卖)

  • 做多/做空一些 NFT

目前,这是积分活动的第三季,所以不要忘记推荐活动。

盘点Solana生态36个潜力空投项目及交互策略

Exchange ART(NFT)

  • 访问网站: https://exchange.art/

  • 连接钱包

  • 填写个人资料

  • 铸造 NFT

  • 创建新系列藏品

  • 订阅一些作者

盘点Solana生态36个潜力空投项目及交互策略

Drip(NFT 市场)

盘点Solana生态36个潜力空投项目及交互策略

Sniper(NFT 市场)

盘点Solana生态36个潜力空投项目及交互策略

Solana Mobile(手机)

盘点Solana生态36个潜力空投项目及交互策略

Layer 3 (任务平台)

  • 访问网站:https://linktr.ee/layer3xyz

  • 连接 SOL 钱包

  • 填写个人资料(使用您的 EVM 和 SOL 钱包)

  • 打开任务选项 - > Solana

  • 完成任务

这是为其他 DeFi 空投做的准备。

盘点Solana生态36个潜力空投项目及交互策略

Bags(SocialFi)

盘点Solana生态36个潜力空投项目及交互策略

Solana TG 机器人

Whales Market

盘点Solana生态36个潜力空投项目及交互策略

Drift Protocol(DEX)

交易:

  • 做多/做空代币

  • 保留订单至少 10 分钟

  • 增加交易量

Earn:

  • 质押 USDC

注意:解除质押的期限为 13 天。盘点Solana生态36个潜力空投项目及交互策略

Parcl

  • 访问网站:https://app.parcl.co/

  • 连接钱包

  • 存入一些 USDC

  • 通过推荐获得奖金

  • 质押 USDC(1 美元 = 4 积分)

  • 交易期货

盘点Solana生态36个潜力空投项目及交互策略

Zeta(DEX)

不要忘记 3 美元的交易费用。盘点Solana生态36个潜力空投项目及交互策略

Backpack(Exchange)

免责声明:每实现 1 万美元交易,就会损失 9 美元。

盘点Solana生态36个潜力空投项目及交互策略

Jupiter(DEX)

  • 访问网站:https://jup.ag/

  • 交易量达到 1 万美元

  • 使用期货

  • 交易量达到 3 万美元

  • 购买和使用 JLP

  • 使用 DCA(可选)

盘点Solana生态36个潜力空投项目及交互策略

Monaco Protocol

有两个博彩平台:Purebet、BetDEX。以下步骤对两者都有价值:

盘点Solana生态36个潜力空投项目及交互策略

Solblaze(质押)

盘点Solana生态36个潜力空投项目及交互策略

Jito(质押)

盘点Solana生态36个潜力空投项目及交互策略

Marinade(质押)

注意取消质押的费用。盘点Solana生态36个潜力空投项目及交互策略

MarginFi(质押/借贷)

奖励机制:

  • 借出 1 美元 = 1 积分/天

  • 借入 1 美元 = 4 积分/天

每周重复 3 次。盘点Solana生态36个潜力空投项目及交互策略

Kamino(借贷)

盘点Solana生态36个潜力空投项目及交互策略

Meteora

您也可以使用 DLMM,但安全性较差。

盘点Solana生态36个潜力空投项目及交互策略

Cega

注意,流动性将锁仓 30 天。

盘点Solana生态36个潜力空投项目及交互策略

Asset Dash(钱包追踪)

  • 访问网站:https://linktr.ee/assetdash

  • 注册一个帐户

  • 打开“钱包”

  • 追踪几个钱包

  • 进行一些交易

  • 购买 NFT(可选)

Squads

  • 访问网站:https://squads.so/

  • 连接钱包

  • 创建你的 squad(填写所有内容)

  • 存入一些 SOL

  • 打开 Treasury - > 交易 - >使用 SOL 和 USDC

  • 成交量要达到 100 美元

盘点Solana生态36个潜力空投项目及交互策略

Vault Music

  • 下载手机应用

  • 创建一个帐户

  • 打开发现- >选择几个免费曲目

  • 打开 Fantasy - >选择 5 位作者

盘点Solana生态36个潜力空投项目及交互策略

SOL super stake

盘点Solana生态36个潜力空投项目及交互策略

Circuit(质押)

盘点Solana生态36个潜力空投项目及交互策略

Francium(借贷)

  • 访问网站:https://francium.io/app

  • 连接钱包

  • 打开“借出'->存入任一资金池

  • 打开“挖矿”- >存款

  • 打开“投票” - >投票

盘点Solana生态36个潜力空投项目及交互策略

Kanalabs(桥接)

盘点Solana生态36个潜力空投项目及交互策略

Phoenix(DEX)

盘点Solana生态36个潜力空投项目及交互策略

Pyth(质押)

空投已经结束,但可以提高在其他空投中的机会。

盘点Solana生态36个潜力空投项目及交互策略

Mayan

盘点Solana生态36个潜力空投项目及交互策略

Tip Link

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