emojicoin.fun诞生幕后故事

Odaily星球日报2025-01-07 tarihinde yayınlandı2025-01-07 tarihinde güncellendi

Özet

尖端研发和Meme币文化如何促进Econia Labs的最新发展。

emojicoin.fun诞生幕后故事

Econia Labs 正在不断突破去中心化金融 (DeFi) 的极限,其新项目,emojicoin.fun 正是这一探索的成果之一。该平台源于对流动性供应机制的一系列探索,并受到了最近 Meme 币炒作的推动,成功将趣味性与尖端的区块链技术融为一体。以下将带你了解 emojicoin.fun 背后的研发历程。

探索新颖的流动性机制

Econia Labs 已经在探索新颖的流动性供应机制,寻求超越传统模式的创新方法。早期的考虑之一是结合 Econia 订单簿和自动化做市商(AMM)的混合架构,这种方法使我们更深入地研究了两种特定的 AMM 模型:恒定产品 AMM (CPAMM) 和集中流动性 AMM (CLAMM),这两者都有稳健且可组合的流动性提供方法。

emojicoin.fun诞生幕后故事

CLAMM 作为固定量程的 CPAMM

Emoji 实验:意想不到的转折

最初,使用表情符号作为币种符号只是一个随机的灵感—我们认为这个有趣的想法可能会使内部测试更加轻松。然而,一次快速实验证实,表情符号与现有产品(如 Petra Wallet)完全兼容。这一发现为数字资产开辟了一个全新的互动水平,以一种简单而有效的方式融合了文化和金融。

emojicoin.fun诞生幕后故事

测试网上的首个 emojicoin 交易

利用 Meme 币炒作

鉴于最近围绕 memecoin launchpads 的炒作,我们认为我们可以尝试自己的快速实验。这一实验很快变得远远超出了我们的预期。随着更深入研究 CPAMM 和 CLAMM 模型背后的数学原理,很明显它们的结构可以直接应用于最终成为 emojicoin.fun 的项目中。

内部构建的一体化解决方案

emojicoin.fun 的独特之处在于它完全由团队内部设计。与其他依赖多个协议(如使用像 Raydium 这样的“外包 AMM”)拼凑解决方案的产品不同,我们从头开始构建了整个平台。项目的基础是基于第一性原理的数学推导,确保我们的方法在数学上是合理的,并且可组合用成未来的用例。

emojicoin.fun诞生幕后故事

完全定制的 DEX 架构,从头开始构建

由具有独特功能的基于 Move 的区块链提供支持

emojicoin.fun 完全是从零开始构建的,利用网络的独特功能,例如算术聚合器,它支持并行化全局计数器来跟踪交易量和 TVL 等指标。这允许在整个平台上进行实时、高效的更新,而不会牺牲任何一个单独市场的性能或需要串行交易执行。

emojicoin.fun诞生幕后故事

使用算术聚合器跟踪并行化市场的全局统计数据

专业而有趣:黑皮书诞生

为了给项目增加一层专业性,团队在 emojicoin.fun 黑皮书中加入了 LaTeX 进行数学推导和引用,模仿传统机制设计白皮书的风格。在起草时,团队主要在深色模式下工作以减少眼睛疲劳,随着项目的进行,我们在想“为什么不就这样发布呢?”

于是,emojicoin.fun 黑皮书诞生了——一份时尚、深色主题的文件,既反映了该项目严肃的技术基础,也反映了其背后的趣味和创新精神。

emojicoin.fun:用文化和实验重新定义 DeFi

emojicoin.fun 不仅仅是一个 Meme 币启动板——它是深入研究、创造性实验和尖端区块链技术的产物。通过融合新颖的流动性配置机制和互动性强的用户体验,团队构建了一个既创新又有趣的东西。emojicoin.fun 的愿景是让用户以一种易于访问、有趣且扎根于强大技术基础的方式参与去中心化金融。

可关注emojicoin.funEconia Labs的官方 X 账号以了解更多信息,也可以在 Medium 上查看 Econia Labs相关信息或加入 Econia Labs Discord 社区

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