Solana价值再发现:在背光的地方悄然生长

Odaily星球日报Pubblicato 2023-11-02Pubblicato ultima volta 2023-11-02

Introduzione

正在进行的Solana年度大会上,几乎没有交易所的身影,但或许这才是他们想要的样子。

原创 | Odaily星球日报

作者 | Azuma

Solana价值再发现:在背光的地方悄然生长

写这篇文章的时候,Solana(SOL)正在经历牛市后最强劲的一轮反弹,价格大概在 43 美元左右。 

作为上轮牛市最为惊艳的项目(或许可以不加“之一”),Solana 曾经头顶着“以太坊杀手”的光环,在某个爆炸头的助推一度跻身过 Crypto 市值排名的前三甲。 

然而,随着 FTX 帝国的突然倒塌,与之牵涉颇深的 Solana 也随即遭受重击。币价跌去九成,生态项目出逃,再加之一些意外的宕机事故,Solana 逐渐跌下了神坛,曾经聚焦在其身上的万千关注也已悄然散去。

在以太坊正统地位愈发牢固、Layer 2 叙事大行其道的当下,作为“其他” Layer 1 的代表,Solana 更多的时候是在市场关注度较低的“背光处”默默发展,但近期接连的几根大阳线,却似乎是在向市场宣告其已走出了旧时阴影,正欲掀开新的篇章。 

关于 Solana 过去的故事,感兴趣的读者可以收听 STEPN 首席营收官 Mable 的播客「HODLong 后浪」第 22 期内容「Solana 沉浮录:很多的偶然与少许的必然」。该期内容详述了 Solana 是如何从一个融资较少的 Layer 1 走向赛道头部,如何完成了从 0 到 1 的启动,SBF 如何与 Solana 结缘,“喜提巨佬”的 Solana 又是如何完善增长飞轮的。 

Solana价值再发现:在背光的地方悄然生长

Odaily 星球日报站内亦有该期播客的文字版内容,不方便收听的朋友们可以直接阅读。

作为 Solana 另一大主要投资机构 Multicoin Capital 的前合伙人,Mable 在当时对 Solana 未来发展的预判是:Solana 大概率不会死,但它不会再以原有的方式活。

时至今日回头再看,褪去了“交易所”、“做市商”、“巨佬”等关键词之后,Solana 的发展似乎的确显得更加纯粹了。

  • 四月,Solana 推出了针对 NFT 存储的新功能“状态压缩”,可将在 Solana 上铸造 NFT 的成本降低 2400 - 24000 倍,铸造 100 万个 NFT 的成本将从 250000 美元降低至 110 美元。

  • 七月,Solana 发布了 GameShift API,旨在更好地赋能开发者在 Solana 进行 Web3 游戏开发,简化其开发难度。

  • 同月,基于 Solana 的 EVM 兼容方案 Neon 正式上线主网。随即 Solana 又推出了支持 Solidity 的智能合约编译器,旨在进一步打通与 EVM 生态的连接。

  • 八月底至九月初,ShopifyVisa 先后宣布与 Solana 集成,扩展了 Solana 在 Web2 世界的支付服务版图。

  • 还是九月,以太坊 OG 项目 Maker 的创始人 Rune Christensen 公开赞扬 Solana,认为 Solana 有着最有前途的代码库,可作为 Maker 构建新链的基础。

  • 十月,由 Jump Crypto 开发的 Firedancer 客户端正式上线测试网。除此之外,Syndica 还在领导开发另一个客户端 Sig,轻客户端 TinyDancer 的开发工作也在积极推进中。

除了网络层面的开发改善之外,Solana 亦在积极推进其生态建设。仅在刚刚过去的第三季度内,Solana 已与其他生态合作伙伴共同举办、赞助了 OPOS、Hyperdrive、Hacker Houses、PlayGG 等多场黑客松活动,向多支优秀团队提供了上百万美元的早期资金。

当前,Solana 于阿姆斯特丹召开的年度生态大会「Breakpoint」即将进入第三天,但正如已长期处于背光处的 Solana 一样,这场大会在社交媒体上(尤其是华语圈子)的曝光量似乎也不是那么尽如人意(至少不如半个月之后的 Devconnect)。

曾就职于 Solana Labs 的 Delphi Digital 投资助理 Alexander Golding 针对这场会议前两天的内容做了些简单纪要,并提到实际上的与会人数要比去年更多,且结识了许多全新的面孔,感兴趣的用户可以跟踪其社交媒体账户了解更多动态。

Solana价值再发现:在背光的地方悄然生长

简单来说,这更像是一场属于开发者们的盛会。

Jump Crypto 在大会首日官宣了 Firedancer 上线测试网,并收获了一众技术大佬的赞许。Paradigm 首席技术官 Georgios Konstantopoulos 直言喜欢该客户端;Global Macro Investor 创始人 Raoul Pal 则表示这是区块链技术的极大飞跃;Cyber Capital 创始人 Justin Bons 更是借此声称从 Solana 的批评者变成了支持者。

Solana价值再发现:在背光的地方悄然生长

除了备受关注的 Firedancer 之外,许多 Solana 生态项目们也都在「Breakpoint」公布了最新进展,Pyth Network 昨日公布了追溯性空投计划,看起来 Jupiter 似乎明天也官宣些什么。

Solana价值再发现:在背光的地方悄然生长

值得一提是,Golding 在 Day 2 的记录中专门强调,这次的「Breakpoint」几乎没有交易所背景的 VC 到场,可能来的只有 Coinbase Ventures 和 OKX Ventures,但这却让 Solana 团队与社区开发者们有了更多的时间去近距离交流。或许,这正是 Solana 更想要的样子。

Solana价值再发现:在背光的地方悄然生长

总而言之,本文的初衷并不是想要鼓吹 Solana 或是喊单 SOL,事实上我个人也不太建议现在去做任何操作,因为随着「Breakpoint」即将闭幕,可预见 Solana 短期内的流量高峰即将过去,后续行情存在一定的不确定性。

之所以写这篇文章,是希望大家能够更客观地去看待 Solana 如今(特指后 FTX 时代)的发展状况,了解 Solana 在走出历史阴影之后的具体动向。

它并没有被黑天鹅击垮,正如当年能够脱颖而出被 SBF 看上一样,它身上的许多优点仍然存在且会继续延续。

它并不够完美,但正在变得更好。

它不叫“FTX 链”或“SBF 链”……曾经、现在、未来,它都只叫作 Solana。

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