为Web3带来统一API,Covalent(CQT)连通200多条链上的超2.4亿个地址

Odaily星球日报Publicado a 2024-01-25Actualizado a 2024-01-25

Resumen

Covalent(CQT)的统一API将为开发者和终端用户带来实际的变化。

为Web3带来统一API,Covalent(CQT)连通200多条链上的超2.4亿个地址

近期,Covalent(CQT)使其数据能力触达超 2.4 亿个活跃钱包(地址)。这是一个重要的里程碑,巩固了其在Web3数据可用层的地位。

为了应对大规模获取、存储和提供有用的区块链数据等巨大挑战,Covalent(CQT)采取了有效的解决方案。Covalent(CQT)的统一 API 将为开发者和终端用户带来实际的变化。

轻松访问区块链数据 

过去,Web3开发者往往需要跨多生态调用实时的链上数据。运行公链节点这样的常规方法既无法在多链环境中有效扩展,也不适合只想交互应用的普通用户。

对此,大多解决方案涉及复杂的 SQL 查询,索引数据的过程也有延迟。正是这些卡点阻碍着Web3的快速发展和大规模采用。

Covalent(CQT)则通过其统一的 API、SDK 和 GoldRush UI 套件解决上述问题。

其面向开发者的实时数据接口为Web3企业及机构的可用数据需求提供了统一的方案——通过简化的工作流程,支持超过 200 个区块链网络。Covalent(CQT)的解决方案满足了开发者日益发展的需求。

2.4 亿活跃地址:见证着 Covalent(CQT)的增长与影响力

截至 2023 年 12 月,Covalent(CQT)在整个Web3生态中赋能了 2.4 亿个活跃地址。而这一数字仍在继续增长。这也表明了 Covalent(CQT)对各种区块链生态的影响力,以及对其实时可用和可持续的数据层愿景的落地能力。

为了直观呈现其广泛的影响,Covalent(CQT)制作了一张图表,细分出不同链上受益于 Covalent(CQT)丰富数据的地址数。数据的准确性、实时性对链上应用至关重要。这些地址分别参与了 DeFi、NFT、GameFi、SocialFi。

为Web3带来统一API,Covalent(CQT)连通200多条链上的超2.4亿个地址

使用 Covalent(CQT)数据的活跃地址总数

除了 1.3 亿的地址总数外,Covalent(CQT)还提供了一张基于各条链的统计图,提供了细致深入的视角,准确呈现用户频繁交互的链。这些图表也是了解 Covalent(CQT)统一 API 用户群的偏好和行为模式的有效工具,有助于对 Covalent(CQT)赋能的区块链生态系统进行全面分析。

为Web3带来统一API,Covalent(CQT)连通200多条链上的超2.4亿个地址

按链细分,使用 Covalent(CQT)数据的地址总数

展望未来

Covalent(CQT)致力于成为Web3领域结构化数据和数据可用性的领导者,支持高增长细分领域(如依靠结构化数据蓬勃发展的 AI)。Covalent(CQT)的统一 API 将继续发展,为不断扩展的区块链生态和跨链网络提供富有数据洞见的平台。

通过持续地丰富实时数据,Covalent(CQT)也将继续为更多地址提供及时、准确、全面的信息,促进Web3生态发展。这样,来自每个 DeFi、交易所、钱包的开发者都可以从 Covalent(CQT)强大的数据产品中受益。

关于 Covalent(CQT)

Covalent(CQT)专注于区块链数据可用性,支撑数百万用户构建新经济,自成立以来,持续帮助开发者、分析师等提供 200 多条链上全面、实时的数据。

关于 Covalent(CQT)的更多动态,详见:官网官推API 指引文档构建以太坊 Wayback Machine的相关页面。

联系方式

Dahlia Fu:dahlia@covalenthq.com

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