Polymarket在集成Chainlink后日交易量创1.53亿美元纪录

bitcoinistPublished on 2026-04-10Last updated on 2026-04-10

Abstract

Polymarket在集成Chainlink的数据馈送后,其5分钟和15分钟短期加密货币市场的交易量出现显著增长。数据显示,平台日均交易量达到1.53亿美元,较集成前增长约3倍,短期市场总交易量突破40亿美元,其中5分钟产品上线首周交易量超过2亿美元。 Chainlink通过提供实时、可靠的市场数据,帮助Polymarket实现快速价格更新和交易结算,吸引了零售和机构交易者参与,提升了市场流动性。尽管报告未具体区分增长来源,但将Chainlink的集成视为关键推动因素。

根据Chainlink相关帖子披露的数据,Polymarket的5分钟和15分钟加密市场总交易量已突破40亿美元,首周交易额更超过2亿美元。同一数据显示,集成Chainlink后平台日均交易量达到1.53亿美元。

短线交易实现快速周转

这一增长源于Polymarket在其短时加密市场中采用Chainlink数据源。该平台现依靠这些数据源为每5或15分钟变动的市场提供实时定价支持。

Chainlink在4月8日的帖子中指出,Polymarket日均交易量已攀升至1.53亿美元,约为集成前的3倍。该帖子还提到短期市场总交易量超40亿美元,其中5分钟产品首周交易额突破2亿美元。

Chainlink数据成为核心支柱

报告将此类活动与对快速可靠市场数据的需求相关联。Chainlink通过提供安全的外部信息,使结算能依据实时价格而非滞后数据完成。在此机制下,速度与信任缺一不可。

报道还称高速市场同时吸引了零售和机构交易者。更广泛的参与度提升了流动性,而短时交易窗口让实时关注微小价格变动的用户获得更活跃的交易体验。

来源:Thomas Fuller/SOPA Images/LightRocket via Getty Images

数据揭示的趋势

5分钟市场表现最为亮眼。报告显示其首周即产生超2亿美元交易额,这股爆发力推动整个短时交易板块突破40亿美元大关。

文章将Chainlink的作用定义为技术支撑:在交易量增长时保持价格准确性及市场平稳运行。指出该预言机网络帮助Polymarket在处理高速交易时不失可靠性,这对围绕短时交易构建的市场至关重要。

LINKUSD 24小时图表交易价8.74美元:TradingView

不过报告未明确说明增长中有多少来自Chainlink技术本身、新用户涌入或快速加密投注的整体热度。虽将集成视为明确催化剂,但数据呈现仍采用简单的前后对比而非完整细分。

头图来自Unsplash,图表来自TradingView

Related Questions

QPolymarket在集成Chainlink后,日均交易量达到了多少?

APolymarket在集成Chainlink后,日均交易量达到了1.53亿美元。

QPolymarket的5分钟和15分钟加密市场总交易量是多少?

APolymarket的5分钟和15分钟加密市场总交易量已超过40亿美元。

QChainlink在Polymarket中扮演什么角色?

AChainlink为Polymarket提供安全可靠的外部市场数据,确保实时价格准确,以支持快速交易和结果判定。

Q集成Chainlink后,Polymarket的日均交易量增长了多少倍?

A集成Chainlink后,Polymarket的日均交易量增长了约3倍。

QPolymarket的5分钟市场在首周交易量如何?

APolymarket的5分钟市场在首周交易量超过了2亿美元。

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