Polymarket突破10亿美元大关-最新加密货币新闻

币界网Published on 2024-07-30Last updated on 2024-07-30

币界网报道:

著名的加密货币平台Polymarket的交易量已经超过了10亿美元的里程碑,其中超过三分之一的交易量是在上个月内产生的。根据Dune Analytics的数据,截至7月30日,该平台的预测量为3.43亿美元,相较于6月的1.11亿美元和5月的6300万美元有了显著增长。

内容隐藏1为什么Polymarket获得牵引力?2广阔的市场范围3用户的关键见解4展望未来

为什么Polymarket获得牵引力?

对Polymarket的兴趣增加主要是由于围绕美国总统选举的激烈猜测。截至目前,已有超过4.29亿美元押注于11月4日的选举结果,唐纳德·特朗普保持了60%的领先优势。访问NEWSLINKER获取最新技术新闻。

最近的事态发展也影响了交易动态。随着乔·拜登退出竞选,副总统卡玛拉·哈里斯在民意调查中的支持率飙升,她的支持率从1%上升到38%。预计这一转变将增加平台上的交易活动。

市场范围广泛

虽然Polymarket主要用于政治事件投机,但它也为用户提供了多样化的市场,包括加密货币、体育、商业和2024年奥运会。这一品种扩大了其用户群,并为其日益普及做出了贡献。

用户关键见解

**资金增长:**Polymarket于5月14日获得了7000万美元的B轮融资,由Founders Fund牵头,以太坊联合创始人Vitalik Buterin支持。

–**支付集成:**7月24日,Polymarket与MoonPay合作,实现银行和信用卡支付,简化了非加密用户的入职流程。

**专家顾问:**该平台于7月16日聘请选举分析师Nate Silver担任顾问,以利用人们对美国政治猜测日益增长的兴趣。

期待

尽管Polymarket主要服务于美国的活动,但美国用户仍然无法访问它。如果取消这一限制,该平台的活动和用户参与度可能会大幅提高。

您可以在Telegram、Twitter(X)和Coinmarketcap上关注我们的新闻。免责声明:本文所含信息不构成投资建议。投资者应该意识到加密货币具有高波动性,因此存在风险,应该进行自己的研究。

Related Reads

Jensen Huang: Prompts are Becoming Obsolete, Loops are the New Paradigm

Jensen Huang, alongside AI leaders like Peter Norvig, Boris Cherny, and Andrew Ng, is advocating for a shift from "prompt engineering" to "loop engineering" as the new paradigm for AI development. Instead of manually crafting individual prompts, the focus is now on designing autonomous loops—systems where AI agents execute tasks, self-validate results, and iterate until completion without constant human oversight. A loop is a management framework that enables agents to operate independently. Key implementations are seen in Claude Code (with features like /loop, /goal, and /schedule) and OpenAI Codex, which employ multiple agents working in parallel within isolated environments. A core principle is the separation of roles: one agent (or model) performs the task, while an independent agent (or a smaller, separate model) validates the output to ensure objectivity. The article outlines a practical roadmap for implementing loops, starting with a "four-condition test" to assess suitability, building a minimal viable loop, and emphasizing critical pitfalls to avoid, such as lacking hard stop conditions or allowing loops to handle tasks requiring human judgment. This evolution is framed as the fourth major shift in AI interaction: from Prompt Engineering (crafting instructions) to Context Engineering (providing background information), then to Harness Engineering (building tool-enabled environments), and finally to Loop Engineering (creating self-sustaining systems). This progression reflects a consistent trend of increasing abstraction, moving human involvement from direct instruction to system design and rule-setting. The concept has academic roots in frameworks like ReAct, which formalized the "reason-act-observe" cycle. While loop engineering promises greater automation, experts caution about managing token costs and warn against outsourcing understanding—AI can assist, but deep problem comprehension remains essential.

marsbit1h ago

Jensen Huang: Prompts are Becoming Obsolete, Loops are the New Paradigm

marsbit1h ago

Trading

Spot
Futures
活动图片