4E Space:今晚八点,聚焦 TOKEN 2049 见闻与全球降息潮下的加密行业未来

链捕手Pubblicato 2024-09-18Pubblicato ultima volta 2024-09-18

今晚 8 点,4E Exchange 将携手业内知名大 V,在 4E X Space 官方中文频道举办一场 AMA 活动。本次 AMA 将分享 Token 2049 现场热点话题,深入讨论全球经济形势,尤其是美联储降息对市场的影响,为听众提供在市场波动中如何建立抗风险增长策略的实用建议。此外,4E 官方表示参与本次 Space 活动听众将有机会参与社区抽奖,获得丰厚的空投奖励。

据悉,4E 平台集加密货币、外汇、股票、大宗商品及指数等多种金融产品于一体,提供一站式交易服务。此次 4E 作为铂金赞助商亮相 TOKEN 2049,P80&P83 展位成为焦点,系列创新产品收获了极高的关注度与好评。此外,4E 展位丰富的互动活动,关注即可领取精美周边礼品。

Letture associate

Li Fei-Fei's Latest Long-Form Article: When Video Generation, Robotics, and NVIDIA All Call Themselves World Models, We Need a Taxonomy

In a new article, Dr. Fei-Fei Li addresses the widespread and often inconsistent use of the term "world model" in AI. She proposes a clear, functional taxonomy rooted in the classic Partially Observable Markov Decision Process (POMDP) loop (agent → action → state → observation → agent). According to this framework, current systems called "world models" are different projections of this loop, categorized by their primary output: 1. **Renderers**: Output observations (pixels). Their goal is visual fidelity for human consumption (e.g., video generation models like Sora). They are the most commercially mature but are limited by a focus on appearance over physical accuracy. 2. **Simulators**: Output states (geometric, physical, dynamic representations). They provide a structurally accurate world for both human professionals (e.g., architects) and computational agents (e.g., robots for training). Li argues simulators are the crucial, underappreciated bridge, as they can underpin both rendering and planning. 3. **Planners**: Output actions. Given an observation and a goal, they decide what an agent should do next (e.g., robotic action models). This area is highly promising but remains the least mature for real-world deployment. Li highlights a key trend: the boundaries between these three categories are beginning to blur, as they all rely on a shared underlying understanding of geometry, physics, and dynamics. The logical endpoint is a unified world foundation model capable of switching between rendering, simulation, and planning based on downstream needs. This convergence, she concludes, is central to advancing spatial intelligence—enabling machines not just to talk about the world, but to truly understand, imagine, and interact with it.

marsbit6 h fa

Li Fei-Fei's Latest Long-Form Article: When Video Generation, Robotics, and NVIDIA All Call Themselves World Models, We Need a Taxonomy

marsbit6 h fa

Trading

Spot
活动图片