Bitwise 向 SEC 提交 19b-4 文件,狗狗币 ETF 即将上市

ambcryptoPublished on 2025-03-05Last updated on 2025-03-05

Abstract

基于现金的 DOGE ETF 已经摆在眼前,但它真的能让投资者受益吗?

Bitwise 为 Dogecoin ETF 提交 19b-4 文件,由 Coinbase Custody 和纽约梅隆银行管理资产

狗狗币 ETF 获批几率升至 66%,但狗狗币价格下跌 11.69%

Bitwise 已向推出狗狗币 [DOGE]交易所交易基金 (ETF) 迈出了重要一步,并已向纽约证券交易所 Arca 向美国证券交易委员会 (SEC) 提交了 19b-4 文件。

如果拟议的 ETF 获得批准,Coinbase Custody 将担任托管人,而纽约梅隆银行将负责监督现金管理、行政和记录保存。

Dogecoin ETF 的 Bitwise 文件

此次最新文件是在 Bitwise 早些时候提交 S-1 申请之后提交的,表明机构对狗狗币的兴趣日益浓厚,并有可能进入受监管的投资领域。

根据备案文件,“根据经修订的 1934 年证券交易法第 19(b)(1) 节(“该法案”或“'34 法案”)及其项下第 19b-4 规则的规定,纽约证券交易所 Arca 公司(“纽约证券交易所 Arca”或“交易所”)提议根据纽约证券交易所 Arca 规则 8.201-E(基于商品的信托股份)上市和交易 Bitwise Dogecoin ETF(“信托”)的股份。”

就背景而言,Bitwise 提议的狗狗币 ETF 旨在为流行的 memecoin 提供受监管的投资机会。与直接持有不同,ETF 采用现金创造和赎回模式,阻止投资者直接交易狗狗币。

该基金的净资产价值 (NAV) 将使用 CF Dogecoin-美元结算价格每日确定,确保与市场估值保持一致。

该 ETF 于 1 月份提交了 S-1 注册申请,如果获得批准,将成为首批在美国上市的 memecoin ETF 之一。这将为机构投资者和散户投资者打开大门,让他们能够安全、受监管地投资狗狗币。

Polymarket 的趋势

话虽如此,狗狗币 ETF 的竞争已经升温,包括 Bitwise、Grayscale 和 Rex Shares 在内的多家资产管理公司都在争夺监管部门的批准。

Grayscale 的提案似乎处于领先地位,因为美国证券交易委员会已经承认了其提交的文件。

此外,市场对 2025 年狗狗币 ETF 获批的乐观情绪高涨,Polymarket数据显示该概率为 66%,高于前一天 55% 的可能性。

然而,狗狗币的价格最近表现不佳,下跌 15.79% 至 0.19 美元,交易量也下降了 11.69%。尽管 ETF 预期不断上升,但这暗示市场活动有所减弱。

与此同时,山寨币 ETF 也得到了更广泛的推动,包括Cardano [ADA]、Solana [SOL]、Polkadot [DOT]、Litecoin [LTC]和XRP。这是新政府执政下 SEC 立场转变的标志。

因此,随着加密货币领域的多项发展,哪个山寨币 ETF 将成为第一个推出的 ETF 还有待观察。

Trending Cryptos

Related Reads

Anthropic Creates an AI Jailbreak 'Penal Code': Your Requests, Four Ways to Die

Anthropic has publicly detailed its security measures and a new "Cyber Jailbreak Severity" (CJS) framework following the controversial takedown of its Fable 5 model. The incident, triggered by simple user requests like counting letters or stating a profession, highlighted overzealous safety filters. Anthropic classifies cybersecurity-related prompts into four tiers: malicious activities (blocked), high-risk dual-use (like pentesting, with strict limits), low-risk dual-use (often blocked by "safety margin" errors), and harmless tasks (theoretically allowed but still frequently flagged). The company admits its classifiers are tuned for high sensitivity, leading to many false positives. The newly proposed CJS framework aims to objectively score the severity of AI "jailbreaks" (prompts that bypass safety rules) on a 0-10 scale across four dimensions: Capability Gain (does it grant new attack abilities?), Breadth (does it work across multiple attack types?), Weaponization Ease (how hard is it to turn into a real attack?), and Discoverability (how easy is it to find?). The score determines the response, from no action (CJS-0) to a potential model takedown (CJS-4). The score is context-dependent; for example, discovering a major unknown vulnerability today scores high, while asking about a well-known one scores low. The article raises concerns about Anthropic's dual role: it is both creating powerful models (like the restricted Mythos 5) and defining the rules (CJS) for judging their misuse, potentially giving it disproportionate influence. This is set against the backdrop of U.S. export controls, which for the first time directly restricted API access to a model (Fable 5), creating a "tiered" system where public models are heavily filtered and advanced ones are limited to vetted partners. The CJS framework is portrayed as potentially providing regulators with a metric to justify future API shutdowns. For users, the advice is to carefully phrase prompts, watch for signs of being downgraded to a weaker model, and wait indefinitely for promised filter improvements.

marsbit29m ago

Anthropic Creates an AI Jailbreak 'Penal Code': Your Requests, Four Ways to Die

marsbit29m ago

$100M Annual Revenue, Two Berkeley Roommates in Their 20s Build the Most Profitable AI Business

Arena, the AI model ranking platform, has become a $100 million annual revenue business just eight months after launching its commercial service. Originally a UC Berkeley open-source research project called Chatbot Arena, it created a "battle arena" where users blind-test and vote on anonymous AI model responses. This has generated a highly trusted, community-driven leaderboard based on over 10 million user evaluations and 82 million votes. Major AI companies like OpenAI, Google, and Anthropic submit their flagship models to be ranked. The core monetization strategy is its AI Evaluations service, where model developers and large enterprises pay for in-depth performance analysis from Arena's massive user community. This provides real-world feedback on model strengths, weaknesses, and hallucinations—a critical service as models become more complex. The company, spun out from Berkeley in early 2025, quickly raised $100 million in seed funding at a $600 million valuation and later secured a $150 million Series A at a $1.7 billion valuation. The founding team includes CEO Anastasios Angelopoulos, a mathematician focused on rigorous model evaluation; CTO Wei-Lin Chiang, creator of the popular Vicuna chatbot; and co-founder Ion Stoica, a renowned Berkeley professor. Arena is now expanding beyond chat benchmarks into "Agent Mode," evaluating AI agents on complex, multi-step tasks like coding and research. The company's success illustrates the growing value and cost of independent, real-world AI model evaluation as the industry intensifies.

marsbit33m ago

$100M Annual Revenue, Two Berkeley Roommates in Their 20s Build the Most Profitable AI Business

marsbit33m ago

Racking Up 24,000 Stars: With One Command, AI Can Now Find Its Own Skills

Vercel, known for its developer tools like Next.js, has launched 'skills', a package manager for AI coding agents, garnering 24,000 GitHub stars. It allows developers to add specialized capabilities, such as React best practices, to AI assistants like Claude Code or Cursor with a single command: `npx skills add <package>`. Skills are shareable, reusable modules that define an AI agent's behavior for specific tasks, moving beyond one-off prompt engineering towards standardized 'capability engineering'. A key innovation is the 'find-skills' skill, which acts as an internal search engine, allowing an agent to autonomously find and install the right skill for a user's request. This lowers the barrier for non-developers to leverage advanced AI coding assistance. However, this 'npm moment' for AI brings significant security risks. Security audits of thousands of skills on platforms like skills.sh and ClawHub found over 30% contained security flaws, with about 13% classified as severe. Threats include malicious scripts that can access local files and credentials, and prompt injection hidden within skill documentation. Unlike traditional code packages, skills blend instructions, code, and system access, posing a direct risk to user machines and data. Experts advise treating skills like code—reviewing them carefully before installation, especially their scripts, and being wary of excessive permissions. Ultimately, Vercel's initiative represents a major shift towards modular, reusable AI capabilities, but its rapid adoption requires developers to bring the same caution used in managing traditional software dependencies.

marsbit34m ago

Racking Up 24,000 Stars: With One Command, AI Can Now Find Its Own Skills

marsbit34m ago

Claude Engineer Finally Unveils Fable 5's Ultimate Strategy, Teaching You How to Bridge the Information Gap with AI Models

This article, titled "Claude Engineer Finally Releases Fable 5 'Skill-Burning' Guide, Teaching How to Bridge the Information Gap with Models," details a blog post by Claude Code engineer Thariq Shihipar. The core concept is the "information gap" or "unknowns"—the disconnect between a user's instructions (the "map") and the actual task requirements (the "territory"). The article argues that with powerful models like Claude Fable 5, work quality depends on the user's ability to identify and clarify these unknowns. Shihipar categorizes unknowns into four types: Known Knowns (explicit instructions), Known Unknowns (awareness of gaps), Unknown Knowns (implicit, unstated knowledge), and Unknown Unknowns (unforeseen issues). The blog provides a framework for addressing these gaps throughout the workflow: * **Before Implementation:** Techniques include "Blindspot Scanning" to uncover Unknown Unknowns, brainstorming/prototyping for visual or complex tasks, having Claude ask clarifying questions, using reference code/examples, and creating implementation plans. * **During Implementation:** Maintaining an "implementation notes" file for Claude to document deviations and decisions made due to encountered edge cases. * **After Implementation:** Creating summary documents for review and having Claude generate quizzes to ensure the user fully understands the completed changes. The article concludes that as models become more capable, the key to success is systematically discovering and defining these unknowns through low-cost methods like prototyping and planning, allowing for more effective collaboration.

marsbit39m ago

Claude Engineer Finally Unveils Fable 5's Ultimate Strategy, Teaching You How to Bridge the Information Gap with AI Models

marsbit39m ago

Trading

Spot

Hot Articles

What is DOGE M

Doge Matrix ($doge m): The New Breed of Community-Driven Cryptocurrency Introduction In the ever-evolving landscape of cryptocurrency, new projects constantly emerge, each aiming to capture the interest of investors and enthusiasts alike. One of the latest entrants to this domain is Doge Matrix, represented by the ticker symbol $doge m. This project has attracted attention thanks to its roots in the popular meme culture surrounding Dogecoin, establishing its place within the web3 space. This article aims to provide a comprehensive analysis of Doge Matrix, covering its overview, creator, investors, functionality, timeline, and notable aspects. What is Doge Matrix ($doge m)? Doge Matrix is a community-driven cryptocurrency project that seemingly builds upon the widespread appeal of Dogecoin, a digital currency known for its Shiba Inu mascot and its meme origins. While the overarching objectives of Doge Matrix are not extensively defined, it is characterized by a commitment to harnessing community involvement and support. Unlike traditional cryptocurrencies that often emphasize utility or intrinsic value through underlying technologies, Doge Matrix positions itself within a space that embraces the cultural phenomenon of cryptocurrencies, particularly appealing to those who resonate with the ethos of meme-based assets. Drawing on the strengths of the Dogecoin community, Doge Matrix operates as part of a broader ecosystem, inviting participation and engagement from users who share an interest in cryptocurrency and the digital landscape. Who is the Creator of Doge Matrix ($doge m)? The identity of the creator of Doge Matrix remains unknown. This lack of transparency is not an uncommon occurrence in the cryptocurrency space, where some projects are launched without revealing the identities of their founders. The absence of information regarding the founding team can raise questions among potential investors about the project’s accountability and direction. Who are the Investors of Doge Matrix ($doge m)? As it stands, there is no publicly available information detailing the investors or investment foundations that back Doge Matrix. The project appears to rely primarily on community support rather than institutional investment. This model aligns with the community-driven nature of the initiative, fostering an environment where the direction of the project is shaped by its participants rather than being dictated by a select few financial backers. How Does Doge Matrix ($doge m) Work? The specifics regarding the operational mechanisms of Doge Matrix are somewhat vague, reflecting a broader trend of projects in the meme coin space where innovative functionalities are not always clearly articulated. Nonetheless, Doge Matrix seems designed to tap into the existing cryptocurrency ecosystem by encouraging user participation while tapping into the familiar cultural references associated with Dogecoin. Its potentially unique characteristics derive from community interactions rather than technological advancements, emphasizing shared experiences and collaboration among token holders. While the exact innovations have not been explicitly outlined, the project appears to create a space where community members can engage, share ideas, and propel the project's potential forward. Timeline of Doge Matrix ($doge m) Reflecting on the project’s timeline reveals notable events that have defined its journey thus far: November 25, 2024: Doge Matrix reached its all-time high value, marking a significant milestone in its early history. January 1, 2025: Conversely, Doge Matrix hit its all-time low value, illustrating the volatility often associated with cryptocurrencies, especially in the early stages of a project's lifecycle. Ongoing: The project continues to be actively traded and supported by its community, although specific future milestones or objectives have yet to be disclosed. Key Points About Doge Matrix ($doge m) Community Focus At the heart of Doge Matrix is a commitment to community engagement. The project thrives on the premise of collaboration and shared objectives among its members, emphasizing the importance of collective effort. Unlike centralized projects that often have a defined leadership structure, Doge Matrix at present showcases a more fluid approach to governance, where every community member's voice matters. Volatility The cryptocurrency market is notorious for its volatility, and Doge Matrix is no exception. Its price history reflects significant fluctuations between high and low values, which is typical of many new cryptocurrencies but underscores the risks associated with investment in emerging tokens. Lack of Detailed Information One of the most striking features about Doge Matrix is the scarcity of detailed information regarding its technological underpinnings and operational mechanisms. This ambiguity necessitates that potential investors conduct thorough due diligence before engaging with the project. Conclusion In summary, Doge Matrix ($doge m) illustrates a new wave of cryptocurrency projects that lean heavily on community engagement and cultural relevance. While lacking in certain specifics—such as clear leadership, defined objectives, and detailed functionality—the project has managed to generate interest within the crypto community, leveraging the established appeal of meme culture. As with any investment in the cryptocurrency space, understanding the inherent risks and conducting comprehensive research is essential for potential participants. Doge Matrix stands as a reminder of the dynamic, sometimes unpredictable nature of the crypto industry, marked by constant evolution and enthusiasm for community-driven initiatives.

3.9k Total ViewsPublished 2025.02.03Updated 2025.02.03

What is DOGE M

Discussions

Welcome to the HTX Community. Here, you can stay informed about the latest platform developments and gain access to professional market insights. Users' opinions on the price of DOGE (DOGE) are presented below.

活动图片