柴犬销毁率高达 612% – SHIB 的看跌势头是否正在消退?

币界网Pubblicato 2025-01-24Pubblicato ultima volta 2025-01-24

Introduzione

如果 SHIB 能够设法守住 0.0000197 美元的支撑位,那么这可能会开辟一条整合甚至逆转的道路。未能守住该水平可能会为进一步下跌打开大门。

Shib的烧伤率飙升了612%,总计超过320万个令牌。

Memecoin的看跌压力逐渐消失,长/短比例显示出销售势头降低。

在上周下跌超过 20% 后,shiba inu的[shib]看跌势头终于开始减弱。

Memecoin已开始以0.0000197美元的价格接近关键支持水平,这可能标志着决定其进一步价格行动的转折点。

正如历史所指示的那样,强大的支持水平的作用像是心理锚点,吸引了买家并逮捕了下降。

有趣的是,据Shibburn数据显示,在过去的24小时内,Shiba INU的燃烧率急剧飙升。

Memecoin的燃烧率跃升了612%,总计超过3,244,007个shib,从循环中永久删除。

虽然仅此一项可能不会立即推高价格,但供应的减少会增加 SHIB 的需求——如果需求上升,这一因素可能会提振长期价值。

SHIB抛售压力正在减弱

随着 memecoin 接近 0.0000197 美元的关键支撑位,看跌势头的消退可能表明卖家已经失去了动力。

然而,这种看跌势头的减弱并不能保证价格立即回升。

为了使 SHIB 显着反弹,抛售压力减少、代币销毁增加和需求改善的结合需要收敛。

尽管612%的销毁率增长令人印象深刻,但其对价格的影响在很大程度上取决于市场需求和交易量。

如果 SHIB 能够设法守住 0.0000197 美元的支撑位,那么这可能会开辟一条整合甚至逆转的道路。未能守住该水平可能会为进一步下跌打开大门。

Crypto di tendenza

Letture associate

Claude Accused of Becoming Dumber by the Entire Internet, Anthropic Steps In to Reveal: It’s Not the Model That’s Tricking You

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Will the Ethereum Foundation Evolve into a 'Mascot'? Diversified Organizations Are Fragmenting Its Functions

The Ethereum Foundation (EF) is undergoing significant internal turmoil and functional erosion. Following its largest-ever layoff of 54 staff (20% of its workforce) and a major organizational restructuring announced in June, its Protocol Support Team has been officially dissolved. This comes alongside the high-profile resignation of key figures like co-executive director Xiaowei Wang, bringing senior departures this year to at least eight. Criticism of EF's rigid structure, opaque decision-making, and perceived lack of a clear value narrative for ETH has intensified within the community. The layoffs have catalyzed the emergence of independent, non-profit organizations like Ethlabs and Ethereum Institutional, founded by former EF researchers and members. These entities are now taking on core functions such as protocol research/development and institutional adoption, effectively fragmenting the EF's traditional leadership role. Concurrently, EF's security team is adapting to technological change, deploying specialized AI agents to audit Ethereum's codebase, which successfully discovered a critical vulnerability (CVE-2026-34219). While EF states AI complements rather than replaces researchers, it signals a potential future shift in its operational model. Faced with these challenges—internal restructuring, talent drain, the rise of competing organizations, and AI integration—the Ethereum Foundation appears to be stepping back from a central commanding role. Analysts and community observers speculate it may increasingly transition towards a symbolic "ecosystem mascot" function, while decentralized initiatives drive Ethereum's future growth and institutional adoption.

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The domestic embodied AI data industry has attracted nearly 100 players, with 70 focused on data collection and 27 on data infrastructure. In the past year, 15 independent embodied data service providers raised approximately 4.47 billion yuan. Despite this growth, the sector remains early-stage, fragmented, and faces significant challenges. Data collection methods are diverse, categorized into four main routes: teleoperation of real robots, human demonstration without a robot (using motion capture, exoskeletons, etc.), simulation synthesis, and distillation from internet videos. Most companies (43%) adopt hybrid approaches, combining multiple routes, as no single method can meet all training needs. Teleoperation alone is pursued by 31% of players, often by state-owned platforms and robot companies, while newer firms favor asset-light, no-hardware human demonstration. Independent data service providers now form the largest player group (40%), indicating the emergence of a distinct industry segment rather than just a subsidiary function for robot makers. Two-thirds of all players are "embodied-native" startups, while one-third are companies that pivoted from fields like AI data annotation, which are more prevalent in the data infrastructure layer. Current annual industry capacity is estimated at 1.6-1.8 million hours plus 70-80 million data points, with a short-term goal to increase this 15-20 fold within 1-3 years. Data collection factories are spread across 20 provinces in China, concentrated in the Yangtze River Delta, Beijing-Tianjin-Hebei, and Pearl River Delta regions. Financially, the 4.47 billion yuan raised in the past year pales compared to the 43.8 billion yuan raised by the broader embodied intelligence sector in just the first half of 2026, highlighting that data remains a less "sexy" bet for investors. The 15 funded independent providers show clear stratification: a top tier led by a unicorn (Lightwheel Intelligence, 3.1 billion yuan), a middle tier of 11 firms raising tens to hundreds of millions, and an early-stage tier of 3 companies. Sixty-nine investment institutions have participated, but none have made concentrated bets, reflecting uncertainty about viable business models. Over half of these funded companies are less than a year old, most are at pre-A or A rounds, and profitability remains largely unproven. In summary, the embodied data industry has become an independent track creating jobs and local economic activity. However, it is still nascent, with unformed consensus, unsolved problems, and unproven business models. The coming 1-2 years will be a critical validation window to see if companies can build sustainable, profitable businesses purely by "selling data."

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Come comprare SHIB

Benvenuto in HTX.com! Abbiamo reso l'acquisto di SHIBA INU (SHIB) semplice e conveniente. Segui la nostra guida passo passo per intraprendere il tuo viaggio nel mondo delle criptovalute.Step 1: Crea il tuo Account HTXUsa la tua email o numero di telefono per registrarti il tuo account gratuito su HTX. Vivi un'esperienza facile e sblocca tutte le funzionalità,Crea il mio accountStep 2: Vai in Acquista crypto e seleziona il tuo metodo di pagamentoCarta di credito/debito: utilizza la tua Visa o Mastercard per acquistare immediatamente SHIBA INUSHIB.Bilancio: Usa i fondi dal bilancio del tuo account HTX per fare trading senza problemi.Terze parti: abbiamo aggiunto metodi di pagamento molto utilizzati come Google Pay e Apple Pay per maggiore comodità.P2P: Fai trading direttamente con altri utenti HTX.Over-the-Counter (OTC): Offriamo servizi su misura e tassi di cambio competitivi per i trader.Step 3: Conserva SHIBA INU (SHIB)Dopo aver acquistato SHIBA INU (SHIB), conserva nel tuo account HTX. In alternativa, puoi inviare tramite trasferimento blockchain o scambiare per altre criptovalute.Step 4: Scambia SHIBA INU (SHIB)Scambia facilmente SHIBA INU (SHIB) nel mercato spot di HTX. Accedi al tuo account, seleziona la tua coppia di trading, esegui le tue operazioni e monitora in tempo reale. Offriamo un'esperienza user-friendly sia per chi ha appena iniziato che per i trader più esperti.

514 Totale visualizzazioniPubblicato il 2024.12.11Aggiornato il 2026.06.02

Come comprare SHIB

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