# Сопутствующие статьи по теме AI

Новостной центр HTX предлагает последние статьи и углубленный анализ по "AI", охватывающие рыночные тренды, новости проектов, развитие технологий и политику регулирования в криптоиндустрии.

This New Generation of US Stock Trading Gods No Longer Read Financial Reports

The new generation of "stock gods" in the 2026 US AI bull market are not analyzing traditional financial reports. Instead of focusing on giants like NVIDIA, figures like the 22-year-old Leopold Aschenbrenner (who reportedly turned $200M into $14B) and influencers like Serenity on platforms like Reddit's WallStreetBets, X, and Substack are gaining fame and returns by targeting obscure, low-cap "micro-cap" stocks. Their strategy, dubbed "supply chain sniping," involves identifying critical, often monopolistic, bottlenecks in the AI hardware supply chain—such as specific materials or components essential for giants like Google and NVIDIA—that are missed by mainstream Wall Street analysts. Serenity's call on AXTI, a $700M company supplying indium phosphide substrates crucial for photonics and optical interconnects, saw the stock soar from ~$12 to nearly $150. Similarly, accounts like KawzInvests and PhotonCap focus on thematic, supply-chain-driven research in areas like AI infrastructure, optics, and cloud services for SMEs, bypassing traditional valuation metrics. This shift represents a cultural move away from Warren Buffett-style value investing based on deep financial statement analysis. The new approach thrives on low liquidity, early narratives, and strong community propagation on social media, similar to meme stocks or crypto. However, this "attention economy" strategy carries risks: it depends on sustained information gaps, the underlying companies' ability to deliver fundamental results, and the potential for crowded, volatile exits as narratives shift. The trend also shows crypto traders applying their narrative-sensing skills to US micro-caps, marking a significant evolution in trading culture.

marsbit05/27 11:55

This New Generation of US Stock Trading Gods No Longer Read Financial Reports

marsbit05/27 11:55

Trillion-Dollar Euphoria for Memory Sellers, Halved Profits for Memory Buyers

Title: The Trillion-Dollar Memory Seller's Carnival vs. The Buyer's Halved Profits On May 26, a stark contrast unfolded. While memory chipmaker Micron's market cap surged past $1 trillion, smartphone maker Xiaomi reported plummeting profits. Xiaomi's Q1 2026 profits fell 43% year-on-year. Executive Lu Weibing cited memory prices quadrupling from last year, adding roughly $210 to a phone's cost. To survive, Xiaomi is cutting entry-level models, sacrificing volume. Micron's stock, however, skyrocketed over 19% in a day, capping an 8x gain in a year. Major banks like UBS and JPMorgan issued bullish reports, raising price targets drastically. Their core thesis: Long-Term Agreements (LTAs) with AI cloud giants (Microsoft, Google, etc.) are eliminating the memory industry's notorious boom-bust cycle. By locking in fixed-price, multi-year contracts for AI-grade memory (HBM, server DDR5), these deals promise stable, utility-like earnings, justifying a higher valuation (20-30x P/E vs. the historical 8-15x). The article reveals a three-tiered memory market in 2026: 1) **AI Storage (HBM/DDR5/Enterprise SSD)**: Extreme shortage, soaring prices, LTAs. This is Micron's story. 2) **Mobile/Embedded Memory**: Also facing sharp price hikes as AI production crowds out capacity, severely pressuring phone makers like Xiaomi. 3) **PC Retail**: Some spot prices are falling due to channel inventory liquidation, creating a divergence from contract markets. The author questions if LTAs truly end the cycle. It hinges on sustained, hyper-growth AI demand. Micron's current profits are at a cycle peak, driven mostly by price hikes, not volume. If AI capital expenditure growth slows, the massive industry capacity expansion (e.g., Micron's $250B+ CapEx plan) could lead to a glut. Historically, using peak-cycle earnings for valuation is a classic trap. While the AI-driven structural shift might be real, the unanimous Wall Street euphoria warrants caution, echoing past bubbles like Cisco's in 2000. The memory seller's trillion-dollar狂欢 (carnival) continues, but the cycle's shadow remains.

链捕手05/27 11:48

Trillion-Dollar Euphoria for Memory Sellers, Halved Profits for Memory Buyers

链捕手05/27 11:48

Agentized OS: It's Not About AI, It's About the Foundation

The Agentic OS: Beyond AI, It's About the Foundational Stack In 2026, major operating systems like Android, iOS, HarmonyOS, and Windows are entering the "Agentic" era, integrating proactive AI assistants deeply into the system layer. However, the real competition lies not in the flashy AI features showcased at events, but in the three-layer foundational stack that enables them: the system-level AI Runtime, proprietary/controllable chips, and the on-device/cloud model matrix. The AI Runtime acts as the central scheduler, managing model inference, resource allocation, and exposing capabilities to apps. Controllable chips (e.g., Apple Silicon, Google Tensor, Huawei Kirin) are crucial for deep hardware-software co-optimization, determining the efficiency and experience limits of on-device Agents. The on-device/cloud model matrix provides the "intelligence," with proprietary, chip-optimized small models (like Gemini Nano, Apple's ~3B model) handling daily tasks locally for low latency, privacy, and reliability, while cloud models tackle complex requests. Deep synergy between these three layers enables key Agent differentiators: ultra-low latency and power efficiency, genuine "on-device first" privacy, access to system-level personal context across apps, and reliable performance as a system service even offline. OS vendors with strong integration across this stack (like Apple, Google, and Huawei) build a deeper moat. Beyond this core stack, long-term competitiveness depends on variables like structured App integration (e.g., App Intents/AppFunctions) for reliable multi-step workflows, and robust privacy frameworks that build user trust. This shift towards Agentic OS extends beyond phones and PCs to IoT, cars, and XR glasses via existing multi-device ecosystems. The race is won not in a keynote, but through generations of meticulously co-developed chips, models, and system software.

marsbit05/27 10:19

Agentized OS: It's Not About AI, It's About the Foundation

marsbit05/27 10:19

Why Sam Altman's 'Water and Electricity Theory' Sparks Copyright Controversy

OpenAI CEO Sam Altman's recent statement that "intelligence will become a utility like electricity or water" has sparked significant controversy, primarily around copyright issues and the nature of AI development. While positioning AI as a utility serves as a compelling narrative for infrastructure investors, critics argue the analogy is flawed in three key areas. First, there's a fundamental "property gap." Traditional utilities like water and power create new, physical infrastructure from scratch. In contrast, major AI models are trained by reorganizing vast amounts of existing human-created content—books, articles, code, etc.—often scraped from the web without explicit permission or compensation to creators. This "free acquisition, paid resale" model is seen by many as ethically problematic. Second, there's a "pricing gap." True public utilities are typically regulated to ensure universal service with non-discriminatory, cost-plus pricing. AI's token-based pricing, however, involves significant price discrimination (e.g., output tokens costing much more than input tokens) and is designed for revenue maximization, not equitable access. Third, a "governance gap" exists. Utilities operate under public oversight, while AI pricing and development are currently controlled by a few private companies. Furthermore, the industry's own shift toward buying licensed training data (e.g., deals with Reddit or news publishers) undermines its previous legal reliance on "fair use" for freely scraped data. In conclusion, while AI is indeed becoming a foundational technology, calling it a public utility remains contentious. The title requires not just scale and a pay-per-use model, but also credible solutions for data provenance, equitable pricing, and public governance.

marsbit05/27 10:03

Why Sam Altman's 'Water and Electricity Theory' Sparks Copyright Controversy

marsbit05/27 10:03

Bitroot Public Chain Invited to Attend Tencent Cloud Singapore AI Conference, Discussing the Future Alongside Solana

On May 19, Bitroot, an emerging Layer 1 blockchain, participated in the Tencent Cloud AI Summit in Singapore alongside key industry players like Solana Foundation. The event explored the intersection of AI infrastructure, enterprise applications, AI Agents, and Web3. Bitroot's invitation, despite being pre-mainnet, highlights industry interest in its focus on high-performance, AI-native architecture tailored for future AI Agent execution and verifiable on-chain automation. Bitroot CEO Juan Jose emphasized that AI competition is shifting from model performance to data, real-world application scenarios, and trust infrastructure. He argued that for AI Agents to evolve from assistants to autonomous executors managing transactions and assets, they require low-latency, low-cost, and high-throughput blockchain environments. Bitroot aims to address this through its EVM-compatible design, optimistic parallel execution, and a consensus mechanism targeting high scalability. Currently in its Testnet 5.0 phase, Bitroot reports metrics like over 50,000 peak TPS and sub-0.3 second average block time. Its narrative positions it within a growing landscape where next-generation Layer 1s like Monad and Aptos also compete on performance, while Bitroot differentiates by integrating AI computational capabilities natively across its stack. The summit underscored that the fusion of AI and Web3 is moving from concept to infrastructure competition, where networks balancing performance, security, and verifiability will be crucial for enabling scalable AI-driven applications.

marsbit05/27 08:13

Bitroot Public Chain Invited to Attend Tencent Cloud Singapore AI Conference, Discussing the Future Alongside Solana

marsbit05/27 08:13

What Are the Key Variables Determining the AI Bull Market?

Title: What Determines the AI Bull Market? Key Variables Revealed Despite rising oil prices above $100/barrel, persistent inflation, and fragile Fed rate cut expectations—a traditionally hostile environment for high-valuation tech stocks—the AI sector continues to drive the market to new highs. According to analysts, the current AI boom is in a phase of "rational fervor": while bubbles exist, they are not yet out of control. The crucial shift is the emergence of Agentic AI, which is evolving from an assisting tool (Copilot) to an autonomous execution tool (Autopilot), creating a clearer commercial path from investment to revenue. This shift accelerates Token consumption and inference computing demand while boosting revenue forecasts for leading firms. The market is now rewarding capital expenditure as it transforms from a burden into a competitive moat, supporting hardware chains like GPUs, optical modules, and storage. However, valuations have already priced in growth expectations for 2027-2028. The forward P/E ratio for the "Magnificent Seven" tech giants is about 35x, compared to 25x for the rest of the S&P 500. This premium implies AI adoption must occur 5 to 8 times faster than past technological revolutions—a scenario with little room for error. The sustainability of the AI bull market hinges on three key variables: 1. **Short-term liquidity shocks**: Risks include sustained high oil prices, resurgent inflation, rising interest rates, and potential unwinding of the yen carry trade. The critical question is whether the upward revision speed of Annual Recurring Revenue (ARR) can outpace the rise in interest rates. 2. **Mid-term industry realization**: Can the actual pace of AI adoption and commercialization match the current lofty valuations? Historically, general-purpose technology revolutions follow a non-linear path with periods of acceleration and deceleration. 3. **Long-term structural constraints**: These include energy and power grid limitations, employment displacement and consumer purchasing power, social acceptance and potential backlash, and potential hardware technology breakthroughs that could disrupt current supply chains. While the long-term prospects for AI remain optimistic with potential for significant productivity gains, the stock market's pricing depends not just on the vision but on the actual speed of realization amid these growing constraints. The direction is clear, but the pace of execution will determine whether the bubble remains controlled or spirals out of control.

marsbit05/27 02:05

What Are the Key Variables Determining the AI Bull Market?

marsbit05/27 02:05

Morning Post | Hyperliquid Launches Off-chain Event Prediction Market Contract; Strategy Completes $1.5 Billion Debt Buyback; Kelp DAO Announces rsETH Fully Restored

Crypto Market Digest (May 27, 2026) Ondo Finance's founder Nathan Allman has passed away, with President Ian De Bode taking over as CEO. In regulatory news, Hong Kong authorities concluded a consultation on virtual asset service provider licensing, aiming to align rules with traditional finance. Kelp DAO announced its rsETH token has fully recovered five weeks after a $293 million hack by Lazarus Group, though the incident caused significant damage to DeFi lending protocols like Aave. Key industry developments include Hyperliquid launching off-chain event prediction market contracts, and the CME introducing futures for Avalanche and Sui. A report highlights the rise of AI Agent payments, with over $73 million settled on-chain in a year, predominantly using USDC. Meanwhile, blockchain detective ZachXBT exposed market manipulation involving several BSC tokens. In investment news, a firm referred to as "Strategy" completed a $1.5 billion debt buyback. Political contributions from the crypto sector for the 2026 U.S. elections have surpassed $500 million, heavily favoring Republican candidates. BitMEX founder Arthur Hayes revealed Zcash is his second-largest holding, citing the growing necessity for monetary privacy. The digest concludes with trending memecoins on Ethereum, Solana, and Base networks, and highlights in-depth articles covering the impending SpaceX IPO, Polymarket's regulatory challenges, and an analysis of the on-chain treasury landscape.

链捕手05/27 01:32

Morning Post | Hyperliquid Launches Off-chain Event Prediction Market Contract; Strategy Completes $1.5 Billion Debt Buyback; Kelp DAO Announces rsETH Fully Restored

链捕手05/27 01:32

Just Now, Chinese AI Enters Top 2 in Global Programming, Only Claude Remains Ahead

**China's AI Ranks Second Globally in Programming, Trailing Only Claude** Today, Alibaba's Qwen3.7-Max achieved a score of 1541 on the Code Arena benchmark, securing fourth place globally and surpassing top models like GPT-5.5 and Gemini 3.5 Flash. Among the top positions, it is now the only non-Claude model, placing second overall after Anthropic's Opus models. Before this official ranking, Qwen3.7-Max had already gained recognition overseas. In practical tests, it outperformed rivals on tasks like creating a self-training Tetris AI and generating complex 3D models, often at a significantly lower cost. Developers praised its ability, especially when integrated with tools like Hermes Agent and OpenCode, to effectively replace models such as GPT-5.5. In a hands-on challenge to create a 3D racing game from a detailed prompt, Qwen3.7-Max delivered a fully playable HTML file in the first attempt, requiring only minor bug fixes. It uniquely included a start menu and sound effects—details missed by other models. While competitors like Gemini 3.5 Flash and Claude Opus 4.6 produced less polished or functional versions, and GPT-5.5 had its own quirks, Qwen3.7-Max stood out for its initial completeness and playability. This performance stems from its design as an "Agent Base Model," built for long-duration, autonomous task execution. Internal tests show it can run continuously for 35 hours, making over 1158 tool calls without context degradation or instruction drift. Key technical advancements include "environment expansion" training, which improves adaptability across different frameworks, and "long-horizon autonomous execution" training, enabling sustained strategic decision-making. By entering the top tier of the programming arena, Qwen3.7-Max demonstrates that Chinese AI models are not just catching up but are becoming defining competitors, challenging the long-standing dominance of Silicon Valley in this field.

marsbit05/27 00:17

Just Now, Chinese AI Enters Top 2 in Global Programming, Only Claude Remains Ahead

marsbit05/27 00:17

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