China's AI Fronts: From Yan'an to Midway

marsbitPubblicato 2026-05-26Pubblicato ultima volta 2026-05-26

Introduzione

This article analyzes the competitive landscape of China's AI industry through a dual-front war analogy: the "Eastern Front" of business model competition and the "Western Front" of global strategic positioning. **The Eastern Front: The Scramble for Supply Lines and Monetization** The "Eastern Front" examines the contrasting strategies of three Chinese tech giants—Tencent, Alibaba, and ByteDance—in the face of AI's high marginal costs. Tencent integrates AI as a catalyst within its existing ecosystems (advertising, gaming, cloud) for monetization, prioritizing high-value scenarios over user growth. Alibaba bets on a full-stack, self-developed approach from chips to applications, aiming to control costs and ecosystem, though this requires immense patience and resources. ByteDance, with Doubao as its flagship, pursues a traditional traffic-driven, "super app" strategy but faces severe monetization challenges as its massive user base incurs unsustainable operational costs. The central challenge for all is building a reliable "supply line" (sustainable funding/profit) and achieving efficient monetization, moving beyond being mere "token factories." **The Western Front: "Preserving Land" vs. "Preserving People"** The "Western Front" frames a global strategic divergence. The U.S. model ("preserving land") focuses on closed-source, high-premium models (e.g., Anthropic) targeting lucrative enterprise markets. China's strategy ("preserving people") leverages open-source models (e.g....

By | Autumn Water Pen Talk

In Q1 2026, Counterpoint Research's global large language model revenue ranking unveiled a new power landscape. Anthropic, with 134 million users, captured 31.4% of the global AI revenue share, with an Average Revenue Per User (ARPU) as high as $16.2. OpenAI had 900 million users, but its ARPU was only $2.2. ByteDance's Doubao, with 345 million monthly active users (MAUs), ranked first domestically but was conspicuously absent from this revenue ranking. Another internet giant, previously criticized for conservative investment and lagging R&D, surprisingly appeared as the top revenue-earning Chinese AI company.

This data reveals a glaring fact: the largest user pools contribute the least revenue, while the smallest user bases capture the largest shares. Moreover, every inference call consumes real computing power, and each new user means a higher bill.

The iron law of zero marginal cost from the internet era has crashed into the "non-zero marginal cost" wall in the AI age. The old logic of burning money for scale is being replaced by a new rule: "logistics lines and monetization efficiency determine survival."

In June 1942, the Battle of Midway began. The Japanese Combined Fleet held advantages in tonnage and experience, but its supply lines stretched thousands of nautical miles from the homeland. Every sortie consumed fuel and ammunition that were difficult to replenish. The Americans were precisely the opposite: the base network in Hawaii and the industrial capacity of the mainland meant their supply lines grew thicker the more they fought.

Today, China's AI industry has reached its own "Midway." China's share of global large model inference calls frequently exceeds 50%. DeepSeek V4 leverages global developers at one-fiftieth the cost, but China's overall AI revenue share is squeezed into single digits globally, its total less than that of a single American company. Behind this data lies not only the strategic games of companies but also the contest between two national industrial approaches.

Two fronts have thus opened: the Eastern Front, where the logistics lines of three corporate giants are under extreme pressure—whose ammunition runs out first, whose line collapses first; the Western Front, a more covert global AI strategy contest—how to win an infinite AI war with finite resources. These two fronts, from the outset, have echoed each other in a pincer movement.

Eastern Front: The Game of Logistics and Monetization Efficiency in a War of Attrition

Tencent, Alibaba, and ByteDance have chosen three distinct paths but face the same test: in a war of attrition with non-zero marginal costs, whose logistics lines are more reliable, whose monetization efficiency is higher?

Tencent: The Efficiency Race in Scenario Monetization

Among Chinese AI companies, Tencent, whose strategic foresight and R&D capabilities have been much debated, boasts the highest monetization efficiency. In the global ranking, Tencent ranks first in China with 114 million users and a $2.9 ARPU, more than double that of Baidu and over four times that of Alibaba, though still nearly half of Microsoft's $5.0. Its secret lies precisely in not making money by selling AI itself.

In Q1 2026, Tencent's revenue was 196.46 billion yuan, up 9% year-on-year. But a more critical comparison reveals: excluding the impact of new AI product investments, operating profit grew 17% year-on-year to 84.4 billion yuan. The new AI product line alone consumed about 8.8 billion yuan in profits that quarter.

Where did this money go? Marketing service revenue grew 20% year-on-year, with AI-driven ad recommendation models as the core engine; enterprise service revenue grew 20% year-on-year, with demand for AI-related cloud services as the main driver.AI is not a revenue item on Tencent's books; it is the catalyst that accelerates existing revenue streams—it makes ads more precise, cloud services easier to sell, and has driven over 20% growth in user time spent on Video Accounts.

The true secret of Tencent's AI competitiveness lies not at the model layer, but in the closed-loop efficiency of "scenario-data-monetization." Upgrading recommendation models doesn't require the strongest general-purpose large model; it requires the most intimate understanding of Tencent user behavior data—this data moat is in Tencent's own hands.

Tencent's strategy is clear and pragmatic: core business profits are the main logistics line. Advertising and games provide ammunition for AI; AI in turn makes ads more precise and gaming experiences better—this is a proven virtuous cycle. Tencent President Martin Lau systematically elaborated Tencent's "AI Economics":"In the AI context, every time we deliver intelligent services to users, it incurs considerable costs." The core strategy is to "find high-value scenarios," not to "blindly acquire massive daily active users."

The longer-term bet is on WeChat Agents, but the timeline has been repeatedly postponed from "full launch in Q3" to "no launch in the short term." This gap measures the depth of the cracks in Tencent's AI supply line: the full potential of WeChat Agents depends on a "significantly better" next-generation Hunyuan model; and Hunyuan's progress depends on the allocation game of computing power among seven or eight projects—Hunyuan training, WeChat AI, Yuanbao, etc. Tencent rarely made a high-profile rebuttal to rumors that its AI "Number One" Yao Shunyu left due to "WeChat taking part of the computing power"—the rumors precisely touched the most fragile link: when limited computing power must be allocated among multiple business lines, who fights for ammunition for the long-term future?

Beneath this crack lies a deeper strategic vulnerability for Tencent. The "hybrid use of models" strategy, where core model capabilities partly rely on external sources, reflects Tencent's consistent pragmatism: leveraging external model capabilities to buy time and develop its own AI application portals. But this also means that once the generational gap in foundational model competitiveness widens, the portals, services, and ecosystems built on these models may shift accordingly. With the lifeline in others' hands, even the strongest muscles can become useless overnight.

Tencent is clearly aware of this issue. Chief Strategy Officer James Mitchell stated on the earnings call that to prioritize internal scenarios, Tencent has "actively delayed the external commercialization of cloud computing power," and "all computing power is given to ourselves." Concentrating computing resources on foundational model R&D and high-value scenario monetization is precisely Tencent's current urgent task.

Alibaba: The Cost Gambit of Full-Stack Self-Reliance

In Q4 FY2026, Alibaba Cloud Intelligence Group revenue was 41.626 billion yuan, up 38% year-on-year; AI product revenue was 8.971 billion yuan, exceeding 30% of the total for the first time, marking the eleventh consecutive quarter of triple-digit growth. CEO Eddie Wu clearly stated: "Full-stack AI technology investment has entered a positive cycle of scaled commercial returns." Yet in the same quarter, Alibaba's adjusted EBITA plummeted 84% year-on-year, with operating profit turning from profit to loss. The food delivery war and the AI arms race are happening simultaneously. Between the sprint of ARR and the cliff-fall of profits lies the real test of "how long is the darkness before dawn."

Alibaba's supply line is "infrastructure depth." The official shareholder letter released on May 20 provides the clearest strategic blueprint for Alibaba's full-stack gamble. The model strategy shifts from single-point breakthroughs to a combined arms approach of agents, world models, and multimodal models. It bets on a core logic: only by achieving end-to-end control from chips to applications can inference costs be reduced to the threshold sufficient for scaled services. Alibaba's full-stack gamble essentially aims to replicate the "Android moment" of the AI era. Controlling the base indirectly controls all upper-layer portals that grow upon it. Google took a decade to turn Android from a cost center to a profit engine. Whether Alibaba can endure the darkness before dawn depends on whether it possesses strategic patience of similar magnitude.

The letter further explicitly lists instant retail as a "core strategic pillar for upgrading the Taobao Tmall platform," with Taobao Flash Purchase becoming a key scenario for AI-driven new user growth and enhanced stickiness. The QWen App for C-end users is deeply integrated with various applications within the ecosystem, including Taobao Tmall, Taobao Flash Purchase, Fliggy, Damai, Amap, Alipay, etc., holding significant resource advantages in mobilizing daily life, service, productivity, and entertainment ecosystem services. Combined with the Wukong enterprise-grade AI work platform forming a B-end C-end dual thrust layout, this likely poses a real threat to Doubao's ambition to build a super app.

A deeper challenge also lies in the organizational battle over which business gets computing power allocation. The widely circulated internal review meeting minutes following the departure of Tongyi Qianwen technical lead Lin Junyang revealed a rift, exposing the computing power shortage for this strategic-level product. As a heavy-asset cloud service provider, Alibaba Cloud must balance guaranteeing its own large model R&D, supporting the group's internal e-commerce AI transformation, and selling computing power to external customers. Resource allocation and the complex multi-business line coordination game objectively exist.

This conflict reveals a structural contradiction in Alibaba's AI: even if the supply chain is built long, if segments block each other, supplies still cannot reach the front lines.

But change is happening. QWen and Taobao Tmall have completed full two-way integration, systematically funneling 166 million MAU users into Taobao's pool of 4 billion products. The B-end AI customer service product "Dian Xiaomi" has already pioneered a paid closed loop. Instant retail, as a new battlefield for AI+e-commerce integration, is extending the "stitching surgery" from customer service tools to core transaction scenarios. Whether this stitching surgery can prove its value during the 618 shopping festival will be the most direct pressure test for Alibaba's ATH strategy.

Also, the bug mentioned in a previous article about outputting useless outlines hasn't been fixed by QWen to this day, which is bizarre. Neglecting C-end user experience is also a problem.

ByteDance: The AI Stress Test of Traffic Logic

ByteDance's approach is the inertial continuation of the "app factory" model from the mobile internet era: simultaneously launching over 20 AI applications across C-end and B-end, covering chatbots, virtual characters, social, images, tools, and more. The logic is straightforward: use traffic to nurture hits, use hits to seize portals, and plan monetization after portals are solidified.

This methodology was repeatedly validated in the mobile internet era, relying on the industry rule of near-zero software replication cost.The AI era has broken this rule: every model call incurs real computing power consumption; the larger the scale, the higher the cost. Doubao's 345 million MAUs represent 345 million active costs burning money every day. This is the deepest dilemma of ByteDance's AI strategy. Meta's situation on the global ranking is an even starker reference: 1 billion users, ARPU only $0.1. It's easy to retain users with free AI; it's hard to make money from free AI.

The scale of C-end losses is far more severe than the absence from the revenue ranking. A reference point: OpenAI's Q1 revenue was $5.7 billion, but its operating loss was as high as $7 billion, losing $1.22 for every $1 of revenue. Its C-end user payment ratio is about 5.5%. In contrast, the payment conversion rate for domestic C-end AI applications is generally below 1%. Some institutions estimate that even if Doubao could achieve ChatGPT's 5.6% payment rate, its annualized revenue might barely cover operational costs; at the actual domestic conversion rate of less than 1%, annual revenue might be less than 10 billion yuan, a drop in the bucket compared to the C-end battlefield burning hundreds of billions in costs per quarter.

A more pertinent question is whether ByteDance is "actively revolutionizing" or "passively defending" in this AI race. Doubao Phone Assistant attempts to take over user operations from the system level—this is precisely ByteDance's most anxious proposition: when users no longer open Douyin to scroll through videos but directly tell AI "find me something fun," will the advertising revenue foundation of the old empire collapse before the new empire is built? Moreover, the "run first, fix guardrails later" model is depleting an asset more precious than traffic—trust. A mistake by an AI Agent could leak your bank password.

A more serious crack is its internally distorting organizational culture. Former ByteDance Seed team researcher Zhang Chi publicly criticized thebenchmaxxing culturewithin Seed after leaving: team leaders evaluate performance based on the benchmarks they are responsible for, everyone is chasing scores, "but this doesn't translate into a good experience in actual use." Furthermore, ByteDance reportedly needs about six months to complete a round of large model training (pre-training plus post-training), while Google is rumored to need only three months. This means the gap might still be widening, not narrowing.

ByteDance's supply line is traffic and main business cash flow, but this line is narrowing—2025 net profit fell over 70% year-on-year, with AI investment voraciously consuming profits. Between open source and closed source, ByteDance is the most unique: Doubao is not open source, but achieves widespread global developer adoption through extreme low pricing. This is the logic of low-price closed source: not open source, yet using price wars to achieve the effect of open source. But price wars have an end. When cash flow is continuously consumed by AI investment, lacking both the ecosystem moat of an open-source community and the premium ability of high-end closed-source clients, how far can this middle-ground strategy go?

The international performance of ByteDance's AI product matrix is also strong. Dola's Q1 2026 downloads exceeded 72 million, cumulative downloads broke 200 million, already ranking among the top global AI assistant applications. AnyGen,对标 Manus, is testing paid subscriptions; Trae is positioned as an AI programming tool, but also faces the supply line test: the more Dola users, the higher the cost of calling external models; the deeper the paid products go, the fiercer the competition with OpenAI and Meta. Overseas paid products currently contribute almost negligibly to the supply line—Gauth's annual revenue is only $14 million, AnyGen is still burning money to acquire users, Dola is completely free. Overseas markets have higher payment willingness, perhaps a future variable, but at least for now, overseas is far from a granary; it's another bottomless pit burning money.

However long the supply line, it cannot replace the monetization efficiency of "living off the land"—the former determines how long you can hold on, the latter determines whether you can win.

Tencent collects rent, Alibaba builds roads, ByteDance surveys land. The essential difference between these three models is not just the distance of AI from money, but the strategic choices based on their own resource endowments.

Tencent's AI hides behind ads and cloud, closest to money; Alibaba's AI sells infrastructure, token consumption is exploding, but turning computing power into profit depends on crossing the threshold of scale effect; ByteDance's AI faces users directly, farthest from money. Being far from money means the highest risk, but also the greatest imagination space—but turning imagination into income precisely tests time and a viable payment closed loop.

Beyond monetization efficiency, the AI super app ByteDance values most, apart from users, may find ecosystem value a more critical variable—and in this aspect, Tencent and Alibaba hold more significant advantages—Who can turn AI conversations into real transaction closed loops can truly convert the "traffic value" of the portal into "rent-collecting ability." It tests not users' willingness to pay, but AI's ability to orchestrate real-world service chains.

WeChat Agents hold the best cards. The WeChat Mini Program ecosystem has accumulated service capabilities from millions of merchants—ordering food, hailing rides, booking appointments, paying bills—theoretically, an AI conversational portal could call all these capabilities, completing the full closed loop from demand to delivery within the chat interface. Calling mini programs isn't hard; the difficulty lies in the AI accurately understanding the user's real intent in specific scenarios and making the correct choice among hundreds of similar mini programs. One wrong recommendation costs the user time and patience; one wrong payment costs trust. Tencent's caution is less a technical issue and more a sober recognition of the error tolerance for 1.4 billion users.

ByteDance's Doubao Phone Assistant attempts another path—skipping mini programs, directly taking over user operations from the system layer. This sounds more radical but also more fragile. The system-level floating ball can recognize screen content, simulate clicks, fill forms, but it faces two fundamental obstacles: first, permission barriers from phone manufacturers—no OS will easily let a third-party app take over system-level interactions; second, the inherent短板 of security trust—an AI that can read your screen and simulate your clicks is also the AI that can scare you the most.

After Alibaba's QWen and Taobao completed two-way integration, users can complete product selection, price comparison, and ordering within conversations, with payment and logistics seamlessly handled by Taobao. This is currently the closest among the three to an "AI+transaction" closed loop, but its ceiling is equally clear: the range of services QWen can mobilize is almost limited to the Alibaba ecosystem.

Whoever occupies the future super portal for human-computer interaction—the new layer replacing browsers, apps, and search boxes—holds the greatest option value.

But imagination also needs to be tested. Its falsification conditions are equally clear: if Doubao Phone Assistant fails to significantly increase user reliance on AI commands within 12 months; if WeChat Agents still have no clear launch timetable by the end of 2026; if after QWen's integration with the Alibaba ecosystem, the transaction order volume and repurchase rate completed by users within conversations fail to grow steadily—then the option value of these "super portals" will be heavily reassessed.

Imagination is not an eternal talisman; it is merely an option with an expiration date. If not exercised by expiry, the premium goes to zero. Option pricing is always an art, not a science, before exercise.

Western Front: The Strategic Divide of "Preserving Land" vs. "Preserving People"

As Tencent advances model open source, as Alibaba's QWen captures over 50% of global open-source downloads, as DeepSeek and Kimi sweep global developers with extreme low prices, the strategic choices of Eastern Front companies are converging into the Western Front's route contest. The logistics line game on the first front is mutually supporting the standards contest on the second front.

In March 1947, Hu Zongnan's 250,000-strong force launched a blitz on Yan'an. At that time, the Northwest Field Army had only 26,000 troops. Mao Zedong decided to withdraw proactively. On the eve of withdrawal, Mao Zedong left a statement later repeatedly quoted:"When our army fights, we do not focus on gaining or losing a city or a piece of land. Preserve the people, lose the land, and both people and land can be preserved; preserve the land, lose the people, and both people and land will be lost." He also gave a vivid analogy: "The enemy advances into Yan'an with a clenched fist. Once in Yan'an, he must spread his fingers, making it easier for us to cut them off one by one." A year later, Yan'an was recaptured. In less than two more years, New China was born.

China's AI industry stands at a similar historical crossroads. Accounting for over half of global inference calls, yet revenue squeezed into single digits—the root of this contradiction lies in China's AI choosing a business model fundamentally different from America's. QWen is open source, DeepSeek is open source, Kimi is open source, Hunyuan is open source. Kimi K2.6 costs only $4 per million tokens, six to eight times cheaper than Claude; Tongyi Qianwen captures over 50% of global open-source model downloads. Low-price closed source and even lower-cost open source are essentially doing the same thing: encircle the cities from the countryside.

The US follows a closed-source premium route. Anthropic, with a $16.2 ARPU, locks in the enterprise high-end market. Foreign Policy's assessment hits the mark:"The real AI race is not a hardware arms race that can be won with the most advanced chips, but about whose models become the default choice in emerging markets."

This is the strategic divide between "preserving land" and "preserving people." The American-style "preserve land" builds high walls, defending the profit high ground of B-end top clients with monopolistic performance. The Chinese-style "preserve people" treats global developers as the core asset, using open source and low prices to encircle people in the vast emerging markets, among SMEs and independent developers, accumulating ecosystem momentum in the countless crevices of long-tail scenarios.

The clenched fist of closed-source models in the high-end market will spread its fingers one by one in the low-end market, while open-source models let developers fine-tune autonomously in countless long-tail scenarios like healthcare, agriculture, cross-border e-commerce, cutting off the spread fingers of closed source one by one. Once these developers' startups grow into giants, path dependency in the tech stack will lock them into China's open-source ecosystem. A deeper possibility is that open-source large models themselves could become the "Android" of the AI era—not as a user portal for direct monetization, but as foundational infrastructure, making all upper-layer applications and Agents naturally run on the Chinese model's tech stack. Whoever controls the base of the developer ecosystem indirectly controls all upper-layer portals created by developers. Android's success wasn't in licensing fees, but in making Google Search, Gmail, and the Play Store the default options for billions of devices globally. The commercial closed loop for open-source large models may mostly come not from the models themselves, but from the cloud services, application markets, and distribution channels that grow on top of them. QWen has been used by the Singaporean government to build national sovereign AI, proving open source can become a standard export.

The profit erosion of American closed-source giants is not the "future tense," but an accelerating "present continuous." After models like DeepSeek and Tongyi Qianwen caught up to GPT-4 level performance, their extremely low token prices directly destroyed the high premium pricing power of closed-source giants. The day when the combined traffic of open-source models comprehensively surpasses that of closed-source models in global mainstream cloud vendor call rankings will be the moment closed-source profit margins permanently decline.

However, whether "preserving people" leads to "preserving both people and land" depends on whether the open-source ecosystem's commercialization closed loop can be realized. The logic of "models free, tax computing power" holds only if developers eventually migrate model calls to the same cloud platform for training and inference. Reality is, open-source models can be deployed on any cloud—QWen's open-source downloads exceeding 50% does not mean Alibaba Cloud's revenue increased by over 50% in sync. Meta's Llama is also a main force in the open-source camp, but Meta itself hasn't gained scaled cloud revenue from it. Ecosystem capture is the first step; ecosystem monetization is the second. The gap between these two steps is precisely the most easily overestimated aspect of the open-source route.

The root of the gap is not technology, but structural differences in payment willingness. Anthropic cut into high-value enterprise productivity scenarios—code generation, long-text analysis, deep reasoning—customers pay for output, not per token. Microsoft Copilot similarly, its $5.0 ARPU is backed by the workflow closed loop within the Office ecosystem. Chinese AI monetization still primarily relies on consumer-grade free scenarios. B-end token consumption is exploding, but the unit value is far from reaching the level of "premium for results."The transition from "pay-per-use" to "value-based pricing" is the essence of the monetization efficiency chasm between China and abroad, and the hardest stretch of the last mile for Chinese AI moving from a token factory to a value highland.

It must also be acknowledged that this chasm cannot be filled by the AI industry alone. Microsoft Copilot can sell for a $5.0 ARPU by leveraging Office 365's hundreds of millions of existing subscribers and B-end channel network—enterprise customers aren't buying AI, but the "AI+Office" workflow closed loop. China lacks an enterprise software ecosystem of comparable magnitude, making the leap from "pay-per-use" to "value-based pricing" miss the most crucial springboard.

The overseas enterprise market has decades of accumulated B-end payment inertia—the US SaaS industry's annual revenue exceeds $300 billion; enterprises are already accustomed to paying for software subscriptions; AI merely adds a new charge on top of this inertia. China's SaaS market still hovers around the $10 billion level; enterprises' willingness to pay for software is far from widespread. AI monetization is tilling thinner soil.

But monetization efficiency is not the whole AI narrative. OpenAI's ARPU is only $2.2, yet its valuation once far exceeded Anthropic's—the capital market was paying for the option value of ChatGPT as the "new portal for human-computer interaction," not for current subscription revenue. Similarly, ByteDance's Doubao, though absent from the ranking, with its 345 million MAUs and system-level positioning of the Phone Assistant, is currently the most aggressive asset closest to the "super portal" imagination among all Chinese AI companies.Monetization efficiency measures "who is making money today"; portal imagination answers "who will have the right to define the rules tomorrow." The two are not a trade-off. For Chinese AI to move from a token factory to a value highland, it needs both Anthropic-style monetization discipline and OpenAI-style portal ambition—without the former, it won't reach the endgame; without the latter, even at the endgame, it can only collect rent, not define rules.

Convergence of Two Fronts: From Token Factory to Value Highland

Chinese companies lack neither technology, nor users, nor scenarios; what they lack is the ability to integrate these three—making the model strong enough, the scenario deep enough, and users willing to pay for the results. On this point, Anthropic and Microsoft have provided a phased answer.

Several signals will determine the direction of the battle in the next 12 months: Can Tencent's API price hike launched in March push its ARPU towards Microsoft's $5.0 line in Q2? Can Alibaba's QWen-Taobao integration convert C-end traffic into effective transactions and retention during its first 618? Can ByteDance's payment tests allow it to escape the "Others" category in the next global ranking?

But the ultimate fate of China's AI industry depends on the combined capabilities of these companies and the DeepSeeks, depends on whether the Western Front's "encircle the cities from the countryside" route contest can navigate the "last mile": making global developers not only use Chinese tokens but also willing to pay for Chinese AI. "Preserving people" is the first step; "preserving both people and land" is the endgame.If this mile cannot be traversed, Chinese AI will forever be a factory, not a brand.

Traversing this mile requires at least three conditions. First, at least one Chinese company runs a viable enterprise payment closed loop—customers willing to pay continuously for AI-driven productivity improvement. Alibaba is limited by the ceiling of its e-commerce scenarios; ByteDance hasn't crossed the chasm from "free users to paying customers." Second, the ecosystem advantage of Chinese open-source models needs to transform into a standards advantage—when global developers become accustomed to QWen's or DeepSeek's toolchain, switching to Chinese cloud services is no longer a "trial" but a "default." Third, whether a Chinese presence can emerge in the global enterprise software market, providing a Microsoft Copilot-style springboard for AI monetization. For Chinese AI's "last mile," the first 500 meters can be run by AI companies themselves; the last 500 meters depend on whether generational upgrades across the entire enterprise services market occur simultaneously.

Midway was only the beginning of the shift from defense to offense, not the endgame. After that, the US military still endured the brutal stalemate of Guadalcanal, the heavy casualties of Iwo Jima. The victor of 1942 took two and a half years to reach Tokyo Bay. Similarly, China's AI industry has a long voyage from "entering a stage of stalemate" to "winning the war."

In the subsequent Battle of Guadalcanal, the later victors had to face not only the Japanese army but also malaria, tropical downpours, and severed supplies. The victor of Waterloo,the Duke of Wellington, said, "Victory is the ability to fight five minutes longer than any other army in the world."And on a longer time axis, this war tests not only whether supply lines are smooth and robust, whether monetization by 'living off the land' is effective, but also strategic resolve and patience.

 

Domande pertinenti

QWhat are the three main strategic paths described for Tencent, Alibaba, and ByteDance in China's AI industry 'Eastern Front'?

ATencent focuses on 'scene monetization efficiency', integrating AI as a catalyst to enhance its core businesses like advertising and gaming for revenue, rather than selling AI directly. Alibaba pursues a 'full-stack R&D cost gamble', betting on controlling the entire AI stack from chips to applications to reduce costs and establish a foundational platform. ByteDance follows the 'traffic logic', deploying numerous free or low-cost AI applications to capture user super-entrances first, with monetization as a later challenge.

QAccording to the article, what is the core contradiction highlighted by the data from Counterpoint Research's 2026 Q1 LLM revenue ranking?

AThe data reveals a stark contradiction: the largest user pools contribute the least revenue, while the smallest user bases capture the largest revenue shares. For instance, ByteDance's Doubao has 345 million MAUs but is absent from the revenue chart, whereas Anthropic, with 134 million users, leads in global AI revenue share. This underscores the challenge of high operational costs per user in the AI era versus the internet era's 'zero marginal cost' logic.

QWhat is the strategic analogy of '存人失地,人地皆存' (Preserve people, lose land, and both people and land will be preserved) applied to in the 'Western Front' of AI competition?

AThis analogy, drawn from Mao Zedong's strategy during the Chinese Civil War, is applied to China's AI industry strategy. It represents prioritizing the acquisition and cultivation of a global developer ecosystem ('preserving people') through open-sourcing models and offering extremely low prices, even if it means forgoing immediate high profits from premium, closed-source models ('losing land'). The long-term goal is that by winning over developers, the ecosystem and standards they build upon will ultimately lead to market dominance ('both preserved').

QWhat does the article identify as the '最后一公里' (last kilometer) challenge for China's AI industry to move from a 'Token factory' to a 'value highland'?

AThe 'last kilometer' challenge is to transition from merely providing low-cost AI compute/tokens to establishing a profitable, value-based ecosystem. This requires: 1) At least one Chinese company successfully running a closed-loop enterprise-level paid service where clients pay for productivity gains. 2) Transforming the ecosystem advantage of open-source Chinese models into a standard advantage, making Chinese cloud services the default. 3) The emergence of a global Chinese enterprise software market to provide a jumpstart for AI monetization, similar to Microsoft Copilot's integration with Office.

QWhat fundamental shift in economic logic does the AI era impose compared to the internet era, according to the article's analysis?

AThe article states that the AI era shatters the internet's 'law of zero marginal cost'. In the AI era, every model inference call consumes real computing power, meaning 'marginal cost does not trend toward zero'. This makes the old internet logic of 'burning money for scale' unsustainable. The new rule is that 'supply lines and monetization efficiency determine survival,' turning competition into a war of attrition where efficient resource replenishment and变现 are critical.

Letture associate

CEO's Unexpected Passing: Will ONDO's 'Tokenization Narrative' Change?

Ondo Finance, a leading project in the RWA (Real World Assets) and tokenization space, faces a significant challenge following the unexpected passing of its founder and CEO, Nathan Allman. Known for his traditional finance background and pivotal role in shaping Ondo's strategy, Allman was central to its evolution from a DeFi structured yield platform to a key player tokenizing assets like US treasuries, stocks, and ETFs. The company announced that President Ian De Bode, a former McKinsey partner with deep experience in digital assets and corporate strategy, will assume the CEO role. The leadership transition presents a critical test for Ondo. While Allman's vision and execution were instrumental in establishing its "tokenization narrative," the project's medium to long-term trajectory will depend on the existing team's ability to maintain business continuity. Analysts note short-term concerns regarding vision continuity, institutional partnerships, and market sentiment for the ONDO token. However, Ondo has built a substantial product suite (OUSG, USDY, Ondo Global Markets) and a management team with strong traditional finance credentials. De Bode's background in strategy and execution may align well with the next phase of RWA growth, which focuses heavily on compliance, scaling, and institutional adoption. Ultimately, the event shifts focus to whether Ondo is a founder-driven story or a sustainable financial infrastructure. Its future as a "first tokenization asset" will be determined by the new leadership's success in delivering product growth, asset scaling, and real-world demand, rather than narrative alone.

marsbit41 min fa

CEO's Unexpected Passing: Will ONDO's 'Tokenization Narrative' Change?

marsbit41 min fa

Trading

Spot
Futures

Articoli Popolari

Cosa è $S$

Comprendere SPERO: Una Panoramica Completa Introduzione a SPERO Mentre il panorama dell'innovazione continua a evolversi, l'emergere delle tecnologie web3 e dei progetti di criptovaluta gioca un ruolo fondamentale nel plasmare il futuro digitale. Un progetto che ha attirato l'attenzione in questo campo dinamico è SPERO, denotato come SPERO,$$s$. Questo articolo mira a raccogliere e presentare informazioni dettagliate su SPERO, per aiutare gli appassionati e gli investitori a comprendere le sue basi, obiettivi e innovazioni nei domini web3 e crypto. Che cos'è SPERO,$$s$? SPERO,$$s$ è un progetto unico all'interno dello spazio crypto che cerca di sfruttare i principi della decentralizzazione e della tecnologia blockchain per creare un ecosistema che promuove l'impegno, l'utilità e l'inclusione finanziaria. Il progetto è progettato per facilitare interazioni peer-to-peer in modi nuovi, fornendo agli utenti soluzioni e servizi finanziari innovativi. Al suo interno, SPERO,$$s$ mira a responsabilizzare gli individui fornendo strumenti e piattaforme che migliorano l'esperienza dell'utente nello spazio delle criptovalute. Questo include la possibilità di metodi di transazione più flessibili, la promozione di iniziative guidate dalla comunità e la creazione di percorsi per opportunità finanziarie attraverso applicazioni decentralizzate (dApps). La visione sottostante di SPERO,$$s$ ruota attorno all'inclusività, cercando di colmare le lacune all'interno della finanza tradizionale mentre sfrutta i vantaggi della tecnologia blockchain. Chi è il Creatore di SPERO,$$s$? L'identità del creatore di SPERO,$$s$ rimane piuttosto oscura, poiché ci sono risorse pubblicamente disponibili limitate che forniscono informazioni dettagliate sul suo fondatore o fondatori. Questa mancanza di trasparenza può derivare dall'impegno del progetto per la decentralizzazione—un ethos che molti progetti web3 condividono, dando priorità ai contributi collettivi rispetto al riconoscimento individuale. Centrando le discussioni attorno alla comunità e ai suoi obiettivi collettivi, SPERO,$$s$ incarna l'essenza dell'empowerment senza mettere in evidenza individui specifici. Pertanto, comprendere l'etica e la missione di SPERO rimane più importante che identificare un creatore singolo. Chi sono gli Investitori di SPERO,$$s$? SPERO,$$s$ è supportato da una varietà di investitori che vanno dai capitalisti di rischio agli investitori angelici dedicati a promuovere l'innovazione nel settore crypto. Il focus di questi investitori generalmente si allinea con la missione di SPERO—dando priorità a progetti che promettono avanzamenti tecnologici sociali, inclusività finanziaria e governance decentralizzata. Queste fondazioni di investitori sono tipicamente interessate a progetti che non solo offrono prodotti innovativi, ma contribuiscono anche positivamente alla comunità blockchain e ai suoi ecosistemi. Il supporto di questi investitori rafforza SPERO,$$s$ come un concorrente degno di nota nel dominio in rapida evoluzione dei progetti crypto. Come Funziona SPERO,$$s$? SPERO,$$s$ impiega un framework multifunzionale che lo distingue dai progetti di criptovaluta convenzionali. Ecco alcune delle caratteristiche chiave che sottolineano la sua unicità e innovazione: Governance Decentralizzata: SPERO,$$s$ integra modelli di governance decentralizzati, responsabilizzando gli utenti a partecipare attivamente ai processi decisionali riguardanti il futuro del progetto. Questo approccio favorisce un senso di proprietà e responsabilità tra i membri della comunità. Utilità del Token: SPERO,$$s$ utilizza il proprio token di criptovaluta, progettato per servire varie funzioni all'interno dell'ecosistema. Questi token abilitano transazioni, premi e la facilitazione dei servizi offerti sulla piattaforma, migliorando l'impegno e l'utilità complessivi. Architettura Stratificata: L'architettura tecnica di SPERO,$$s$ supporta la modularità e la scalabilità, consentendo un'integrazione fluida di funzionalità e applicazioni aggiuntive man mano che il progetto evolve. Questa adattabilità è fondamentale per mantenere la rilevanza nel panorama crypto in continua evoluzione. Coinvolgimento della Comunità: Il progetto enfatizza iniziative guidate dalla comunità, impiegando meccanismi che incentivano la collaborazione e il feedback. Nutrendo una comunità forte, SPERO,$$s$ può affrontare meglio le esigenze degli utenti e adattarsi alle tendenze di mercato. Focus sull'Inclusione: Offrendo basse commissioni di transazione e interfacce user-friendly, SPERO,$$s$ mira ad attrarre una base utenti diversificata, inclusi individui che potrebbero non aver precedentemente interagito nello spazio crypto. Questo impegno per l'inclusione si allinea con la sua missione generale di empowerment attraverso l'accessibilità. Cronologia di SPERO,$$s$ Comprendere la storia di un progetto fornisce preziose intuizioni sulla sua traiettoria di sviluppo e sui traguardi. Di seguito è riportata una cronologia suggerita che mappa eventi significativi nell'evoluzione di SPERO,$$s$: Fase di Concettualizzazione e Ideazione: Le idee iniziali che formano la base di SPERO,$$s$ sono state concepite, allineandosi strettamente con i principi di decentralizzazione e focus sulla comunità all'interno dell'industria blockchain. Lancio del Whitepaper del Progetto: Dopo la fase concettuale, è stato rilasciato un whitepaper completo che dettaglia la visione, gli obiettivi e l'infrastruttura tecnologica di SPERO,$$s$ per suscitare interesse e feedback dalla comunità. Costruzione della Comunità e Prime Interazioni: Sono stati effettuati sforzi attivi di outreach per costruire una comunità di early adopters e potenziali investitori, facilitando discussioni attorno agli obiettivi del progetto e ottenendo supporto. Evento di Generazione del Token: SPERO,$$s$ ha condotto un evento di generazione del token (TGE) per distribuire i propri token nativi ai primi sostenitori e stabilire una liquidità iniziale all'interno dell'ecosistema. Lancio della Prima dApp: La prima applicazione decentralizzata (dApp) associata a SPERO,$$s$ è stata attivata, consentendo agli utenti di interagire con le funzionalità principali della piattaforma. Sviluppo Continuo e Partnership: Aggiornamenti e miglioramenti continui alle offerte del progetto, inclusi partnership strategiche con altri attori nello spazio blockchain, hanno plasmato SPERO,$$s$ in un concorrente competitivo e in evoluzione nel mercato crypto. Conclusione SPERO,$$s$ rappresenta una testimonianza del potenziale del web3 e delle criptovalute di rivoluzionare i sistemi finanziari e responsabilizzare gli individui. Con un impegno per la governance decentralizzata, il coinvolgimento della comunità e funzionalità progettate in modo innovativo, apre la strada verso un panorama finanziario più inclusivo. Come per qualsiasi investimento nello spazio crypto in rapida evoluzione, si incoraggiano potenziali investitori e utenti a ricercare approfonditamente e a impegnarsi in modo riflessivo con gli sviluppi in corso all'interno di SPERO,$$s$. Il progetto mostra lo spirito innovativo dell'industria crypto, invitando a ulteriori esplorazioni delle sue innumerevoli possibilità. Mentre il percorso di SPERO,$$s$ è ancora in fase di sviluppo, i suoi principi fondamentali potrebbero effettivamente influenzare il futuro di come interagiamo con la tecnologia, la finanza e tra di noi in ecosistemi digitali interconnessi.

75 Totale visualizzazioniPubblicato il 2024.12.17Aggiornato il 2024.12.17

Cosa è $S$

Cosa è AGENT S

Agent S: Il Futuro dell'Interazione Autonoma in Web3 Introduzione Nel panorama in continua evoluzione di Web3 e criptovalute, le innovazioni stanno costantemente ridefinendo il modo in cui gli individui interagiscono con le piattaforme digitali. Uno di questi progetti pionieristici, Agent S, promette di rivoluzionare l'interazione uomo-computer attraverso il suo framework agentico aperto. Aprendo la strada a interazioni autonome, Agent S mira a semplificare compiti complessi, offrendo applicazioni trasformative nell'intelligenza artificiale (AI). Questa esplorazione dettagliata approfondirà le complessità del progetto, le sue caratteristiche uniche e le implicazioni per il dominio delle criptovalute. Cos'è Agent S? Agent S si presenta come un innovativo framework agentico aperto, progettato specificamente per affrontare tre sfide fondamentali nell'automazione dei compiti informatici: Acquisizione di Conoscenze Specifiche del Dominio: Il framework apprende in modo intelligente da varie fonti di conoscenza esterne ed esperienze interne. Questo approccio duale gli consente di costruire un ricco repository di conoscenze specifiche del dominio, migliorando le sue prestazioni nell'esecuzione dei compiti. Pianificazione su Lungo Orizzonte di Compiti: Agent S impiega una pianificazione gerarchica potenziata dall'esperienza, un approccio strategico che facilita la suddivisione e l'esecuzione efficiente di compiti complessi. Questa caratteristica migliora significativamente la sua capacità di gestire più sottocompiti in modo efficiente ed efficace. Gestione di Interfacce Dinamiche e Non Uniformi: Il progetto introduce l'Interfaccia Agente-Computer (ACI), una soluzione innovativa che migliora l'interazione tra agenti e utenti. Utilizzando Modelli Linguistici Multimodali di Grandi Dimensioni (MLLM), Agent S può navigare e manipolare senza sforzo diverse interfacce grafiche utente. Attraverso queste caratteristiche pionieristiche, Agent S fornisce un framework robusto che affronta le complessità coinvolte nell'automazione dell'interazione umana con le macchine, preparando il terreno per innumerevoli applicazioni nell'AI e oltre. Chi è il Creatore di Agent S? Sebbene il concetto di Agent S sia fondamentalmente innovativo, informazioni specifiche sul suo creatore rimangono elusive. Il creatore è attualmente sconosciuto, il che evidenzia sia la fase embrionale del progetto sia la scelta strategica di mantenere i membri fondatori sotto anonimato. Indipendentemente dall'anonimato, l'attenzione rimane sulle capacità e sul potenziale del framework. Chi sono gli Investitori di Agent S? Poiché Agent S è relativamente nuovo nell'ecosistema crittografico, informazioni dettagliate riguardanti i suoi investitori e sostenitori finanziari non sono documentate esplicitamente. La mancanza di approfondimenti pubblicamente disponibili sulle fondazioni di investimento o sulle organizzazioni che supportano il progetto solleva interrogativi sulla sua struttura di finanziamento e sulla roadmap di sviluppo. Comprendere il supporto è cruciale per valutare la sostenibilità del progetto e il suo potenziale impatto sul mercato. Come Funziona Agent S? Al centro di Agent S si trova una tecnologia all'avanguardia che gli consente di funzionare efficacemente in contesti diversi. Il suo modello operativo è costruito attorno a diverse caratteristiche chiave: Interazione Uomo-Computer Simile a Quella Umana: Il framework offre una pianificazione AI avanzata, cercando di rendere le interazioni con i computer più intuitive. Mimando il comportamento umano nell'esecuzione dei compiti, promette di elevare le esperienze degli utenti. Memoria Narrativa: Utilizzata per sfruttare esperienze di alto livello, Agent S utilizza la memoria narrativa per tenere traccia delle storie dei compiti, migliorando così i suoi processi decisionali. Memoria Episodica: Questa caratteristica fornisce agli utenti una guida passo-passo, consentendo al framework di offrire supporto contestuale mentre i compiti si sviluppano. Supporto per OpenACI: Con la capacità di funzionare localmente, Agent S consente agli utenti di mantenere il controllo sulle proprie interazioni e flussi di lavoro, allineandosi con l'etica decentralizzata di Web3. Facile Integrazione con API Esterne: La sua versatilità e compatibilità con varie piattaforme AI garantiscono che Agent S possa adattarsi senza problemi agli ecosistemi tecnologici esistenti, rendendolo una scelta attraente per sviluppatori e organizzazioni. Queste funzionalità contribuiscono collettivamente alla posizione unica di Agent S all'interno dello spazio crittografico, poiché automatizza compiti complessi e multi-fase con un intervento umano minimo. Man mano che il progetto evolve, le sue potenziali applicazioni in Web3 potrebbero ridefinire il modo in cui si svolgono le interazioni digitali. Cronologia di Agent S Lo sviluppo e le tappe di Agent S possono essere riassunti in una cronologia che evidenzia i suoi eventi significativi: 27 Settembre 2024: Il concetto di Agent S è stato lanciato in un documento di ricerca completo intitolato “Un Framework Agentico Aperto che Usa i Computer Come un Umano”, mostrando le basi per il progetto. 10 Ottobre 2024: Il documento di ricerca è stato reso pubblicamente disponibile su arXiv, offrendo un'esplorazione approfondita del framework e della sua valutazione delle prestazioni basata sul benchmark OSWorld. 12 Ottobre 2024: È stata rilasciata una presentazione video, fornendo un'idea visiva delle capacità e delle caratteristiche di Agent S, coinvolgendo ulteriormente potenziali utenti e investitori. Questi indicatori nella cronologia non solo illustrano i progressi di Agent S, ma indicano anche il suo impegno per la trasparenza e il coinvolgimento della comunità. Punti Chiave su Agent S Man mano che il framework Agent S continua a evolversi, diversi attributi chiave si distinguono, sottolineando la sua natura innovativa e il potenziale: Framework Innovativo: Progettato per fornire un uso intuitivo dei computer simile all'interazione umana, Agent S porta un approccio nuovo all'automazione dei compiti. Interazione Autonoma: La capacità di interagire autonomamente con i computer attraverso GUI segna un passo avanti verso soluzioni informatiche più intelligenti ed efficienti. Automazione di Compiti Complessi: Con la sua metodologia robusta, può automatizzare compiti complessi e multi-fase, rendendo i processi più veloci e meno soggetti a errori. Miglioramento Continuo: I meccanismi di apprendimento consentono ad Agent S di migliorare dalle esperienze passate, migliorando continuamente le sue prestazioni e la sua efficacia. Versatilità: La sua adattabilità attraverso diversi ambienti operativi come OSWorld e WindowsAgentArena garantisce che possa servire un'ampia gamma di applicazioni. Man mano che Agent S si posiziona nel panorama di Web3 e delle criptovalute, il suo potenziale per migliorare le capacità di interazione e automatizzare i processi segna un significativo avanzamento nelle tecnologie AI. Attraverso il suo framework innovativo, Agent S esemplifica il futuro delle interazioni digitali, promettendo un'esperienza più fluida ed efficiente per gli utenti in vari settori. Conclusione Agent S rappresenta un audace passo avanti nell'unione tra AI e Web3, con la capacità di ridefinire il modo in cui interagiamo con la tecnologia. Sebbene sia ancora nelle sue fasi iniziali, le possibilità per la sua applicazione sono vaste e coinvolgenti. Attraverso il suo framework completo che affronta sfide critiche, Agent S mira a portare le interazioni autonome al centro dell'esperienza digitale. Man mano che ci addentriamo nei regni delle criptovalute e della decentralizzazione, progetti come Agent S giocheranno senza dubbio un ruolo cruciale nel plasmare il futuro della tecnologia e della collaborazione uomo-computer.

525 Totale visualizzazioniPubblicato il 2025.01.14Aggiornato il 2025.01.14

Cosa è AGENT S

Come comprare S

Benvenuto in HTX.com! Abbiamo reso l'acquisto di Sonic (S) 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 SonicS.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 Sonic (S)Dopo aver acquistato Sonic (S), conserva nel tuo account HTX. In alternativa, puoi inviare tramite trasferimento blockchain o scambiare per altre criptovalute.Step 4: Scambia Sonic (S)Scambia facilmente Sonic (S) 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.

936 Totale visualizzazioniPubblicato il 2025.01.15Aggiornato il 2025.03.21

Come comprare S

Discussioni

Benvenuto nella Community HTX. Qui puoi rimanere informato sugli ultimi sviluppi della piattaforma e accedere ad approfondimenti esperti sul mercato. Le opinioni degli utenti sul prezzo di S S sono presentate come di seguito.

活动图片