币界网报道:Both Web3 AI and Web2 AI have gone from "volume computing power" to the crossroads of "volume data quality". Written by: Haotian On one hand, Meta spent $14.8 billion to acquire nearly half of Scale AI's equity, and the entire Silicon Valley was exclaiming that the giants used sky-high prices to re-price "data labeling"; on the other hand, @SaharaLabsAI, which is about to hold TGE, is still trapped under the Web3 AI bias label of "riding the concept and unable to prove itself". What is the market ignoring behind this huge contrast? First of all, data labeling is a more valuable track than decentralized computing power aggregation. The story of challenging cloud computing giants with idle GPUs is indeed exciting, but computing power is essentially a standardized commodity, and the difference lies mainly in price and availability. The price advantage seems to be able to find a gap in the monopoly of giants, but availability is subject to geographical distribution, network latency and insufficient user incentives. Once the giants reduce prices or increase supply, this advantage will be wiped out in an instant. Data labeling is completely different-this is a differentiated field that requires human wisdom and professional judgment. Each high-quality annotation carries unique expertise, cultural background, cognitive experience, etc., and cannot be "standardized" and replicated like GPU computing power. An accurate cancer imaging diagnosis annotation requires the professional intuition of a senior oncologist; an experienced financial market sentiment analysis cannot be separated from the practical experience of Wall Street Traders. This natural scarcity and irreplaceability give "data annotation" a moat depth that computing power can never reach. On June 10, Meta officially announced the acquisition of 49% of the shares of data annotation company Scale AI for US$14.8 billion, which is the largest single investment in the AI field this year. More noteworthy is that Alexandr Wang, founder and CEO of Scale AI, will also serve as the head of Meta's newly established "super intelligence" research laboratory. The 25-year-old Chinese entrepreneur was a Stanford University dropout when he founded Scale AI in 2016. Today, the company he manages is valued at US$30 billion. Scale AI's client list is an "all-star lineup" in the AI world: OpenAI, Tesla, Microsoft, the Department of Defense, etc. are all its long-term partners. The company specializes in providing high-quality data annotation services for AI model training, and has more than 300,000 professionally trained annotators. You see, while everyone is still arguing about whose model has a higher score, the real players have quietly shifted the battlefield to the source of data. A "secret war" for the future control of AI has begun. The success of Scale AI exposes an overlooked truth: computing power is no longer scarce, model architecture tends to be homogenized, and what really determines the upper limit of AI intelligence is the carefully "tuned" data. Meta bought not an outsourcing company at a sky-high price, but the "oil mining rights" in the AI era. There are always rebels in the story of monopoly. Just as cloud computing aggregation platforms try to subvert centralized cloud computing services, Sahara AI tries to completely rewrite the value distribution rules of data annotation with blockchain. The fatal flaw of the traditional data annotation model is not a technical problem, but an incentive design problem. A doctor may only get a few dozen dollars in labor fees for a few hours of labeling medical images, while the AI model trained by these data is worth billions of dollars, but the doctor does not get a penny. This extremely unfair distribution of value has seriously suppressed the willingness to supply high-quality data. With the catalysis of the web3 token incentive mechanism, they are no longer cheap data "migrant workers", but real "shareholders" of the AI LLM network. Obviously, the advantage of web3 in transforming production relations is more suitable for data labeling scenarios than computing power. Interestingly, Sahara AI happened to be in the node TGE that Meta acquired at a sky-high price. Is it a coincidence or a careful plan? In my opinion, this actually reflects a market inflection point: both Web3 AI and Web2 AI have gone from "volume computing power" to the crossroads of "volume data quality". When traditional giants use money to build data barriers, Web3 is using Tokenomics to build a larger "data democratization" experiment.