According to PANews, the AI industry is witnessing a notable shift from centralized large-scale models to local small models and edge computing. This trend is evident in developments such as Apple Intelligence's coverage of 500 million devices, Microsoft's introduction of the Windows 11-specific small model Mu with 330 million parameters, and Google DeepMind's offline robot operations.

Cloud-based AI focuses on parameter scale and training data, with financial resources being a key competitive factor. In contrast, local AI emphasizes engineering optimization and scenario adaptation, enhancing privacy, reliability, and practicality. The illusion problem of general models significantly impacts vertical scenario penetration.

This shift presents greater opportunities for web3 AI. Previously, the competition in general capabilities (computing, data, algorithms) was dominated by traditional giants like Google, AWS, and OpenAI, making it challenging for decentralized concepts to compete due to lack of resource, technology, and user base advantages.

However, in the realm of localized models and edge computing, blockchain technology services face a different landscape. When AI models operate on user devices, questions arise about how to prove output integrity and achieve model collaboration while preserving privacy. These are areas where blockchain technology excels.

Several web3 AI projects are addressing these challenges. For instance, Gradient HQ, backed by a $10 million investment from Pantera, has launched the data communication protocol Lattica to tackle data monopoly and black box issues in centralized AI platforms. PublicAI's HeadCap device collects real human data to build an "artificial verification layer," generating $14 million in revenue. These initiatives aim to solve the "trustworthiness" problem of local AI.

In summary, decentralized collaboration becomes essential only when AI truly integrates into every device. Web3 AI projects should consider how to support the infrastructure for the local AI wave rather than competing in the generalized track.