According to PANews, the development of Web3 AI Agents is poised to transform blockchain ecosystems, with several key insights emerging about their potential applications.

Firstly, the most native function of Web3 AI Agents may not be centered around 'transactions.' Despite the perception that DeFi trading agents represent the ultimate form of AI integration in crypto, the inherent ambiguity and hallucination processes of AI conflict with the precision and low tolerance for error required in trading scenarios. In the short term, Web3 AI Agents are likely to excel in 'data cleansing' and 'intent parsing,' rather than executing asset transactions with absolute accuracy. This includes cleaning on-chain and off-chain data to build effective information graphs and modeling user trading behavior for risk preference analysis, thereby customizing smart money trading decision assistants.

Secondly, the need for A2A communication protocol functionality in Web3 AI Agents may surpass that of MCP. While MCP calls rely on mature functional API interfaces, a developed agent application ecosystem can effectively address data silo issues through MCP. However, if the application landscape is immature, MCP's standardized interfaces lack utility. In contrast, the A2A protocol can create an incremental agent market, fostering specialized agents such as on-chain data analysis agents, smart contract audit agents, and MEV opportunity capture agents. The built-in agent capability registry and P2P messaging network within A2A will enhance the adaptability and complex interaction value of these agents, overcoming the limitations of language interaction at the MCP protocol level.

Thirdly, the demand for infrastructure construction in Web3 AI Agents exceeds the need for application deployment. While Web2 AI prioritizes practical value, Web3 AI Agents require a complete ecosystem, necessitating the development of foundational infrastructure such as unified data layers, Oracle layers, intent execution layers, and decentralized consensus layers. Rather than competing directly with Web2 at the application level, building differentiated infrastructure with Web3 advantages is crucial. Although application deployment may lag behind Web2 AI, constructing decentralized consensus networks for A2A operations and interactive operation standards for MCP aligns with blockchain's native characteristics, making infrastructure development equally urgent.

Lastly, a shift from Crypto Native to AI Native thinking is essential. Reflecting on the history of crypto, the adherence to a 'decentralization' framework has spawned diverse tracks and innovation waves. In the future AI + Crypto domain, the focus may shift towards 'AI autonomy.' Whether agentic or robotic, the pursuit of a new AI-centric paradigm framework is vital, such as AI agent clusters with self-funding management capabilities, self-upgrading smart contract templates based on network feedback, and DAO governance frameworks dynamically optimized by community contributions. Ultimately, moving beyond simple tool application thinking to enable AI-driven evolution systems is the key to progress.