Breakthrough Application of Machine Learning in Web3 Startups
DOI:
https://doi.org/10.70088/qdg6sm53Keywords:
machine learning, Web3, decentralized financeAbstract
With the rapid development of Web3 technology, AI has become the primary way of data analysis and automated decision making, and is being used by more and more Web3 startups. Although Web3 provides a new model for Internet applications with its decentralized approach, the complexity of the technology and market acceptance issues still hinder the development of startups. With its excellent data analysis and forecasting capabilities, AI can help Web3 startups optimize smart contracts, improve risk control capabilities in decentralized financial systems, and help make correct market price predictions in the NFT market. Through in-depth research on the association between artificial intelligence and Web3, and feasibility and effect evaluation on the application of both, this paper explains how artificial intelligence helps Web3 startups solve technical problems, reduce costs and improve operational efficiency, and puts forward the problems of resistance encountered by Web3 startups in the growth process. And promote the popularization and application of Web3 technology by discussing the new solutions that artificial intelligence technology can provide.References
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Copyright (c) 2026 Hongjun Wu (Author)

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