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李建忠:关于AI时代人机交互和智能体生态的研究和思考
AI科技大本营· 2025-08-18 09:50
Core Insights - The article discusses the transformative impact of large models on the AI industry, emphasizing the shift from isolated applications to a more integrated human-machine interaction model, termed "accompanying interaction" [1][5][60]. Group 1: Paradigm Shifts in AI - The transition from training models to reasoning models has significantly enhanced AI's capabilities, particularly through reinforcement learning, which allows AI to generate synthetic data and innovate beyond human knowledge [9][11][13]. - The introduction of "Agentic Models" signifies a shift where AI evolves from merely providing suggestions to actively performing tasks for users [16][18]. Group 2: Application Development Transformation - "Vibe Coding" has emerged as a new programming paradigm, enabling non-professionals to create software using natural language, which contrasts with traditional programming methods [19][22]. - The concept of "Malleable Software" is introduced, suggesting that future software will allow users to customize and personalize applications extensively, leading to a more democratized software development landscape [24][26]. Group 3: Human-Machine Interaction Evolution - The future of human-machine interaction is predicted to be dominated by natural language interfaces, moving away from traditional graphical user interfaces (GUIs) [36][41]. - The article posits that the interaction paradigm will evolve to allow AI agents to seamlessly integrate various services, eliminating the need for users to switch between isolated applications [45][48]. Group 4: Intelligent Agent Ecosystem - The development of intelligent agents is characterized by enhanced capabilities in planning, tool usage, collaboration, memory, and action, which collectively redefine the internet from an "information network" to an "action network" [66][68]. - The introduction of protocols like MCP (Model Context Protocol) and A2A (Agent to Agent) facilitates improved interaction between agents and traditional software, enhancing the overall ecosystem [70].