2025年中国企业级AI应用行业研究报告
艾瑞咨询·2026-01-28 00:07

Core Insights - The enterprise-level AI application industry is transitioning from a technology exploration phase to a large-scale application phase, driven by advancements in large language models [1][14] - Key challenges in scaling AI applications include the need for systematic, end-to-end implementation capabilities rather than relying solely on technological breakthroughs [1][23] - AI Agents are becoming the core vehicle for enterprise-level AI applications, facilitating deep integration with business processes [1][29] Application Layer - AI Agents are central to the implementation of enterprise-level AI applications, breaking down tasks into smaller units and integrating with business processes through various methods [1][29] - The focus is on enhancing efficiency in processes, amplifying knowledge, and innovating value through AI applications [17][27] Supporting Layer - A data-centric approach is essential for model selection, emphasizing the construction of a robust data foundation and a data security system tailored for AI [1][41] - High-quality datasets are critical for AI development, enabling effective model training and application [41][42] Infrastructure Layer - The evolution of AI computing infrastructure is moving towards a heterogeneous model, highlighting the importance of deep collaboration between software and hardware in the context of domestic alternatives [1][50][53] - AI infrastructure is crucial for optimizing the performance and cost-effectiveness of AI applications [53] Organizational Layer - Leadership commitment and top-level design are vital for driving AI transformation within organizations, alongside the need for role upgrades among employees [1][56][60] - Employees must transition from traditional roles to AI collaborators, requiring new skills to effectively integrate AI into business processes [60] Vendor Landscape - The enterprise-level AI application market consists of four main categories: application software, technical services and solutions, cloud services, and AI model providers, creating a dynamic competitive landscape [2][65] - Established companies leverage their industry expertise to extend AI applications, while startups focus on specific scenarios to complement existing systems [65][66] Development Trends - Future trends include the evolution of large models from single architectures to multi-architecture iterations, deep integration of AI into business processes, and the emergence of AI-native applications [2][8] - AI is expected to reshape research processes and enhance competitive advantages for enterprises [2][8] Financing and Investment - Over 50% of AI financing events are concentrated in the application layer, with AI in healthcare emerging as a popular investment area [12][14] Challenges in Scaling - Key bottlenecks in scaling AI applications include weak data foundations, lack of quantifiable business value, and a shortage of talent with both technical and business insights [23][27]

2025年中国企业级AI应用行业研究报告 - Reportify