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Agent狂欢下的冷思考:为什么说Data&AI数据基础设施,才是AI时代Infra新范式
机器之心· 2025-08-13 04:49
Core Viewpoint - The article discusses the emergence of AI Infrastructure (AI Infra) and its critical role in the effective deployment of AI Agents, emphasizing that without a robust AI Infra, the potential of Agents cannot be fully realized [2][4][5]. Group 1: AI Agents and Market Dynamics - The global market for AI Agents has surpassed $5 billion and is expected to reach $50 billion by 2030, indicating a competitive landscape where companies are rapidly developing their own Agents [2][5]. - Many enterprises face challenges in achieving expected outcomes from their deployed Agents, leading to skepticism about the effectiveness of these technologies [2][6]. - The misconception that Agent platforms can serve as AI Infra has led to underperformance, as the true AI Infra is essential for supporting the underlying data and model optimization processes [3][4][6]. Group 2: Understanding AI Infra - AI Infra encompasses structural capabilities such as distributed computing, data scheduling, model services, and feature processing, which are essential for model training and inference [7][9]. - The core operational logic of AI Infra is a data-driven model optimization cycle, which includes data collection, processing, application, feedback, and optimization [7][9]. - Data is described as the "soul" of AI Infra, and many enterprises fail to leverage their internal data effectively when deploying Agents, resulting in superficial functionalities [9][11]. Group 3: Evolution of Data Infrastructure - The shift from static data assets to dynamic data assets is crucial, as high-quality data must continuously evolve to meet the demands of AI applications [11][17]. - Traditional data infrastructures are inadequate for the current needs, leading to issues such as data silos and inefficiencies in data processing [12][13][14]. - The integration of data and AI is necessary to overcome the challenges faced by enterprises, as a cohesive Data&AI infrastructure is essential for effective AI deployment [17][18]. Group 4: Market Players and Trends - The market for Data&AI infrastructure is still in its early stages, with various players including AI tool vendors, traditional big data platform providers, platform-based comprehensive vendors, and specialized vertical vendors [20][21][22]. - Companies like Databricks are leading the way in developing integrated Data&AI infrastructure solutions, focusing on multi-modal data processing and low-code development capabilities [22][23]. - The emergence of technologies like "AI-in-Lakehouse" represents a significant trend in integrating AI capabilities directly into data architectures, addressing the fragmentation between data and AI [25][26]. Group 5: Case Studies and Future Outlook - Companies such as Sinopec and FAW have successfully implemented Data&AI integrated platforms to enhance operational efficiency and data management [34][35]. - The article concludes that as the Agent market continues to grow, the integration of Data&AI infrastructure will become increasingly vital for enterprises seeking to leverage AI effectively [35][36].