商汤科技贾安亚:企业AI要落地,业务目标与行业理解重于模型本身 | WISE2025商业之王大会
SENSETIMESENSETIME(HK:00020) 3 6 Ke·2025-12-05 07:34

Core Insights - The WISE 2025 Business King Conference aims to anchor the future of Chinese business amidst uncertainty, focusing on the transformative impact of technology and business narrative reconstruction [1] Group 1: AI Application in Enterprises - The application paradigm of AI is undergoing profound changes, transitioning from "intelligent emergence" in 2023 to accelerated implementation by 2025 [3] - Key breakthroughs for AI implementation in enterprises involve shifting from IT-led to business-driven application models, allowing frontline users to become decision-makers [4] - Successful AI applications should focus on scenarios with a high tolerance for error, such as supply chain and operations, rather than high-precision areas like finance [4][15] Group 2: Policy and Market Trends - National policies are strongly promoting the "Artificial Intelligence +" strategy, aiming for over 70% coverage of smart terminals and agents by 2027, similar to the impact of the "Internet +" initiative a decade ago [7] - Despite the positive trends, only 5% of companies have seen tangible financial value from large model implementations, indicating significant challenges in AI deployment [8] Group 3: Observations on AI Implementation - Successful AI implementation in enterprises is driven by business needs rather than IT departments, bridging gaps in understanding and execution [13] - The importance of scenario selection is highlighted, with successful applications requiring a balance of error tolerance and significant incremental value [15] - AI deployment is viewed as a systematic project rather than merely purchasing products, necessitating a comprehensive approach to create deep value across various levels of the organization [17] Group 4: Future Directions and Innovations - The evolution of AI tools is shifting from traditional productivity applications to task-oriented solutions, enhancing overall operational efficiency [21] - The introduction of low-cost hardware options is expected to facilitate AI deployment in enterprises, addressing previous concerns about high computing costs [25][26]