Core Viewpoint - The article emphasizes the importance of integrating artificial intelligence (AI) into various industries, particularly in the financial sector, to enhance service quality and operational efficiency while ensuring inclusivity and security in AI applications [3]. Group 1: AI Models - The choice between open-source and closed-source models is not just a technical issue but has profound implications for application. Open-source models promote equality and cost savings but may have slower iteration rates and higher error rates, while closed-source models offer stability and reliability but limit customization and transparency [4]. - The financial industry should focus on "AI+" rather than solely on building large models, combining the advantages of both open-source and closed-source models to enhance service quality and internal management efficiency [4]. Group 2: Decision-making AI vs. Generative AI - Decision-making AI excels in scenarios requiring high interpretability and accuracy, dominating over 80% of current applications in finance, particularly in risk assessment and fraud detection. In contrast, generative AI is more suited for creative tasks and is primarily used in non-core areas like customer service [5]. - The trend indicates that as the capabilities of large models improve, generative AI may see exponential growth and work in tandem with decision-making AI, blurring the lines between the two [5]. Group 3: AI Inclusivity and Computing Power - The demand for GPU computing power is expected to remain in a "tight balance" as AI becomes more widespread, necessitating efforts to optimize existing resources and expand capacity [8]. - Companies should adopt engineering methods to reduce operational costs and enhance resource efficiency while building high-performance computing centers to support AI applications [8]. Group 4: Safety and Security in AI Applications - As AI inclusivity increases, the stability and security of AI applications must be prioritized to protect public interests. This includes establishing safety measures and enhancing data quality to build trust in AI systems [9]. - There is a need to prevent model resonance to mitigate systemic risks, as the concentration of mainstream models may lead to vulnerabilities across institutions. Developing a reliable knowledge base and differentiated model training is essential for enhancing the resilience of the financial system [9].
金融大家评 | 中国农业银行董事长、党委书记 谷澍:提升AI应用普惠性的若干思考