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恒生电子首席科学家白硕:AI+金融,重在捕捉差异化
2 1 Shi Ji Jing Ji Bao Dao· 2025-09-05 09:12
Core Insights - The article highlights the significant advancements and strategic focus of 恒生电子 in the financial technology sector, particularly in the integration of AI into financial services [2][3][4]. Financial Performance - In the first half of 2025, 恒生电子 reported a revenue of 2.426 billion yuan and a net profit of 261 million yuan, marking a year-on-year growth of 771.57% [2]. - The company's R&D expenses reached 1.036 billion yuan, accounting for approximately 42% of its revenue [2]. R&D and AI Integration - 恒生电子 has consistently invested over 35% of its revenue in R&D over the past few years, focusing on AI applications in financial services [3]. - The company has developed a three-tier R&D structure, with the top tier focusing on strategic exploration of cutting-edge technologies, particularly AI and financial models [4]. AI Applications in Finance - The integration of AI into financial services is categorized into two phases: prior to the emergence of ChatGPT in late 2022 and the subsequent shift towards large model applications [6]. - 恒生电子 has launched various AI-driven products, including intelligent investment advisory and operational assistants, leveraging its proprietary 光子 AI middleware platform [6][7]. Market Trends and Opportunities - The article discusses the potential for smaller financial institutions to leverage AI for differentiation, despite the increasing dominance of larger players [8]. - The ongoing digital transformation in the financial sector is creating significant market opportunities for technology providers like 恒生电子 [10]. Future Outlook - The future development of AI technology is expected to focus on long context, multi-modal capabilities, and deep reasoning, with an emphasis on integrating expertise from various industries [9]. - 恒生电子 is adapting to the evolving demands of the financial sector by developing a new generation of core trading systems that prioritize stability, flexibility, and data-driven decision-making [11].