


Sun Lei, deputy general manager of Immediate Consumption: Artificial intelligence has been applied to all areas of the company's business and has become the cornerstone of development
On March 28, the “Financial New Quality Productivity Innovation Forum Driven by Big Models” and the country’s first “Financial Big Model” book were jointly organized by Masha Consumption, China Science and Technology Press, and the financial industry. Release" event was held in Beijing.
This conference gathered more than 300 academic leaders such as Jiang Changjun, Sun Maosong, and Zeng Gang, as well as senior executives from financial institutions and important enterprises in the industrial chain. The guests at the meeting had in-depth exchanges on the application and empowerment of large models in the financial field, and conducted in-depth and effective discussions on the development and construction of new financial productivity.
In the context of leader resignation, Sun Lei, deputy general manager of Immediate Consumer, said that in recent years, the financial industry has done a lot in the use of artificial intelligence With the efforts of Consumption Now, as a technology-driven digital financial institution, AI has been applied to various areas of business development, making it the cornerstone of the company's development. Sun Lei firmly believes that this wave of artificial intelligence with large models as the trigger point will definitely bring us revolutionary progress.
The following is the full text of the guest speech:
Dear Academician Jiang Changjun, distinguished guests, dear colleagues, good afternoon everyone:
Please allow me, on behalf of the organizer, to express my warmest welcome and most sincere thanks to all the guests and friends who have attended this meeting. At a time when the country is vigorously advocating "accelerating the development of new productive forces", we will jointly witness the release of the first domestic large-scale model book in the financial field, "Financial Big Model", and jointly explore the application of new productive forces in the financial industry.
Mr. Jiang Ning and the guests will give professional speeches. As a non-professional, I will talk about my simple understanding here, and I can use it as a starting point. Please criticize and correct me.
People always work hard to save their physical and mental energy, and improve themselves, change the world, and reshape the future in the process of being lazy and diligent. The industrial revolution has extended our bodies, allowing us to do more and produce more; artificial intelligence has expanded our brainpower, allowing us to see more clearly and think deeper.
Humanity’s expectations and exploration of artificial intelligence are consistent. Some books say it can be traced back to the Western Zhou Dynasty. Even if 1956 is considered the first year of artificial intelligence, it still has a history of 80 years. In the exploration of symbolism, connectionism, behaviorism and other directions, scientists have achieved fruitful results in theory and practice, but none of them have had such a huge shock and impact on human classification with the emergence of large models. Profound. The whole world is cheering for the achievements of artificial intelligence and is full of expectations for the future. Our country also included "artificial intelligence" in the government work report this year. Everyone feels that the era of artificial intelligence has really come.
The financial industry is an intelligence-intensive industry. It did not benefit much during the industrial revolution, but it will definitely benefit a lot in the era of artificial intelligence. In recent years, the entire industry has made a lot of efforts in using artificial intelligence. As a technology-driven digital financial institution, Immediate Consumption has applied artificial intelligence to various areas of business development, making it the cornerstone of the company's development. But I still firmly believe that this wave of artificial intelligence with large models as the trigger point will definitely bring us revolutionary progress.
Because there are substantial differences between the two periods before and after. In the pre-big model era, the application of artificial intelligence focused on utilizing its computing power and analytical power, focusing on feature identification, rule summary, and judgment and prediction of the future based on the past. The post-big model era will focus on leveraging its understanding, learning and generative capabilities, which will greatly improve the input, processing and output capabilities of unstructured information and change the interaction and experience between humans and machines. Obtain better solutions and new understandings from accumulated knowledge.
Just as the steam engine cannot change the transportation industry unless it becomes a locomotive, the general large model cannot change the financial industry unless it is implemented in financial scenarios. The financial industry has conducted in-depth research on large financial models, and many institutions have also applied them in practice. In August 2023, Immediate Consumption released the industry's first large financial model, and summarized the thinking in building a large financial model into the book "Financial Large Model". Today we invite Academicians Jiang, Academician Sun and other industry experts to communicate. On the one hand, we will report our experiences and experiences. On the other hand, we will also take this opportunity to enhance our understanding, better clarify the direction of future efforts, and better create a new financial quality. productive forces.
Here, I would like to thank Mr. Jiang Ning, Dr. Lu Quan, Dr. Deng Weihong and all my colleagues from the company’s Artificial Intelligence Research Institute. It is your efforts that allow us to have such a display stage, and special thanks to all the guests. It is your arrival and encouragement that keeps us moving forward.
Thank you all, I wish the meeting a complete success and look forward to listening to your wonderful speeches.
The above is the detailed content of Sun Lei, deputy general manager of Immediate Consumption: Artificial intelligence has been applied to all areas of the company's business and has become the cornerstone of development. For more information, please follow other related articles on the PHP Chinese website!

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