On November 30, 2024, the China Internet Network Information Center released the Generative Artificial Intelligence Development Report (2024). According to the report, as of June 2024, the number of users of China's AI products had reached 230 million, accounting for 16.4% of the country's population. In terms of the usage rate of domestic netizens for typical products of the Generative Artificial Intelligence, Baidu Wenxin Yiyan ranked first, accounting for 11.5%. In terms of applications, conversational products were the most popular among users, accounting for 62% of the market share. About one-third of users used Generative AI as an office assistant, and about 30% used it for leisure entertainment and content creation. In addition, intelligent entities had become one of the mainstream forms of AI applications. They played an important role in many fields such as intelligent transportation, industrial production, government services, and enterprise operations. As technology developed, their scope of application and capabilities continued to expand. "A Short History of the Future: Legends of the Intelligent Era" was equally exciting. Everyone was welcome to click and read it!
Generative AI technology was an important branch of artificial intelligence that focused on creating new content. It could create new content based on algorithms, such as text, images, videos, audio, and so on. The principle was to use machine learning technology to generate new data based on existing large-scale multi-mode data sets, such as new text, program code, images, videos, and sounds, with the ability to handle a variety of tasks and scenarios. In terms of application scenarios: - In terms of content creation, he changed the way he created text, images, videos, and other content. For example, language models such as ChatGPM are widely used in text generation, automatic writing, customer service, and other fields. Image generation AI can create realistic pictures or works of art, bringing efficient and creative tools to the design, marketing, and media industries. - As for auxiliary tools, they were used in medical, education, scientific research, and other fields to help professionals improve efficiency in analyzing data, generating reports, and formulating plans. For example, they could reduce the workload of doctors by analyzing a large number of medical images to assist in diagnosis. - In terms of code generation, programming tools such as GitHub Copilot could help programmers automatically generate code snippets to improve programming efficiency. Generative AI also faced some challenges: - In terms of ethics and privacy, there was the risk of fake news and information manipulation because it could generate realistic content that led to the flood of false information; Training required a large amount of data, including user personal information, and privacy protection during data collection and use was a big challenge; The copyright of AI generated content and the copyright of training data were controversial, and many creators were worried that their rights and interests would be violated. - In terms of the impact on future work, it may replace certain occupations, especially in areas with high repetition such as content creation and customer service, but it will also give birth to new occupations such as AI supervisors and data annotators. As it is widely used, the demand for programming, data processing, AI ethics, and other skills will increase. In terms of development direction, it might focus on multi-mode AI (AI that can understand and generate multiple forms of data such as text, pictures, and sounds), and more attention on the control of generated content (users can more accurately set the style, theme, length, and other parameters of the generated content). "A Short History of the Future: Legends of the Intelligent Era" was equally exciting. Everyone was welcome to click and read it!
Generative artificial intelligence was a type of artificial intelligence that could generate text, images, or other media information based on prompts. It uses machine learning technology to generate new text, program code, images, videos, and sound data based on existing large-scale multi-mode data sets. It has the ability to handle a variety of tasks and scenarios. " A Short History of the Future: Legends of the Intelligent Era " was equally exciting. Everyone was welcome to click and read it!
Generative AI had many future developments: ** 1. Technology ** 1. ** Multi-mode function improvement ** - Generative AI models are expected to be able to provide images and videos from short text clips more easily in the next few years, and the technologies for text to image, text to video, and Text To Speech will be improved. The model's ability to understand the context of diverse input will also be better. This helps to generate more complex, detailed, accurate, and self-consistent content for consumers and professional content creators. 2. ** Solve accuracy and bias issues ** - At present, there are problems with illusions, accuracy, and bias in the AI model, which has slowed down its adoption. In the future, model developers would need to focus on eliminating the prejudices and ethical issues that arise during the consumer data training process, guiding users to accept more general and long-lasting values, making the model more "kind", thereby improving the accuracy and reliability of the model. 3. ** Increase the size of the context window for processing information ** - The amount of information that the Generative AI model could process at one time was limited, which was the limitation of the context window. Increasing the window size would allow the model to handle more complex tasks and improve its response. For example, when dealing with long document conversations or long prompt input, it could avoid missing information or forgetting the content of early conversations. ** 2. Business Level ** 1. ** Enterprise deployment optimization ** - There were ways for enterprises to deploy generative AI, such as "use, embed, expand, customize, and build." Different types and sizes of enterprises would choose according to their own circumstances. For companies that were exposed to AI applications in the early stages, it was recommended to adopt the direct use or embedded mode, up to the expansion mode. For companies with a large amount of AI application experience, they could consider the high investment and high return method of customized models. Large enterprises would focus on the "customized" mode for self-control purposes and may choose a variety of deployment methods, while small and medium-sized enterprises mostly only used the first three methods. - During deployment, enterprises needed to pay constant attention to the return on investment (ROIs), especially in models with high costs such as customizations. They had to control the overall cost scale and correct or stop losses in time. This was because investing in large models might face the risk of low value due to the lack of business personnel and insufficient model capabilities. 2. ** The development direction of large model manufacturers ** - At present, large-scale model manufacturers had commercial difficulties, such as unclear cash flow model, low gross profit margin (because domestic enterprises preferred customized products), etc. In the future, large model manufacturers might seek to make applications for vertical models, and to make the scenes in the service and interaction process into products to break through the predicament. ** 3. Industry application and social impact ** 1. ** Industry application expansion ** - At present, the industries that adopted the application of Generative AI were financial institutions, new energy vehicle companies, and the pharmaceutical industry. However, the application scenarios of each industry were different. For example, financial institutions were used for customer and employee assistants, new energy vehicle companies were used for intelligent driving road test virtual scenes, and pharmaceutical companies were used for drug clinical research and development and testing. It was expected to be applied in more industries and scenarios in the future. 2. ** In terms of social impact ** - Although currently, AI brings more non-financial value, such as improving efficiency and improving customer experience, these values are difficult to measure. In the future, they might change the way they evaluate their return on investment through change management, focusing on the combination of big model landing and enterprise business transformation to better adapt to the needs of society and enterprise development. 3. ** Industry Development Promotion ** - In terms of regional development, cities like Shanghai were in a leading position in the AI field. The number of AI companies above its scale and the scale of its industry continued to grow. There were many large models that had been filed, and there were also achievements such as the release of a universal humanoid robot prototype. In the future, more regions might follow suit and strengthen the construction of industrial ecology, including the optimization of the computing power infrastructure layout and the improvement of the basic support system of the language data to promote the development of the AI industry. "A Short History of the Future: Legends of the Intelligent Era" was equally exciting. Everyone was welcome to click and read it!
The history of the development of Generative Artificial Intelligence was as follows: In 1957, Hiller and Isaac converted the control variables in the computer program into musical notes and created the first music composition in history,"Ilyak Suite." This was an early exploration. After the 1990s, artificial intelligence generated content (AIGC) gradually evolved from experimental development to practical use. In 2007, New York University's Ross Goodwin assembled an artificial intelligence system to create the world's first novel,"1 The Road," written entirely by artificial intelligence. Since 2014, AIGC had entered a new era with the development of deep learning algorithms, especially the proposal of Generative Adversant Network (GAN). The release of works such as DALL-E and ChatGPM marked a significant breakthrough in AIGC's content generation. On December 26, 2023, Generative Artificial Intelligence was selected as one of the top ten scientific terms of 2023. On July 3, 2024, the World intellectual property organization released the Generative Artificial Intelligence patent situation report, which showed that China's number of patent applications for Generative A1 was the highest in the world from 2014 to 2023. In the course of its development, from its early simple creation attempts to its current application in many fields and continuous technological innovation, it had received widespread attention around the world. It had great development potential in media, e-commerce, film and television, entertainment and other industries with high digital levels and rich content requirements. "A Short History of the Future: Legends of the Intelligent Era" was equally exciting. Everyone was welcome to click and read it!
On July 3, 2024, the World intellectual property organization released the Generative Artificial Intelligence patent situation report, which showed that China's number of patent applications for Generative A1 was the highest in the world from 2014 to 2023. As the 2024 U.S. presidential election approached, the two parties used artificial intelligence technology for campaign activities, including political marketing, propaganda, electorate interaction, election analysis, and strategy adjustment. However, it also spread false information like a virus, interfering with the judgment and voting choices of the electorate, threatening the fairness and security of the election. On May 24, 2024, the Ministry of Human Resources and social protection announced that the application of the generative artificial intelligence system was a new profession. " A Short History of the Future: Legends of the Intelligent Era " was equally exciting. Everyone was welcome to click and read it!
Common names of the AI products were ChatGPM, DALL-E, Stable Diffusing, Midjourney, MiniMax's video model, and Keling AI. " A Short History of the Future: Legends of the Intelligent Era " was equally exciting. Everyone was welcome to click and read it!
China's New Generation Artificial Intelligence Development Report 2020 was released on October 22, 2020. It was unclear if there were other Chinese AI development reports published in other years. " A Short History of the Future: Legends of the Intelligent Era " was equally exciting. Everyone was welcome to click and read it!
Judging from the list of companies, most of the listed companies engaged in the generative AI business were awarded the "2024 China Artificial Intelligence Multi-Modality Model Enterprise Top 20 Comprehensive Competition", among which, tencent ranked first. However, on a global scale, different evaluation criteria could lead to different results. At present, there was no absolute unified conclusion of the so-called " leading public AI company." " A Short History of the Future: Legends of the Intelligent Era " was equally exciting. Everyone was welcome to click and read it!
Generative AI was a type of artificial intelligence that focused on creating new content. It could automatically generate text, images, music, and other content based on learned data. For example, ChatGPM, Wen Xin Yi Yan, etc. were all generated AI. AIGC was AI Generated content. It was a new content creation method after professionally produced content (PGC) and user produced content (UGC). AIGC began to develop in the 1950s. Its rise stemmed from the rapid breakthroughs in deep learning technology and the growing demand for digital content. In short, Generative AI was a type of technology, and AIGC was the result of this technology. "A Short History of the Future: Legends of the Intelligent Era" was equally exciting. Everyone was welcome to click and read it!
The creation of AI - generated music is quite impressive. There are generative AI models that can compose music pieces in various styles, from classical to pop. Some independent musicians have used these AI - generated melodies as a starting point to create their own unique tracks.