


Chinese users actively deploy generative AI technology, accounting for 26% - Gartner survey report
News on May 23, according to a report by Sun Xin Risk, research director of market research firm Gartner, Chinese users have made certain progress in the deployment of generative AI technology. As of now, about 26% of Chinese users have begun to deploy generative AI technology.
The report pointed out that in China, 6% of users have successfully deployed technology related to generative AI, and 26% of users are actively piloting this technology. In addition, about a quarter (24%) of users stated that they plan to adopt applications or technologies related to generative artificial intelligence in the next 0-6 months. China leads Southeast Asia and the Middle East in the field of generative AI, with the latter having only 3% of users.
In Sun Xin’s view, Chinese users generally trust the data-centered generative artificial intelligence capabilities, which are generally better than model-centered artificial intelligence methods.
Gartner's "2022 Artificial Intelligence Technology Hype Cycle" report points out that the early adoption of AI technologies such as compound artificial intelligence and decision intelligence will bring obvious competitive advantages to enterprise organizations and alleviate the vulnerability of AI models. questions and help capture business background information to drive value realization. According to ITBEAR technology information, Gartner believes that a popular technical capability that may emerge in the future is so-called "responsible AI", which adds a layer of insurance to generative AI to process generated content in a responsible manner.
From the perspective of technology trends, Sun Xin said that it can be interpreted from the following three aspects:
First, from the architectural perspective, the current mainstream generation Modern AI applications often run on the cloud, but in regulated industries, enterprises may increasingly choose to deploy on-premises. This move could not only increase the value of hardware for infrastructure providers, but also effectively leverage the capabilities of generative AI.
In addition, more large models and Fine-Tuning models will be launched in the future. The advantage of the Fine-Tuning model is that it can more accurately adapt to business scenarios, thereby reducing costs and improving matching. In this system, open source software and open source communities will play an important role.
Finally, from the operational perspective, the next six months may see “prompt engineering” become an important market trend, while “vector database” will play a key role on the operational side.
With the development of generative artificial intelligence technology, enterprises are also facing some potential risks that need to be paid attention to. Generative AI products face some risks and challenges, as revealed by some negative news about ChatGPT. Therefore, ITBEAR Technology Information reminds users that when using current generative artificial intelligence products, they should treat them with a responsible attitude and not blindly follow trends.
In China, certain progress has been made in the deployment of generative AI technology. However, this does not mean that the deployment process is risk-free. Ensuring that content generated by generative AI complies with ethical and legal standards is a significant challenge for businesses. Overreliance on generative AI may also lead to misleading and out-of-control artificial intelligence.
When using generative AI technology, both enterprises and users should maintain a prudent and responsible attitude, and not only enjoy the convenience and innovation brought by the technology. For enterprises, it is crucial to establish effective supervision and audit mechanisms. In addition, governments and regulatory agencies need to strengthen supervision and guidance on generative AI technology to ensure that it can be developed in compliance with ethical and legal frameworks.
In short, generative AI technology has been recognized and deployed to a certain extent among Chinese users. However, with this comes potential risks and challenges. Enterprises and users should work together to advance the development of self-generated AI technology in a responsible manner and ensure that it meets social and ethical expectations.
The above is the detailed content of Chinese users actively deploy generative AI technology, accounting for 26% - Gartner survey report. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics



The Generative AI Working Group established by the President's Council of Advisors on Science and Technology is designed to help assess key opportunities and risks in the field of artificial intelligence and provide advice to the President on ensuring that these technologies are developed and deployed as fairly, safely, and responsibly as possible. AMD CEO Lisa Su and Google Cloud Chief Information Security Officer Phil Venables are also members of the working group. Chinese-American mathematician and Fields Medal winner Terence Tao. On May 13, local time, Chinese-American mathematician and Fields Medal winner Terence Tao announced that he and physicist Laura Greene will co-lead the Generative Artificial Intelligence Working Group of the U.S. Presidential Council of Advisors on Science and Technology (PCAST) .

Image source@visualchinesewen|Wang Jiwei From "human + RPA" to "human + generative AI + RPA", how does LLM affect RPA human-computer interaction? From another perspective, how does LLM affect RPA from the perspective of human-computer interaction? RPA, which affects human-computer interaction in program development and process automation, will now also be changed by LLM? How does LLM affect human-computer interaction? How does generative AI change RPA human-computer interaction? Learn more about it in one article: The era of large models is coming, and generative AI based on LLM is rapidly transforming RPA human-computer interaction; generative AI redefines human-computer interaction, and LLM is affecting the changes in RPA software architecture. If you ask what contribution RPA has to program development and automation, one of the answers is that it has changed human-computer interaction (HCI, h

Generative AI is a type of human artificial intelligence technology that can generate various types of content, including text, images, audio and synthetic data. So what is artificial intelligence? What is the difference between artificial intelligence and machine learning? Artificial intelligence is the discipline, a branch of computer science, that studies the creation of intelligent agents, which are systems that can reason, learn, and perform actions autonomously. At its core, artificial intelligence is concerned with the theories and methods of building machines that think and act like humans. Within this discipline, machine learning ML is a field of artificial intelligence. It is a program or system that trains a model based on input data. The trained model can make useful predictions from new or unseen data derived from the unified data on which the model was trained.

▲This picture was generated by AI. Kujiale, Sanweijia, Dongyi Risheng, etc. have already taken action. The decoration and decoration industry chain has introduced AIGC on a large scale. What are the applications of generative AI in the field of decoration and decoration? What impact does it have on designers? One article to understand and say goodbye to various design software to generate renderings in one sentence. Generative AI is subverting the field of decoration and decoration. Using artificial intelligence to enhance capabilities improves design efficiency. Generative AI is revolutionizing the decoration and decoration industry. What impact does generative AI have on the decoration and decoration industry? What are the future development trends? One article to understand how LLM is revolutionizing decoration and decoration. These 28 popular generative AI decoration design tools are worth trying. Article/Wang Jiwei In the field of decoration and decoration, there has been a lot of news related to AIGC recently. Collov launches generative AI-powered design tool Col

Generative artificial intelligence (GenAI) is expected to become a compelling technology trend by 2023, bringing important applications to businesses and individuals, including education, according to a new report from market research firm Omdia. In the telecom space, use cases for GenAI are mainly focused on delivering personalized marketing content or supporting more sophisticated virtual assistants to enhance customer experience. Although the application of generative AI in network operations is not obvious, EnterpriseWeb has developed an interesting concept. Validation, demonstrating the potential of generative AI in the field, the capabilities and limitations of generative AI in network automation One of the early applications of generative AI in network operations was the use of interactive guidance to replace engineering manuals to help install network elements, from

Gu Fan, General Manager of the Strategic Business Development Department of Amazon Cloud Technology Greater China In 2023, large language models and generative AI will "surge" in the global market, not only triggering "an overwhelming" follow-up in the AI and cloud computing industry, but also vigorously Attract manufacturing giants to join the industry. Haier Innovation Design Center created the country's first AIGC industrial design solution, which significantly shortened the design cycle and reduced conceptual design costs. It not only accelerated the overall conceptual design by 83%, but also increased the integrated rendering efficiency by about 90%, effectively solving Problems include high labor costs and low concept output and approval efficiency in the design stage. Siemens China's intelligent knowledge base and intelligent conversational robot "Xiaoyu" based on its own model has natural language processing, knowledge base retrieval, and big language training through data

The implementation of large models is accelerating, and "industrial practicality" has become a development consensus. On May 17, 2024, the Tencent Cloud Generative AI Industry Application Summit was held in Beijing, announcing a series of progress in large model development and application products. Tencent's Hunyuan large model capabilities continue to upgrade. Multiple versions of models hunyuan-pro, hunyuan-standard, and hunyuan-lite are open to the public through Tencent Cloud to meet the model needs of enterprise customers and developers in different scenarios, and to implement the most cost-effective model solutions. . Tencent Cloud releases three major tools: knowledge engine for large models, image creation engine, and video creation engine, creating a native tool chain for the era of large models, simplifying data access, model fine-tuning, and application development processes through PaaS services to help enterprises

The rise of artificial intelligence is driving the rapid development of software development. This powerful technology has the potential to revolutionize the way we build software, with far-reaching impacts on every aspect of design, development, testing and deployment. For companies trying to enter the field of dynamic software development, the emergence of generative artificial intelligence technology provides them with unprecedented development opportunities. By incorporating this cutting-edge technology into their development processes, companies can significantly increase production efficiency, shorten product time to market, and launch high-quality software products that stand out in the fiercely competitive digital market. According to a McKinsey report, it is predicted that the generative artificial intelligence market size is expected to reach US$4.4 trillion by 2031. This forecast not only reflects a trend, but also shows the technology and business landscape.
