


AI large models are popular! Technology giants have joined in, and policies in many places have accelerated their implementation.
In recent times, artificial intelligence has once again become the focus of human innovation, and the arms competition around AI has become more intense than ever. Not only are technology giants gathering to join the battle of large models for fear of missing out on the new trend, but even Beijing, Shanghai, Shenzhen and other places have also introduced policies and measures to carry out research on large model innovation algorithms and key technologies to create a highland for artificial intelligence innovation. .
AI large models are booming, and major technology giants have joined in one after another
Recently, the "China Artificial Intelligence Large Model Map Research Report" released at the 2023 Zhongguancun Forum shows that China's artificial intelligence large models are showing a vigorous development trend, and many influential large models in the industry have emerged. Robin Li, founder, chairman and CEO of Baidu, even bluntly said that we are at a new starting point. This is a new era of artificial intelligence with large models as the core. Large models have changed artificial intelligence, and large models are about to change the world.
According to incomplete statistics, 79 large models have been released in China, and 19 domestic companies have participated in AI large model training.
Among them, Alibaba has become an important participant in all aspects of large models with its "Hanguang 800 chip M6-OFA base Tongyi large model industry application";
Baidu Wenxin Big Model actively expands internal and external applications, and is currently open to public and corporate users for open testing;
The Pangu model created by Huawei has completed scenario verification in more than 100 industries such as energy, retail, finance, industry, medical care, environment, and logistics;
Tencent built the "Tai Chi Machine Learning Platform Hunyuan Large Model", and at the same time Tencent launched the "Hunyuan Assistant" knowledge-enhanced large language model project;
The daily new large model released by SenseTime is currently open for testing to government and enterprise customers;
iFlytek, known as the "National AI Team", recently released the iFlytek Spark Cognitive Model, which is directly open for large-scale testing.
It is foreseeable that a technological competition surrounding the field of artificial intelligence has begun.
Many places are actively deploying, and the implementation of large artificial intelligence models is accelerating
In addition to the participation of technology giants, many places have recently introduced support measures to integrate innovative resources to seize large-scale model opportunities, lay out the general artificial intelligence track, and promote the construction of independent artificial intelligence technology systems and industrial development.
On May 30 and May 31 alone, Beijing, Shanghai, Shenzhen and other places introduced policy measures one after another. Among them, the artificial intelligence industry policy document issued by Beijing proposes that by 2025, the scale of Beijing's core artificial intelligence industry will reach 300 billion yuan, continuing to maintain a growth of more than 10%, and the scale of the radiating industry will exceed 1 trillion yuan.
Not only Beijing, but also Shenzhen on May 31st proposed to use the city's efforts to build a national new generation artificial intelligence innovation and development pilot zone and a national artificial intelligence innovation application pilot zone, and clarified the "implementation of major special support plans for artificial intelligence technology" and "research and development" Specific measures such as "Innovative Products Based on International Mainstream Large Models" will enhance key core technologies and product innovation capabilities.
Shanghai also clearly seizes new opportunities. Zhang Hongtao, deputy director of the Shanghai Economic and Information Technology Commission, said that ultra-large-scale pre-training models are a key technology for artificial intelligence to move from professional intelligence to general intelligence. At present, Shanghai Xuhui District is focusing on promoting technological innovation and industrial development, and has actively introduced and cultivated a number of large model R&D teams. In the future, it will accelerate research to create an ecological cluster and innovative application highland for large models.
The simultaneous efforts of three domestic first-tier cities have provided strong support for seizing the development highland of artificial intelligence through policy dividends and accelerating the development of general artificial intelligence.
Looking to the future: With the continuous emergence of large AI models, there is huge room for imagination and market opportunities in the future
AI large model is a pre-trained model based on massive multi-source data and powerful computing resources. By fine-tuning it, it can achieve better recognition, understanding, decision-making, generation effects and lower costs in specific applications. development and deployment plan.
AI large models can not only help optimize production processes, improve quality and efficiency, and reduce manufacturing costs; they also play an important role in disease prediction, imaging diagnosis, drug discovery, and the formulation of personalized treatment plans. Moreover, the application of AI large models can also cover many scenarios such as automated customer service, intelligent risk control, data analysis and mining, etc.
There is no doubt that AI large models represent a transformative technology that is profoundly changing many aspects of the economy, market, enterprises, and individuals, bringing higher efficiency and productivity, and promoting economic growth and social progress. . It can be seen that as more new AI models continue to emerge, it will bring huge imagination space and market opportunities to the artificial intelligence industry, accelerating the large-scale popularization of artificial intelligence technology.
AI large model has a bright future, and with the emergence of new technologies and industries, new employment opportunities will also appear. As one of the most important users of artificial intelligence, if we want to ride the waves in the workplace, we need to actively learn artificial intelligence-related technologies such as machine learning, deep learning, and natural language processing to improve our skills and knowledge and enhance our own competition. Only in this way can we actively respond to the wave of artificial intelligence and enjoy the opportunities and development brought by AI.
Editor: Meng Xiaoqi
Typesetting: Meng Xiaoqi
Image source: Internet
The above is the detailed content of AI large models are popular! Technology giants have joined in, and policies in many places have accelerated their implementation.. 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 ChatGPT fire has led to another wave of AI craze. However, the industry generally believes that when AI enters the era of large models, only large companies and super-rich companies can afford AI, because the creation of large AI models is very expensive. The first is that it is computationally expensive. Avi Goldfarb, a marketing professor at the University of Toronto, said: "If you want to start a company, develop a large language model yourself, and calculate it yourself, the cost is too high. OpenAI is very expensive, costing billions of dollars." Rental computing certainly will It's much cheaper, but companies still have to pay expensive fees to AWS and other companies. Secondly, data is expensive. Training models requires massive amounts of data, sometimes the data is readily available and sometimes not. Data like CommonCrawl and LAION can be free

In recent years, with the emergence of new technology models, the polishing of the value of application scenarios in various industries and the improvement of product effects due to the accumulation of massive data, artificial intelligence applications have radiated from fields such as consumption and the Internet to traditional industries such as manufacturing, energy, and electricity. The maturity of artificial intelligence technology and application in enterprises in various industries in the main links of economic production activities such as design, procurement, production, management, and sales is constantly improving, accelerating the implementation and coverage of artificial intelligence in all links, and gradually integrating it with the main business , in order to improve industrial status or optimize operating efficiency, and further expand its own advantages. The large-scale implementation of innovative applications of artificial intelligence technology has promoted the vigorous development of the big data intelligence market, and also injected market vitality into the underlying data governance services. With big data, cloud computing and computing

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

AI large models refer to artificial intelligence models trained using large-scale data and powerful computing power. These models usually have a high degree of accuracy and generalization capabilities and can be applied to various fields such as natural language processing, image recognition, speech recognition, etc. The training of large AI models requires a large amount of data and computing resources, and it is usually necessary to use a distributed computing framework to accelerate the training process. The training process of these models is very complex and requires in-depth research and optimization of data distribution, feature selection, model structure, etc. AI large models have a wide range of applications and can be used in various scenarios, such as smart customer service, smart homes, autonomous driving, etc. In these applications, AI large models can help people complete various tasks more quickly and accurately, and improve work efficiency.

Generative AI (AIGC) has opened a new era of generalization of artificial intelligence. The competition around large models has become spectacular. Computing infrastructure is the primary focus of competition, and the awakening of power has increasingly become an industry consensus. In the new era, large models are moving from single-modality to multi-modality, the size of parameters and training data sets is growing exponentially, and massive unstructured data requires the support of high-performance mixed load capabilities; at the same time, data-intensive The new paradigm is gaining popularity, and application scenarios such as supercomputing and high-performance computing (HPC) are moving in depth. Existing data storage bases are no longer able to meet the ever-upgrading needs. If computing power, algorithms, and data are the "troika" driving the development of artificial intelligence, then in the context of huge changes in the external environment, the three urgently need to regain dynamic

Vivo released its self-developed general artificial intelligence large model matrix - the Blue Heart Model at the 2023 Developer Conference on November 1. Vivo announced that the Blue Heart Model will launch 5 models with different parameter levels, respectively. It contains three levels of parameters: billion, tens of billions, and hundreds of billions, covering core scenarios, and its model capabilities are in a leading position in the industry. Vivo believes that a good self-developed large model needs to meet the following five requirements: large scale, comprehensive functions, powerful algorithms, safe and reliable, independent evolution, and widely open source. The rewritten content is as follows: Among them, the first is Lanxin Big Model 7B, this is a 7 billion level model designed to provide dual services for mobile phones and the cloud. Vivo said that this model can be used in fields such as language understanding and text creation.

Recently, a team of computer scientists developed a more flexible and resilient machine learning model with the ability to periodically forget known information, a feature not found in existing large-scale language models. Actual measurements show that in many cases, the "forgetting method" is very efficient in training, and the forgetting model will perform better. Jea Kwon, an AI engineer at the Institute for Basic Science in Korea, said the new research means significant progress in the field of AI. The "forgetting method" training efficiency is very high. Most of the current mainstream AI language engines use artificial neural network technology. Each "neuron" in this network structure is actually a mathematical function. They are connected to each other to receive and transmit information.

(Global TMT November 10, 2023) On November 9, Honor Terminal Co., Ltd. CEO Zhao Ming was invited to attend the 2023 World Internet Conference Wuzhen Summit, attend the "Global Development Initiative Digital Cooperation Forum" and deliver a keynote speech. "The biggest factor affecting the consumer electronics industry is not the economic cycle, but the innovation cycle." Although the smartphone market continues to be under pressure and the user replacement cycle has been extended, which has brought huge challenges to the industry chain, Zhao Ming believes that "AI large models, 5G+, etc. Innovative technologies are giving birth to new features, new forms, new categories and new service ecology of smart terminals, bringing new opportunities for the development of smart terminals." In the third quarter of this year, Honor successively released the Honor MagicV2, which leads the folding screen into the millimeter era; Extremely slim and stylish
