


New large-model products are booming, and the AI industry is ushering in a new era
At the 2023 World Artificial Intelligence Conference in Shanghai, a craze triggered by the release of new large-model products once again brought the artificial intelligence industry to the forefront. According to incomplete statistics, in just two days, more than 10 large-model new products were unveiled. The publishing organizations of these products include Internet technology companies, startups, and even communications companies. This not only demonstrates the diversity and depth of artificial intelligence technology, but also shows that the entire industry is ushering in a new era.
Large models refer to artificial intelligence models trained using massive data and powerful computing power. They can perform beyond human capabilities in multiple tasks and fields, such as natural language processing, image generation, and speech recognition. wait. Large models are considered an important direction and trend in the field of artificial intelligence, and are also an important symbol of the level and strength of artificial intelligence.
The emergence of large models marks the entry of artificial intelligence technology into a new stage, and also brings new opportunities and challenges to all walks of life.
At this meeting, we saw different types and styles of large models. Some are universal and can adapt to a variety of scenarios and needs, such as Huawei's Pangu Large Model 3.0, and some are focused on a certain segment. Or industry, such as the fourth paradigm of large-scale models.
In addition to innovation at the technical level, we also see innovation at the commercial level. Some technology companies have begun to provide their large models as a service or platform to other companies or individuals, thus forming a new ecosystem. For example, Alibaba's large painting model "Tongyi Wanxiang" can generate high-quality paintings based on users' simple descriptions or sketches, covering a variety of themes and styles such as characters, animals, and landscapes.
The release of these large model new products not only demonstrates the prospects of the artificial intelligence industry, but also brings new opportunities and challenges.
On the one hand, these large models will help all walks of life achieve technological upgrades and improve efficiency; on the other hand, they also pose new challenges, such as how to ensure data security and how to formulate new industry norms.
The debut of these large model new products not only reflects the technical strength and innovation capabilities of various companies in the field of artificial intelligence, but also reflects the development trends and directions in the field of artificial intelligence. On the one hand, large models are increasingly used in various practical scenarios and tasks to provide users with more intelligent and convenient services.
On the other hand, large models increasingly involve multiple languages and fields, providing users with richer and more diverse content. The release of these new large model products has also brought us more room for imagination and expectations, making us full of confidence and hope in the future of artificial intelligence.
This craze caused by the release of large model new products allows us to see the infinite possibilities of the artificial intelligence industry. Whether it is Internet technology companies, startups, or even communications companies, they are actively exploring the application of artificial intelligence in different fields. This not only promotes the development of the industry, but also makes artificial intelligence technology more popular.
In short, at this conference, we witnessed an important change and breakthrough in the field of artificial intelligence. Large models not only demonstrate the powerful potential and infinite possibilities of artificial intelligence technology, but also bring new value and opportunities to all walks of life. We look forward to more new large model products being born and applied to practical problems, bringing more welfare and progress to society and mankind.
The above is the detailed content of New large-model products are booming, and the AI industry is ushering in a new era. 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

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

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

On May 30, Tencent announced a comprehensive upgrade of its Hunyuan model. The App "Tencent Yuanbao" based on the Hunyuan model was officially launched and can be downloaded from Apple and Android app stores. Compared with the Hunyuan applet version in the previous testing stage, Tencent Yuanbao provides core capabilities such as AI search, AI summary, and AI writing for work efficiency scenarios; for daily life scenarios, Yuanbao's gameplay is also richer and provides multiple features. AI application, and new gameplay methods such as creating personal agents are added. "Tencent does not strive to be the first to make large models." Liu Yuhong, vice president of Tencent Cloud and head of Tencent Hunyuan large model, said: "In the past year, we continued to promote the capabilities of Tencent Hunyuan large model. In the rich and massive Polish technology in business scenarios while gaining insights into users’ real needs

Tan Dai, President of Volcano Engine, said that companies that want to implement large models well face three key challenges: model effectiveness, inference costs, and implementation difficulty: they must have good basic large models as support to solve complex problems, and they must also have low-cost inference. Services allow large models to be widely used, and more tools, platforms and applications are needed to help companies implement scenarios. ——Tan Dai, President of Huoshan Engine 01. The large bean bag model makes its debut and is heavily used. Polishing the model effect is the most critical challenge for the implementation of AI. Tan Dai pointed out that only through extensive use can a good model be polished. Currently, the Doubao model processes 120 billion tokens of text and generates 30 million images every day. In order to help enterprises implement large-scale model scenarios, the beanbao large-scale model independently developed by ByteDance will be launched through the volcano

"High complexity, high fragmentation, and cross-domain" have always been the primary pain points on the road to digital and intelligent upgrading of the transportation industry. Recently, the "Qinling·Qinchuan Traffic Model" with a parameter scale of 100 billion, jointly built by China Vision, Xi'an Yanta District Government, and Xi'an Future Artificial Intelligence Computing Center, is oriented to the field of smart transportation and provides services to Xi'an and its surrounding areas. The region will create a fulcrum for smart transportation innovation. The "Qinling·Qinchuan Traffic Model" combines Xi'an's massive local traffic ecological data in open scenarios, the original advanced algorithm self-developed by China Science Vision, and the powerful computing power of Shengteng AI of Xi'an Future Artificial Intelligence Computing Center to provide road network monitoring, Smart transportation scenarios such as emergency command, maintenance management, and public travel bring about digital and intelligent changes. Traffic management has different characteristics in different cities, and the traffic on different roads

1. Product positioning of TensorRT-LLM TensorRT-LLM is a scalable inference solution developed by NVIDIA for large language models (LLM). It builds, compiles and executes calculation graphs based on the TensorRT deep learning compilation framework, and draws on the efficient Kernels implementation in FastTransformer. In addition, it utilizes NCCL for communication between devices. Developers can customize operators to meet specific needs based on technology development and demand differences, such as developing customized GEMM based on cutlass. TensorRT-LLM is NVIDIA's official inference solution, committed to providing high performance and continuously improving its practicality. TensorRT-LL

According to news on April 4, the Cyberspace Administration of China recently released a list of registered large models, and China Mobile’s “Jiutian Natural Language Interaction Large Model” was included in it, marking that China Mobile’s Jiutian AI large model can officially provide generative artificial intelligence services to the outside world. . China Mobile stated that this is the first large-scale model developed by a central enterprise to have passed both the national "Generative Artificial Intelligence Service Registration" and the "Domestic Deep Synthetic Service Algorithm Registration" dual registrations. According to reports, Jiutian’s natural language interaction large model has the characteristics of enhanced industry capabilities, security and credibility, and supports full-stack localization. It has formed various parameter versions such as 9 billion, 13.9 billion, 57 billion, and 100 billion, and can be flexibly deployed in Cloud, edge and end are different situations

1. Background Introduction First, let’s introduce the development history of Yunwen Technology. Yunwen Technology Company...2023 is the period when large models are prevalent. Many companies believe that the importance of graphs has been greatly reduced after large models, and the preset information systems studied previously are no longer important. However, with the promotion of RAG and the prevalence of data governance, we have found that more efficient data governance and high-quality data are important prerequisites for improving the effectiveness of privatized large models. Therefore, more and more companies are beginning to pay attention to knowledge construction related content. This also promotes the construction and processing of knowledge to a higher level, where there are many techniques and methods that can be explored. It can be seen that the emergence of a new technology does not necessarily defeat all old technologies. It is also possible that the new technology and the old technology will be integrated with each other.

If the test questions are too simple, both top students and poor students can get 90 points, and the gap cannot be widened... With the release of stronger models such as Claude3, Llama3 and even GPT-5 later, the industry is in urgent need of a more difficult and differentiated model Benchmarks. LMSYS, the organization behind the large model arena, launched the next generation benchmark, Arena-Hard, which attracted widespread attention. There is also the latest reference for the strength of the two fine-tuned versions of Llama3 instructions. Compared with MTBench, which had similar scores before, the Arena-Hard discrimination increased from 22.6% to 87.4%, which is stronger and weaker at a glance. Arena-Hard is built using real-time human data from the arena and has a consistency rate of 89.1% with human preferences.

Pay attention, this man has connected more than 1,000 large models, allowing you to plug in and switch seamlessly. Recently, a visual AI workflow has been launched: giving you an intuitive drag-and-drop interface, you can drag, pull, and drag to arrange your own workflow on an infinite canvas. As the saying goes, war costs speed, and Qubit heard that within 48 hours of this AIWorkflow going online, users had already configured personal workflows with more than 100 nodes. Without further ado, what I want to talk about today is Dify, an LLMOps company, and its CEO Zhang Luyu. Zhang Luyu is also the founder of Dify. Before joining the business, he had 11 years of experience in the Internet industry. I am engaged in product design, understand project management, and have some unique insights into SaaS. Later he
