


Heavy! Huawei's version of ChatGPT will be released soon, called 'Pangu Chat” [with artificial intelligence industry development forecast]
Following the release of artificial intelligence dialogue systems such as ChatGPT and Wen Xinyiyan, Huawei is about to launch a new artificial intelligence product.
Recently, Huawei announced that it will release a multi-modal 100 billion-level large-scale model product in July, called "Pangu Chat". The product is mainly aimed at To B/G government and enterprise customers.
It is reported that the Pangu large model project was successfully established within Huawei Cloud in November 2020. For the positioning of the Pangu large model, Huawei's internal team established the three most critical core design principles: first, the model must be large and can absorb massive amounts of data; second, the network structure must be strong to truly bring out the performance of the model; third, it must have excellent The generalization ability can truly be applied to work scenarios in all walks of life.
Huawei’s advantage over other manufacturers lies in its complete industrial chain and strong computing power deployment capabilities. Huawei internally stated that more than 4,000 GPU/TPU cards are used for large model training every year, and the computing power cost of large models in three years is as high as 960 million yuan. According to data from a paper published by Huawei, the parameters of Huawei's PanGu-Σ large model are up to 1.085 trillion and are developed based on Huawei's self-developed MindSpore framework. In terms of conversation, the PanGu-Σ large model may already be close to GPT-3.5.
Artificial Intelligence Industry Development Forecast
With the rapid development of artificial intelligence and the continuous improvement of machine learning and algorithm levels, industries such as cloud computing, big data, the Internet of Things, and autonomous driving have continuously increased the number and performance requirements for artificial intelligence chips, driving the development of artificial intelligence chips. The industry continues to develop. The core technology sector of artificial intelligence includes artificial intelligence chips, integrated circuits, computer vision, machine learning, natural language, biometric technology, big data processing, etc., and artificial intelligence chips are an emerging industry based on artificial intelligence and semiconductor chips; among them , in 2021, the scale of China's artificial intelligence industry will be 744.2 billion yuan, driving the industry market size to 151.3 billion yuan.
Thanks to the advancement of AI technologies such as deep learning and the in-depth application of Al in various industries, the industry has developed rapidly. According to Sullivan's statistical forecast, the market size of the global artificial intelligence industry in 2019 is approximately US$191.7 billion, and it is initially estimated that the global artificial intelligence scale will reach 233.5 billion yuan in 2020.
Academician Bai Chunli pointed out that artificial intelligence will usher in a critical stage of development in the next 5-10 years. At this stage, my country's artificial intelligence needs to focus on solving three key problems: weak core technology and basic capabilities, an imperfect industrial development ecosystem, and a serious shortage of high-end talents. He suggested that we should give full play to the advantages of the new national system under the conditions of the socialist market economy, strengthen top-level design, strengthen overall coordination and system layout, innovate talent training models, and strengthen the construction of laws, regulations, ethical norms, and policy systems.
Foresight Economist APP Information Group
The above data refers to the Qianzhan Industry Research Institute.
At the same time, Qianzhan Industry Research Institute also provides solutions such as consulting, consulting, etc.
The above is the detailed content of Heavy! Huawei's version of ChatGPT will be released soon, called 'Pangu Chat” [with artificial intelligence industry development forecast]. For more information, please follow other related articles on the PHP Chinese website!

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