


360 Intelligent Brain appeared at the Service Trade Fair, and 360 Company won the 'Artificial Intelligence 'Leading Enterprise' Innovation Application Award'
On September 5, the 2023 China International Fair for Trade in Services "Artificial Intelligence Supports the High-Quality Development of the Digital Economy Forum" was held in Beijing. During the period, under the guidance of the New Generation Artificial Intelligence Industry Technology Innovation Strategic Alliance, the Organizing Committee of the Artificial Intelligence High-Quality Development Forum awarded 360 Group the Artificial Intelligence "Leading Enterprise" Innovation Application Award. 360 Group’s past exploration and practice in the field of artificial intelligence has received positive reviews from the industry and society, and has become an innovative representative among many artificial intelligence companies.
At the forum, Zhang Xiangzheng, President of 360 Intelligent Brain, delivered a keynote speech on "360 Intelligent Brain Builds a Safe and Trustworthy Production-level Large Model" as a special guest, sharing the advantages and practical applications of 360 Intelligent Brain's large model. "The opening of the big model era will lead to a new industrial revolution, and we must seize the opportunity of productivity leap and upgrade." Zhang Xiangzheng said. 360 relies on its core technical strength and unique scene advantages to lay out a "two wings flying together" artificial intelligence development strategy. Among them, 360 Intelligent Brain is a large-scale self-developed cognitive general model. Its training has invested eight major advantageous resources, including technical genes, data advantages, search enhancements, and computing resources. Currently, 360 Intelligent Brain is upgraded to version 4.0, which refreshes the large model "China Speed".
360 Zhinao President Zhang Xiangzheng
In addition, 360 Intelligent Brain is the first large-scale trustworthy AIGC model in China that has passed the evaluation of the Ministry of Industry and Information Technology. In the Shanghai Submission & Tsinghua C-Eval evaluation, the average score of 360 Big Model exceeded GPT-4, and it performed well in social sciences and humanities projects; The model has real-time search and reply capabilities, ranking among the first echelons of large models. Zhang Xiangzheng introduced that 360 Intelligent Brain participated in writing large model application standards and has the ability to contribute to the "national team" of artificial intelligence.
Facing the field of enterprise applications, Zhang Xiangzheng believes that large models should serve the industrial digital strategy and empower the enterprise-level market to improve productivity and production efficiency. Zhang Xiangzheng said that the future development trend of large models is "verticalization". He pointed out that large models should be trained from "know-it-all" to government-savvy, city-savvy, industry-savvy and enterprise-savvy. From the perspective of implementation practice, it can also be combined with the enterprise knowledge base to achieve "safety and trustworthiness" of large models, and combined with digital humans to achieve "easy-to-use" large models. At present, the 360 enterprise-level AI large model strategy has been implemented in governments and enterprises. The tax industry standard large model and the enterprise service industry science and technology innovation large model solutions were both selected into the "Top Ten Typical Scenario Cases for Beijing's General Artificial Intelligence Large Model Industry Application" ".
So far, 360 Intelligence has taken the lead in providing large-scale enterprise-level solutions for nearly 20 industries such as government affairs, transportation, cultural tourism, and medical care. It has also established the GPT Industry Alliance to work with ecological partners to promote AI industrialization. and industrial AI development to empower industrial digital scenarios. In the future, 360 Intelligence will continue to improve its safe and trustworthy large-scale model to safeguard the construction of Digital China.
Disclaimer: This article is for reference only and does not constitute investment advice.
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