


360 Group launches two-way integration of digital security and artificial intelligence, releasing a large model of the security industry
On August 9, 360 Group released the first deliverable security industry model in China - "360 Security Model" at the 11th ISC 2023 Internet Security Conference. It is reported that this large model will serve as an important platform and tool for 360 security hosting operation services, giving full play to its advantages and capabilities to improve the effectiveness of network security services. Currently, the large model’s security attack and defense judgment accuracy exceeds 96%. The founder of 360 Group also released 360’s “security as a priority” strategy and a new generation of security products 360 Security Cloud
during the opening of ISCAccording to the introduction, the 360 Security Model is a security industry vertical model based on 360’s self-developed cognitive general model “360 Intelligent Brain”, combined with 360’s AI security applications and security big data training over the past 15 years. . During the privatization deployment process, the 360 Security large model will match the enterprise security intelligent control system, and use the intelligent central scheduling model, knowledge base and special plug-ins to combine with the enterprise's private domain data, using both security question and answer experts and security operation experts. This form assists the safe operation of enterprises. At present, these functions have been successfully applied in 360’s internal and own products
360 is one of the earliest companies in China to deploy large artificial intelligence models. Their 360 intelligent brain model already has ten core capabilities and can be applied to various scenarios. Zhou Hongyi believes that large models will have huge opportunities in the enterprise market in the future. At present, 360 has released an enterprise-level AI large model solution. This solution follows the four principles of "safety, kindness, credibility, and controllability". It was first implemented in the taxation and corporate service industries, and was selected as the "Beijing General Ten typical scenarios of artificial intelligence large model industry application". It is understood that the purpose of 360 launching a large security industry model is to cloudify and intelligentize national-level security capabilities to provide support for all walks of life
At ISC 2023, Zhou Hongyi introduced the main directions of 360 in the security industry. First, they are committed to building a "security know-it-all" and training a large general model into a "security expert" by training on a large amount of security knowledge and data. Secondly, they use large models to assist attack and defense decisions. When the system encounters an attack alarm, the large model can determine whether it is a real attack or a false alarm. Finally, they combined the large model with 360’s existing network-wide security brain to improve security service effects. The 360 security large model released this time is an important achievement they have achieved in exploring how large models empower the security industry
Some professionals pointed out that many companies lack security awareness when making large-scale models, and those companies that understand security do not have the ability to develop large-scale models. 360 is a cross-border exception. They have the world's largest network security big data, and have successfully trained large-scale models in the security industry with this data. This can be said to be a matter of course
According to the news, 360 Company also launched a multi-tenant cloud security service platform-360 Security Cloud based on the new "security as a service" concept. The platform will fully open up 360’s national security capabilities and use the cloud platform to build security infrastructure and public service facilities to provide eight major security services. In the future, 360 Security Cloud and 360 Security Big Model will jointly become an important tool for 360 to provide security services, continue to provide support for many enterprises to reduce security costs and increase efficiency, and contribute to the protection of the national digital security barrier
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