{"id":46257,"date":"2024-04-12T09:47:37","date_gmt":"2024-04-12T08:47:37","guid":{"rendered":"https:\/\/www.innovationnewsnetwork.com\/?p=46257"},"modified":"2024-04-12T09:48:30","modified_gmt":"2024-04-12T08:48:30","slug":"the-generative-ai-revolution-is-here-is-your-cloud-network-ready-to-embrace-it","status":"publish","type":"post","link":"https:\/\/www.innovationnewsnetwork.com\/the-generative-ai-revolution-is-here-is-your-cloud-network-ready-to-embrace-it\/46257\/","title":{"rendered":"The generative AI revolution is here: Is your cloud network ready to embrace it?"},"content":{"rendered":"
Generative Artificial Intelligence is inserting itself into nearly every sector of the global economy as well as many aspects of our lives. People are already using this groundbreaking technology to query their bank bills, request medical prescriptions, and even write poems and university essays.<\/p>\n
In the process, generative AI has the potential to unlock trillions of dollars in value for businesses and radically transform the way we work. In fact, current predictions suggest generative AI could automate up to 70%<\/a> of employees\u2019 time today.<\/p>\n But regardless of the application or industry, the impact of generative AI can be most keenly felt in the cloud computing ecosystem.<\/p>\n As companies rush to leverage this technology in their cloud operations, it is essential to first understand the network connectivity requirements \u2013 and the risks \u2013 before deploying generative AI models safely, securely, and responsibly.<\/p>\n One of the primary connectivity requirements for training generative AI models in public cloud environments is affordable access to the scale of datasets. By their very definition, large language models<\/a> (LLM) are extremely large. To train these LLMs, vast amounts of data and hyper-fast computing are required, and the larger the dataset, the greater the demand for computing power.<\/p>\n The enormous processing power required to train these LLMs is only one part of the jigsaw. You also need to manage the sovereignty, security, and privacy requirements of the data transiting in your public cloud. Given that 39% of businesses<\/a> experienced a data breach in their cloud environment in 2022, it makes sense to explore the private connectivity products on the market which have been designed specifically for high-performance and AI workloads.<\/p>\n Companies should pay close attention to the key public policies and regulation trends which are rapidly emerging around the AI landscape. Think of a large multinational bank in New York that has 50 mainframes on its premises where they keep their primary computing capacity; they want to do AI analysis on that data, but they cannot use the public internet to connect to these cloud environments because many of their workloads have regulatory constraints. Instead, private connectivity affords them the ability to get to where the generative AI capability exists and sits within the regulatory frameworks of their financing industry.<\/p>\nData processing<\/h3>\n
Regulatory trends emerging in the generative AI landscape<\/h3>\n