In his detailed explanation, Bruce Kornfeld, Chief Product Officer at StorMagic, highlights the importance of combining edge processing, cloud scalability, and hyperconvergence to create a robust infrastructure for AI applications.
As more businesses shift towards edge computing to address latency issues and meet the demands of AI and IoT technologies, the need for real-time data analysis becomes crucial. This shift is further fueled by the increasing volume of data generated, putting pressure on centralized infrastructure.
Edge computing, by processing data closer to its source, eliminates latency issues and allows AI applications to operate in real-time, regardless of location. This trend is projected to drive significant investment in edge infrastructure, reaching $380 billion by 2028, as per IDC forecasts.
A hybrid approach that combines edge computing with cloud services and hyperconverged infrastructure offers businesses the flexibility to process critical workloads locally while still accessing centralised services for less time-sensitive tasks. This approach ensures resilience, responsiveness, and scalability, ultimately enabling organizations to tailor their infrastructure to specific operational needs and optimize resource utilization.