Almost every technological innovation of the past several years has been laser-focused on one thing: generative AI. Many of these supposedly revolutionary systems run on big, expensive servers in a data center somewhere, but at the same time, chipmakers are crowing about the power of the neural processing units (NPU) they have brought to consumer devices. Every few months, it’s the same thing: This new NPU is 30 or 40 percent faster than the last one. That’s supposed to let you do something important, but no one really gets around to explaining what that is.
Experts envision a future of secure, personal AI tools with on-device intelligence, but does that match the reality of the AI boom? AI on the “edge” sounds great, but almost every AI tool of consequence is running in the cloud. So what’s that chip in your phone even doing?
What is an NPU?
Companies launching a new product often get bogged down in superlatives and vague marketing speak, so they do a poor job of explaining technical details. It’s not clear to most people buying a phone why they need the hardware to run AI workloads, and the supposed benefits are largely theoretical.
Many of today’s flagship consumer processors are systems-on-a-chip (SoC) because they incorporate multiple computing elements—like CPU cores, GPUs, and imaging controllers—on a single piece of silicon. This is true of mobile parts like Qualcomm’s Snapdragon or Google’s Tensor, as well as PC components like the Intel Core Ultra.
The NPU is a newer addition to chips, but it didn’t just appear one day—there’s a lineage that brought us here. NPUs are good at what they do because they emphasize parallel computing, something that’s also important in other SoC components.