While the mass adoption of AI has transformed digital life seemingly overnight, regulators have fallen asleep on the job in curtailing AI data centers’ drain on energy and water resources.
I skimmed the article, but it seems to be assuming that Google's LLM is using the same architecture as everyone else. I'm pretty sure Google uses their TPU chips instead of a regular GPU like everyone else. Those are generally pretty energy efficient.
That and they don't seem to be considering how much data is just being cached for questions that are the same. And a lot of Google searches are going to be identical just because of the search suggestions funneling people into the same form of a question.
I hadn't really heard of the TPU chips until a couple weeks ago when my boss told me about how he uses USB versions for at-home ML processing of his closed network camera feeds. At first I thought he was using NVIDIA GPUs in some sort of desktop unit and just burning energy...but I looked the USB things up and they're wildly efficient and he says they work just fine for his applications. I was impressed.
The Coral is fantastic for use cases that don't need large models. Object recognition for security cameras (using Blue Iris or Frigate) is a common use case, but you can also do things like object tracking (track where individual objects move in a video), pose estimation, keyphrase detection, sound classification, and more.
It runs Tensorflow Lite, so you can also build your own models.
The Coral ones? They don't have nearly enough RAM to handle LLMs - they only have 8MB RAM and only support small Tensorflow Lite models.
Google might have some custom-made non-public chips though - a lot of the big tech companies are working on that.
instead of a regular GPU
I wouldn't call them regular GPUs... AI use cases often use products like the Nvidia H100, which are specifically designed for AI. They don't have any video output ports.