Computer scientists are rushing to tame tame AI's voracious appetite for energy

Scientists are exploring new algorithms, hardware and computing methods to lower AI's power demands. Strategic siting of datacenters and other steps to increase green energy use are also key.

An illustration of a pyramid with AI at the top and various energy sources like turbines and solar panels below.
New research suggests methods that could curb the large amounts of energy powering artificial intelligence.
(Image credit: J Studios via Getty Images)

As I sip coffee in my Berlin apartment and fire a question at Google's AI chatbot Gemini, it's easy not to think about the energy it takes to generate a response. Once the signal reaches my router, it whizzes, I assume, through copper wires or fiber-optic cables to one of Google's data center hubs. Somewhere inside the data center's labyrinthine halls of stacked processors, my query gets converted into numbers and undergoes billions of computations to determine context and meaning. The answer, once assembled, races back, in the blink of an eye.

Data centers — the beating hearts of the internet, powering everything from email to web searches — have existed for decades, but with the growing popularity of AI to generate text, images and video, they're using more energy than ever. According to Google's own estimates, processing a median-length text prompt with its AI assistant Gemini consumes around 0.24 watt-hours.

Katarina Zimmer is a science and environment journalist based in Germany. She is a special contributor to Knowable Magazine, where she covers the energy transition and planetary health. Her other work is published in National Geographic, Scientific American, BBC Future and elsewhere. Check out more of her work at www.katarinazimmer.com.

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