Generative artificial intelligence tools are now part of daily routines, from answering emails to writing wedding vows. But as these systems become more embedded in everyday life, research is revealing significant, hidden environmental consequences. Each time a user submits a prompt, the text is converted into numerical tokens and sent to vast data centers, often powered by conventional energy sources like coal or natural gas. The computation required for large language models to generate responses has been found to consume up to ten times more energy than a standard internet search, according to the Electric Power Research Institute.
Recent testing by German researchers examined 14 large language model systems, finding that complex, open-ended questions produced up to six times more carbon emissions than concise, multiple-choice queries. Additionally, more advanced models with sophisticated reasoning capabilities emitted up to 50 times more carbon dioxide per task than simpler alternatives. This dramatic disparity arises because larger, more capable models have substantially more parameters—the digital equivalent of brain neurons—demanding greater computational power.
Experts suggest individuals can mitigate environmental impact by being direct and concise in their artificial intelligence interactions. Asking for shorter, explanation-free answers reduces energy consumption, as do model choices tailored to the specific task. Specialized, smaller models are often more efficient for focused jobs. However, measuring exact emissions from artificial intelligence remains tough: emissions vary based on user location, energy grid, server specs, and most large vendors do not disclose energy usage details. As companies integrate generative artificial intelligence into mainstream products, users have less control over its application. Without increased transparency or regulation, says researcher Shaolei Ren, consumers and even scientists will struggle to quantify the full environmental costs, underlining the need for continued innovation and accountability as artificial intelligence expands.