Study: AI Data Centers Raise Local Temperatures by 2-9 Degrees Celsius - Tempo.co English
<a href="https://news.google.com/rss/articles/CBMipAFBVV95cUxPRjFFOWxBN214N2V3SFF0VW1WVWtTQWRJZEtEd2QtMjlTNTB6bGY4ck5CamRqMTZzOWFlYThfeGlTWDdnN1NpekJRdFZ4ZWtaZUg4OGF4M0FnR2o5UWJRZ2ZzQ1dMbFFSNFpucFZidFVQNkxsMTNlaDFaQWxHekdUcDhjeVhHcFZOQmN4XzduQzJZbVR5N0lzcXBjU1lqbkJsb1NabA?oc=5" target="_blank">Study: AI Data Centers Raise Local Temperatures by 2-9 Degrees Celsius</a> <font color="#6f6f6f">Tempo.co English</font>
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