#deeplearning #co2 #cost Deep Learning has achieved impressive results in the last years, not least due to the massive increases in computational power and data that has gone into these models. Scaling up currently promises to be a reliable way to create more performant systems, but how far can we go? This article explores the limits of exponential scaling in AI, and what people are doing to get around this problem OUTLINE: 0:00 - Intro & Overview 1:00 - Deep Learning at its limits 3:10 - The cost of overparameterization 5:40 - Extrapolating power usage and CO2 emissions 10:45 - We cannot just continue scaling up 13:25 - Current solution attempts 15:25 - Aside: ImageNet V2 17:50 - Are symbolic methods the way out? Paper: Image by Ralf Vetterle from Pixabay: Links: TabNine Code Completion (Referral): YouTube: Twitter:
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