Deep learning's recent history has been one of achievement: from triumphing over humans in the game of Go to world-leading performance in image classification, voice recognition, translation, and other tasks. But this progress has come with a voracious appetite for computing power. This article catalogs the extent of this dependency, showing that progress across a wide variety of applications is strongly reliant on increases in computing power. Extrapolating forward this reliance reveals that progress along current lines is rapidly becoming economically, technically, and environmentally unsustainable. Thus, continued progress in these applications will require dramatically more computationally-efficient methods, which will either have to come from changes to deep learning or from moving to other machine learning methods.
翻译:深层学习的近代史是一个成就:从在Go游戏中战胜人类到世界领先的图像分类、语音识别、翻译和其他任务表现。但这一进步伴随着对计算能力的贪婪欲望。 文章将这种依赖程度分类,表明各种应用的进步在很大程度上取决于计算能力的增长。 外推这一依赖性表明,目前的进展在经济、技术和环境上正在迅速变得不可持续。 因此,这些应用的继续进步将需要极具计算效率的方法,这些方法必须从向深层学习转变,或从向其他机器学习方法转变。