We propose a novel method for training a neural network for image classification to reduce input data dynamically, in order to reduce the costs of training a neural network model. As Deep Learning tasks become more popular, their computational complexity increases, leading to more intricate algorithms and models which have longer runtimes and require more input data. The result is a greater cost on time, hardware, and environmental resources. By using data reduction techniques, we reduce the amount of work performed, and therefore the environmental impact of AI techniques, and with dynamic data reduction we show that accuracy may be maintained while reducing runtime by up to 50%, and reducing carbon emission proportionally.
翻译:我们提出一种新的方法,用于培训神经网络图象分类,以动态地减少输入数据,从而降低培训神经网络模型的成本。 随着深学习任务越来越受欢迎,其计算复杂性会增加,从而导致更复杂的算法和模型,这些算法和模型的运行时间较长,需要投入数据更多。结果是在时间、硬件和环境资源方面成本更高。通过使用数据减少技术,我们减少了完成的工作量,从而降低了AI技术对环境的影响,随着动态的数据减少,我们表明在将运行时间减少50%的同时,可以保持准确性,并按比例减少碳排放。