Skip to yearly menu bar Skip to main content


Poster

Runtime Neural Pruning

Ji Lin · Yongming Rao · Jiwen Lu · Jie Zhou

Pacific Ballroom #102

Keywords: [ Deep Learning ] [ Computer Vision ] [ Efficient Inference Methods ]


Abstract:

In this paper, we propose a Runtime Neural Pruning (RNP) framework which prunes the deep neural network dynamically at the runtime. Unlike existing neural pruning methods which produce a fixed pruned model for deployment, our method preserves the full ability of the original network and conducts pruning according to the input image and current feature maps adaptively. The pruning is performed in a bottom-up, layer-by-layer manner, which we model as a Markov decision process and use reinforcement learning for training. The agent judges the importance of each convolutional kernel and conducts channel-wise pruning conditioned on different samples, where the network is pruned more when the image is easier for the task. Since the ability of network is fully preserved, the balance point is easily adjustable according to the available resources. Our method can be applied to off-the-shelf network structures and reach a better tradeoff between speed and accuracy, especially with a large pruning rate.

Live content is unavailable. Log in and register to view live content