Deep Compression: Compressing Deep Neural Networks with Pruning, Trained Quantization and Huffman Coding
Stanford University · Tsinghua University · +1 more institution
Abstract
Neural networks are both computationally intensive and memory intensive, making them difficult to deploy on embedded systems with limited hardware resources. To address this limitation, we introduce "deep compression", a three stage pipeline: pruning, trained quantization and Huffman coding, that work together to reduce the storage requirement of neural networks by 35x to 49x without affecting their accuracy. Our method first prunes the network by learning only the important connections. Next, we quantize the weights to enforce weight sharing, finally, we apply Huffman coding. After the first two steps we retrain the network to fine tune the remaining connections and the quantized centroids. Pruning, reduces…
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Authors
3Topics & keywords
- Huffman coding
- Computer science
- Quantization (signal processing)
- Artificial neural network
- Speedup
- Parallel computing
- Coding (social sciences)
- Cache
- Affordable and clean energy