UDC: Unified DNAS for Compressible TinyML Models
Emerging Internet-of-things (IoT) applications are driving deployment of neural networks (NNs) on heavily constrained low-cost hardware (HW) platforms, where accuracy is typically limited by memory capacity. To address this TinyML challenge, new HW platforms like neural processing units (NPUs) have support for model compression, which exploits aggressive network quantization and unstructured pruning optimizations. The combination of NPUs with HW compression and compressible models allows more expressive models in the same memory footprint. However, adding optimizations for compressibility on top of conventional NN architecture choices expands the design space across which we must make balanced trade-offs. This work bridges the gap between NPU HW capability and NN model design, by proposing a neural arcthiecture search (NAS) algorithm to efficiently search a large design space, including: network depth, operator type, layer width, bitwidth, sparsity, and more. Building on differentiable NAS (DNAS) with several key improvements, we demonstrate Unified DNAS for Compressible models (UDC) on CIFAR100, ImageNet, and DIV2K super resolution tasks. On ImageNet, we find Pareto dominant compressible models, which are 1.9x smaller or 5.76
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