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Structured Activation Based Sparsity In An Artificial Neural Network

机译:人工神经网络中基于结构化激活的稀疏性

摘要

A novel and useful system and method of improved power performance and lowered memory requirements for an artificial neural network based on packing memory utilizing several structured sparsity mechanisms. The invention applies to neural network (NN) processing engines adapted to implement mechanisms to search for structured sparsity in weights and activations, resulting in a considerably reduced memory usage. The sparsity guided training mechanism synthesizes and generates structured sparsity weights A compiler mechanism within a software development kit (SDK), manipulates structured weight domain sparsity to generate a sparse set of static weights for the NN. The structured sparsity static weights are loaded into the NN after compilation and utilized by both the structured weight domain sparsity mechanism and the structured activation domain sparsity mechanism. The application of structured sparsity lowers the span of search options and creates a relatively loose coupling between the data and control planes.
机译:一种新颖有用的系统和方法,可提高功率性能并降低基于使用几种结构化稀疏机制的打包内存的人工神经网络的内存需求。本发明适用于神经网络(NN)处理引擎,其适于实现用于搜索权重和激活中的结构化稀疏性的机制,从而显着减少了存储器的使用。稀疏指导的训练机制综合并生成结构化稀疏权重软件开发工具包(SDK)中的编译器机制操纵结构化的权重域稀疏性以为NN生成稀疏的静态权重集。结构化稀疏静态权重在编译后被加载到NN中,并被结构化权重域稀疏机制和结构化激活域稀疏机制两者利用。结构化稀疏性的应用降低了搜索选项的范围,并在数据平面和控制平面之间创建了相对松散的耦合。

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