2023
DOI: 10.21203/rs.3.rs-2506533/v1
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A Practical Approach for Employing Tensor Train Decomposition in Edge Devices

Abstract: Deep Neural Networks (DNN) have made significant advances in various fields including speech recognition and image processing. Typically, modern DNNs are both compute and memory intensive, therefore their deployment in low-end devices is a challenging task. A well-known technique to address this problem is Low-Rank Factorization (LRF), where a weight tensor is approximated by one or more lower-rank tensors, reducing both the memory size and the number of executed tensor operations. However, the employment of L… Show more

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