SOTAVerified

Model Compression

Model Compression is an actively pursued area of research over the last few years with the goal of deploying state-of-the-art deep networks in low-power and resource limited devices without significant drop in accuracy. Parameter pruning, low-rank factorization and weight quantization are some of the proposed methods to compress the size of deep networks.

Source: KD-MRI: A knowledge distillation framework for image reconstruction and image restoration in MRI workflow

Papers

Showing 581590 of 1356 papers

TitleStatusHype
Efficient Speech Representation Learning with Low-Bit Quantization0
Error-aware Quantization through Noise Tempering0
Leveraging Different Learning Styles for Improved Knowledge Distillation in Biomedical Imaging0
FedUKD: Federated UNet Model with Knowledge Distillation for Land Use Classification from Satellite and Street ViewsCode1
CSTAR: Towards Compact and STructured Deep Neural Networks with Adversarial Robustness0
GlueFL: Reconciling Client Sampling and Model Masking for Bandwidth Efficient Federated Learning0
Compressing Cross-Lingual Multi-Task Models at Qualtrics0
Compressing Volumetric Radiance Fields to 1 MBCode2
Discovering Dynamic Patterns from Spatiotemporal Data with Time-Varying Low-Rank AutoregressionCode1
Unbiased Knowledge Distillation for RecommendationCode1
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1MobileBERT + 2bit-1dim model compression using DKMAccuracy82.13Unverified
2MobileBERT + 1bit-1dim model compression using DKMAccuracy63.17Unverified