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 461470 of 1356 papers

TitleStatusHype
Improving Knowledge Distillation for BERT Models: Loss Functions, Mapping Methods, and Weight Tuning0
OmniQuant: Omnidirectionally Calibrated Quantization for Large Language ModelsCode2
DLIP: Distilling Language-Image Pre-training0
QD-BEV : Quantization-aware View-guided Distillation for Multi-view 3D Object Detection0
Learning Disentangled Representation with Mutual Information Maximization for Real-Time UAV Tracking0
An Empirical Study of CLIP for Text-based Person SearchCode1
SHARK: A Lightweight Model Compression Approach for Large-scale Recommender Systems0
Diffusion Models for Image Restoration and Enhancement -- A Comprehensive SurveyCode2
Spike-and-slab shrinkage priors for structurally sparse Bayesian neural networks0
Benchmarking Adversarial Robustness of Compressed Deep Learning Models0
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Benchmark Results

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