SOTAVerified

Quantization

Quantization is a promising technique to reduce the computation cost of neural network training, which can replace high-cost floating-point numbers (e.g., float32) with low-cost fixed-point numbers (e.g., int8/int16).

Source: Adaptive Precision Training: Quantify Back Propagation in Neural Networks with Fixed-point Numbers

Papers

Showing 45764600 of 4925 papers

TitleStatusHype
Quantization of Fully Convolutional Networks for Accurate Biomedical Image Segmentation0
High-Accuracy Low-Precision TrainingCode0
Deep Neural Network Compression with Single and Multiple Level QuantizationCode0
ExpandNet: A Deep Convolutional Neural Network for High Dynamic Range Expansion from Low Dynamic Range ContentCode0
XNORBIN: A 95 TOp/s/W Hardware Accelerator for Binary Convolutional Neural Networks0
Learning-Based Dequantization For Image Restoration Against Extremely Poor Illumination0
Hyperdrive: A Multi-Chip Systolically Scalable Binary-Weight CNN Inference Engine0
Scalar Quantization as Sparse Least Square Optimization0
L1-Norm Batch Normalization for Efficient Training of Deep Neural Networks0
Autoencoder based image compression: can the learning be quantization independent?0
Loss-aware Weight Quantization of Deep NetworksCode0
3LC: Lightweight and Effective Traffic Compression for Distributed Machine Learning0
Low complexity convolutional neural network for vessel segmentation in portable retinal diagnostic devices0
Binary Constrained Deep Hashing Network for Image Retrieval without Manual Annotation0
Simultaneous Compression and Quantization: A Joint Approach for Efficient Unsupervised Hashing0
RNN-SM: Fast Steganalysis of VoIP Streams Using Recurrent Neural NetworkCode0
Model compression via distillation and quantizationCode0
Cell growth rate dictates the onset of glass to fluid-like transition and long time super-diffusion in an evolving cell colony0
Compressive Sensing Using Iterative Hard Thresholding with Low Precision Data Representation: Theory and Applications0
Persistence Codebooks for Topological Data Analysis0
On the Needs for Rotations in Hypercubic Quantization Hashing0
On the Universal Approximability and Complexity Bounds of Quantized ReLU Neural Networks0
Topologically Controlled Lossy Compression0
Universal Deep Neural Network Compression0
Effective Quantization Approaches for Recurrent Neural Networks0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1FQ-ViT (ViT-L)Top-1 Accuracy (%)85.03Unverified
2FQ-ViT (ViT-B)Top-1 Accuracy (%)83.31Unverified
3FQ-ViT (Swin-B)Top-1 Accuracy (%)82.97Unverified
4FQ-ViT (Swin-S)Top-1 Accuracy (%)82.71Unverified
5FQ-ViT (DeiT-B)Top-1 Accuracy (%)81.2Unverified
6FQ-ViT (Swin-T)Top-1 Accuracy (%)80.51Unverified
7FQ-ViT (DeiT-S)Top-1 Accuracy (%)79.17Unverified
8Xception W8A8Top-1 Accuracy (%)78.97Unverified
9ADLIK-MO-ResNet50-W4A4Top-1 Accuracy (%)77.88Unverified
10ADLIK-MO-ResNet50-W3A4Top-1 Accuracy (%)77.34Unverified
#ModelMetricClaimedVerifiedStatus
13DCNN_VIVA_3MAP160,327.04Unverified
2DTQMAP0.79Unverified
#ModelMetricClaimedVerifiedStatus
1OutEffHop-Bert_basePerplexity6.3Unverified
2OutEffHop-Bert_basePerplexity6.21Unverified
#ModelMetricClaimedVerifiedStatus
1Accuracy98.13Unverified
#ModelMetricClaimedVerifiedStatus
1Accuracy92.92Unverified
#ModelMetricClaimedVerifiedStatus
1SSD ResNet50 V1 FPN 640x640MAP34.3Unverified
#ModelMetricClaimedVerifiedStatus
1TAR @ FAR=1e-495.13Unverified
#ModelMetricClaimedVerifiedStatus
1TAR @ FAR=1e-496.38Unverified
#ModelMetricClaimedVerifiedStatus
13DCNN_VIVA_5All84,809,664Unverified
#ModelMetricClaimedVerifiedStatus
1Accuracy99.8Unverified