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 16511675 of 4925 papers

TitleStatusHype
Experimental results on palmvein-based personal recognition by multi-snapshot fusion of textural features0
Co-Designing Binarized Transformer and Hardware Accelerator for Efficient End-to-End Edge Deployment0
Explicit Loss-Error-Aware Quantization for Low-Bit Deep Neural Networks0
Exploiting Change Blindness for Video Coding: Perspectives from a Less Promising User Study0
Dynamic Signal Measurements Based on Quantized Data0
Exploiting Latent Properties to Optimize Neural Codecs0
Dynamic quantized consensus under DoS attacks: Towards a tight zooming-out factor0
Exploiting Modern Hardware for High-Dimensional Nearest Neighbor Search0
Exploiting Non-uniform Quantization for Enhanced ILC in Wideband Digital Pre-distortion0
Exploiting Offset-guided Network for Pose Estimation and Tracking0
Cognitive Coding of Speech0
A Probabilistic Reformulation Technique for Discrete RIS Optimization in Wireless Systems0
Dynamic Quantized Consensus of General Linear Multi-agent Systems under Denial-of-Service Attacks0
Exploration of Activation Fault Reliability in Quantized Systolic Array-Based DNN Accelerators0
Explore Cross-Codec Quality-Rate Convex Hulls Relation for Adaptive Streaming0
Explore the Potential of CNN Low Bit Training0
Exploring Automatic Gym Workouts Recognition Locally On Wearable Resource-Constrained Devices0
Collaborative Edge AI Inference over Cloud-RAN0
Exploring Extreme Quantization in Spiking Language Models0
Exploring FPGA designs for MX and beyond0
Exploring Model Invariance with Discrete Search for Ultra-Low-Bit Quantization0
Exploring Neural Networks Quantization via Layer-Wise Quantization Analysis0
Blind-Adaptive Quantizers0
Collaborative Quantization Embeddings for Intra-Subject Prostate MR Image Registration0
An Extra RMSNorm is All You Need for Fine Tuning to 1.58 Bits0
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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