SOTAVerified

Neural Architecture Search

Neural architecture search (NAS) is a technique for automating the design of artificial neural networks (ANN), a widely used model in the field of machine learning. NAS essentially takes the process of a human manually tweaking a neural network and learning what works well, and automates this task to discover more complex architectures.

Image Credit : NAS with Reinforcement Learning

Papers

Showing 601625 of 1915 papers

TitleStatusHype
HiveNAS: Neural Architecture Search using Artificial Bee Colony OptimizationCode0
How does topology of neural architectures impact gradient propagation and model performance?Code0
Hierarchical Representations for Efficient Architecture SearchCode0
A Semi-Decoupled Approach to Fast and Optimal Hardware-Software Co-Design of Neural AcceleratorsCode0
How to 0wn NAS in Your Spare TimeCode0
Improved Differentiable Architecture Search for Language Modeling and Named Entity RecognitionCode0
Hardware Aware Neural Network Architectures using FbNetCode0
Hardware/Software Co-Exploration of Neural ArchitecturesCode0
Efficient Multiplayer Battle Game Optimizer for Adversarial Robust Neural Architecture SearchCode0
Benchmarking Deep Spiking Neural Networks on Neuromorphic HardwareCode0
Guided Evolution for Neural Architecture SearchCode0
ABG-NAS: Adaptive Bayesian Genetic Neural Architecture Search for Graph Representation LearningCode0
BenchENAS: A Benchmarking Platform for Evolutionary Neural Architecture SearchCode0
Homogeneous Architecture Augmentation for Neural PredictorCode0
Evolutionary Multi-objective Architecture Search Framework: Application to COVID-19 3D CT ClassificationCode0
Autoequivariant Network Search via Group DecompositionCode0
BenchENAS: A Benchmarking Platform for Evolutionary Neural Architecture SearchCode0
Efficient Incorporation of Multiple Latency Targets in the Once-For-All NetworkCode0
Behaviour DistillationCode0
GreenMachine: Automatic Design of Zero-Cost Proxies for Energy-Efficient NASCode0
Efficient hyperparameter optimization by way of PAC-Bayes bound minimizationCode0
GraphNAS: Graph Neural Architecture Search with Reinforcement LearningCode0
A Genetic Programming Approach to Designing Convolutional Neural Network ArchitecturesCode0
Efficient Training Under Limited ResourcesCode0
Efficient Global Neural Architecture SearchCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SPOS (ProxylessNAS (GPU) latency)Accuracy75.3Unverified
2SPOS (FBNet-C latency)Accuracy75.1Unverified
3SPOS (block search + channel search)Accuracy74.7Unverified
4MUXNet-xsTop-1 Error Rate33.3Unverified
5FBNetV2-F1Top-1 Error Rate31.7Unverified
6LayerNAS-60MTop-1 Error Rate31Unverified
7NASGEPTop-1 Error Rate29.51Unverified
8MUXNet-sTop-1 Error Rate28.4Unverified
9NN-MASS-ATop-1 Error Rate27.1Unverified
10FBNetV2-F3Top-1 Error Rate26.8Unverified
#ModelMetricClaimedVerifiedStatus
1CR-LSOAccuracy (Test)46.98Unverified
2Shapley-NASAccuracy (Test)46.85Unverified
3β-RDARTS-L2Accuracy (Test)46.71Unverified
4β-SDARTS-RSAccuracy (Test)46.71Unverified
5ASE-NAS+Accuracy (Val)46.66Unverified
6NARAccuracy (Test)46.66Unverified
7BaLeNAS-TFAccuracy (Test)46.54Unverified
8AG-NetAccuracy (Test)46.42Unverified
9Local searchAccuracy (Test)46.38Unverified
10NASBOTAccuracy (Test)46.37Unverified
#ModelMetricClaimedVerifiedStatus
1Balanced MixtureAccuracy (% )91.55Unverified
2GDASTop-1 Error Rate3.4Unverified
3Bonsai-NetTop-1 Error Rate3.35Unverified
4Net2 (2)Top-1 Error Rate3.3Unverified
5μDARTSTop-1 Error Rate3.28Unverified
6NN-MASS- CIFAR-CTop-1 Error Rate3.18Unverified
7NN-MASS- CIFAR-ATop-1 Error Rate3Unverified
8DARTS (first order)Top-1 Error Rate3Unverified
9NASGEPTop-1 Error Rate2.82Unverified
10AlphaX-1 (cutout NASNet)Top-1 Error Rate2.82Unverified