SOTAVerified

Computational Efficiency

Methods and optimizations to reduce the computational resources (e.g., time, memory, or power) needed for training and inference in models. This involves techniques that streamline processing, optimize algorithms, or leverage hardware to enhance performance without compromising accuracy.

Papers

Showing 40764100 of 4891 papers

TitleStatusHype
Meta-Learning Divergences of Variational Inference0
Local Grid Rendering Networks for 3D Object Detection in Point Clouds0
Progressive Tandem Learning for Pattern Recognition with Deep Spiking Neural Networks0
High Dimensional Bayesian Optimization Assisted by Principal Component AnalysisCode0
Go Wide, Then Narrow: Efficient Training of Deep Thin Networks0
End-to-End JPEG Decoding and Artifacts Suppression Using Heterogeneous Residual Convolutional Neural Network0
Acoustic Source Localization with the Angular Spectrum Approach in Continuously Stratified Media0
Statistical Mechanical Analysis of Neural Network PruningCode0
Similarity Search for Efficient Active Learning and Search of Rare Concepts0
On the Iteration Complexity of Hypergradient ComputationCode1
Localization Uncertainty Estimation for Anchor-Free Object Detection0
Differential Privacy of Hierarchical Census Data: An Optimization Approach0
Variational Autoencoding of PDE Inverse Problems0
DRACO: Co-Optimizing Hardware Utilization, and Performance of DNNs on Systolic Accelerator0
Coordination of OLTC and Smart Inverters for Optimal Voltage Regulation of Unbalanced Distribution Networks0
Recurrent Relational Memory Network for Unsupervised Image Captioning0
Accelerated Deep Reinforcement Learning Based Load Shedding for Emergency Voltage Control0
Gradient-EM Bayesian Meta-learning0
A deep convolutional neural network model for rapid prediction of fluvial flood inundation0
Neural Architecture Optimization with Graph VAE0
The Nyström method for convex loss functions0
FREEtree: A Tree-based Approach for High Dimensional Longitudinal Data With Correlated FeaturesCode0
An Extended Integral Unit Commitment Formulation and an Iterative Algorithm for Convex Hull Pricing0
Wasserstein Embedding for Graph LearningCode1
On sparse connectivity, adversarial robustness, and a novel model of the artificial neuron0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ViTaLHamming Loss0.05Unverified