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 32013225 of 4891 papers

TitleStatusHype
VNI-Net: Vector Neurons-based Rotation-Invariant Descriptor for LiDAR Place Recognition0
Volumetric 3D Tracking by Detection0
VORTEX: A Spatial Computing Framework for Optimized Drone Telemetry Extraction from First-Person View Flight Data0
Wait-Less Offline Tuning and Re-solving for Online Decision Making0
WaKA: Data Attribution using K-Nearest Neighbors and Membership Privacy Principles0
Walking with Perception: Efficient Random Walk Sampling via Common Neighbor Awareness0
Warping Resilient Scalable Anomaly Detection in Time Series0
Wasserstein Adaptive Value Estimation for Actor-Critic Reinforcement Learning0
Wasserstein Distributionally Robust Control and State Estimation for Partially Observable Linear Systems0
Wave (from) Polarized Light Learning (WPLL) method: high resolution spatio-temporal measurements of water surface waves in laboratory setups0
WCCNet: Wavelet-integrated CNN with Crossmodal Rearranging Fusion for Fast Multispectral Pedestrian Detection0
Weakly-supervised causal discovery based on fuzzy knowledge and complex data complementarity0
What Makes Quantization for Large Language Models Hard? An Empirical Study from the Lens of Perturbation0
What Truly Matters in Trajectory Prediction for Autonomous Driving?0
When and why are log-linear models self-normalizing?0
When approximate design for fast homomorphic computation provides differential privacy guarantees0
When Cloud Removal Meets Diffusion Model in Remote Sensing0
When Molecular GAN Meets Byte-Pair Encoding0
Where Should I Spend My FLOPS? Efficiency Evaluations of Visual Pre-training Methods0
Which price to pay? Auto-tuning building MPC controller for optimal economic cost0
whittlehurst: A Python package implementing Whittle's likelihood estimation of the Hurst exponent0
Whole-brain substitute CT generation using Markov random field mixture models0
Why does Negative Sampling not Work Well? Analysis of Convexity in Negative Sampling0
Why Size Matters: Feature Coding as Nystrom Sampling0
Will Bilevel Optimizers Benefit from Loops0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ViTaLHamming Loss0.05Unverified