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 29763000 of 4891 papers

TitleStatusHype
The Globally Optimal Reparameterization Algorithm: an Alternative to Fast Dynamic Time Warping for Action Recognition in Video Sequences0
The Good, The Efficient and the Inductive Biases: Exploring Efficiency in Deep Learning Through the Use of Inductive Biases0
The impact of imbalanced training data on machine learning for author name disambiguation0
The Inhibitor: ReLU and Addition-Based Attention for Efficient Transformers0
The jigsaw puzzle of sequence phenotype inference: Piecing together Shannon entropy, importance sampling, and Empirical Bayes0
The k-Support Norm and Convex Envelopes of Cardinality and Rank0
The Latent Road to Atoms: Backmapping Coarse-grained Protein Structures with Latent Diffusion0
The mass-conversion method: a hybrid technique for simulating well-mixed chemical reaction networks0
The Moral Case for Using Language Model Agents for Recommendation0
The Morphology-Control Trade-Off: Insights into Soft Robotic Efficiency0
The Need for Speed of AI Applications: Performance Comparison of Native vs. Browser-based Algorithm Implementations0
The Open Source Advantage in Large Language Models (LLMs)0
The Ordered Residual Kernel for Robust Motion Subspace Clustering0
Theoretical Guarantees for LT-TTD: A Unified Transformer-based Architecture for Two-Level Ranking Systems0
Theory of Mixture-of-Experts for Mobile Edge Computing0
The Paradox of Stochasticity: Limited Creativity and Computational Decoupling in Temperature-Varied LLM Outputs of Structured Fictional Data0
Encoder blind combinatorial compressed sensing0
The Power of Complementary Regularizers: Image Recovery via Transform Learning and Low-Rank Modeling0
The Power of Few: Accelerating and Enhancing Data Reweighting with Coreset Selection0
The Power Of Simplicity: Why Simple Linear Models Outperform Complex Machine Learning Techniques -- Case Of Breast Cancer Diagnosis0
The Quadrature Gaussian Sum Filter and Smoother for Wiener Systems0
The Recycling Gibbs Sampler for Efficient Learning0
The return of AdaBoost.MH: multi-class Hamming trees0
Thermal Modelling of Battery Cells for Optimal Tab and Surface Cooling Control0
The Role of Extended Horizon Methodology in Renewable-Dense Grids With Inter-Day Long-Duration Energy Storage0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ViTaLHamming Loss0.05Unverified