Researchers have introduced ZENITH, a novel optimizer designed to automate learning rate scheduling for deep computer vision models. Unlike existing adaptive optimizers, ZENITH operates with zero computational and memory overhead, and is compatible with regularization techniques. Experiments across various image classification, object detection, and segmentation tasks show that ZENITH achieves higher accuracy in less time compared to baseline methods. Another paper revisits classical assumptions for analyzing stochastic gradient algorithms, focusing on variance assumptions and their relevance in deterministic and stochastic optimization problems. AI
IMPACT Introduces a novel optimizer that could improve training efficiency and accuracy for computer vision models.
RANK_REASON Two arXiv papers discussing optimization algorithms for machine learning.
- Ahmet Alacaoglu
- alphaXiv
- arXiv
- CatalyzeX
- DagsHub
- Dhrubo Saha
- Gotit.pub
- Hugging Face
- IArxiv
- MS Coco
- R-CNN
- ScienceCast
- ZENITH
- Zero-overhead Evolution using Norm-Informed Training History
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