SELFIE

Data refinement method

A method to enhance robustness in deep learning by selectively refining noisy training data and combining it with clean samples.

GitHub

50 stars
7 watching
9 forks
Language: Python
last commit: almost 5 years ago

Related projects:

Repository Description Stars
hendrycks/robustness Evaluates and benchmarks the robustness of deep learning models to various corruptions and perturbations in computer vision tasks. 1,022
rentruewang/koila A lightweight wrapper around PyTorch to prevent CUDA out-of-memory errors and optimize model execution 1,821
nitishsrivastava/deepnet A collection of GPU-accelerated deep learning algorithms implemented in Python 895
davisyoshida/lorax A JAX transform that simplifies the training of large language models by reducing memory usage through low-rank adaptation. 132
rksltnl/deep-metric-learning-cvpr16 A software framework for building deep metric learning models using lifted structured feature embedding 342
ardavans/dsr An algorithm for deep reinforcement learning that combines model-free and model-based approaches to learn robust value functions. 98
qingyonghu/randla-net A deep learning framework for efficient semantic segmentation of large-scale 3D point clouds 1,312
deependersingla/deep_portfolio An algorithm that optimizes portfolio allocation using Reinforcement Learning and Supervised learning. 168
abbypa/nnproject_deepmask A deep learning implementation of an object segmentation algorithm. 187
xternalz/sdpoint A deep learning method for optimizing convolutional neural networks by reducing computational cost while improving regularization and inference efficiency. 18
rozumden/defmo A deep learning framework for deblurring and recovering the shape of fast-moving objects from blurred images 170
zwyking/fast-stab This project provides an implementation of video stabilization with iterative optimization using deep learning techniques. 33
wasidennis/deepharmonization Reimplements a deep learning model to harmonize images from different illumination conditions 150
nust-machine-intelligence-laboratory/jo-src An implementation of a contrastive learning approach to address noisy labels in machine learning models 5
autodistill/autodistill Automatically trains models from large foundation models to perform specific tasks with minimal human intervention. 1,983