Play deep learning with CIFAR datasets
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Updated
Aug 27, 2020 - Python
Play deep learning with CIFAR datasets
A learning rate range test implementation in PyTorch
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Cyclic learning rate TensorFlow implementation.
FIR & LMS filter implementation in C++ with Python & JAVA wrappers
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PyTorch implementation of some learning rate schedulers for deep learning researcher.
Videos of deep learning optimizers moving on 3D problem-landscapes
Automatic and Simultaneous Adjustment of Learning Rate and Momentum for Stochastic Gradient Descent
Stochastic Weight Averaging - TensorFlow implementation
How optimizer and learning rate choice affects training performance
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Implementation of learning rate finder in TensorFlow
sharpDARTS: Faster and More Accurate Differentiable Architecture Search
Residual Network Experiments with CIFAR Datasets.
Benchmarking various Computer Vision models on TinyImageNet Dataset
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