Tune Deep Neural Networks
Programmatically and interactively tune training options, resume training from
a checkpoint, and investigate adversarial examples
To learn how to set options using the trainingOptions
function, see Set Up Parameters and Train Convolutional Neural Network. After you
identify some good starting options, you can automate sweeping of
hyperparameters or try Bayesian optimization using Experiment
Manager. Use Experiment Manager to test different training
configurations at the same time by running your experiment in parallel and
monitor your progress by using training plots.
Categories
- Manage Experiments
Train networks under multiple initial conditions, interactively tune training options, and evaluate your results
- Tuning
Programmatically tune training options, resume training from a checkpoint, and investigate adversarial examples