wandb_run.dir is automatically logged to W&B.
See example run.
Parameters
| Parameter | Type | Description | 
|---|---|---|
| wandb_run | wandb.wandb_run. Run | wandb run used to log data. | 
| save_model | bool (default=True) | Whether to save a checkpoint of the best model and upload it to your Run on W&B. | 
| keys_ignored | str or list of str (default=None) | Key or list of keys that should not be logged to tensorboard. Note that in addition to the keys provided by the user, keys such as those starting with event_or ending on_bestare ignored by default. | 
Example Code
We’ve created a few examples for you to see how the integration works:- Colab: A simple demo to try the integration
- A step by step guide: to tracking your Skorch model performance
Method reference
| Method | Description | 
|---|---|
| initialize() | (Re-)Set the initial state of the callback. | 
| on_batch_begin(net[, X, y, training]) | Called at the beginning of each batch. | 
| on_batch_end(net[, X, y, training]) | Called at the end of each batch. | 
| on_epoch_begin(net[, dataset_train, …]) | Called at the beginning of each epoch. | 
| on_epoch_end(net, **kwargs) | Log values from the last history step and save best model | 
| on_grad_computed(net, named_parameters[, X, …]) | Called once per batch after gradients have been computed but before an update step was performed. | 
| on_train_begin(net, **kwargs) | Log model topology and add a hook for gradients | 
| on_train_end(net[, X, y]) | Called at the end of training. |