48 lines
1.3 KiB
Markdown
48 lines
1.3 KiB
Markdown
These flags are useful to help debug a model.
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---
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#### Fast dev run
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This flag is meant for debugging a full train/val/test loop. It'll activate callbacks, everything but only with 1 training and 1 validation batch.
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Use this to debug a full run of your program quickly
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``` {.python}
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# DEFAULT
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trainer = Trainer(fast_dev_run=False)
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```
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---
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#### Inspect gradient norms
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Looking at grad norms can help you figure out where training might be going wrong.
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``` {.python}
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# DEFAULT (-1 doesn't track norms)
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trainer = Trainer(track_grad_norm=-1)
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# track the LP norm (P=2 here)
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trainer = Trainer(track_grad_norm=2)
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```
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---
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#### Make model overfit on subset of data
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A useful debugging trick is to make your model overfit a tiny fraction of the data.
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``` {.python}
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# DEFAULT don't overfit (ie: normal training)
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trainer = Trainer(overfit_pct=0.0)
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# overfit on 1% of data
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trainer = Trainer(overfit_pct=0.01)
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```
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---
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#### Print the parameter count by layer
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By default lightning prints a list of parameters *and submodules* when it starts training.
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#### Print which gradients are nan
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This option prints a list of tensors with nan gradients.
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``` {.python}
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# DEFAULT
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trainer = Trainer(print_nan_grads=False)
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```
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---
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#### Log GPU usage
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Lightning automatically logs gpu usage to the test tube logs. It'll only do it at the metric logging interval, so it doesn't slow down training. |