234 lines
10 KiB
Markdown
234 lines
10 KiB
Markdown
<p align="center">
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<a href="https://williamfalcon.github.io/pytorch-lightning/">
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<img alt="" src="https://github.com/williamFalcon/pytorch-lightning/blob/master/docs/source/_static/lightning_logo.png" width="50">
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</a>
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</p>
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<h3 align="center">
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Pytorch Lightning
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</h3>
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<p align="center">
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The Keras for ML researchers using PyTorch. More control. Less boilerplate.
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</p>
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<p align="center">
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<a href="https://badge.fury.io/py/pytorch-lightning"><img src="https://badge.fury.io/py/pytorch-lightning.svg" alt="PyPI version" height="18"></a>
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<!-- <a href="https://travis-ci.org/williamFalcon/test-tube"><img src="https://travis-ci.org/williamFalcon/pytorch-lightning.svg?branch=master"></a> -->
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<a href="https://github.com/williamFalcon/pytorch-lightning/blob/master/COPYING"><img src="https://img.shields.io/badge/License-MIT-yellow.svg"></a>
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</p>
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```bash
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pip install pytorch-lightning
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```
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## Docs
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**[View the docs here](https://williamfalcon.github.io/pytorch-lightning/)**
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## What is it?
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Keras and fast.ai are too abstract for researchers. Lightning abstracts the full training loop but gives you control in the critical points.
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## Why do I want to use lightning?
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Because you don't want to define a training loop, validation loop, gradient clipping, checkpointing, loading,
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gpu training, etc... every time you start a project. Let lightning handle all of that for you! Just define your
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data and what happens in the training, testing and validation loop and lightning will do the rest.
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To use lightning do 2 things:
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1. [Define a Trainer](https://github.com/williamFalcon/pytorch-lightning/blob/master/examples/new_project_templates/trainer_cpu_template.py).
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2. [Define a LightningModel](https://github.com/williamFalcon/pytorch-lightning/blob/master/examples/new_project_templates/lightning_module_template.py).
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## What does lightning control for me?
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Everything!
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Except for these 6 core functions which you define:
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```{.python}
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# what to do in the training loop
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def training_step(self, data_batch, batch_nb):
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# what to do in the validation loop
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def validation_step(self, data_batch, batch_nb):
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# how to aggregate validation_step outputs
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def validation_end(self, outputs):
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# and your dataloaders
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def tng_dataloader():
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def val_dataloader():
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def test_dataloader():
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```
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**Could be as complex as seq-2-seq + attention**
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```python
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# define what happens for training here
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def training_step(self, data_batch, batch_nb):
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x, y = data_batch
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# define your own forward and loss calculation
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hidden_states = self.encoder(x)
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# even as complex as a seq-2seq + attn model
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# (this is just a toy, non-working example to illustrate)
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start_token = '<SOS>'
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last_hidden = torch.zeros(...)
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loss = 0
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for step in range(max_seq_len):
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attn_context = self.attention_nn(hidden_states, start_token)
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pred = self.decoder(start_token, attn_context, last_hidden)
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last_hidden = pred
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pred = self.predict_nn(pred)
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loss += self.loss(last_hidden, y[step])
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#toy example as well
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loss = loss / max_seq_len
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return {'loss': loss}
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```
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**Or as basic as CNN image classification**
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```python
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# define what happens for validation here
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def validation_step(self, data_batch, batch_nb):
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x, y = data_batch
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# or as basic as a CNN classification
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out = self.forward(x)
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loss = my_loss(out, y)
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return {'loss': loss}
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```
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**And you also decide how to collate the output of all validation steps**
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```python
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def validation_end(self, outputs):
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"""
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Called at the end of validation to aggregate outputs
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:param outputs: list of individual outputs of each validation step
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:return:
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"""
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val_loss_mean = 0
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val_acc_mean = 0
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for output in outputs:
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val_loss_mean += output['val_loss']
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val_acc_mean += output['val_acc']
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val_loss_mean /= len(outputs)
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val_acc_mean /= len(outputs)
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tqdm_dic = {'val_loss': val_loss_mean.item(), 'val_acc': val_acc_mean.item()}
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return tqdm_dic
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```
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## TensorboardX
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Lightning is fully integrated with tensorboardX.
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<p align="center">
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<a href="https://williamfalcon.github.io/pytorch-lightning/">
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<img alt="" src="https://github.com/williamFalcon/pytorch-lightning/blob/master/docs/source/_static/tf_loss.png" width="900px">
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</a>
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</p>
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Lightning also adds a text column with all the hyperparameters for this experiment.
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<p align="center">
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<a href="https://williamfalcon.github.io/pytorch-lightning/">
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<img alt="" src="https://github.com/williamFalcon/pytorch-lightning/blob/master/docs/source/_static/tf_tags.png" width="900px">
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</a>
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</p>
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Simply note the path you set for the Experiment
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``` {.python}
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from test_tube import Experiment
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from pytorch-lightning import Trainer
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exp = Experiment(save_dir='/some/path')
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trainer = Trainer(experiment=exp)
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...
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```
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And run tensorboard from that dir
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```bash
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tensorboard --logdir /some/path
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```
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## Lightning automatically automates all of the following ([each is also configurable](https://williamfalcon.github.io/pytorch-lightning/Trainer/)):
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###### Checkpointing
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- [Model saving](https://williamfalcon.github.io/pytorch-lightning/Trainer/Checkpointing/#model-saving)
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- [Model loading](https://williamfalcon.github.io/pytorch-lightning/LightningModule/methods/#load-from-metrics)
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###### Computing cluster (SLURM)
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- [Running grid search on a cluster](https://williamfalcon.github.io/pytorch-lightning/Trainer/SLURM%20Managed%20Cluster#running-grid-search-on-a-cluster)
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- [Walltime auto-resubmit](https://williamfalcon.github.io/pytorch-lightning/Trainer/SLURM%20Managed%20Cluster#walltime-auto-resubmit)
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###### Debugging
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- [Fast dev run](https://williamfalcon.github.io/pytorch-lightning/Trainer/debugging/#fast-dev-run)
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- [Inspect gradient norms](https://williamfalcon.github.io/pytorch-lightning/Trainer/debugging/#inspect-gradient-norms)
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- [Log GPU usage](https://williamfalcon.github.io/pytorch-lightning/Trainer/debugging/#Log-gpu-usage)
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- [Make model overfit on subset of data](https://williamfalcon.github.io/pytorch-lightning/Trainer/debugging/#make-model-overfit-on-subset-of-data)
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- [Print the parameter count by layer](https://williamfalcon.github.io/pytorch-lightning/Trainer/debugging/#print-the-parameter-count-by-layer)
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- [Pring which gradients are nan](https://williamfalcon.github.io/pytorch-lightning/Trainer/debugging/#print-which-gradients-are-nan)
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###### Distributed training
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- [16-bit mixed precision](https://williamfalcon.github.io/pytorch-lightning/Trainer/Distributed%20training/#16-bit-mixed-precision)
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- [Multi-GPU](https://williamfalcon.github.io/pytorch-lightning/Trainer/Distributed%20training/#Multi-GPU)
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- [Multi-node](https://williamfalcon.github.io/pytorch-lightning/Trainer/Distributed%20training/#Multi-node)
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- [Single GPU](https://williamfalcon.github.io/pytorch-lightning/Trainer/Distributed%20training/#single-gpu)
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- [Self-balancing architecture](https://williamfalcon.github.io/pytorch-lightning/Trainer/Distributed%20training/#self-balancing-architecture)
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###### Experiment Logging
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- [Display metrics in progress bar](https://williamfalcon.github.io/pytorch-lightning/Trainer/Logging/#display-metrics-in-progress-bar)
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- Log arbitrary metrics
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- [Log metric row every k batches](https://williamfalcon.github.io/pytorch-lightning/Trainer/Logging/#log-metric-row-every-k-batches)
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- [Process position](https://williamfalcon.github.io/pytorch-lightning/Trainer/Logging/#process-position)
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- [Save a snapshot of all hyperparameters](https://williamfalcon.github.io/pytorch-lightning/Trainer/Logging/#save-a-snapshot-of-all-hyperparameters)
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- [Snapshot code for a training run](https://williamfalcon.github.io/pytorch-lightning/Trainer/Logging/#snapshot-code-for-a-training-run)
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- [Write logs file to csv every k batches](https://williamfalcon.github.io/pytorch-lightning/Trainer/Logging/#write-logs-file-to-csv-every-k-batches)
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###### Training loop
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- [Accumulate gradients](https://williamfalcon.github.io/pytorch-lightning/Trainer/Training%20Loop/#accumulated-gradients)
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- [Anneal Learning rate](https://williamfalcon.github.io/pytorch-lightning/Trainer/Training%20Loop/#anneal-learning-rate)
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- [Force training for min or max epochs](https://williamfalcon.github.io/pytorch-lightning/Trainer/Training%20Loop/#force-training-for-min-or-max-epochs)
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- [Force disable early stop](https://williamfalcon.github.io/pytorch-lightning/Trainer/Training%20Loop/#force-disable-early-stop)
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- [Gradient Clipping](https://williamfalcon.github.io/pytorch-lightning/Trainer/Training%20Loop/#gradient-clipping)
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- [Use multiple optimizers (like GANs)](https://williamfalcon.github.io/pytorch-lightning/Pytorch-Lightning/LightningModule/#configure_optimizers)
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- [Set how much of the training set to check (1-100%)](https://williamfalcon.github.io/pytorch-lightning/Trainer/Training%20Loop/#set-how-much-of-the-training-set-to-check)
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###### Validation loop
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- [Check validation every n epochs](https://williamfalcon.github.io/pytorch-lightning/Trainer/Validation%20loop/#check-validation-every-n-epochs)
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- [Set how much of the validation set to check](https://williamfalcon.github.io/pytorch-lightning/Trainer/Validation%20loop/#set-how-much-of-the-validation-set-to-check)
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- [Set how much of the test set to check](https://williamfalcon.github.io/pytorch-lightning/Trainer/Validation%20loop/#set-how-much-of-the-test-set-to-check)
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- [Set validation check frequency within 1 training epoch](https://williamfalcon.github.io/pytorch-lightning/Trainer/Validation%20loop/#set-validation-check-frequency-within-1-training-epoch)
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- [Set the number of validation sanity steps](https://williamfalcon.github.io/pytorch-lightning/Trainer/Validation%20loop/#set-the-number-of-validation-sanity-steps)
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## Demo
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```bash
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# install lightning
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pip install pytorch-lightning
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# clone lightning for the demo
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git clone https://github.com/williamFalcon/pytorch-lightning.git
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cd examples/new_project_templates/
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# run demo (on cpu)
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python trainer_gpu_cluster_template.py
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```
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Without changing the model AT ALL, you can run the model on a single gpu, over multiple gpus, or over multiple nodes.
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```bash
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# run a grid search on two gpus
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python fully_featured_trainer.py --gpus "0;1"
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# run single model on multiple gpus
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python fully_featured_trainer.py --gpus "0;1" --interactive
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```
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