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---
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title: PyTorch MNIST
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---
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The [pytorch_mnist.py](https://github.com/allegroai/clearml/blob/master/examples/frameworks/pytorch/pytorch_mnist.py) example
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demonstrates the integration of ClearML into code that uses PyTorch.
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The example script does the following:
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* Trains a simple deep neural network on the PyTorch built-in [MNIST](https://pytorch.org/vision/stable/datasets.html#mnist)
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dataset.
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* Creates an experiment named `pytorch mnist train` in the `examples` project.
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* ClearML automatically logs `argparse` command line options, and models (and their snapshots) created by PyTorch.
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* Additional metrics are logged by calling [`Logger.report_scalar()`](../../../references/sdk/logger.md#report_scalar).
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## Scalars
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In the example script's `train` function, the following code explicitly reports scalars to ClearML:
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```python
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Logger.current_logger().report_scalar(
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"train", "loss", iteration=(epoch * len(train_loader) + batch_idx), value=loss.item()
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)
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```
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In the `test` method, the code explicitly reports `loss` and `accuracy` scalars.
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```python
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Logger.current_logger().report_scalar(
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"test", "loss", iteration=epoch, value=test_loss
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)
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Logger.current_logger().report_scalar(
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"test", "accuracy", iteration=epoch, value=(correct / len(test_loader.dataset))
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)
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```
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These scalars can be visualized in plots, which appear in the ClearML [web UI](../../../webapp/webapp_overview.md),
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in the experiment's page **>** **SCALARS**.
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![image](../../../img/examples_pytorch_mnist_07.png)
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## Hyperparameters
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ClearML automatically logs command line options defined with `argparse`. They appear in **CONFIGURATION** **>** **HYPERPARAMETERS** **>** **Args**.
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![image](../../../img/examples_pytorch_mnist_01.png)
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## Console
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Text printed to the console for training progress, as well as all other console output, appear in **CONSOLE**.
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![image](../../../img/examples_pytorch_mnist_06.png)
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## Artifacts
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Models created by the experiment appear in the experiment's **ARTIFACTS** tab. ClearML automatically logs and tracks models
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and any snapshots created using PyTorch.
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![image](../../../img/examples_pytorch_mnist_02.png)
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Clicking on the model name takes you to the [model's page](../../../webapp/webapp_model_viewing.md), where you can view
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the model's details and access the model.
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![image](../../../img/examples_pytorch_mnist_03.png)
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