Small edits (#645)

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@ -26,7 +26,7 @@ Train a model. Work from your local `clearml-serving` repository's root.
`python3 examples/sklearn/train_model.py`. `python3 examples/sklearn/train_model.py`.
During execution, ClearML automatically registers the sklearn model and uploads it into the model repository. During execution, ClearML automatically registers the sklearn model and uploads it into the model repository.
For Manual model registration see [here](#registering-and-deploying-new-models-manually) For information about explicit model registration, see [Registering and Deploying New Models Manually](#registering-and-deploying-new-models-manually).
### Step 2: Register Model ### Step 2: Register Model

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@ -181,7 +181,7 @@ or check these pages out:
- Structure your work and put it into [Pipelines](../../pipelines/pipelines.md) - Structure your work and put it into [Pipelines](../../pipelines/pipelines.md)
- Improve your experiments with [Hyperparameter Optimization](../../fundamentals/hpo.md) - Improve your experiments with [Hyperparameter Optimization](../../fundamentals/hpo.md)
- Check out ClearML's integrations with your favorite ML frameworks like [TensorFlow](../../integrations/tensorflow.md), - Check out ClearML's integrations with your favorite ML frameworks like [TensorFlow](../../integrations/tensorflow.md),
[PyTorch](../../guides/frameworks/pytorch/pytorch_mnist.md), [Keras](../../guides/frameworks/keras/keras_tensorboard.md), [PyTorch](../../integrations/pytorch.md), [Keras](../../integrations/keras.md),
and more and more
## YouTube Playlist ## YouTube Playlist

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@ -87,7 +87,7 @@ additional tools, like argparse, TensorBoard, and matplotlib:
* [PyTorch MNIST](../guides/frameworks/pytorch/pytorch_mnist.md) - Demonstrates ClearML automatically logging models created with PyTorch, and `argparse` command line parameters * [PyTorch MNIST](../guides/frameworks/pytorch/pytorch_mnist.md) - Demonstrates ClearML automatically logging models created with PyTorch, and `argparse` command line parameters
* [PyTorch with Matplotlib](../guides/frameworks/pytorch/pytorch_matplotlib.md) - Demonstrates ClearMLs automatic logging PyTorch models and matplotlib images. The images are stored in the resulting ClearML experiment's **Debug Samples** * [PyTorch with Matplotlib](../guides/frameworks/pytorch/pytorch_matplotlib.md) - Demonstrates ClearMLs automatic logging PyTorch models and matplotlib images. The images are stored in the resulting ClearML experiment's **Debug Samples**
* [TensorBoard](../guides/frameworks/pytorch/pytorch_tensorboard.md) - Demonstrates ClearML automatically logging PyTorch models, and scalars, debug samples, and text logged using TensorBoard's `SummaryWriter` * [PyTorch with TensorBoard](../guides/frameworks/pytorch/pytorch_tensorboard.md) - Demonstrates ClearML automatically logging PyTorch models, and scalars, debug samples, and text logged using TensorBoard's `SummaryWriter`
* [PyTorch TensorBoard Toy](../guides/frameworks/pytorch/tensorboard_toy_pytorch.md) - Demonstrates ClearML automatically logging debug samples logged using TensorBoard's `SummaryWriter` * [PyTorch TensorBoard Toy](../guides/frameworks/pytorch/tensorboard_toy_pytorch.md) - Demonstrates ClearML automatically logging debug samples logged using TensorBoard's `SummaryWriter`
* [PyTorch TensorBoardX](../guides/frameworks/pytorch/pytorch_tensorboardx.md) - Demonstrates ClearML automatically logging PyTorch models, and scalars, debug samples, and text logged using TensorBoardX's `SummaryWriter` * [PyTorch TensorBoardX](../guides/frameworks/pytorch/pytorch_tensorboardx.md) - Demonstrates ClearML automatically logging PyTorch models, and scalars, debug samples, and text logged using TensorBoardX's `SummaryWriter`
* [PyTorch Abseil](../guides/frameworks/pytorch/pytorch_abseil.md) - Demonstrates ClearML automatically logging PyTorch models and `absl.flags` parameters * [PyTorch Abseil](../guides/frameworks/pytorch/pytorch_abseil.md) - Demonstrates ClearML automatically logging PyTorch models and `absl.flags` parameters

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@ -139,7 +139,7 @@ def step_one(pickle_data_url: str, extra: int = 43):
* Callbacks - Control pipeline execution flow with callback functions * Callbacks - Control pipeline execution flow with callback functions
* `pre_execute_callback` and `post_execute_callback` - Control pipeline flow with callback functions that can be called * `pre_execute_callback` and `post_execute_callback` - Control pipeline flow with callback functions that can be called
before and/or after a steps execution. See [here](pipelines_sdk_tasks.md#pre_execute_callback--post_execute_callback). before and/or after a steps execution. See [here](pipelines_sdk_tasks.md#pre_execute_callback-and-post_execute_callback).
* `status_change_callback` - Callback function called when the status of a step changes. Use `node.job` to access the * `status_change_callback` - Callback function called when the status of a step changes. Use `node.job` to access the
`ClearmlJob` object, or `node.job.task` to directly access the Task object. The signature of the function must look like this: `ClearmlJob` object, or `node.job.task` to directly access the Task object. The signature of the function must look like this:
```python ```python

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@ -166,7 +166,7 @@ pipe.add_function_step(
* `parents` Optional list of parent steps in the pipeline. The current step in the pipeline will be sent for execution * `parents` Optional list of parent steps in the pipeline. The current step in the pipeline will be sent for execution
only after all the parent steps have been executed successfully. only after all the parent steps have been executed successfully.
* `pre_execute_callback` and `post_execute_callback` - Control pipeline flow with callback functions that can be called * `pre_execute_callback` and `post_execute_callback` - Control pipeline flow with callback functions that can be called
before and/or after a steps execution. See [here](#pre_execute_callback--post_execute_callback). before and/or after a steps execution. See [here](#pre_execute_callback-and-post_execute_callback).
* `monitor_models`, `monitor_metrics`, `monitor_artifacts` - see [here](#models-artifacts-and-metrics). * `monitor_models`, `monitor_metrics`, `monitor_artifacts` - see [here](#models-artifacts-and-metrics).
See [add_function_step](../references/sdk/automation_controller_pipelinecontroller.md#add_function_step) for all See [add_function_step](../references/sdk/automation_controller_pipelinecontroller.md#add_function_step) for all
@ -174,7 +174,7 @@ arguments.
### Important Arguments ### Important Arguments
#### pre_execute_callback & post_execute_callback #### pre_execute_callback and post_execute_callback
Callbacks can be utilized to control pipeline execution flow. Callbacks can be utilized to control pipeline execution flow.
A `pre_execute_callback` function is called when the step is created, and before it is sent for execution. This allows a A `pre_execute_callback` function is called when the step is created, and before it is sent for execution. This allows a