clearml-docs/docs/integrations/autokeras.md
2024-01-10 14:40:19 +02:00

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---
title: AutoKeras
---
:::tip
If you are not already using ClearML, see [Getting Started](../getting_started/ds/ds_first_steps.md) for setup
instructions.
:::
ClearML integrates seamlessly with [AutoKeras](https://autokeras.com/), automatically logging its models and scalars.
All you have to do is simply add two lines of code to your AutoKeras script:
```python
from clearml import Task
task = Task.init(task_name="<task_name>", project_name="<project_name>")
```
And that's it! This creates a [ClearML Task](../fundamentals/task.md) which captures:
* Source code and uncommitted changes
* Installed packages
* AutoKeras model files
* Scalars (loss, learning rates)
* Console output
* General details such as machine details, runtime, creation date etc.
* Hyperparameters created with standard python packages (e.g. argparse, click, Python Fire, etc.)
* And more
You can view all the task details in the [WebApp](../webapp/webapp_exp_track_visual.md).
See an example of AutoKeras and ClearML in action [here](../guides/frameworks/autokeras/autokeras_imdb_example.md).
![Experiment scalars](../img/examples_keras_14.png)
## Automatic Logging Control
By default, when ClearML is integrated into your AutoKeras script, it captures AutoKeras models and scalars, as well as TensorFlow
definitions and TensorBoard outputs. But, you may want to have more control over what your experiment logs.
To control a task's framework logging, use the `auto_connect_frameworks` parameter of [`Task.init()`](../references/sdk/task.md#taskinit).
Completely disable all automatic logging by setting the parameter to `False`. For finer grained control of logged
frameworks, input a dictionary, with framework-boolean pairs.
For example:
```python
auto_connect_frameworks={
'tensorflow': False, 'tensorboard': False, 'pytorch': True,
'xgboost': False, 'scikit': True, 'fastai': True, 'lightgbm': False,
'hydra': True, 'detect_repository': True, 'tfdefines': True, 'joblib': True,
'megengine': True, 'catboost': False
}
```
To control AutoKeras logging, use the `tensorflow` and `tensorboard` keys.
You can also input wildcards as dictionary values, so ClearML will log a model created by a framework only if its local
path matches at least one wildcard.
For example, in the code below, ClearML will log TensorFlow models only if their paths have the `.h5` extension. The
unspecified frameworks' values default to true so all their models are automatically logged.
```python
auto_connect_frameworks={'tensorflow' : '*.h5'}
```
## Manual Logging
To augment its automatic logging, ClearML also provides an explicit logging interface.
See more information about explicitly logging information to a ClearML Task:
* [Models](../clearml_sdk/model_sdk.md#manually-logging-models)
* [Configuration](../clearml_sdk/task_sdk.md#configuration) (e.g. parameters, configuration files)
* [Artifacts](../clearml_sdk/task_sdk.md#artifacts) (e.g. output files or python objects created by a task)
* [Scalars](../clearml_sdk/task_sdk.md#scalars)
* [Text/Plots/Debug Samples](../fundamentals/logger.md#manual-reporting)
See [Explicit Reporting Tutorial](../guides/reporting/explicit_reporting.md).
## Remote Execution
ClearML logs all the information required to reproduce an experiment on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
experiment manager.
Deploy a ClearML Agent onto any machine (e.g. a cloud VM, a local GPU machine, your own laptop) by simply running the
following command on it:
```commandline
clearml-agent daemon --queue <queues_to_listen_to> [--docker]
```
Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to help you manage cloud workloads in the
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
### Cloning, Editing, and Enqueuing
![Cloning, editing, enqueuing gif](../img/gif/integrations_yolov5.gif)
Use ClearML's web interface to edit task details, like configuration parameters or input models, then execute the task
with the new configuration on a remote machine:
* Clone the experiment
* Edit the hyperparameters and/or other details
* Enqueue the task
The ClearML Agent executing the task will use the new values to [override any hard coded values](../clearml_agent).
### Executing a Task Remotely
You can set a task to be executed remotely programmatically by adding [`Task.execute_remotely()`](../references/sdk/task.md#execute_remotely)
to your script. This method stops the current local execution of the task, and then enqueues it to a specified queue to
re-run it on a remote machine.
```python
# If executed locally, process will terminate, and a copy will be executed by an agent instead
task.execute_remotely(queue_name='default', exit_process=True)
```