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83 lines
3.3 KiB
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83 lines
3.3 KiB
Markdown
---
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title: Experiment Environment Containers
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---
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This tutorial demonstrates using [`clearml-agent`](../../clearml_agent.md)’s [`build`](../../clearml_agent/clearml_agent_ref.md#build)
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command to build a Docker container replicating the execution environment of an existing task. ClearML Agents can make
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use of such containers to execute tasks without having to set up their environment every time.
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A use case for this would be manual hyperparameter optimization, where a base task can be used to create a container to
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be used when running optimization tasks.
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## Prerequisites
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* [`clearml-agent`](../../clearml_agent.md#installation) installed and configured
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* [`clearml`](../../getting_started/ds/ds_first_steps.md#install-clearml) installed and configured
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* [clearml](https://github.com/allegroai/clearml) repo cloned (`git clone https://github.com/allegroai/clearml.git`)
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## Creating the ClearML Experiment
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1. Set up the experiment’s execution environment:
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```console
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cd clearml/examples/frameworks/keras
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pip install -r requirements.txt
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```
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1. Run the experiment:
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```console
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python keras_tensorboard.py
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```
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This creates a ClearML task called "Keras with TensorBoard example" in the "examples" project.
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Note the task ID in the console output when running the script above:
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```console
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ClearML Task: created new task id=<TASK_ID>
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```
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This ID will be used in the following section.
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## Building the Docker Container
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Execute the following command to build the container. Input the ID of the task created above.
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```console
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clearml-agent build --id <TASK_ID> --docker --target new_docker
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```
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:::tip
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If the container will not make use of a GPU, add the `--cpu-only` flag
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:::
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This will create a container with the specified task’s execution environment in the `--target` folder.
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When the Docker build completes, the console output shows:
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```console
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Docker build done
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Committing docker container to: new_docker
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sha256:460453b93ct1989fd1c6637c236e544031c4d378581433fc0b961103ce206af1
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```
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## Using the New Docker Container
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Make use of the container you've just built by having a ClearML agent make use of it for executing a new experiment:
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1. In the [ClearML Web UI](../../webapp/webapp_overview.md), go to the "examples" project, "Keras with TensorBoard
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example" task (the one executed [above](#creating-the-clearml-experiment)).
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1. [Clone](../../webapp/webapp_exp_reproducing.md) the experiment.
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1. In the cloned experiment, go to the **EXECUTION** tab **>** **CONTAINER** section. Under **IMAGE**, insert the name
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of the new Docker image, `new_docker`. See [Tuning Experiments](../../webapp/webapp_exp_tuning.md) for more task
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modification options.
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1. Enqueue the cloned experiment to the `default` queue.
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1. Launch a `clearml-agent` in [Docker Mode](../../clearml_agent.md#docker-mode) and assign it to the `default` queue:
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```console
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clearml-agent daemon --docker --queue default
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```
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:::tip
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If the agent will not make use of a GPU, add the `--cpu-only` flag
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:::
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This agent will pull the enqueued task and run it using the `new_docker` image to create the execution environment.
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In the task’s **CONSOLE** tab, one of the first logs should be:
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```console
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Executing: ['docker', 'run', ..., 'CLEARML_DOCKER_IMAGE=new_docker', ...].
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``` |