2021-06-20 22:00:16 +00:00
---
title: ClearML Agent on Google Colab
---
[Google Colab ](https://colab.research.google.com ) is a common development environment for data scientists. It offers a convenient IDE as well as
2021-10-05 06:02:44 +00:00
compute provided by google.
2021-12-22 08:54:04 +00:00
Users can transform a Google Colab instance into an available resource in ClearML using [ClearML Agent ](../../clearml_agent.md ).
2021-06-20 22:00:16 +00:00
In this tutorial, we will go over how to create a ClearML worker node in a Google Colab notebook. Once the worker is up
and running, users can send Tasks to be executed on the Google Colab's HW.
## Prerequisites
* Be signed up for ClearML (Or have a server deployed).
* Have a Google account to access Google Colab
## Steps
1. Open up [this Google Colab notebook ](https://colab.research.google.com/github/pollfly/clearml/blob/master/examples/clearml_agent/clearml_colab_agent.ipynb ).
1. Run the first cell, which installs all the necessary packages:
```
!pip install git+https://github.com/allegroai/clearml
!pip install clearml-agent
```
1. Run the second cell, which exports this environment variable:
```
! export MPLBACKEND=TkAg
```
This environment variable makes Matplotlib work in headless mode, so it won't output graphs to the screen.
1. Create new credentials.
2022-01-23 07:50:24 +00:00
Go to your [**Settings** ](https://app.clear.ml/settings/workspace-configuration ) page > **WORKSPACE** section.
Under **App Credentials** , click ** + Create new credentials**, and copy the information that pops up.
2021-06-20 22:00:16 +00:00
1. Set the credentials.
In the third cell, enter your own credentials:
```python
from clearml import Task
2022-01-23 07:50:24 +00:00
Task.set_credentials(
2022-03-13 13:07:06 +00:00
api_host="https://api.clear.ml",
web_host="https://app.clear.ml",
files_host="https://files.clear.ml",
2022-01-23 07:50:24 +00:00
key='6ZHX9UQMYL874A1NE8',
secret='=2h6#%@Y& m*tC!VLEXq& JI7QhZPKuJfbaYD4!uUk(t7=9ENv'
2021-06-20 22:00:16 +00:00
)
```
1. In the fourth cell, launch a `clearml-agent` that will listen to the `default` queue:
```
!clearml-agent daemon --queue default
```
For additional options for running `clearml-agent` , see the [clearml-agent reference ](../../references/clearml_agent_ref.md ).
After cell 4 is executed, the worker should now appear in the [**Workers & Queues** ](../../webapp/webapp_workers_queues.md )
page of your server. Clone experiments and enqueue them to your hearts content! The `clearml-agent` will fetch
experiments and execute them using the Google Colab hardware.