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Getting Started With Google Colab

If you want to create a machine learning model but say you don’t have a computer that can take the workload, Google Colab is the platform for you. Even if you have a GPU or a good computer creating a local environment with anaconda and installing packages and resolving installation issues are a hassle.
Colaboratory is a free Jupyter notebook environment provided by Google where you can use free GPUs and TPUs which can solve all these issues.

Getting Started

To start working with Colab you first need to log in to your google account, then go to this link https://colab.research.google.com.

Opening Jupyter Notebook:
On opening the website you will see a pop-up containing following tabs –


EXAMPLES: Contain a number of Jupyter notebooks of various examples.
RECENT: Jupyter notebook you have recently worked with.
GOOGLE DRIVE: Jupyter notebook in your google drive.
GITHUB: You can add Jupyter notebook from your GitHub but you first need to connect Colab with GitHub.
UPLOAD: Upload from your local directory.

Else you can create a new Jupyter notebook by clicking New Python3 Notebook or New Python2 Notebook at the bottom right corner.

Notebook’s Description:

On creating a new notebook, it will create a Jupyter notebook with Untitled0.ipynb and save it to your google drive in a folder named Colab Notebooks. Now as it is essentially a Jupyter notebook, all commands of Jupyter notebooks will work here. Though, you can refer the details in Getting started with Jupyter Notebook.

Let’s talk about what different here.

Change Runtime Environment:
Click the “Runtime” dropdown menu. Select “Change runtime type”. Select python2 or 3 from “Runtime type” dropdown menu.
 

Use GPU and TPU:
Click the “Runtime” dropdown menu. Select “Change runtime type”. Now select anything(GPU, CPU, None) you want in the “Hardware accelerator” dropdown menu.

Verify GPU:filter_none

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import tensorflow as tf tf.test.gpu_device_name()

If gpu is connected it will output following –

'/device:GPU:0'

Otherwise, it will output following

''

Verify TPU:
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import os  if 'COLAB_TPU_ADDR' not in os.environ: print('Not connected to TPU') else: print("Connected to TPU")

If gpu is connected it will output following

Connected to TPU

Otherwise, it will output following

Not connected to TPU

 
Install Python packages –
Use can use pip to install any package. For example:filter_none

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! pip install pandas

 
Clone GitHub repos:
Use git clone command. For example:filter_none

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! git clone https://github.com/souvik3333/Testing-and-Debugging-Tools

 
Upload File:filter_none

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from google.colab import files uploaded = files.upload()

Select “Choose file” and upload the file you want. Enable third-party cookies if they are disabled.

Then you can save it in a dataframe.filter_none

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import io df2 = pd.read_csv(io.BytesIO(uploaded['file_name.csv']))

Upload File By Mounting Google Drive:
To mount your drive inside “mntDrive” folder execute following –filter_none

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from google.colab import drive drive.mount('/mntDrive')

Then you’ll see a link, click on link, then allow access, copy the code that pops up, paste it at “Enter your authorization code:”.

Now to see all data in your google drive you need to execute following:
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! ls "/mntDrive/My Drive"

File Hierarchy:
You can also see file hierarchy by clicking “>” at top left below the control buttons (CODE, TEXT, CELL).

Download Files:
Let’s say you want to download “file_name.csv”. You can copy the file to your google drive (In “data” folder, you need to create the “data” folder in google drive) by executing this:filter_none

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cp file_name.csv "/mntDrive/My Drive/data/renamed_file_name.csv"

The file will be saved at “data” folder with “renamed_file_name.csv” name. Now you can directly download from there, Or, you can just open file hierarchy and right clicking will give download option.

Download Jupyter Notebook:
Click “File” dropdown menu at top left corner. Choose “download .ipynb” or “download .py”

Share Jupyter Notebook:
You can share your notebook by adding others email address or by creating a shareable link.



Recommended Posts:

https://medium.com/deep-learning-turkey/google-colab-free-gpu-tutorial-e113627b9f5d

https://www.tutorialspoint.com/google_colab/index.htm

https://medium.com/deep-learning-turkey/google-colab-free-gpu-tutorial-e113627b9f5d

https://www.geeksforgeeks.org/how-to-use-google-colab/

https://hackernoon.com/begin-your-deep-learning-project-for-free-free-gpu-processing-free-storage-free-easy-upload-b4dba18abebc

Amir Masoud Sefidian
Amir Masoud Sefidian
Data Scientist, Researcher, Software Developer

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