Tech & Science

You Can Use Google Colab GPUs Inside VS Code Now

6
Nvidia RTX 5090 GPU

Google has rolled out a major update to its popular notebook platform, Google Colab, allowing it to run directly inside Visual Studio Code through an official extension.

The update means developers, data scientists, and AI hobbyists can now use Colab’s powerful cloud hardware — including free GPUs — without opening a browser.

For years, users had to run Colab notebooks inside a web tab. Now they can write and execute code inside VS Code while the heavy computing runs on Google’s servers.

Free GPU Access Without Owning Hardware

One of the biggest advantages of Colab has always been free cloud hardware.

Users on the free tier can access NVIDIA T4 GPU accelerators or TPU options for machine learning tasks. These GPUs dramatically speed up training and data processing compared to regular CPUs.

In some benchmarks, fine-tuning AI models that took around 50 minutes per epoch on a CPU can drop to roughly three minutes on a T4 GPU. That kind of speed boost makes experimentation much easier for developers who do not own powerful machines.

Combining Cloud Power With Local Tools

The new extension brings together the best parts of Colab and VS Code.

VS Code is one of the most widely used development environments. It offers advanced editing tools, debugging features, Git integration, and a huge ecosystem of extensions.

With the integration, users can edit notebooks locally while running the code on Colab’s cloud infrastructure. This setup allows developers to keep project files on their computer while still using powerful remote hardware.

It also removes the need to constantly switch between browser tabs or upload notebooks to cloud storage.

How Developers Can Start Using It

Getting started with the integration takes only a few steps:

  1. Open Visual Studio Code.
  2. Go to the Extensions marketplace.
  3. Search for the official Google Colab extension published by Google.
  4. Install it and open a .ipynb Jupyter notebook.
  5. Select the Colab runtime as the notebook kernel.
  6. Sign in with a Google account and choose a runtime such as GPU, TPU, or CPU.

Once connected, the notebook runs exactly like a normal Colab session, but inside the VS Code interface.

AI Development Just Got Easier

The feature has already created excitement in the machine-learning community. Many developers say it removes one of the biggest barriers to starting AI projects — not having access to powerful hardware.

By bringing Colab’s cloud compute directly into VS Code, Google has effectively lowered the entry barrier for building and testing AI models.

For beginners and experienced developers alike, the message is simple: you no longer need a powerful GPU at home to start building serious AI projects.

Written by
Sazid Kabir

I've loved music and writing all my life. That's why I started this blog. In my spare time, I make music and run this blog for fellow music fans.

Stay updated with nomusica.com. Add us to your preferred sources to see our latest updates first.

Related Articles

Anthropic
Tech & Science

Anthropic Sues US Government Over AI Blacklist

AI company Anthropic has filed a lawsuit against several U.S. government agencies....

Scientists Find New Way to Supercharge Cancer-Fighting Cells
Tech & Science

CIA Faces Backlash After 1951 ‘Hidden Cancer Cure’ Document Resurfaces

The CIA is under fire after a decades-old declassified document resurfaced online,...

YouTube App on App Store
Tech & Science

YouTube Is Testing Built-In Chat Again

YouTube is testing the return of direct messaging nearly seven years after...

Accenture
Finance & BusinessTech & Science

Accenture Buys Speedtest and Downdetector in $1.2 Billion Mega Deal

Global consulting giant Accenture has agreed to buy the entire Connectivity division...