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LiteRT.js, Google's high performance Web AI Inference- Google Developers Blog Bridging the Domain Gap: AI Race Coach built with Antigravity and Gemini- Google Developers Blog We terminated a TPU mid-training and it recovered in seconds: Introduction to elastic training with MaxText- Google Developers Blog ML Development in VS Code with Google Cloud Power: Workbench Extension Now Available- Google Developers Blog Why we built ADK 2.0- Google Developers Blog Build agentic full-stack apps with Genkit- Google Developers Blog Driving the Agent Quality Flywheel from Your Coding Agent- Google Developers Blog Build reliable multi-agent applications with ADK Go 2.0. Discover our new graph-based workflow engine, built-in human-in-the-loop, and dynamic orchestration- Google Developers Blog Measuring What Matters with Jules- Google Developers Blog Build Cross-Language Multi-Agent Team with Google’s Agent Development Kit and A2A- Google Developers Blog How A2A is Building a World of Collaborative Agents- Google Developers Blog A2UI + MCP Apps: Combining the best of declarative and custom agentic UIs- Google Developers Blog Announcing the Agentic Resource Discovery specification- Google Developers Blog Enhance Security and Trust: New Session Metadata in Sign in with Google- Google Developers Blog Unlocking the Power of the TPU Stack: Introducing our new Developer Hub- Google Developers Blog DiffusionGemma: The Developer Guide Gemma 4 12B: The Developer Guide Bringing Gemma 4 12B to your Laptop: Unlocking Local, Agentic Workflows with Google AI Edge Supercharge your integration workflow with the Google Pay & Wallet Developer MCP server How the community trained Gemma to "Think" with Tunix and TPUs
Introducing the Google Colab CLI
Spencer Shumway, Tyler Pirtle, Seth Troisi · 2026-06-05 · via Google Developers Blog

Today we are announcing the Google Colab Command-Line Interface (CLI), which bridges the gap between your local terminal and remote Colab runtimes, providing a zero-friction execution platform for both developers and AI agents. The Colab CLI offers:

  • Zero-Friction Accelerator Provisioning: Request high-powered GPUs or TPUs instantly (e.g., colab --gpu A100 or colab --gpu T4).
  • Simple Remote Execution: Run your local Python scripts and complex ML pipelines directly on Colab runtimes using colab exec.
  • Seamless Artifact Recovery: Easily retrieve models, datasets, and replayable .ipynb logs via colab download and colab log.
  • Interactive Access: Drop into an interactive environment on your remote Colab runtime with colab repl or colab console.

Agent-driven workflows in action

Because the Colab CLI integrates seamlessly into standard terminal environments, it can be used by any agent with terminal access. To ensure your AI assistants can hit the ground running, the CLI includes a prepackaged Colab skill file that provides agents with instant, built-in context on exactly how to leverage the CLI. Let's look at a real life example of something a user or agent might try with the Colab CLI.

*Note that while the example below highlights Antigravity agent using Colab CLI as a tool, Colab CLI can easily be used by Claude Code, Codex, and other agents.

Here is how an Agent can use the Colab CLI for a real-world ML workflow:

Fine-tuning Gemma 3-1B

The CLI can be used to run a real QLoRA pipeline that runs end-to-end with just a handful of commands. Offload heavy computational lifting to a GPU without typing a single cloud provisioning command by Instructing Antigravity (or your agent of choice) to build a remote fine-tuning job. In this scenario, we ask our agent to use the Colab CLI to fine-tune google/gemma-3-1b-it on a Text-to-SQL dataset to make the model better at writing SQL queries.

The Antigravity prompt:
Use the Colab CLI (https://github.com/googlecolab/google-colab-cli) to fine-tune Gemma 3 1B using QLoRA. Provision a Colab T4 GPU instance, install the necessary ML packages (transformers, datasets, peft, trl, etc.), run my local ~finetune_run.py script remotely, download the resulting safetensors adapter, save the notebook log, and cleanup.

Antigravity executes:

$ colab new --gpu T4
$ colab install transformers datasets peft trl bitsandbytes accelerate
$ colab exec -f finetune_run.py
$ colab log --output gemma_finetune_log.ipynb
$ colab stop

Shell

Copied

Antigravity also uses the "colab download" command to download the adapter model, adapter config, tokenizer config, and tokenizer, which can be used to load and run your fine-tuned model locally. Now you have a remotely fine-tuned model ready to serve from your local device!

Try it out now

The Colab CLI makes powerful Colab compute accessible, programmable, and agent-ready. It is lightweight and easily accessible to any terminal-based AI agent. To start using the Colab CLI yourself, head over to the Google Colab CLI GitHub repository for setup instructions.

We are excited to see how this accelerates your development process and look forward to seeing what you and your agents build!