Sunday, 11 May 2025
  • My Feed
  • My Interests
  • My Saves
  • History
  • Blog
Subscribe
Capernaum
  • Finance
    • Cryptocurrency
    • Stock Market
    • Real Estate
  • Lifestyle
    • Travel
    • Fashion
    • Cook
  • Technology
    • AI
    • Data Science
    • Machine Learning
  • Health
    HealthShow More
    Skincare as You Age Infographic
    Skincare as You Age Infographic

    When I dove into the scientific research for my book How Not…

    By capernaum
    Treating Fatty Liver Disease with Diet 
    Treating Fatty Liver Disease with Diet 

    What are the three sources of liver fat in fatty liver disease,…

    By capernaum
    Bird Flu: Emergence, Dangers, and Preventive Measures

    In the United States in January 2025 alone, approximately 20 million commercially-raised…

    By capernaum
    Inhospitable Hospital Food 
    Inhospitable Hospital Food 

    What do hospitals have to say for themselves about serving meals that…

    By capernaum
    Gaming the System: Cardiologists, Heart Stents, and Upcoding 
    Gaming the System: Cardiologists, Heart Stents, and Upcoding 

    Cardiologists can criminally game the system by telling patients they have much…

    By capernaum
  • Sport
  • 🔥
  • Cryptocurrency
  • Data Science
  • Travel
  • Real Estate
  • AI
  • Technology
  • Machine Learning
  • Stock Market
  • Finance
  • Fashion
Font ResizerAa
CapernaumCapernaum
  • My Saves
  • My Interests
  • My Feed
  • History
  • Travel
  • Health
  • Technology
Search
  • Pages
    • Home
    • Blog Index
    • Contact Us
    • Search Page
    • 404 Page
  • Personalized
    • My Feed
    • My Saves
    • My Interests
    • History
  • Categories
    • Technology
    • Travel
    • Health
Have an existing account? Sign In
Follow US
© 2022 Foxiz News Network. Ruby Design Company. All Rights Reserved.
Home » Blog » An Advanced Coding Implementation: Mastering Browser‑Driven AI in Google Colab with Playwright, browser_use Agent & BrowserContext, LangChain, and Gemini
AI

An Advanced Coding Implementation: Mastering Browser‑Driven AI in Google Colab with Playwright, browser_use Agent & BrowserContext, LangChain, and Gemini

capernaum
Last updated: 2025-04-20 22:31
capernaum
Share
An Advanced Coding Implementation: Mastering Browser‑Driven AI in Google Colab with Playwright, browser_use Agent & BrowserContext, LangChain, and Gemini
SHARE

In this tutorial, we will learn how to harness the power of a browser‑driven AI agent entirely within Google Colab. We will utilize Playwright’s headless Chromium engine, along with the browser_use library’s high-level Agent and BrowserContext abstractions, to programmatically navigate websites, extract data, and automate complex workflows. We will wrap Google’s Gemini model via the langchain_google_genai connector to provide natural‑language reasoning and decision‑making, secured by pydantic’s SecretStr for safe API‑key handling. With getpass managing credentials, asyncio orchestrating non‑blocking execution, and optional .env support via python-dotenv, this setup will give you an end‑to‑end, interactive agent platform without ever leaving your notebook environment.

Copy CodeCopiedUse a different Browser
!apt-get update -qq
!apt-get install -y -qq chromium-browser chromium-chromedriver fonts-liberation
!pip install -qq playwright python-dotenv langchain-google-generative-ai browser-use
!playwright install

We first refresh the system package lists and install headless Chromium, its WebDriver, and the Liberation fonts to enable browser automation. It then installs Playwright along with python-dotenv, the LangChain GoogleGenerativeAI connector, and browser-use, and finally downloads the necessary browser binaries via playwright install.

Copy CodeCopiedUse a different Browser
import os
import asyncio
from getpass import getpass
from pydantic import SecretStr
from langchain_google_genai import ChatGoogleGenerativeAI
from browser_use import Agent, Browser, BrowserContextConfig, BrowserConfig
from browser_use.browser.browser import BrowserContext

We bring in the core Python utilities, os for environment management and asyncio for asynchronous execution, plus getpass and pydantic’s SecretStr for secure API‑key input and storage. It then loads LangChain’s Gemini wrapper (ChatGoogleGenerativeAI) and the browser_use toolkit (Agent, Browser, BrowserContextConfig, BrowserConfig, and BrowserContext) to configure and drive a headless browser agent.

Copy CodeCopiedUse a different Browser
os.environ["ANONYMIZED_TELEMETRY"] = "false"

We disable anonymous usage reporting by setting the ANONYMIZED_TELEMETRY environment variable to “false”, ensuring that neither Playwright nor the browser_use library sends any telemetry data back to its maintainers.

Copy CodeCopiedUse a different Browser
async def setup_browser(headless: bool = True):
    browser = Browser(config=BrowserConfig(headless=headless))
    context = BrowserContext(
        browser=browser,
        config=BrowserContextConfig(
            wait_for_network_idle_page_load_time=5.0,
            highlight_elements=True,
            save_recording_path="./recordings",
        )
    )
    return browser, context

This asynchronous helper initializes a headless (or headed) Browser instance and wraps it in a BrowserContext configured to wait for network‑idle page loads, visually highlight elements during interactions, and save a recording of each session under ./recordings. It then returns both the browser and its ready‑to‑use context for your agent’s tasks.

Copy CodeCopiedUse a different Browser
async def agent_loop(llm, browser_context, query, initial_url=None):
    initial_actions = [{"open_tab": {"url": initial_url}}] if initial_url else None
    agent = Agent(
        task=query,
        llm=llm,
        browser_context=browser_context,
        use_vision=True,
        generate_gif=False,
        initial_actions=initial_actions,
    )
    result = await agent.run()
    return result.final_result() if result else None

This async helper encapsulates one “think‐and‐browse” cycle: it spins up an Agent configured with your LLM, the browser context, and optional initial URL tab, leverages vision when available, and disables GIF recording. Once you call agent_loop, it runs the agent through its steps and returns the agent’s final result (or None if nothing is produced).

Copy CodeCopiedUse a different Browser
async def main():
    raw_key = getpass("Enter your GEMINI_API_KEY: ")


    os.environ["GEMINI_API_KEY"] = raw_key


    api_key = SecretStr(raw_key)
    model_name = "gemini-2.5-flash-preview-04-17"


    llm = ChatGoogleGenerativeAI(model=model_name, api_key=api_key)


    browser, context = await setup_browser(headless=True)


    try:
        while True:
            query = input("nEnter prompt (or leave blank to exit): ").strip()
            if not query:
                break
            url = input("Optional URL to open first (or blank to skip): ").strip() or None


            print("n🤖 Running agent…")
            answer = await agent_loop(llm, context, query, initial_url=url)
            print("n📊 Search Resultsn" + "-"*40)
            print(answer or "No results found")
            print("-"*40)
    finally:
        print("Closing browser…")
        await browser.close()


await main()

Finally, this main coroutine drives the entire Colab session: it securely prompts for your Gemini API key (using getpass and SecretStr), sets up the ChatGoogleGenerativeAI LLM and a headless Playwright browser context, then enters an interactive loop where it reads your natural‑language prompts (and optional start URL), invokes the agent_loop to perform the browser‑driven AI task, prints the results, and finally ensures the browser closes cleanly.

In conclusion, by following this guide, you now have a reproducible Colab template that integrates browser automation, LLM reasoning, and secure credential management into a single cohesive pipeline. Whether you’re scraping real‑time market data, summarizing news articles, or automating reporting tasks, the combination of Playwright, browser_use, and LangChain’s Gemini interface provides a flexible foundation for your next AI‑powered project. Feel free to extend the agent’s capabilities, re‑enable GIF recording, add custom navigation steps, or swap in other LLM backends to tailor the workflow precisely to your research or production needs.


Here is the Colab Notebook. Also, don’t forget to follow us on Twitter and join our Telegram Channel and LinkedIn Group. Don’t Forget to join our 90k+ ML SubReddit.

🔥 [Register Now] miniCON Virtual Conference on AGENTIC AI: FREE REGISTRATION + Certificate of Attendance + 4 Hour Short Event (May 21, 9 am- 1 pm PST) + Hands on Workshop

The post An Advanced Coding Implementation: Mastering Browser‑Driven AI in Google Colab with Playwright, browser_use Agent & BrowserContext, LangChain, and Gemini appeared first on MarkTechPost.

Share This Article
Twitter Email Copy Link Print
Previous Article Fourier Neural Operators Just Got a Turbo Boost: Researchers from UC Riverside Introduce TurboFNO, a Fully Fused FFT-GEMM-iFFT Kernel Achieving Up to 150% Speedup over PyTorch Fourier Neural Operators Just Got a Turbo Boost: Researchers from UC Riverside Introduce TurboFNO, a Fully Fused FFT-GEMM-iFFT Kernel Achieving Up to 150% Speedup over PyTorch
Next Article Ring of Kerry: One Day Itinerary
Leave a comment

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Your Trusted Source for Accurate and Timely Updates!

Our commitment to accuracy, impartiality, and delivering breaking news as it happens has earned us the trust of a vast audience. Using RSS feeds, we aggregate news from trusted sources to ensure real-time updates on the latest events and trends. Stay ahead with timely, curated information designed to keep you informed and engaged.
TwitterFollow
TelegramFollow
LinkedInFollow
- Advertisement -
Ad imageAd image

You Might Also Like

A Coding Implementation of Accelerating Active Learning Annotation with Adala and Google Gemini

By capernaum
Tencent Released PrimitiveAnything: A New AI Framework That Reconstructs 3D Shapes Using Auto-Regressive Primitive Generation
AITechnology

Tencent Released PrimitiveAnything: A New AI Framework That Reconstructs 3D Shapes Using Auto-Regressive Primitive Generation

By capernaum

A Coding Guide to Unlock mem0 Memory for Anthropic Claude Bot: Enabling Context-Rich Conversations

By capernaum
Huawei Introduces Pangu Ultra MoE: A 718B-Parameter Sparse Language Model Trained Efficiently on Ascend NPUs Using Simulation-Driven Architecture and System-Level Optimization
AITechnology

Huawei Introduces Pangu Ultra MoE: A 718B-Parameter Sparse Language Model Trained Efficiently on Ascend NPUs Using Simulation-Driven Architecture and System-Level Optimization

By capernaum
Capernaum
Facebook Twitter Youtube Rss Medium

Capernaum :  Your instant connection to breaking news & stories . Stay informed with real-time coverage across  AI ,Data Science , Finance, Fashion , Travel, Health. Your trusted source for 24/7 insights and updates.

© Capernaum 2024. All Rights Reserved.

CapernaumCapernaum
Welcome Back!

Sign in to your account

Lost your password?