Close Menu
geekfence.comgeekfence.com
    What's Hot

    From resumes to results: Findem bets on verified hiring with Glider AI 

    March 29, 2026

    Test and measurement gets an AI upgrade

    March 29, 2026

    Do AI Coding Assistants Powered by LLMs Reduce the Need for Programmers?

    March 29, 2026
    Facebook X (Twitter) Instagram
    • About Us
    • Contact Us
    Facebook Instagram
    geekfence.comgeekfence.com
    • Home
    • UK Tech News
    • AI
    • Big Data
    • Cyber Security
      • Cloud Computing
      • iOS Development
    • IoT
    • Mobile
    • Software
      • Software Development
      • Software Engineering
    • Technology
      • Green Technology
      • Nanotechnology
    • Telecom
    geekfence.comgeekfence.com
    Home»Cloud Computing»New one-click onboarding and notebooks with a built-in AI agent in Amazon SageMaker Unified Studio
    Cloud Computing

    New one-click onboarding and notebooks with a built-in AI agent in Amazon SageMaker Unified Studio

    AdminBy AdminNovember 22, 2025No Comments5 Mins Read0 Views
    Facebook Twitter Pinterest LinkedIn Telegram Tumblr Email
    New one-click onboarding and notebooks with a built-in AI agent in Amazon SageMaker Unified Studio
    Share
    Facebook Twitter LinkedIn Pinterest Email


    Voiced by Polly

    Today we’re announcing a faster way to get started with your existing AWS datasets in Amazon SageMaker Unified Studio. You can now start working with any data you have access to in a new serverless notebook with a built-in AI agent, using your existing AWS Identity and Access Management (IAM) roles and permissions.

    New updates include:

    • One-click onboarding – Amazon SageMaker can now automatically create a project in Unified Studio with all your existing data permissions from AWS Glue Data Catalog, AWS Lake Formation, and Amazon Simple Storage Services (Amazon S3).
    • Direct integration – You can launch SageMaker Unified Studio directly from Amazon SageMaker, Amazon Athena, Amazon Redshift, and Amazon S3 Tables console pages, giving a fast path to analytics and AI workloads.
    • Notebooks with a built-in AI agent – You can use a new serverless notebook with a built-in AI agent, which supports SQL, Python, Spark, or natural language and gives data engineers, analysts, and data scientists one place to develop and run both SQL queries and code.

    You also have access to other tools such as a Query Editor for SQL analysis, JupyterLab integrated developer environment (IDE), Visual ETL and workflows, and machine learning (ML) capabilities.

    Try one-click onboarding and connect to Amazon SageMaker Unified Studio
    To get started, go to the SageMaker console and choose the Get started button.

    You will be prompted either to select an existing AWS Identity and Access Management (AWS IAM) role that has access to your data and compute, or to create a new role.

    Choose Set up. It takes a few minutes to complete your environment. After this role is granted access, you’ll be taken to the SageMaker Unified Studio landing page where you will see the datasets that you have access to in AWS Glue Data Catalog as well as a variety of analytics and AI tools to work with.

    This environment automatically creates the following serverless compute: Amazon Athena Spark, Amazon Athena SQL, AWS Glue Spark, and Amazon Managed Workflows for Apache Airflow (MWAA) serverless. This means you completely skip provisioning and can start working immediately with just-in-time compute resources, and it automatically scales back down when you finish, helping to save on costs.

    You can also get started working on specific tables in Amazon Athena, Amazon Redshift, and Amazon S3 Tables. For example, you can select Query your data in Amazon SageMaker Unified Studio and then choose Get started in Amazon Athena console.

    If you start from these consoles, you’ll connect directly to the Query Editor with the data that you were looking at already accessible, and your previous query context preserved. By using this context-aware routing, you can run queries immediately once inside the SageMaker Unified Studio without unnecessary navigation.

    Getting started with notebooks with a built-in AI agent
    Amazon SageMaker is introducing a new notebook experience that provides data and AI teams with a high-performance, serverless programming environment for analytics and ML jobs. The new notebook experience includes Amazon SageMaker Data Agent, a built-in AI agent that accelerates development by generating code and SQL statements from natural language prompts while guiding users through their tasks.

    To start a new notebook, choose the Notebooks menu in the left navigation pane to run SQL queries, Python code, and natural language, and to discover, transform, analyze, visualize, and share insights on data. You can get started with sample data such as customer analytics and retail sales forecasting.

    When you choose a sample project for customer usage analysis, you can open sample notebook to explore customer usage patterns and behaviors in a telecom dataset.

    As I noted, the notebook includes a built-in AI agent that helps you interact with your data through natural language prompts. For example, you can start with data discovery using prompts like:

    Show me some insights and visualizations on the customer churn dataset.

    After you identify relevant tables, you can request specific analysis to generate Spark SQL. The AI agent creates step-by-step plans with initial code for data transformations and Python code for visualizations. If you see an error message while running the generated code, choose Fix with AI to get help resolving it. Here is a sample result:

    For ML workflows, use specific prompts like:

    Build an XGBoost classification model for churn prediction using the churn table, with purchase frequency, average transaction value, and days since last purchase as features.

    This prompt receives structured responses including a step-by-step plan, data loading, feature engineering, and model training code using the SageMaker AI capabilities, and evaluation metrics. SageMaker Data Agent works best with specific prompts and is optimized for AWS data processing services including Athena for Apache Spark and SageMaker AI.

    To learn more about new notebook experience, visit the Amazon SageMaker Unified Studio User Guide.

    Now available
    One-click onboarding and the new notebook experience in Amazon SageMaker Unified Studio are now available in US East (Ohio), US East (N. Virginia), US West (Oregon), Asia Pacific (Mumbai), Asia Pacific (Singapore), and Asia Pacific (Sydney), Asia Pacific (Tokyo), Europe (Frankfurt), Europe (Ireland) Regions. To learn more, visit the SageMaker Unified Studio product page.

    Give it a try in the SageMaker console and send feedback to AWS re:Post for SageMaker Unified Studio or through your usual AWS Support contacts.

    — Channy



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

    Related Posts

    Celebrating One Year of Cisco Black Belt Academy on MindTickle

    March 29, 2026

    Customize your AWS Management Console experience with visual settings including account color, region and service visibility

    March 27, 2026

    10 Best Business Email Providers for Small Businesses in 2026

    March 26, 2026

    Farming at the edge with autonomous robots

    March 25, 2026

    New ‘StoatWaffle’ malware auto‑executes attacks on developers

    March 24, 2026

    Reimagining Security for the Agentic Workforce

    March 23, 2026
    Top Posts

    Understanding U-Net Architecture in Deep Learning

    November 25, 202527 Views

    Hard-braking events as indicators of road segment crash risk

    January 14, 202624 Views

    Redefining AI efficiency with extreme compression

    March 25, 202619 Views
    Don't Miss

    From resumes to results: Findem bets on verified hiring with Glider AI 

    March 29, 2026

    Findem’s acquisition of Glider AI signals an inevitable shift in talent acquisition from operational efficiency to outcome-driven hiring. Enterprises are moving beyond speed-based metrics…

    Test and measurement gets an AI upgrade

    March 29, 2026

    Do AI Coding Assistants Powered by LLMs Reduce the Need for Programmers?

    March 29, 2026

    Excel 101: Cell and Column Merge vs Combine

    March 29, 2026
    Stay In Touch
    • Facebook
    • Instagram
    About Us

    At GeekFence, we are a team of tech-enthusiasts, industry watchers and content creators who believe that technology isn’t just about gadgets—it’s about how innovation transforms our lives, work and society. We’ve come together to build a place where readers, thinkers and industry insiders can converge to explore what’s next in tech.

    Our Picks

    From resumes to results: Findem bets on verified hiring with Glider AI 

    March 29, 2026

    Test and measurement gets an AI upgrade

    March 29, 2026

    Subscribe to Updates

    Please enable JavaScript in your browser to complete this form.
    Loading
    • About Us
    • Contact Us
    • Disclaimer
    • Privacy Policy
    • Terms and Conditions
    © 2026 Geekfence.All Rigt Reserved.

    Type above and press Enter to search. Press Esc to cancel.