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Friday, August 22, 2025

Unifying knowledge insights with Amazon QuickSight and Amazon SageMaker


Amazon SageMaker has introduced an integration with Amazon QuickSight, bringing collectively knowledge in SageMaker seamlessly with QuickSight capabilities like interactive dashboards, pixel excellent studies and generative enterprise intelligence (BI)—all in a ruled and automatic method. With this integration customers can go from exploring knowledge in SageMaker to visualizing it in QuickSight with a single click on.

“The mixing between Amazon SageMaker and Amazon QuickSight will assist us streamline how our groups transfer from knowledge exploration to insights. Our analysts can go from knowledge discovery to constructing and sharing dashboards by means of a unified, ruled expertise. Dashboards are not siloed, one-off studies. They’re cataloged, discoverable belongings that others can discover and entry. This has made perception supply sooner, extra constant, and much simpler to scale throughout the enterprise.”

– Lingam Chockalingam, Chief Information Architect, Maryland Division of Human Companies – MD THINK

About QuickSight

QuickSight is a cloud-powered BI service that revolutionizes knowledge evaluation and visualization. It seamlessly integrates knowledge from varied sources, together with AWS companies, third-party functions, and software program as a service (SaaS) platforms right into a single, intuitive dashboard. As a totally managed service, QuickSight provides enterprise-grade safety, world accessibility, and scalability with out the trouble of infrastructure administration. Amazon Q in QuickSight transforms entry to knowledge insights for your complete group utilizing generative AI. Utilizing Amazon Q, enterprise analysts can generate dashboards and studies utilizing pure language prompts. With Amazon Q, enterprise customers can ask and reply questions of information utilizing knowledge Q&A, get pure language govt summaries of information to see tendencies and insights, and use the highly effective new agentic knowledge evaluation expertise of situations to find patterns and outliers in knowledge and carry out what-if evaluation.

About SageMaker

Amazon SageMaker Unified Studio gives a unified, end-to-end expertise consisting of information, analytics, and AI capabilities. You should use acquainted AWS companies for mannequin growth, generative AI, knowledge processing, and analytics—all inside a single, ruled atmosphere. Customers can now construct, deploy, and execute end-to-end workflows from a single interface. SageMaker is constructed on the foundations of Amazon DataZone, the place it makes use of domains to categorize and construction the information belongings, whereas providing project-based collaboration options that groups can use to securely share artifacts and work collectively throughout varied compute companies. This expertise permits a number of personas to seamlessly collaborate, whereas working below applicable entry controls and governance insurance policies.

Dashboard and perception workflows simplified

At present directors can configure SageMaker tasks with QuickSight to streamline the circulate of constructing insights out of your knowledge lake. After being arrange, the mixing routinely creates a restricted folders that gives a ruled context to share belongings and knowledge sources, pre-configured with safe connections to knowledge lake tables. This serves as the inspiration for any venture member securely constructing and sharing insights. When exploring knowledge in your venture the mixing permits for one-click entry to constructing a dashboard from any desk. Behind the scenes, SageMaker creates a QuickSight dataset within the venture’s restricted folder that’s accessible solely to members inside the venture. Not solely do dashboards you construct in QuickSight keep inside this folder, they’re additionally routinely added as belongings to your SageMaker venture. There, you’ll be able to add customized metadata, publish to the SageMaker Catalog and share with customers or teams in your company listing for broader entry—all inside SageMaker Unified Studio. This retains your dashboards organized, discoverable, shareable, and ruled, making cross-team collaboration and asset reuse easy.

Configure SageMaker and QuickSight

To get began with SageMaker and QuickSight integration, you allow the QuickSight blueprint and create venture profiles within the AWS Administration Console.

Word that each your SageMaker Unified Studio area and QuickSight account should be built-in with AWS IAM Id Middle utilizing the identical Id Middle occasion. Moreover, your QuickSight account should exist in the identical AWS account.

  1. Go to the SageMaker console and select Area within the navigation pane.
  2. Choose the Blueprints tab.
  3. To allow the QuickSight Blueprint, choose it from the record, then select Allow.
  4. On the Allow QuickSight web page:
        1. For Provisioning function, choose your provisioning function.
        2. For QuickSight VPC supervisor function, choose the AmazonSageMakerQuickSightVPC function.
  5. Select Allow blueprint.
  6. A affirmation message will seem after the blueprint is efficiently enabled.
  7. Return to the Domains web page and choose the Challenge profiles tab after which choose the SQL analytics venture profile.
  8. Select Add blueprint deployment settings.
  9. Configure the blueprint deployment settings as follows:
    • Blueprint deployment settings title: Enter a reputation to your settings. For this put up, we used QuickSight-BDS.
    • Blueprint: Choose the QuickSight blueprint from the record.
    • Different parameters: Modify these primarily based in your use case. For this put up, we saved the default values.
  10. Scroll down and select Add blueprint deployment settings to avoid wasting your configuration.
  11. You’ll obtain a affirmation message, and also you’ll see that the QuickSight Blueprint deployment setting (QuickSight-BDS) has been added to the record.

Create a SageMaker venture with QuickSight enabled:

After the QuickSight integration has been arrange by the administrator, knowledge shoppers comparable to analysts and knowledge scientists can start utilizing it within the SageMaker portal by creating a brand new venture.

  1. Go to the SageMaker portal.
  2. Select Choose a venture, then, select Create venture.
  3. On the Create venture web page:
    1. Challenge title: Enter the title of your venture. For this put up, we’re utilizing KPI-Evaluation.
    2. Challenge profile: Choose the SQL Analytics venture profile.
    3. Select Proceed.
  4. Depart the remaining parameters set to their default values and select Proceed.
  5. Assessment the data displayed, then select Create venture.
  6. You’ll be redirected to the Creating new venture web page. Look forward to the method to finish.
  7. After the venture creation course of is full, you’ll be taken to the Challenge overview web page.

Create an information asset to construct the evaluation

  1. For this put up, you’ll use the transactions.csv file, which comprises monetary transaction knowledge from varied departments.
  2. Select Construct within the top-right menu.
  3. Then choose Question Editor from the dropdown.
  4. Select the plus (+) icon
  5. Choose Create desk, then select Subsequent.
  6. On the Set desk properties web page:
    1. Add file: Add the transactions.csv file.
    2. Desk kind: Choose S3/exterior desk.
    3. Depart the remaining parameters on the default values.
    4. Select Subsequent.
  7. On the Preview schema web page, confirm that the schema matches the anticipated construction, then select Create desk.
  8. The Transactions desk has now been efficiently created.

Create a dashboard utilizing QuickSight

  1. Select the KPI-Evaluation venture, then select Information.
  2. On the Information web page: Choose the Transactions desk, select Actions, then choose Open in QuickSight.
  3. This step redirects you to the QuickSight UI, particularly to the transactions dataset web page.
  4. Select USE IN ANALYSIS to start exploring the information.
  5. Select a folder to avoid wasting your new evaluation—for this put up, we chosen the Belongings folder.
  6. Select Add to avoid wasting the evaluation.
  7. On the New sheet web page, depart all parameters on the default values, then select CREATE.
  8. You’ll now be taken to the Evaluation web page. On this instance, you analyze bank card spending at gasoline stations, specializing in figuring out the most well-liked gasoline kind amongst your cardholders. The objective is to make use of this perception to design focused promotions.
  9. Underneath Visuals, choose Pie chart.
  10. Underneath GROUP/COLOR, choose fuel_type.
  11. Underneath Worth, choose quantity[Sum].
  12. You will note that bank card holders of AWSome-Financial institution choose the Premium gasoline kind.
  13. Publish this new dashboard to the enterprise knowledge catalog. To try this, select PUBLISH situated within the prime proper nook.
  14. On the Publish Dashboard web page:
    1. Enter a reputation for the dashboard. For this put up, we’re utilizing gas_consumption_analysis.
    2. Depart the remaining parameters set to their default values.
    3. Select PUBLISH DASHBOARD.

Documenting and publishing a QuickSight asset

After the dashboard is created, it’s routinely added to the SageMaker venture. From there, analysts or BI engineers can enrich it with enterprise metadata, make it discoverable throughout the group, and share it with different customers or teams of their company listing.

  1. Return to the Amazon SageMaker portal
  2. Choose the Belongings tab.
  3. On the Stock tab, choose the gas_consumption_analysis asset.
  4. It will take you to the primary asset web page, the place you’ll be able to add enterprise metadata, view the lineage diagram, and assessment the asset historical past.
  5. For this put up, you’ll solely add a README part.
  6. Select CREATE README to get began.
  7. Add an outline for the asset. For this POST, we used the next:
Overview
This Amazon QuickSight dashboard gives insights into the gasoline kind preferences of a financial institution’s bank card holders. It helps enterprise stakeholders and analysts perceive buyer conduct at gasoline stations, supporting data-driven advertising and marketing methods and product personalization.
Function
The objective of this dashboard is to:
Analyze which gasoline varieties (for instance, Common, Premium, Diesel, Electrical) are most steadily bought utilizing the financial institution’s bank cards.
Determine buyer segments (for instance, age teams, places, earnings brackets) that choose particular gasoline varieties.
Perceive transaction patterns comparable to frequency, common spend per gasoline kind, and buy timeframes.

  1. Select SAVE README to avoid wasting the outline.
  2. On this web page, you too can add glossary phrases and metadata varieties to supply further enterprise context to the asset. For this put up, depart these fields empty.
  3. Now you’re able to publish the QuickSight asset to the enterprise knowledge catalog. To do that, select PUBLISH ASSET.
  4. A affirmation immediate will seem. Select PUBLISH ASSET once more to finish the publishing course of.

Seek for a QuickSight asset

  1. For this put up, we created a second venture referred to as Advertising, however you should use some other venture inside your area and even reuse the one created within the earlier steps.
  2. Navigate to the SageMaker dwelling web page.
  3. Within the catalog search subject, enter gasoline to seek out the revealed asset.
  4. Choose the related consequence for the revealed asset from the search outcomes.
  5. It will take you to the asset’s primary web page, the place you’ll be able to view the metadata added by the producer.

Sharing a QuickSight asset

You may share the QuickSight dashboard with customers and teams in your group immediately from inside SageMaker.

  1. Return to the KPI-Evaluation venture.
  2. Select the Information tab.
  3. Then, choose Belongings from the Challenge catalog.
  4. Go to the PUBLISHED tab, then choose the gas_consumption_analysis asset.
  5. Select Actions, then choose Share.
  6. You may share the asset with particular person SSO customers or with teams. For this put up, we chosen an SSO group named quicksight-users, however you’ll be able to select any person or group you will have beforehand created.
  7. Select Share.
  8. A affirmation message will seem after the asset has been efficiently shared.

Clear up

While you’re carried out with these workouts, full the next steps to delete your sources to keep away from incurring prices:

  1. Delete the QuickSight belongings that you just created.
    1. If QuickSight is enabled solely for testing, be certain to cancel the QuickSight account.
  2. Delete the venture created in SageMaker.
    1. If SageMaker is enabled solely for testing, be certain to cancel the SageMaker account.

Conclusion

This put up walked by means of the whole means of integrating Amazon QuickSight with Amazon SageMaker Unified Studio, demonstrating how groups can transfer from uncooked knowledge to revealed dashboards in a safe and ruled atmosphere. By combining the superior analytics capabilities of QuickSight with the collaborative project-based construction of SageMaker, organizations can speed up perception supply whereas sustaining clear management over knowledge entry and governance.

The mixing simplifies creating datasets immediately from Amazon Athena or Amazon Redshift tables, enrich them with enterprise metadata, and publish dashboards to the SageMaker Catalog. When revealed, these dashboards may be shared with customers or teams throughout the group, making insights each discoverable and actionable.

With the added energy of Amazon Q in QuickSight and generative BI, customers can ask questions in plain English and obtain real-time visualizations and insights. This makes knowledge exploration intuitive and inclusive, empowering extra customers to make knowledgeable selections. Mixed with the unified analytics and AI atmosphere of SageMaker Unified Studio, this resolution helps safe, scalable, and collaborative data-driven innovation.


Concerning the authors

Ramon Lopez is a Principal Options Architect for Amazon QuickSight. With a few years of expertise constructing BI options and a background in accounting, he loves working with clients, creating options, and making world-class companies. When not working, he prefers to be open air within the ocean or up on a mountain.

Leonardo Gomez is a Principal Analytics Specialist Options Architect at AWS. He has over a decade of expertise in knowledge administration, serving to clients across the globe handle their enterprise and technical wants. Join with him on LinkedIn.

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