Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      The state of DevOps and AI: Not just hype

      September 1, 2025

      A Breeze Of Inspiration In September (2025 Wallpapers Edition)

      August 31, 2025

      10 Top Generative AI Development Companies for Enterprise Node.js Projects

      August 30, 2025

      Prompting Is A Design Act: How To Brief, Guide And Iterate With AI

      August 29, 2025

      Look out, Meta Ray-Bans! These AI glasses just raised over $1M in pre-orders in 3 days

      September 2, 2025

      Samsung ‘Galaxy Glasses’ powered by Android XR are reportedly on track to be unveiled this month

      September 2, 2025

      The M4 iPad Pro is discounted $100 as a last-minute Labor Day deal

      September 2, 2025

      Distribution Release: Linux From Scratch 12.4

      September 1, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      Enhanced Queue Job Control with Laravel’s ThrottlesExceptions failWhen() Method

      September 2, 2025
      Recent

      Enhanced Queue Job Control with Laravel’s ThrottlesExceptions failWhen() Method

      September 2, 2025

      August report 2025

      September 2, 2025

      Fake News Detection using Python Machine Learning (ML)

      September 1, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      Installing Proxmox on a Raspberry Pi to run Virtual Machines on it

      September 2, 2025
      Recent

      Installing Proxmox on a Raspberry Pi to run Virtual Machines on it

      September 2, 2025

      Download Transcribe! for Windows

      September 1, 2025

      Microsoft Fixes CertificateServicesClient (CertEnroll) Error in Windows 11

      September 1, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Machine Learning»New Amazon Bedrock Data Automation capabilities streamline video and audio analysis

    New Amazon Bedrock Data Automation capabilities streamline video and audio analysis

    May 27, 2025

    Organizations across a wide range of industries are struggling to process massive amounts of unstructured video and audio content to support their core business applications and organizational priorities. Amazon Bedrock Data Automation helps them meet this challenge by streamlining application development and automating workflows that use content from documents, images, audio, and video. Recently, we announced two new capabilities that you can use to get custom insights from video and audio. You can streamline development and boost efficiency through consistent, multimodal analytics that can be seamlessly customized to their specific business needs.

    Amazon Bedrock Data Automation accelerates development time from months to minutes through prepackaged foundation models (FMs), eliminating the need for multiple task-specific models and complex processing logic. Now developers can eliminate the time-consuming heavy lifting of unstructured multimodal content processing at scale, whether analyzing petabytes of video or processing millions of customer conversations. Developers can use natural language instructions to generate insights that meet the needs of their downstream systems and applications. Media and entertainment users can unlock custom insights from movies, television shows, ads, and user-generated video content. Customer-facing teams can generate new insights from audio—analyzing client consultations to identify best practices, categorize conversation topics, and extract valuable customer questions for training.

    Customizing insights with Amazon Bedrock Data Automation for videos

    Amazon Bedrock Data Automation makes it painless for you to tailor your generative AI–powered insights generated from video. You can specify which fields you want to generate from videos, such as scene context or summary, data format, and the natural language instructions for each field. You can customize Amazon Bedrock Data Automation output by generating specific insights in consistent formats for AI-powered multimedia analysis applications. For example, you can use Amazon Bedrock Data Automation to extract scene summaries, identify visually prominent objects, and detect logos in movies, television shows, and social media content. With Amazon Bedrock Data Automation, you can create new custom video output in minutes. Or you can select from a catalog of pre-built solutions—including advertisement analysis, media search, and more. Read the following example to understand how a customer is using Amazon Bedrock Data Automation for video analysis.

    Air is an AI-based software product that helps businesses automate how they collect, approve, and share content. Creative teams love Air because they can replace their digital asset management (DAM), cloud storage solution, and workflow tools with Air’s creative operations system. Today, Air manages more than 250M images and videos for global brands such as Google, P&G, and Sweetgreen. Air’s product launched in March 2021, and they’ve raised $70M from world class venture capital firms. Air uses Amazon Bedrock Data Automation to help creative teams quickly organize their content.

    “At Air, we are using Amazon Bedrock Data Automation to process tens of millions of images and videos. Amazon Bedrock Data Automation allows us to extract specific, tailored insights from content (such as video chapters, transcription, optical character recognition) in a matter of seconds. This was a virtually impossible task for us earlier. The new Amazon Bedrock Data Automation powered functionality on Air enables creative and marketing teams with critical business insights. With Amazon Bedrock Data Automation, Air has cut down search and organization time for its users by 90%. Today, every company needs to operate like a media company. Businesses are prioritizing the ability to generate original and unique creative work: a goal achievable through customization. Capabilities like Amazon Bedrock Data Automation allow Air to customize the extraction process for every customer, based on their specific goals and needs.”

    —Shane Hedge, Co-Founder and CEO at Air

    Extracting focused insights with Amazon Bedrock Data Automation for audio

    The new Amazon Bedrock Data Automation capabilities make it faster and more streamlined for you to extract customized generative AI–powered insights from audio. You can specify the desired output configuration in natural language. And you can extract custom insights—such as summaries, key topics, and intents—from customer calls, clinical discussions, meetings, and other audio. You can use the audio insights in Amazon Bedrock Data Automation to improve productivity, enhance customer experience, ensure regulatory compliance, among others. For example, sales agents can improve their productivity by extracting insights such as summaries, key action items, and next steps from conversations between sales agents with clients.

    Getting started with the new Amazon Bedrock Data Automation video and audio capabilities

    To analyze your video and audio assets, follow these steps:

    1. On the Amazon Bedrock console, choose Data Automation in the navigation pane. The following screenshot shows the Data Automation page.
    2. In the Create a new BDA Project screen under BDA Project name, enter a name. Select Create project, as shown in the following screenshot.
    3. Choose a Sample Blueprint or create a Blueprint

    To use a blueprint, follow these steps:

    • You can choose a sample blueprint or you can create a new one.
    • To create a blueprint, on the Amazon Bedrock Data Automation console in the navigation pane under Data Automation, select custom output.
    • Choose Create blueprint and select the tile for the video or audio file you want to create a blueprint for, as shown in the following screenshot.

    Choosing a sample blueprint for video modality

    Creating a new blueprint for audio modality

    1. Generate results for custom output
      • On the video asset, within the blueprint, you can choose Generate results to see the detailed analysis.

    2. Choose Edit field – In the Edit fields pane, enter a field name. Under Instructions, provide clear, step-by-step guidance for how to identify and classify the field’s data during the extraction process.
    3. Choose Save blueprint.

    Conclusion

    The new video and audio capabilities in Amazon Bedrock Data Automation represent a significant step forward in helping you unlock the value of their unstructured content at scale. By streamlining application development and automating workflows that use content from documents, images, audio, and video, organizations can now quickly generate custom insights. Whether you’re analyzing customer conversations to improve sales effectiveness, extracting insights from media content, or processing video feeds, Amazon Bedrock Data Automation provides the flexibility and customization options you need while eliminating the undifferentiated heavy lifting of processing multimodal content. To learn more about these new capabilities, visit the Amazon Bedrock Data Automation documentation, and start building your first video or audio analysis project today.

    Resources

    To learn more about the new Amazon Bedrock Data Automation capabilities, visit:

    1. Amazon Bedrock
    2. Amazon Bedrock Data Automation
    3. Get insights from multimodal content with Amazon Bedrock Data Automation, now generally available
    4. Creating blueprints for video and Creating blueprints for audio in the documentation
    5. The What’s New post for the new video capability in Amazon Bedrock Data Automation
    6. The What’s New post for the new audio capability in Amazon Bedrock Data Automation

    About the author

    Ashish Lal is an AI/ML Senior Product Marketing Manager for Amazon Bedrock. He has 11+ years of experience in product marketing and enjoys helping customers accelerate time to value and reduce their AI lifecycle cost.

    Source: Read More 

    Facebook Twitter Reddit Email Copy Link
    Previous ArticleA Step-by-Step Coding Implementation of an Agent2Agent Framework for Collaborative and Critique-Driven AI Problem Solving with Consensus-Building
    Next Article Meta AI Introduces Multi-SpatialMLLM: A Multi-Frame Spatial Understanding with Multi-modal Large Language Models

    Related Posts

    Machine Learning

    How to Evaluate Jailbreak Methods: A Case Study with the StrongREJECT Benchmark

    September 2, 2025
    Machine Learning

    Introducing auto scaling on Amazon SageMaker HyperPod

    August 30, 2025
    Leave A Reply Cancel Reply

    For security, use of Google's reCAPTCHA service is required which is subject to the Google Privacy Policy and Terms of Use.

    Continue Reading

    Rogue npm Packages Mimic Telegram Bot API to Plant SSH Backdoors on Linux Systems

    Rogue npm Packages Mimic Telegram Bot API to Plant SSH Backdoors on Linux Systems

    Development

    CVE-2025-53578 – Gavias Kipso PHP Remote File Inclusion Vulnerability

    Common Vulnerabilities and Exposures (CVEs)

    CVE-2025-4448 – D-Link DIR-619L Remote Buffer Overflow Vulnerability

    Common Vulnerabilities and Exposures (CVEs)

    Elder Scrolls Oblivion remaster surges to the number one spot on Steam, over 100,000 players have entered the gates of Oblivion

    News & Updates

    Highlights

    CVE-2025-51534 – Austrian Archaeological Institute (AI) OpenAtlas Cross-Site Scripting (XSS)

    August 5, 2025

    CVE ID : CVE-2025-51534

    Published : Aug. 4, 2025, 5:15 p.m. | 1 day, 6 hours ago

    Description : A cross-site scripting (XSS) vulnerability in Austrian Archaeological Institute (AI) OpenAtlas v8.11.0 allows attackers to execute arbitrary web scripts or HTML via injecting a crafted payload into the Name field.

    Severity: 8.1 | HIGH

    Visit the link for more details, such as CVSS details, affected products, timeline, and more…

    How to Bypass Restrictions and Watch Pornhub in Kansas [2025]

    June 24, 2025

    CVE-2024-54779 – Netgate pfSense CE Cross Site Scripting Vulnerability

    May 14, 2025

    Mongoose Now Natively Supports QE and CSFLE

    June 2, 2025
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

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