azure ai video indexer
9 TopicsCreating Intelligent Video Summaries and Avatar Videos with Azure AI Services
Unlock the true value of your organization’s video content! In this post, I share how we built an end-to-end AI video analytics platform using Microsoft Azure. Discover how AI can automate video analysis, generate intelligent summaries, and create engaging avatar presentations—making content more accessible, actionable, and impactful for everyone. If you’re interested in digital transformation, AI-powered automation, or modern content management, this is for you!799Views5likes1CommentEnhancing Workplace Safety and Efficiency with Azure AI Foundry's Content Understanding
Discover how Azure AI Foundry’s Content Understanding service, featuring the Video Shot Analysis template, revolutionizes workplace safety and efficiency. By leveraging Generative AI to analyze video data, businesses can gain actionable insights into worker actions, posture, safety risks, and environmental conditions. Learn how this cutting-edge tool transforms operations across industries like manufacturing, logistics, and healthcare.766Views2likes0CommentsAzure Video Indexer & Phi-3 introduce Textual Video Summary on Edge: Better Together story
Azure AI Video Indexer collaborated with the Phi-3 team to introduce a Textual Video Summary capability on Edge. This collaboration showcases the utilization of the SLM, Phi-3 model, enabling the Azure AI Video Indexer team to extend the same LLM based summarization capabilities that are available for the cloud, to also be available on the Edge. This comes following Build’s 2024 announcements of the integration of Azure AI Video Indexer with language models to generate textual summaries of videos and the expansion of the Phi-3 models family. The feature is accessible both in the cloud, utilizing Azure Open AI, and at the Edge via the Phi-3-mini-4k-instruct model.4.3KViews2likes0CommentsFrom Extraction to Insight: Evolving Azure AI Content Understanding with Reasoning and Enrichment
First introduced in public preview last year, Azure AI Content Understanding enables you to convert unstructured content—documents, audio, video, text, and images—into structured data. The service is designed to support consistent, high-quality output, directed improvements, built-in enrichment, and robust pre-processing to accelerate workflows and reduce cost. A New Chapter in Content Understanding Since our launch we’ve seen customers pushing the boundaries to go beyond simple data extraction with agentic solutions fully automating decisions. This requires more than just extracting fields. For example, a healthcare insurance provider decision to pay a claim requires cross-checking against insurance policies, applicable contracts, patient’s medical history and prescription datapoints. To do this a system needs the ability to interpret information in context, perform more complex enrichments and analysis across various data sources. Beyond field extraction, this requires a custom designed workflow leveraging reasoning. In response to this demand, Content Understanding now introduces Pro mode which enables enhanced reasoning, validation, and information aggregation capabilities. These updates allow the service to aggregate and compare results across sources, enrich extracted data with context, and deliver decisions as output. While Standard mode continues to offer reliable and scalable field extraction, Pro mode extends the service to support more complex content interpretation scenarios—enabling workflows that reflect the way people naturally reason over data. With this update, Content Understanding now solves a much larger component of your data processing workflows, offering new ways to automate, streamline, and enhance decision-making based on unstructured information. Key Benefits of Pro Mode Packed with cutting-edge reasoning capabilities, Pro mode revolutionizes document analysis. Multi-Content Input Process and aggregate information across multiple content files in a single request. Pro mode can build a unified schema from distributed data sources, enabling richer insight across documents. Multi-Step Reasoning Go beyond basic extraction with a process that supports reasoning, linking, validation, and enrichment. Knowledge Base Integration Seamlessly integrate with organizational knowledge bases and domain-specific datasets to enhance field inference. This ensures outputs can reason over the task of generating the output using the context of your business. When to Use Pro Mode Pro mode, currently limited to documents, is designed for scenarios where content understanding needs to go beyond surface-level extraction—ideal for use cases that traditionally require postprocessing, human review and decision-making based on multiple data points and contextual references. Pro mode enables intelligent processing that not only extracts data, but also validates, links, and enriches it. This is especially impactful when extracted information must be cross-referenced with external datasets or internal knowledge sources to ensure accuracy, consistency, and contextual depth. Examples include: Invoice processing that reconciles against purchase orders and contract terms Healthcare claims validation using patient records and prescription history Legal document review where clauses reference related agreements or precedents Manufacturing spec checks against internal design standards and safety guidelines By automating much of the reasoning, you can focus on higher value tasks! Pro mode helps reduce manual effort, minimize errors, and accelerate time to insight—unlocking new potential for downstream applications, including those that emulate higher-order decision-making. Simplified Pricing Model Introducing a simplified pricing structure that significantly reduces costs across all content modalities compared to previous versions, making enterprise-scale deployment more affordable and predictable. Expanded Feature Coverage We are also extending capabilities across various content types: Structured Document Outputs: Improved handling of tables spanning multiple pages, recognition of selection marks, and support for additional file types like .docx, .xlsx, .pptx, .msg, .eml, .rtf, .html, .md, and .xml. Classifier API: Automatically categorize/split and route documents to appropriate processing pipelines. Video Analysis: Extract data across an entire video or break a video into chapters automatically. Enrich metadata with face identification and descriptions that include facial images. Face API Preview: Detect, recognize, and enroll faces, enabling richer user-aware applications. Check out the details about each of these capabilities here - What's New for Content Understanding. Let's hear it from our customers Customers all over the globe are using Content Understanding for its powerful one-stop solution capabilities by leveraging advance modes of reasoning, grounding and confidence scores across diverse content types. ASC: AI-based analytics in ASC’s Recording Insights platform allows customers to move to a 100% compliance review coverage of conversations across multiple channels. ASC’s integration of Content Understanding replaces a previously complex setup—where multiple separate AI services had to be manually connected—with a single multimodal solution that delivers transcription, summarization, sentiment analysis, and data extraction in one streamlined interface. This shift not only simplifies implementation and accelerates time-to-value but also received positive customer feedback for its powerful features and the quick, hands-on support from Microsoft product teams. “With the integration of Content Understanding into the ASC Recording Insights platform, ASC was able to reduce R&D effort by 30% and achieve 5 times faster results than before. This helps ASC drive customer satisfaction and stay ahead of competition.” —Tobias Fengler, Chief Engineering Officer, ASC. To learn more about ASCs integration check out From Complexity to Simplicity: The ASC and Azure AI Partnership.” Ramp: Ramp, the all-in-one financial operations platform, is exploring how Azure AI Content Understanding can help transform receipts, bills, and multi-line invoices into structured data automatically. Ramp is leveraging the pre-built invoice template and experimenting with custom extraction capabilities across various document types. These experiments are helping Ramp evaluate how to further reduce manual entry and enhance the real-time logic that powers approvals, policy checks, and reconciliation. “Content Understanding gives us a single API to parse every receipt and statement we see—then lets our own AI reason over that data in real time. It's an efficient path from image to fully reconciled expense.” — Rahul S, Head of AI, Ramp MediaKind: MK.IO’s cloud-native video platform, available on Azure Marketplace—now integrates Azure AI Content Understanding to make it easy for developers to personalize streaming experiences. With just a few lines of code, you can turn full game footage into real-time, fan-specific highlight reels using AI-driven metadata like player actions, commentary, and key moments. “Azure AI Content Understanding gives us a new level of control and flexibility—letting us generate insights instantly, personalize streams automatically, and unlock new ways to engage and monetize. It’s video, reimagined.” —Erik Ramberg, VP, MediaKind Catch the full story from MediaKind in our breakout session at Build 2025 on May 18: My Game, My Way, where we walk you through the creation of personalized highlight reels in real-time. You’ll never look at your TV in the same way again. Getting Started For more details about the latest from Content Understanding check out Reasoning on multimodal content for efficient agentic AI app building Wednesday, May 21 at 2 PM PST Build your own Content Understanding solution in the Azure AI Foundry. Pro mode will be available in the Foundry starting June 1 st 2025 Refer to our documentation and sample code on Content Understanding Explore the video series on getting started with Content Understanding1.9KViews1like0CommentsFrom Foundry to Fine-Tuning: Topics you Need to Know in Azure AI Services
With so many new features from Azure and newer ways of development, especially in generative AI, you must be wondering what all the different things you need to know are and where to start in Azure AI. Whether you're a developer or IT professional, this guide will help you understand the key features, use cases, and documentation links for each service. Let's explore how Azure AI can transform your projects and drive innovation in your organization. Stay tuned for more details! Term Description Use Case Azure Resource Azure AI Foundry A comprehensive platform for building, deploying, and managing AI-driven applications. Customizing, hosting, running, and managing AI applications. Azure AI Foundry AI Agent Within Azure AI Foundry, an AI Agent acts as a "smart" microservice that can be used to answer questions (RAG), perform actions, or completely automate workflows. can be used in a variety of applications to automate tasks, improve efficiency, and enhance user experiences. Link AutoGen An open-source framework designed for building and managing AI agents, supporting workflows with multiple agents. Developing complex AI applications with multiple agents. Autogen Multi-Agent AI Systems where multiple AI agents collaborate to solve complex tasks. Managing energy in smart grids, coordinating drones. Link Model as a Platform A business model leveraging digital infrastructure to facilitate interactions between user groups. Social media channels, online marketplaces, crowdsourcing websites. Link Azure OpenAI Service Provides access to OpenAI’s powerful language models integrated into the Azure platform. Text generation, summarization, translation, conversational AI. Azure OpenAI Service Azure AI Services A suite of APIs and services designed to add AI capabilities like image analysis, speech-to-text, and language understanding to applications. Image analysis, speech-to-text, language understanding. Link Azure Machine Learning (Azure ML) A cloud-based service for building, training, and deploying machine learning models. Creating models to predict sales, detect fraud. Azure Machine Learning Azure AI Search An AI-powered search service that enhances information to facilitate exploration. Enterprise search, e-commerce search, knowledge mining. Azure AI Search Azure Bot Service A platform for developing intelligent, enterprise-grade bots. Creating chatbots for customer service, virtual assistants. Azure Bot Service Deep Learning A subset of ML using neural networks with many layers to analyze complex data. Image and speech recognition, natural language processing. Link Multimodal AI AI that integrates and processes multiple types of data, such as text and images(including input & output). Describing images, answering questions about pictures. Azure OpenAI Service, Azure AI Services Unimodal AI AI that processes a single type of data, such as text or images (including input & output). Writing text, recognizing objects in photos. Azure OpenAI Service, Azure AI Services Fine-Tuning Models Adapting pre-trained models to specific tasks or datasets for improved performance. Customizing models for specific industries like healthcare. Azure Foundry Model Catalog A repository of pre-trained models available for use in AI projects. Discovering, evaluating, fine-tuning, and deploying models. Model Catalog Capacity & Quotas Limits and quotas for using Azure AI services, ensuring optimal resource allocation. Managing resource usage and scaling AI applications. Link Tokens Units of text processed by language models, affecting cost and performance. Managing and optimizing text processing tasks. Link TPM (Tokens per Minute) A measure of the rate at which tokens are processed, impacting throughput and performance. Allocating and managing processing capacity for AI models. Link PTU(provisioned throughput) provisioned throughput capability allows you to specify the amount of throughput you require in a deployment. Ensuring predictable performance for AI applications. Link1.3KViews1like0Comments