model catalog
34 TopicsThe Future of AI: Customizing AI agents with the Semantic Kernel agent framework
The blog post Customizing AI agents with the Semantic Kernel agent framework discusses the capabilities of the Semantic Kernel SDK, an open-source tool developed by Microsoft for creating AI agents and multi-agent systems. It highlights the benefits of using single-purpose agents within a multi-agent system to achieve more complex workflows with improved efficiency. The Semantic Kernel SDK offers features like telemetry, hooks, and filters to ensure secure and responsible AI solutions, making it a versatile tool for both simple and complex AI projects.27Views0likes0CommentsIntroducing Model Mondays - Build Your AI Model IQ With This Weekly Hands-on Series
Have you felt overwhelmed by the pace of AI innovation? How do you keep up with the latest model news? How do you pick the right model from 1800+ options? How can you learn about best practices from others and get hands-on experience? This is where Model Mondays comes in. Join us starting March 10 for the 8-part season kickoff - read the blog post to learn more.86Views0likes0CommentsThe Future of AI: Reduce AI Provisioning Effort - Jumpstart your solutions with AI App Templates
In the previous post, we introduced Contoso Chat – an open-source RAG-based retail chat sample for Azure AI Foundry, that serves as both an AI App template (for builders) and the basis for a hands-on workshop (for learners). And we briefly talked about five stages in the developer workflow (provision, setup, ideate, evaluate, deploy) that take them from the initial prompt to a deployed product. But how can that sample help you build your app? The answer lies in developer tools and AI App templates that jumpstart productivity by giving you a fast start and a solid foundation to build on. In this post, we answer that question with a closer look at Azure AI App templates - what they are, and how we can jumpstart our productivity with a reuse-and-extend approach that builds on open-source samples for core application architectures.230Views0likes0CommentsThe Future of AI: Power Your Agents with Azure Logic Apps
Building intelligent applications no longer requires complex coding. With advancements in technology, you can now create agents using cloud-based tools to automate workflows, connect to various services, and integrate business processes across hybrid environments without writing any code.2KViews2likes1CommentAutomate Quota Discovery in Azure AI Foundry: A Tale of 3 APIs
Automate the discovery of Azure regions that meet your AI deployment needs using three essential APIs: Models API, Usages API, and Locations API. This process helps reduce decision fatigue and ensures compliance with enterprise-wide model deployment standards. Key learnings: Model Deployment Requirements: Understand the needs of a standard Retrieval-Augmented Generation (RAG) application, which involves deploying multiple models. Automation Benefits: Streamline your deployment process and ensure compliance with enterprise standards. Three Essential APIs: Models API: Query available models for a specific subscription within a chosen location. Usages API: Assess current usages and limits to infer available quotas. Locations API: Obtain a list of all available regions. A comprehensive Jupyter notebook with the implementation steps is available in the accompanying GitHub repository. This resource is invaluable for AI developers looking to streamline their deployment processes and ensure their applications meet all necessary requirements304Views3likes0CommentsThe Future of AI Is: Model Choice - From Structured Process To Seamless Platform
Language models are at the heart of generative AI applications. But in just over a year, we've moved from a handful of model providers to 1M+ community variants and more, resulting in the paradox of choice that ends in decision fatigue. In this blog post, we'll look at how developers can rethink their model selection strategy with a structured decision-making process, and a seamless development platform, to help them. This post is part of the Future of AI series jumpstarted by Marco Casalaina with his post on Exploring Multi-Agent AI Systems.1.9KViews1like0CommentsAzure AI Foundry: Empowering Scientific Discovery with AI
Azure AI Foundry is enabling scientific discovery with the introduction of three groundbreaking models from Microsoft Research: Aurora, MatterSim, and TamGen. These models, available starting January 20, 2025, offer transformative capabilities in weather forecasting, materials simulation, and drug design. By providing access to these advanced tools, Azure AI Foundry is enabling researchers and developers to explore new frontiers and accelerate the pace of innovation.649Views0likes0CommentsThe Future of AI: Horses for Courses - Task-Specific Models and Content Understanding
Task-specific models are designed to excel at specific use cases, offering highly specialized solutions that can be more efficient and cost-effective than general-purpose models. These models are optimized for particular tasks, resulting in faster performance and lower latency, and they often do not require prompt engineering or fine-tuning.943Views1like0CommentsNew controls for model governance and secure access to on-premises or custom VNET resources
Learn how to create an allowed model list for the Azure AI model catalog, plus a new way to access on-premises and custom VNET resources from your managed VNET for your training, fine-tuning, and inferencing scenarios.2.7KViews3likes1CommentAnnouncing Healthcare AI Models in Azure AI Model Catalog
Modern medicine encompasses various data modalities, including medical imaging, genomics, clinical records, and other structured and unstructured data sources. Understanding the intricacies of this multimodal environment, Azure AI onboards specialized healthcare AI models that go beyond traditional text-based applications, providing robust solutions tailored to healthcare's unique challenges.9.4KViews5likes1Comment