Azure Cosmos DB TV Recap – From Burger to Bots – Agentic Apps with Cosmos DB and LangChain.js | Ep. 111
In Episode 111 of Azure Cosmos DB TV, host Mark Brown is joined by Yohan Lasorsa to explore how developers can build agent-powered applications using a fully serverless architecture. This episode focuses on a practical, end-to-end example that demonstrates how transactional application data and AI-driven experiences can coexist on a single platform without introducing additional […]
The post Azure Cosmos DB TV Recap – From Burger to Bots – Agentic Apps with Cosmos DB and LangChain.js | Ep. 111 appeared first on Azure Cosmos DB Blog.
Published on:
Learn moreRelated posts
Microsoft Purview: Data Lifecycle Management- Azure PST Import
Azure PST Import is a migration method that enables PST files stored in Azure Blob Storage to be imported directly into Exchange Online mailbo...
How Snowflake scales with Azure IaaS
Microsoft Rewards: Retirement of Azure AD Account Linking
Microsoft is retiring the Azure AD Account Linking feature for Microsoft Rewards by March 19, 2026. Users can no longer link work accounts to ...
Azure Function to scrape Yahoo data and store it in SharePoint
A couple of weeks ago, I learned about an AI Agent from this Microsoft DevBlogs, which mainly talks about building an AI Agent on top of Copil...
Maximize Azure Cosmos DB Performance with Azure Advisor Recommendations
In the first post of this series, we introduced how Azure Advisor helps Azure Cosmos DB users uncover opportunities to optimize efficiency and...
February Patches for Azure DevOps Server
We are releasing patches for our self‑hosted product, Azure DevOps Server. We strongly recommend that all customers stay on the latest, most s...
Building AI-Powered Apps with Azure Cosmos DB and the Vercel AI SDK
The Vercel AI SDK is an open-source TypeScript toolkit that provides the core building blocks for integrating AI into any JavaScript applicati...
Time Travel in Azure SQL with Temporal Tables
Applications often need to know what data looked like before. Who changed it, when it changed, and what the previous values were. Rebuilding t...