Skip to content

rondagdag/global-ai-bootcamp-2025-session-ai-agents

 
 

Repository files navigation

Getting Started with AI Agents

Session Desciption

Explore the fascinating world of AI agents with Azure! Dive into the innovative Azure AI Agent Service, where you’ll discover how these intelligent agents can transform processes and products. Learn about the diverse use cases, from automating customer support to enhancing decision-making processes. Understand why AI agents are essential for modern businesses, offering efficiency, scalability, and advanced problem-solving capabilities.

Learning Outcomes

  1. Gain a fundamental understanding of what AI agents are and how they function.

  2. Discover various use cases for AI agents across different industries.

  3. Learn about the features and capabilities of the Azure AI Agent Service.

  4. Understand how to implement AI agents using the Azure AI Agent Service in your projects.​

Technology Used

  1. Azure OpenAI Service

  2. Azure AI Foundry

  3. Azure AI Agent Service

Additional Resources and Continued Learning

Resources Links Description
AI Foundry AI Foundry Azure AI Foundry is a platform for building, evaluating, and deploying generative AI solutions and custom copilots.
AI Agent Service AI Agent Service Azure AI Agent Service is a fully managed service designed to empower developers to securely build, deploy, and scale high-quality, and extensible AI agents without needing to manage the underlying compute and storage resources
Semantic Kernel Agent Framework Semantic Kernel Agent Framework The Semantic Kernel Agent Framework provides a platform within the Semantic Kernel eco-system that allow for the creation of AI agents and the ability to incorporate agentic patterns into any application based on the same patterns and features that exist in the core Semantic Kernel framework.
AutoGen Agent Framework AutoGen Agent Framework AutoGen core offers an easy way to quickly build event-driven, distributed, scalable, resilient AI agent systems. Agents are developed by using the Actor model.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors

Languages

  • Jupyter Notebook 61.6%
  • Python 37.1%
  • Dockerfile 1.3%