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Beginnt 5 June 2026 06:39

Endet 5 June 2026

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Azure AI Agent Service (AI Foundry, Semantic Kernel SDK)

via Udemy

4160 Kurse


13 hours 43 minutes

Optionales Upgrade verfügbar

Not Specified

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Paid Course

Optionales Upgrade verfügbar

Übersicht

Are you ready to harness the power of Azure AI Agent Service to build intelligent, scalable, and efficient AI-driven solutions? This comprehensive Udemy course is designed to take you from the fundamentals to advanced implementation, enabling you to develop AI agents that automate tasks, enhance decision-making, and integrate seamlessly into business workflows.

Lehrplan

  • Introduction to Azure AI Agent Service
  • Overview of Azure AI capabilities
    Understanding AI Foundry and Semantic Kernel SDK
    Importance of AI-driven solutions in business
  • Fundamentals of AI Agents
  • Definition and types of AI agents
    Key components of an AI agent
    Use cases and industry applications
  • Setting Up Azure Environment
  • Creating an Azure account
    Navigating the Azure portal
    Core Azure AI services and tools
  • Introduction to AI Foundry
  • Features and functionalities of AI Foundry
    Configuring AI Foundry for first use
    Key integrations and extensions
  • Semantic Kernel SDK Basics
  • Overview of Semantic Kernel SDK
    Setting up the SDK environment
    Core classes and methods
  • Designing AI Agent Workflows
  • Identifying tasks for automation
    Structuring workflows for efficiency
    Designing decision-making processes
  • Developing AI Agents with Semantic Kernel SDK
  • Writing basic scripts and implementations
    Utilizing SDK classes and methods
    Debugging and testing AI agents
  • Advanced AI Agent Techniques
  • Implementing complex decision-making models
    Machine learning integration
    Enhancing agent intelligence and adaptability
  • Integrating AI Agents into Business Workflows
  • Mapping AI workflows to business processes
    Ensuring seamless integration and communication
    Monitoring and optimizing AI agent performance
  • Scalability and Efficiency Considerations
  • Best practices for scalable AI solutions
    Ensuring high performance and low latency
    Security and compliance in AI systems
  • Case Studies and Real-world Applications
  • Analyzing successful AI agent implementations
    Lessons learned from industry use cases
    Future trends in AI agent development
  • Capstone Project
  • Designing and implementing a full AI agent solution
    Presenting and evaluating project outcomes
    Feedback and iterating on AI solutions
  • Course Conclusion and Next Steps
  • Reviewing key concepts and skills
    Opportunities for further learning and development
    Professional pathways in AI agent services

Unterrichtet von

Kuljot Singh Bakshi


Fachgebiete

Computer Science