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Beginnt 5 June 2026 06:39
Endet 5 June 2026
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13 hours 43 minutes
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Paid Course
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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
- Fundamentals of AI Agents
- Setting Up Azure Environment
- Introduction to AI Foundry
- Semantic Kernel SDK Basics
- Designing AI Agent Workflows
- Developing AI Agents with Semantic Kernel SDK
- Advanced AI Agent Techniques
- Integrating AI Agents into Business Workflows
- Scalability and Efficiency Considerations
- Case Studies and Real-world Applications
- Capstone Project
- Course Conclusion and Next Steps
Overview of Azure AI capabilities
Understanding AI Foundry and Semantic Kernel SDK
Importance of AI-driven solutions in business
Definition and types of AI agents
Key components of an AI agent
Use cases and industry applications
Creating an Azure account
Navigating the Azure portal
Core Azure AI services and tools
Features and functionalities of AI Foundry
Configuring AI Foundry for first use
Key integrations and extensions
Overview of Semantic Kernel SDK
Setting up the SDK environment
Core classes and methods
Identifying tasks for automation
Structuring workflows for efficiency
Designing decision-making processes
Writing basic scripts and implementations
Utilizing SDK classes and methods
Debugging and testing AI agents
Implementing complex decision-making models
Machine learning integration
Enhancing agent intelligence and adaptability
Mapping AI workflows to business processes
Ensuring seamless integration and communication
Monitoring and optimizing AI agent performance
Best practices for scalable AI solutions
Ensuring high performance and low latency
Security and compliance in AI systems
Analyzing successful AI agent implementations
Lessons learned from industry use cases
Future trends in AI agent development
Designing and implementing a full AI agent solution
Presenting and evaluating project outcomes
Feedback and iterating on AI solutions
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