Thank you for sending your enquiry! One of our team members will contact you shortly.
Thank you for sending your booking! One of our team members will contact you shortly.
Course Outline
Introduction to Agentic AI
- Defining agentic capabilities in AI
- Key differences between traditional and agentic AI agents
- Use cases of agentic AI in various industries
Developing Goal-Driven AI Agents
- Understanding autonomous goal-setting and prioritization
- Implementing reinforcement learning for self-improvement
- Fine-tuning AI agent behaviors based on feedback loops
Multi-Agent Collaboration and Coordination
- Building AI agents that collaborate and communicate
- Task delegation and role assignment in agentic systems
- Real-world examples of multi-agent teamwork
Adaptive AI-Human Interaction
- Personalizing AI responses based on user behavior
- Context-awareness and dynamic decision-making
- Designing UX for intelligent and responsive AI agents
Deploying Agentic AI in Applications
- Integrating agentic AI with APIs and third-party tools
- Ensuring scalability and efficiency in AI deployments
- Case studies on successful agentic AI implementations
Ethical Considerations and Challenges
- Balancing autonomy with control in AI agents
- Addressing AI biases and ethical concerns
- Regulatory frameworks for autonomous AI systems
Future Trends in Agentic AI
- Emerging advancements in AI autonomy
- Expanding agentic capabilities with new technologies
- Predictions for AI-driven automation and decision-making
Summary and Next Steps
Requirements
- Basic knowledge of AI agents and automation
- Experience with Python programming
- Understanding of API-based AI integrations
Audience
- AI developers enhancing autonomous systems
- Automation engineers optimizing AI-driven workflows
- UX designers improving human-agent interactions
14 Hours