Join 2.9 million developers at
Join 2.9 million developers at
LEARNING OBJECTIVES
- An understanding of AI agents and how they differ from AI models
- The ability to identify and explain core AI agent components and memory systems
- An explanation of different agent orchestration patterns and how to choose among them
- Hands-on experience designing and implementing AI agent safety guardrails
- Knowledge of integrating human oversight into agent workflows
- Understanding and applying strategies to overcome challenges in agentic systems
- Hands-on experience deconstructing real-world AI agent case studies
- Understanding the design and architecture of adaptive and robust AI agent systems
Learning Roadmap
1.
Agent Design Fundamentals
Agent Design Fundamentals
Learn core AI agent components, architecture, and how they perceive, reason, and act. Master orchestration, safety, and key design challenges.
2.
Multi-Agent Conversational Recommender System (MACRS)
Multi-Agent Conversational Recommender System (MACRS)
Explore MACRS, a multi-agent system for goal-directed conversational recommendations. See how it plans, uses reflection, and achieves superior performance.
3.
Nvidia Eureka Learning Agent
Nvidia Eureka Learning Agent
6 Lessons
6 Lessons
Dive into Eureka, an LLM-powered agent that autonomously designs and refines RL reward functions.
4.
Implementing a Eureka-Like Reward Learning Agent with Google ADK
Implementing a Eureka-Like Reward Learning Agent with Google ADK
5 Lessons
5 Lessons
Implement a Eureka-like reward learning system using ADK: generate, evaluate, select, reflect, and iterate reward functions end-to-end.
6.
Designing an AI Agent for Generating LLM Pipelines
Designing an AI Agent for Generating LLM Pipelines
4 Lessons
4 Lessons
Explore ChainBuddy’s innovative solutions for efficient LLM evaluation and workflow generation.
7.
Designing a Web Agent
Designing a Web Agent
5 Lessons
5 Lessons
Explore the development of advanced multimodal web agents for enhanced task performance.
8.
Designing a Multimodal-LLM Agent for Multi-Object Diffusion
Designing a Multimodal-LLM Agent for Multi-Object Diffusion
4 Lessons
4 Lessons
Explore MuLan's innovative approach to enhancing text-to-image generation through interactive, multi-step processes.
12.
Appendix: Free Reference Guides and Cheatsheets
Appendix: Free Reference Guides and Cheatsheets
3 Lessons
3 Lessons
A consolidated reference section covering core terminologies, architecture cheatsheets, and real-world application frameworks for AI agent design.
Certificate of Completion
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Developed by MAANG Engineers
ABOUT THIS COURSE
Agentic system design is rapidly redefining how modern AI systems are built, moving from single-model interactions to autonomous, multi-step systems that can reason, plan, and act. As large language models evolve, the real challenge is no longer just using them, but orchestrating them into reliable, goal-driven agents that operate safely and effectively in real-world environments.
I built this course from my work in adaptive AI and intelligent systems, where designing autonomous behavior requires more than model accuracy. It demands structured reasoning, control, and safety. A recurring pattern I observed was that teams could experiment with LLMs, but struggled to design cohesive agentic systems that could handle ambiguity, coordinate tasks, and remain aligned with user intent. This course is designed to bring that structure.
You will study real-world examples, including the Multi-Agent Conversational Recommender System (MACRS), NVIDIA’s Eureka for reward generation, and advanced agents navigating live websites and creating complex images. Drawing on insights from industry deployments and cutting-edge research, you will gain the foundational knowledge to confidently start designing your agent-based systems.
Engineers and researchers are already using these patterns to build next-generation AI systems. If you want to design agents that go beyond prompts and into action, this is where to begin.
ABOUT THE AUTHOR
Khayyam Hashmi
Computer scientist and Generative AI and Machine Learning specialist. VP of Technical Content @ educative.io.
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Anthony Walker
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Evan Dunbar
ML Engineer
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Front-end Developer
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Vinay Krishnaiah
Software Developer
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